Hostname: page-component-cd9895bd7-hc48f Total loading time: 0 Render date: 2024-12-26T08:07:45.953Z Has data issue: false hasContentIssue false

Potential of existing online 24-h dietary recall tools for national dietary surveys

Published online by Cambridge University Press:  16 August 2021

Rozenn Gazan*
Affiliation:
MS-Nutrition, Marseille, France
Florent Vieux
Affiliation:
MS-Nutrition, Marseille, France
Ségolène Mora
Affiliation:
MS-Nutrition, Marseille, France
Sabrina Havard
Affiliation:
Risk Assessment Department, French Agency for Food, Environmental and Occupational Health & Safety (ANSES), Maisons-Alfort Cedex, France
Carine Dubuisson
Affiliation:
Risk Assessment Department, French Agency for Food, Environmental and Occupational Health & Safety (ANSES), Maisons-Alfort Cedex, France
*
*Corresponding author: Email rozenn.gazan@ms-nutrition.com
Rights & Permissions [Opens in a new window]

Abstract

Objective:

To describe existing online, 24-h dietary recall (24-h DR) tools in terms of functionalities and ability to tackle challenges encountered during national dietary surveys, such as maximising response rates and collecting high-quality data from a representative sample of the population, while minimising the cost and response burden.

Design:

A search (from 2000 to 2019) was conducted in peer-reviewed and grey literature. For each tool, information on functionalities, validation and user usability studies, and potential adaptability for integration into a new context was collected.

Setting:

Not country-specific

Participants:

General population

Results:

Eighteen online 24-h DR tools were identified. Most were developed in Europe, for children ≥10 years old and/or for adults. Eight followed the five multiple-pass steps but used various methodologies and features. Almost all tools (except three) validated their nutrient intake estimates, but with high heterogeneity in methodologies. User usability was not always assessed, and rarely by applying real-time methods. For researchers, eight tools developed a web platform to manage the survey and five appeared to be easily adaptable to a new context.

Conclusions:

Among the eighteen online 24-h DR tools identified, the best candidates to be used in national dietary surveys should be those that were validated for their intake estimates, had confirmed user and researcher usability, and seemed sufficiently flexible to be adapted to new contexts. Regardless of the tool, adaptation to another context will still require time and funding, and this is probably the most challenging step.

Type
Research paper
Copyright
© The Author(s), 2021. Published by Cambridge University Press on behalf of The Nutrition Society

National food consumption surveys are the main method used to monitor food consumption trends, nutritional status and exposure to hazardous substances in a population or to evaluate the impact of dietary policies. Ensuring the representativeness of the sample population and collecting accurate data are the biggest challenges(1). Since 2007, a decrease in response rates, defined as the ratio between the number of participants and all expected interviews (including unreachable and ineligible individuals), has been observed in many epidemiologic studies(Reference Galea and Tracy2), as reported in food consumption surveys in several European countries(Reference Ioannidou, Horváth and Arcella3,Reference Ax, Warensjö Lemming and Becker4) , and the USA(Reference Ahluwalia, Dwyer and Terry5). The reasons for refusal may include an increase in requests for study participation, declining trust in science, and increasingly complex research protocols(Reference Galea and Tracy2,Reference Ioannidou, Horváth and Arcella3) . As an example, in France, the previous 7-d self-administered paper food records methodology(Reference Dubuisson, Lioret and Touvier6,Reference Lioret, Dubuisson and Dufour7) has shifted to interview-led 24-h dietary recalls (24-h DR) in the most recent cross-sectional Individual and National Study on Food Consumption 3 (INCA3) conducted in 2014–2015. The new protocol required four contacts to complete the dietary recalls after having agreed to take part, compared to two contacts in the INCA2 survey. This change may have had a negative impact on the response rate which decreased by about 20% points compared to the INCA2 study. This led to an increase in the duration of fieldwork and in costs to ensure representative population sample(Reference Dubuisson, Dufour and Carrillo8). There is a need to shift towards more user-friendly tools and to adapt surveys to the population’s current lifestyle (e.g. longer working hours(Reference Galea and Tracy2)), while maintaining high data quality at an acceptable cost.

A wide range of technological options for dietary assessments are available(Reference Illner, Freisling and Boeing9). They can be categorised as computer-based (offline or online), mobile-based or image-based tools. Offline computer-based tools have already been used in several national surveys(Reference Slimani, Casagrande and Nicolas10Reference Caswell, Talegawkar and Dyer14) and have shown some limitations, in particular for data management(Reference Dubuisson, Dufour and Carrillo8,Reference Amoutzopoulos, Steer and Roberts15Reference Bel and De Ridder17) . For instance, adapting GloboDiet software to European national surveys, as well as checking and cleaning the collected data according to the FoodEx2 classification, was very time-consuming and costly(Reference Zhang, Geelen and Boshuizen16Reference Dubuisson, Carrillo and Dufour18). Other technologies such as online computer-based, mobile-based or image-based tools have rarely been used in national dietary surveys, probably because of doubts about their acceptability within the population, or a lack of evidence about their validity and costs to collect data that are both nationally representative and accurate(Reference Amoutzopoulos, Steer and Roberts15).

Regarding mobile-based tools collecting dietary intakes, most were developed for commercial purposes(Reference Illner, Freisling and Boeing9,Reference Cade19,Reference Eldridge, Piernas and Illner20) , often with the aim of helping individuals to manage their weight(Reference Illner, Freisling and Boeing9,Reference Cade19,Reference Franco, Fallaize and Lovegrove21) . These tools may lack validity and transparency(Reference Cade19,Reference Bell, Colaiezzi and Prata22) , and they require that a large proportion of the population has a smartphone. A mobile-based solution not fully online, called INDDEX24, has been designed for low- and middle-income countries(23,Reference Wafa, Colaiezzi and Some24) to fill the lack of tools meeting specific constraints in those countries (low smartphone penetration, low literacy, lack of connectivity, etc.)(Reference Bell, Colaiezzi and Prata22,Reference Coates, Colaiezzi and Bell25) . The tool includes a tablet and mobile application available online and offline, as well as a web platform for data management. This tool is currently in the process of being validated and represents potential for specific national dietary surveys. Barcode scanning applications usually used on mobile might be valuable for dietary assessments, but current tools are not reliable for use in national surveys without an extensive development phase and validation studies(Reference Maringer, Wisse-Voorwinden and van’t Veer26). As mobile-based tools, various technologies of image-based tools are available but all require further development to be validated on a wide range of food products and on a large sample size of individuals(Reference Tay, Kaur and Quek27Reference Kouvari, Mamalaki and Bathrellou29).

Online computer-based tools (mainly using 24-h DR) appear to be the most mature technology to be adapted to national food consumption surveys without requiring long and costly development steps. Importantly, some of them have already been used in large-scale epidemiological studies(Reference Lindroos, Petrelius Sipinen and Axelsson30Reference Rowland, Adamson and Poliakov34), and they were designed to be easily adaptable to other populations(Reference Kirkpatrick, Gilsing and Hobin3537). They can be adapted to smartphones, and many have been validated among children and/or adults(Reference Bell, Colaiezzi and Prata22,Reference Timon, van den Barg and Blain38) . To our knowledge, only one review focuses on web- and computer-based 24-h DR(Reference Timon, van den Barg and Blain38). In the Timon et al. review(Reference Timon, van den Barg and Blain38), common design features and the methods used to assess the ability of 24-h DR tools to accurately assess nutritional and dietary intakes have been fully detailed, but no information about user and researcher usability were reported(Reference Timon, van den Barg and Blain38).

To tackle the challenges encountered by national dietary surveys, such as maximising the response rate and collecting data from a representative sample of the population of interest while optimising the ratio between cost and data quality, existing online 24-h DR seem to have potential for the collection of good quality data while being less burdensome for the respondent and investigator. The aim of this study was to describe existing online 24-h DR tools in diverse aspects, such as functionalities, validation of nutrient estimations, user and researcher usability, and potential adaptability for integration into national dietary surveys.

Methods

Terminology

Here, validity means the extent to which a tool measures what it is intended to measure. The validity of dietary instruments is generally assessed by comparing nutrients and/or food intake estimates with another method considered the gold standard, which can be subjective (24-h DR, food diary, FFQ, etc.) or objective (biomarkers, observational studies, etc.)(39,40) . According to the ISO 9241-11:2018 Standard(41), user usability is a measure of how well a user can learn and correctly use the tool’s functions, the ease of use, and user satisfaction in terms of whether a user can achieve his or her goals when using the tool. User usability is assessed using retrospective methods such as questionnaires, administered after the experience of the tool and/or real-time methodologies such as concurrent think-aloud protocols(Reference Birns, Joffre and Leclerc42). In this paper, the term flexibility means the extent to which a tool can be easily modified and adapted to be used in a context other than the one for which the tool was developed. To simplify the manuscript, the term food is used instead of ‘food and beverages’ to describe the identification of all foods and beverages declared as consumed by the respondent.

Search strategy

Online computer-based self-administered 24-hD R tools were identified from reviews identified using a first search on Pubmed with the following terms, alone or in combination in the title or abstract: ‘survey’, ‘tool’, ‘instrument’, ‘assessment’, ‘questionnaire’, ‘measurement’, ‘diet’, ‘dietary’, ‘nutrient’, ‘food’, ‘intake’, ‘dietary pattern’, ‘dietary assessment’, ‘consumption’, ‘web’, ‘online’, ‘remote’, ‘digital’, ‘software’, ‘application’, ‘technology’, ‘ehealth’, and ‘review’, ‘meta-anal*’, and ‘systematic’. For the present paper, only two reviews including an evaluation and description of 24-h DR tools were retained (Timon et al. (Reference Timon, van den Barg and Blain38) and Bell et al. (Reference Bell, Colaiezzi and Prata22)). Keywords were also used to identify relevant grey literature in Google, such as Timmins et al. (Reference Timmins, Vowden and Husein43) and Coates et al. (Reference Coates, Colaiezzi and Bell25), leading to the identification of two reports. From these four reviews or reports, focusing on tools published between 2000 and 2016, the authors identified a list of 24-h DR tools. An additional search with the same keywords (except ‘review’, ‘meta-anal*’, and ‘systematic’) was conducted to update the list and identify other tools published after the reviews or reports (published between 2017 and 2019) on PubMed and on Google in order to identify commercial tools without scientific publications.

Description criteria

For each tool, general characteristics, dietary intake collection methodology, as well as validation methodology and user usability were assessed based on the scientific literature and/or published reports. Functionalities and the method used to collect dietary intakes were described according to the United States Department of Agriculture (USDA) five-step multiple-pass 24-h DR method, a standardised and structured interview to record dietary intakes, during which several cues are used to help the respondent to remember and detail as accurately as possible of all foods consumed(Reference Conway, Ingwersen and Vinyard44). Additionally, information on the tools’ flexibility to be adapted to another context was collected. All criteria chosen to describe the tool are reported in Fig. 1.

Fig. 1 Criteria used to describe the tools. 24-h DR, 24-h dietary recall

*‘Eating occasion’ step is the collection of time, name and place of consumption of each food reported.

†‘Quick list’ step is the identification of all foods that the respondent consumed during the previous day.

‡‘Forgotten food list’ step provides cues about the consumption of often forgotten foods.

§ ‘Detail cycle’ step is the collection of detailed information on each food such as the fat content, brand name, preservation method and the consumed amount.

|| ‘Review and validation’ step is the final review of the 24-h DR.

Once tables were considered to be as complete as possible, based on available published papers or reports, phone or online video unstructured interviews were conducted with the corresponding authors of the studies, or the owner or developer of each tool in October 2019. The aim of the interviews was to check the already collected information, to validate specific points or to add information that could not be found in the literature. All collected information on validation and user usability studies as well as functionalities to collect dietary intakes were from published papers, whereas certain general characteristics (in particular available languages, last version and type of medium), and all information on flexibility were directly collected from the tool owner or developer.

A letter was assigned to each tool and used in the tables and text to refer to it when necessary.

Results

General description

The identification of online 24-h DR tools cited in the reviews and reports led to the selection of thirteen tools as follows (with the corresponding letter) (Fig. 2): Automated Self-Administered 24-h DR (A, ASA24)(Reference Zimmerman, Hull and McNutt45), Children’s and Adolescents’ Nutrition Assessment and Advice on the Web (B, CANAA-W) (previously Young Adolescents’ Nutrition Assessment on Computer, YANA-C)(Reference Vereecken, Covents and Maes46,Reference Vereecken, Covents and Sichert-Hellert47) , Computer-Assisted Personal Interview System (C, CAPIS)(Reference Shin, Park and Sun48), Compl-Eat (D)(Reference Meijboom, van Houts-Streppel and Perenboom49), DietAdvice (E)(Reference Probst, Lockyer and Tapsell50), DietDay (F)(Reference Arab, Wesseling-Perry and Jardack51), Web-based Food Behaviour Questionnaire (G, FBQ)(Reference Hanning, Royall and Toews52), Food Record Checklist (H, FoRC)(Reference Comrie, Masson and McNeill53), INTAKE24 (I, previously Self-Completed Recall and Analysis of Nutrition, SCRAN24)(Reference Simpson, Bradley and Poliakov54), Measure Your Food On One Day (J, myfood24)(Reference Carter, Albar and Morris55), NutriNet-Santé (K)(Reference Touvier, Kesse-Guyot and Méjean31), Portuguese self-administered computerised 24-h DR (L, PAC24)(Reference Carvalho, Santos and Rito56) and Web-Survey of Physical Activity and Nutrition (M, Web-SPAN)(Reference Storey, Forbes and Fraser57). Five other online 24-h DR, published between 2016 and 2019, were added (Fig. 2): ClinShare (N), Creme Diet (O, published under the name foodbook24)(Reference Timon, Blain and McNulty58), Web-based 24-h DR (P, R24W)(Reference Jacques, Lemieux and Lamarche59), RiksmatenFlex (Q)(Reference Moraeus, Lemming and Hursti60) and Self-Administered Children, Adolescents, and Adult Nutrition Assessment (R, SACANA)(Reference Hebestreit, Wolters, Jilani, Bammann, Lissner and Pigeot61). In all, eighteen online 24-h DR tools were selected for this study (Fig. 2).

Fig. 2 Flow chart for the selection of the online 24-h DR tools. 24-h DR, 24-h dietary recall

* The two reviews were the followings (38 and 43).

† The two reports were the followings (44 and 25).

A general description of the eighteen identified tools is available in Table 1. Among them, eleven (B(Reference Vereecken, Covents and Maes46), D(Reference Meijboom, van Houts-Streppel and Perenboom49), H(Reference Comrie, Masson and McNeill53), I(Reference Simpson, Bradley and Poliakov54), J(Reference Carter, Albar and Morris55), K(Reference Touvier, Kesse-Guyot and Méjean31), L(Reference Carvalho, Santos and Rito56), N, O(Reference Timon, Blain and McNulty58), Q(Reference Moraeus, Lemming and Hursti60) and R(Reference Hebestreit, Wolters, Jilani, Bammann, Lissner and Pigeot61)) were developed in Europe, five (A(Reference Zimmerman, Hull and McNutt45), F(Reference Arab, Wesseling-Perry and Jardack51), G(Reference Hanning, Royall and Toews52), M(Reference Storey and Mccargar70) and P(Reference Jacques, Lemieux and Lamarche59)) in North America (USA and Canada), one (E(Reference Probst, Lockyer and Tapsell50,Reference Probst, Jones and Lin64) ) in Australia and one (C(Reference Shin, Park and Sun48)) in South Korea. Five (A(71), I(Reference Foster, Lee and Imamura72), J(Reference Koch, Conrad and Hierath36), K(73) and R(Reference Hebestreit, Wolters, Jilani, Bammann, Lissner and Pigeot61)) have already been adapted to be used in another country, and in particular, two (I(Reference Foster, Lee and Imamura72) and J(Reference Scarpa, Berrang-Ford and Bawajeeh74)) have already been adapted for low-income countries (Middle East countries, Peru or the South-Asia region). Only one language is available in twelve tools (C–H, K, L–O and Q) (among them six in English: E–H, M and O), while the other six tools (C, D, K, L, N and Q) are in various languages. Three tools (D, I and Q) have been adapted or are being adapted for all populations (including infants), while the others were developed for teenagers and/or adults. Eight tools (A, I–K and N–Q) can (or will) be used on computers, mobiles and tablets, thanks to an automatic adjustment of the web page to the tool’s size (i.e. responsive design). Except four tools (G, H, K andf M), all have an integrated food composition database, allowing for automatic assessment of individual food and nutrient intakes for the researcher. Eleven tools (A–C, F, G, I–K, M, O and R) have a functionality to provide the respondent with a summary of their dietary intakes and for some tools, dietary advice(75Reference Rowland, Rose and McLean78). While four tools (E, I, L and R) collect food intake data only, some tools collect other information such as dietary supplements (A, D, F, J and O), the level of physical activity (via a questionnaire) (B, C, K, M, N and Q), anthropometry (B, C, K, M and N), sleeping habits (A) or other information on food habits (G, H, K, M, N, P and Q).

Table 1 General description of the online 24-hD R tools*

ANT, anthropometric data; ASA24, Automated Self-Administered 24-h diet recall; B, Brand level; C, computer; CANAA-W, Children’s and Adolescents’ Nutrition Assessment and Advice on the Web; CAPIS, Computer-Assisted Personal Interview System; DS, dietary supplement; FBQ, Web-based Food Behaviour Questionnaire; FH, food habits; FoRC, Food Record Checklist; G, generic; M, mobile; myfood24, Measure Your Food On One Day; N, No; NA, missing information; PA, physical activity; PAC24, Portuguese self-administered computerised 24-h dietary recall; SD, socio-demographic data; R24W, Web-based 24-h dietary recall; Ref, References; SACANA, Self-Administered Children, Adolescents, and Adult Nutrition Assessment; T, tablet; Web-SPAN, Web-Survey of Physical Activity and Nutrition; Y, yes.

* All information was validated by the tools’ owners or developers, except for the tools Creme Diet, CAPIS, CANAA-W, Diet Advice, DietDay, FoRC and FBQ.

The name is underlined when information was validated by the developer/owner of the tool.

Publications of tool development.

§ In the most recent version of the tool.

|| In the version published.

Initially developed by Newcastle University, Newcastle, UK, with funding from Food Standards Scotland, Adaptation by the University of Cambridge, Cambridge, UK.

Method of dietary intake collection

Table 2 describes the main functionalities of the tools to collect dietary intakes.

Table 2 Step number and method of the multiple-pass methodology and main functionalities to collect dietary intakes

ASA24, Automated Self-Administered 24-h diet recall; CANAA-W, Children’s and Adolescents’ Nutrition Assessment and Advice on the Web; CAPIS, Computer-Assisted Personal Interview System; FBQ, Web-based Food Behaviour Questionnaire; FoRC, Food Record Checklist; myfood24, Measure Your Food On One Day; N, No; PAC24, Portuguese self-administered computerised 24-hour dietary recall; R24W, Web-based 24-h dietary recall; SACANA, Self-Administered Children, Adolescents, and Adult Nutrition Assessment; Web-SPAN, Web-Survey of Physical Activity and Nutrition; Y, yes.

* The name is underlined when information was validated by the developer/owner of the tool.

Eight tools (A, B, D, F, H, I, O and R) display the same steps as the USDA multiple-pass method, but not necessarily in the same order and not necessarily using the same method to collect the ‘Quick list’ (e.g. identification in a pre-defined list of foods, using free keywords or food group checkboxes). Other tools either do not include the ‘Forgotten food list’ step (n 3; C, E, L) or do not include the ‘Quick list’ step (n 7; G, J, K, M, N, P, Q). Tools without a ‘Quick list’ ask the respondent to provide all information (identification, description and quantification of the food) in one step for each consumption occasion of the day. The time of consumption is always requested, and other information, including the place of consumption (n 10; A, C and K–R), place of meal preparation (n 1; K), social context (n 8; A, K–N and P–R) and presence of a screen (n 5; A, K, L, N and P) can be requested depending on the tool.

The whole list of foods from which the respondent selects the one consumed depends on the study and version of the tool and can contain either generic foods only (often from national food composition databases), or generic and specific brand products (Table 1). In order to ease food selection by the user, the selected tools use different food identification systems (either in the ‘Quick list’ or ‘Detail cycle’ steps):

  • - using a keyword search engine (n 13; A, C, D, F, I–L and N–R),

  • - by selecting within a hierarchical tree (n 13; A–F, H, I, K, N, O, P and R),

  • - by selecting within a dropdown list (n 2; M and G),

  • - by filtering foods (n 2; A and J) by category, brand, type of food (generic or brand) or from a list of favourite foods,

  • - by selecting from pictures (n 1, for specific food groups; R).

Five tools (B(Reference Vereecken, Covents and Maes76), I(Reference Rowland, Adamson and Poliakov34), J(Reference Carter, Albar and Morris55), O(Reference Timon, Blain and McNulty58) and Q(Reference Lindroos, Petrelius Sipinen and Axelsson30)) have improved their keyword search engine by including synonyms and different spelling options or brand names to help participants find the correct food or to allow the identification of foods by matching more than one search term (e.g. chocolate biscuits). Other functionalities helping the respondent to report the correct food consumed were identified, such as the creation of personal recipes (n 7; A, D, I, J, N, P and R), or reporting a new food (free text entry) not yet in the integrated food list (n 5; D, I, K, Q and R).

Portion size estimation is requested, either directly after having identified a food (n 7; G, J, K, M, N, P and Q) or in the second step after having identified all foods consumed during the day (n 11; A–F, H, I, L, O and R). Quantification can be entered directly in grams or volumes (n 6; C, D, J–L and N), or using portion size estimation aids such as food portion pictures (n 16; A–C, E–M and O–R), standard units of consumption (n 14; A, C, D, G and I–R) or household measures (n 8; B, D, F, I, L, P, Q and R). Only two tools do not use food pictures (D and N). To our knowledge, only one tool (I) also requests, for some foods, the amount of food that is left over. The type of packaging or way of consumption can also be asked to refine the picture to display (e.g. consumption of an entire fruit or in pieces, consumption of a soda in a bottle, a can or a cardboard container)(Reference Simpson, Bradley and Poliakov54). For beverages, one tool (I) uses a cursor to fill the container chosen by the respondent (glass, bowl, etc.).

Method of validity assessment

Table 3 describes the methods used to validate nutrient and/or food group intake estimates using the tool, and Table 4 describes user usability assessment studies.

Table 3 Methodological characteristics of the validation studies for the online 24-h DR tools

ASA24, Automated Self-Administered 24-h diet recall; CANAA-W, Children’s and Adolescents’ Nutrition Assessment and Advice on the Web; CAPIS, Computer-Assisted Personal Interview System; FBQ, Web-based Food Behaviour Questionnaire; FoRC, Food Record Checklist; myfood24, Measure Your Food On One Day; N, No; NA, missing values; PAC24, Portuguese self-administered computerised 24-h dietary recall; R24W, Web-based 24-h dietary recall; Web-SPAN, Web-Survey of Physical Activity and Nutrition; SACANA, Self-Administered Children, Adolescents, and Adult Nutrition Assessment; HEI, Health Eating Index; C-HEI, Canadian Healthy Eating Index; DLW, doubly labelled water; NDNS, National Diet and Nutrition Survey; 24-h DR, 24-h dietary recall.

Grey cells are tools without publications on the tool.

* Final sample size, age, country and specificity if needed

t-test or paired t-tests or Wilcoxon signed rank test;

graphical method and limit of agreements

§ Spearman or Pearson, de-attenuated or raw correlation;

|| Cross-classification and weighted kappa coefficient;

ASA24 was also validated among specific subpopulations such as low-income individuals, children 10–13 years of age, overweight and obese women, multi-ethnic older adults. All publications are available here: https://epi.grants.cancer.gov/asa24/resources/publications.html.

Table 4 Methodological characteristics of the user usability studies for the online 24-h DR tools

ASA24, Automated Self-Administered 24-h diet recall; CANAA-W, Children’s and Adolescents’ Nutrition Assessment and Advice on the Web; CAPIS, Computer-Assisted Personal Interview System; FBQ, Web-based Food Behaviour Questionnaire; FoRC, Food Record Checklist; myfood24, Measure Your Food On One Day; PAC24, Portuguese self-administered computerised 24-h dietary recall; R24W, Web-based 24-h dietary recall; SACANA, Self-Administered Children, Adolescents, and Adult Nutrition Assessment; SUS scale, System Usability Scale; Web-SPAN, Web-Survey of Physical Activity and Nutrition; DLW, doubly labelled water; NDNS, National Diet and Nutrition Survey.

Grey cells are tools without publications on the user usability;

* Final sample size, age, country and specificity if needed;

ASA24 usability was also assessed among children and multi-ethnic older adults.

Validation of nutrient intake estimates was assessed in twenty-seven studies (n 15 tools). Three tools (B, C and N) had no publication on the validation of nutrient intake estimates. Six tools (A(Reference Frankenfeld, Poudrier and Waters79,Reference Yuan, Spiegelman and Rimm83,Reference Park, Dodd and Kipnis84) , E(Reference Probst, Sarmas and Tapsell86,Reference Probst, Sarmas and O’Shea87) , H(Reference Comrie, Masson and McNeill53), M(Reference Storey and Mccargar70), O(Reference Timon, Blain and McNulty58) and P(Reference Lafrenière, Laramée and Robitaille94,Reference Lafrenière, Laramée and Robitaille95) ) compared nutrient intake estimates to those from food diaries, seven (A(Reference Kirkpatrick, Subar and Douglass80Reference Thompson, Dixit-Joshi and Potischman82), D(Reference Meijboom, van Houts-Streppel and Perenboom49), G(Reference Hanning, Royall and Toews52), I(Reference Bradley, Simpson and Poliakov89), J(Reference Wark, Hardie and Frost90,Reference Albar, Alwan and Evans91) , K(Reference Touvier, Kesse-Guyot and Méjean31) and Q(Reference Lindroos, Petrelius Sipinen and Axelsson30)) to nutrient intakes estimated by interview-led 24-h DR and three (A(Reference Yuan, Spiegelman and Rimm83), F(Reference Arab, Tseng and Ang88) and R(Reference Intemann, Pigeot and De Henauw97)) to estimates from FFQ. The number of days of dietary measurements as well as the time between data collection using the tool and the reference method varied widely between studies. For instance, from one (A(Reference Kirkpatrick, Potischman and Dodd81,Reference Yuan, Spiegelman and Rimm83,Reference Gilsing, Mayhew and Payette101) , E(Reference Probst, Sarmas and Tapsell86,Reference Probst, Sarmas and O’Shea87) , G(Reference Hanning, Royall and Toews52), K(Reference Touvier, Kesse-Guyot and Méjean31) and L(Reference Carvalho, Baranowski and Foster92)) to six consumption days (A(Reference Park, Dodd and Kipnis84) and F(Reference Arab, Tseng and Ang102)) were collected using the online 24-h DR tool in validation studies. Four tools (G(Reference Hanning, Royall and Toews52), I(Reference Bradley, Simpson and Poliakov89), J(Reference Albar, Alwan and Evans91) and K(Reference Touvier, Kesse-Guyot and Méjean31)) were validated against a reference method administered the same day(Reference Touvier, Kesse-Guyot and Méjean31,Reference Hanning, Royall and Toews52,Reference Bradley, Simpson and Poliakov89,Reference Albar, Alwan and Evans91) , whereas other tools administered the reference method a few weeks before or after use of the tool. Ten tools (A(Reference Kirkpatrick, Subar and Douglass80,Reference Kirkpatrick, Potischman and Dodd81,Reference Yuan, Spiegelman and Rimm83,Reference Park, Dodd and Kipnis84) , D(Reference Wardenaar, Steennis and Ceelen85), F(Reference Arab, Tseng and Ang88), I(Reference Foster, Lee and Imamura72), J(Reference Wark, Hardie and Frost90), L(Reference Carvalho, Baranowski and Foster92), O(Reference Timon, Blain and McNulty58), P(Reference Lafrenière, Couillard and Lamarche93,Reference Lafrenière, Lamarche and Laramée96) , Q(Reference Lindroos, Petrelius Sipinen and Axelsson30) and R(Reference Intemann, Pigeot and De Henauw97)) had validation studies using objective measurements (biomarkers or energy expenditure n 10 studies, corresponding to nine tools A(Reference Kirkpatrick, Subar and Douglass80,Reference Yuan, Spiegelman and Rimm83,Reference Park, Dodd and Kipnis84) , D(Reference Wardenaar, Steennis and Ceelen85), F(Reference Arab, Tseng and Ang88), I(Reference Foster, Lee and Imamura72), J(Reference Wark, Hardie and Frost90), O(Reference Timon, Blain and McNulty58), P(Reference Lafrenière, Couillard and Lamarche93,Reference Lafrenière, Lamarche and Laramée96) , Q(Reference Lindroos, Petrelius Sipinen and Axelsson30) and R(Reference Intemann, Pigeot and De Henauw97); feeding studies n 1 study: A(Reference Kirkpatrick, Potischman and Dodd81); or direct observation n 1 study: L(Reference Carvalho, Baranowski and Foster92)), nine (A, D, F, I, J and O–R) of which also had a validation study with a subjective reference measurement (in the same or another study). Six tools (A(Reference Kirkpatrick, Subar and Douglass80,Reference Yuan, Spiegelman and Rimm83,Reference Park, Dodd and Kipnis84) , F(Reference Arab, Tseng and Ang88), J(Reference Wark, Hardie and Frost90), O(Reference Timon, Blain and McNulty58), Q(Reference Lindroos, Petrelius Sipinen and Axelsson30) and R(Reference Intemann, Pigeot and De Henauw97)) were validated with both subjective and objective reference measurements in the same study, as recommended by Timon et al. (Reference Timon, van den Barg and Blain103). Four tools (A(Reference Kirkpatrick, Subar and Douglass80), I(Reference Bradley, Simpson and Poliakov89), L(Reference Carvalho, Baranowski and Foster92) and P(Reference Lafrenière, Lamarche and Laramée96)) assessed the proportion of exact ‘matches’, ‘omissions’ or ‘inclusions’.

Data were often analysed using a combination of statistical methods, measuring either the strength of an association at the individual level (correlation coefficients), the overall agreement between two measurements (mean comparisons), the agreement at the individual level (cross-classification and weighted Kappa coefficient), or the presence, direction and extent of bias between two measurements (graphics of Bland and Altman). The number of statistical analyses was between 2 and 5, with four studies out of twenty-seven (G(Reference Hanning, Royall and Toews52), O(Reference Timon, Blain and McNulty58), P(Reference Lafrenière, Laramée and Robitaille94) and Q(Reference Lindroos, Petrelius Sipinen and Axelsson30)) having more than three different statistical tests, as recommended by Lombard et al. to reflect each facet of validity(Reference Lombard, Steyn and Charlton104). Publication results indicated overall moderate to good validity of online 24-h DR according to the statistical tests, and estimated nutrient intakes were comparable to the reference values. For instance, in a control feeding study, gaps between true and reported energy, nutrient and food group intakes were comparable between the online tool A and the interview-led offline AMPM software(Reference Kirkpatrick, Subar and Douglass80). Validation criteria were comparable between the online tool J and interview-led 24-h DR, with several biomarkers(Reference Wark, Hardie and Frost90). Spearman’s correlations for urinary and plasma biomarkers were similar for both the online tool O and 4-d semi-weighed food diaries(Reference Timon, Blain and McNulty58). Overall, based on their validation studies, each tool is valid to estimate nutritional intakes (data not shown).

User usability assessment

User usability was assessed in fifteen studies (n 11 tools, A–C, F, G, I–K and O–Q), among which one tool (Q) assessed usability but without publishing the results. In eight studies (n 7 tools, A(Reference Kirkpatrick, Gilsing and Hobin35,Reference Thompson, Dixit-Joshi and Potischman82) , C(Reference Shin, Park and Sun48), F(Reference Arab, Wesseling-Perry and Jardack51), I(Reference Rowland, Poliakov and Christie99), K(Reference Touvier, Kesse-Guyot and Méjean31), O(Reference Timon, Blain and McNulty58) and P(Reference Jacques, Lemieux and Lamarche59)), user usability was assessed only using a retrospective questionnaire administered after data collection. The System Usability Scale (SUS)(Reference Brooke, Jordan, Thomas, Weerdmeester and McClelland105), a validated questionnaire of ten items measuring the overall usability of a system (i.e. software, website and application) was used in three studies (n 2 tools, I(Reference Simpson, Bradley and Poliakov54) and J(Reference Koch, Conrad and Hierath36,Reference Albar, Carter and Alwan100) ). SUS scores at least equal to 70 (out of 100) are considered ‘good’ by Bangor et al. (Reference Bangor, Kortum and Miller106). Concerning methods other than questionnaires, we can mention focus groups(Reference Vereecken, Covents and Maes46) (n 1 tool, B), a retrospective methodology to collect qualitative information and real-time methods such as think-aloud protocols(Reference Hanning, Royall and Toews52,Reference Simpson, Bradley and Poliakov54,Reference Carvalho, Santos and Rito56,Reference Kupis, Johnson and Hallihan107) (n 4 tools, A, G and I) as well as eye-tracking(Reference Simpson, Bradley and Poliakov54) (n 1 tool, I). In four studies (n 3 tools, A(Reference Kirkpatrick, Gilsing and Hobin35), I(Reference Simpson, Bradley and Poliakov54) and J(Reference Koch, Conrad and Hierath36,Reference Albar, Carter and Alwan100) ), both retrospective and real-time methods were used. Overall satisfaction could be considered good, but several common issues were reported: difficulties in identifying the correct food (A(Reference Kirkpatrick, Gilsing and Hobin35,Reference Kupis, Johnson and Hallihan107) , I(Reference Simpson, Bradley and Poliakov54,Reference Rowland, Poliakov and Christie99) and J(Reference Koch, Conrad and Hierath36,Reference Albar, Carter and Alwan100) ), in particular when the respondent used several words (e.g. ‘mince, potatoes’), issues in navigating within the system (A(Reference Kirkpatrick, Gilsing and Hobin35,Reference Kupis, Johnson and Hallihan107) , I(Reference Simpson, Bradley and Poliakov54) and J(Reference Albar, Carter and Alwan100)), and difficulties logging in (A(Reference Kirkpatrick, Gilsing and Hobin35) and I(Reference Rowland, Poliakov and Christie99)).

Tool flexibility

Among the eighteen tools, thirteen (B–H and L–Q) have not been adapted for use in another country (Table 1). Information about how the tool could be adapted from the investigator of the study and/or from the tool’s technical support team was collected for eleven tools. For eight tools (A, D, I–K, N, O and R), changes to the food list and addition of full nutritional composition are feasible by providing the data to technical support, as a template file with a specific structure. Addition of another language is feasible for six tools (A, I–K, O and R). A web platform is available for the investigator of the study for eight tools (A, D, I, J, N, O, Q and R). On the platform, it is possible, depending on the tool, to edit certain parameters: adding new foods, changing nutritional composition, amending portion size pictures, activating functionalities or questions, and managing a study (sending invitation emails, checking responses and exporting the databases). Finally, tools A, I, J, O and R seemed to be the most easily flexible to a new context (web platform for the investigator of the study, possible addition of another language and modification of the input data). Only three tools (I, O and soon A) allow flexibility to store the collected data on a server of the investigator team. For two other tools (K and R), data can only be exported on request, limiting ongoing monitoring of the study.

Discussion

Eighteen online 24-h DR tools were identified and described in detail. Most were developed in Europe, for children 10 years of age and older and/or for adults. All tools are self-administered and collect time of consumption, identification of all foods and beverages consumed, and quantification of the amount consumed, before checking and validating the entries. The common information collected by all tools makes it possible to obtain high-quality intake estimates, showing promising capabilities for their use in national food intake surveys. Beyond these similarities, each tool has its own specificities regarding the order and functionalities of the multiple-pass steps to help identify and quantify the foods consumed. These specificities may have an impact on user usability, which was assessed for fewer tools than the validity of nutritional intakes. User usability should be assessed more often, especially for tools to be used in national dietary surveys because usability is a major driver of the response rate, a significant challenge in such surveys. Moreover, the ability of these tools to be adapted to new environments needs to be carefully evaluated, in view of implementing them in different countries. This point is, however, rarely addressed in reports or articles. This is why the authors of the present study needed to conduct unstructured interviews with the owner or developer of each tool to obtain more information.

Eleven tools were assessed regarding user usability, mainly through retrospective data collection of user satisfaction using questionnaires. Initiated by Eysenbach in 2005(Reference Eysenbach108), the impact of design features on adherence, that is, the degree to which the user correctly uses the tool as designed and intended by the developer(Reference Sieverink, Kelders and van Gemert-Pijnen109), has been studied in particular in online intervention programmes on mental health, lifestyle or chronic care, to prevent non-usage and dropout attrition(Reference Ludden, van Rompay and Kelders110,Reference Ryan, Bergin and Wells111) . For instance, it is recognised that personalisation of functionalities (e.g. using an avatar for children) or content (e.g. providing tailored messages) for a specific target group or individual increases user efficiency(Reference Ludden, van Rompay and Kelders110). Theoretical models on adherence to web-based interventions have been developed(Reference Ryan, Bergin and Wells111) and could help to identify recommendations for designers to make the tool more attractive and easier to use. Among American adults, ASA24 (tool A) was preferred to interview-led AMPM software for 70 % of individuals(Reference Thompson, Dixit-Joshi and Potischman82). The attrition rate, defined as the percentage of individuals lost between the first and second 24-h DR, was slightly lower using ASA24 (tool A) (6 %) compared to AMPM (11 %), but no analyses were conducted to further understand the effect of the web-based system on this difference(Reference Thompson, Dixit-Joshi and Potischman82). More research is needed in this field to better identify, quantify and qualitatively describe issues and find opportunities to improve available tools.

Among the issues raised in user usability studies, a common one observed across tools is the ability to easily identify the correct food. Some tools have improved the keyword search engine(Reference Lindroos, Petrelius Sipinen and Axelsson30,Reference Timon, Blain and McNulty58,Reference Vereecken, Covents and Maes76,Reference Albar, Carter and Alwan100) , but optimising the search mechanism remains a field of development to improve attractiveness and user success. Doing so may improve user adherence, response rates and the validity of dietary data. Identifying the correct food is also highly dependent on the quality of the integrated food list, which must be diversified enough and representative of the population’s food habits. With the development of online platforms (e.g. OpenFoodFact(112)), dedicated to providing product labelling information on branded foods available on the market, the possibility of integrating these exhaustive databases into 24-h DR tools could be considered. There is no absolute agreement on the advantages of using branded products rather than generic foods in the database of the recall tools(Reference Koch, Conrad and Hierath36) but for the researcher, the collection of dietary data at branded level can provide many descriptors with less data management: the type of packaging, presence of a nutrition or health claim and fortification. However, when foods are at brand level, the challenge is to link each food to full nutritional composition (macronutrient and micronutrient content), generally available for generic foods. To reduce data management for researchers, automatic or semi-automatic procedures have recently been proposed to match foods with food composition tables, using fuzzy matching (comparison between two character strings) to provide a similarity score between food names and/or machine learning classifiers(Reference Lamarine, Hager and Saris113,Reference Chin, Simmons and Bouzid114) , or by estimating the percentage of agreement based on the available nutritional content between the brand and generic food(Reference Carter, Hancock and Albar115). When the choice is to use a generic food database, the tool must be adapted to collect additional information about the food consumed concerning aspects relevant to the study aims (e.g. source of food: purchased or home-made). For instance, ASA24 (tool A) uses an extensive database of more than 13 million pathways to collect detailed information on the foods consumed(116), but collection of the additional facets increases respondent burden. The development and integration of barcode scanning to identify foods(Reference Maringer, Wisse-Voorwinden and van’t Veer26) may improve usability in the next few years and could ease data collection for the user and investigator of the study. Barcode scanning is, however, not yet integrated in published online 24-h DR tools.

One challenge for 24-h DR tools to be used at national level is to ensure representativity and ideally to be adaptable to different countries. Ensuring representativity at the national level is challenging because studies have shown that age(Reference Rowland, Adamson and Poliakov34,Reference Carter, Albar and Morris55,Reference Thompson, Dixit-Joshi and Potischman82,Reference Ward, McLellan and Udeh-Momoh117) and income or educational level(Reference Rowland, Adamson and Poliakov34,Reference Kupis, Johnson and Hallihan98,Reference Kirkpatrick, Guenther and Douglass118) affected user usability with online 24-h DR. As a consequence, protocols must be tailored to the subpopulation (e.g. data collection at school(Reference Lindroos, Petrelius Sipinen and Axelsson30,Reference Vereecken, Covents and Sichert-Hellert47,Reference Bradley, Simpson and Poliakov89,Reference Albar, Alwan and Evans91) , to provide 24-h support, to allow collection of data with an interviewer(Reference Rowland, Adamson and Poliakov34), to provide public internet access, to offer a specific version for children by simplifying the language and adding an avatar(Reference Krehbiel, DuPaul and Hoffman119)). If the protocol or tool cannot be adapted, the dietary survey could be supplemented with an external study. For instance in France, the Nutri-Bébé 2013 survey, an observational cross-sectional study of children aged 15 d to 35 months living in France, collected detailed food consumption using food diaries filled by the parents and could supplement national INCA dietary surveys(Reference Chouraqui, Tavoularis and Emery120). Adapting 24-h DR to other countries can be very time-consuming and expensive, as previously shown with adaptation of GloboDiet(Reference Dubuisson, Dufour and Carrillo8,Reference Bel and De Ridder17,Reference König, Hasenegger and Rust121,Reference van Rossum, Nelis and Wilson122) . Most of the online 24-h DR tools reviewed in this study were developed for a highly specific context, limiting their potential adaptation. Furthermore, probably because our search criteria included online tools, most of the selected online 24-h DR were developed for high-income countries, as already highlighted by Bell et al. (Reference Bell, Colaiezzi and Prata22). Therefore, the tools identified may not be suitable for countries with specific constraints, such as low- and middle- income countries, in which a limited literacy and numeracy may be source of error when using a self-administered tool(Reference Gibson, Charrondiere and Bell123), and where the tool may be unusable in some region with a low internet connectivity(Reference Bell, Colaiezzi and Prata22,Reference Coates, Colaiezzi and Bell25) . But, as mentioned in the results, some of the tools identified in this paper were already or currently being adapted for being used in some low- and middle-income countries. The development for a new population, such as a new country or age class, requires an update of the pre-integrated food list, food composition database and food portion pictures to be representative of the population’s food habits. This must be followed by new assessment of validity and user usability, as done by Koch et al. for adaptation of myfood24 (tool J) to the German population(Reference Koch, Conrad and Hierath36). The available languages must also be adapted, if needed. Even though some tools have developed a web platform, easing the integration of new data, or were specifically developed to allow simple updates using file templates, considerable work will be required to construct the integrated database.

A few limitations of this review should be noted. First, our descriptions of the tools were mainly based on information available in papers or reports. Except for six tools (tools A, I–K; O, R), which had a demo version freely available or a presentation video, the authors of this study did not test the tools, and some information may have been missed. However, for eleven tools, the owner and/or developer reviewed and validated the requested information, limiting inaccuracies. Second, we chose to describe only the method used in validation studies without providing the results, which may limit appraisal of each tool. As noted by Timon et al. (Reference Timon, van den Barg and Blain103), high heterogeneity in the design of validation studies means that studies must be assessed in isolation, without any robust comparison between tools. Additionally, validation and user usability assessment studies are specific to the population studied and must be renewed when applied to a different context. Nevertheless, our results provide an overview of the quality of the validation and user usability studies conducted with each tool. Third, in all publications, there is little evidence that using 24-h DR is cost-effective, although this argument was often put forward in papers on new technologies(Reference Timon, van den Barg and Blain38,Reference Cade124) . Fourth, we choose to not assign a ranking of the tool, because each decision-makers have their own criteria and needs. Our objective was to describe as precisely as possible the tools, regarding various aspects, in order to provide enough information for decision-makers to identify the best opportunities. Finally, the aim of this review was to focus on online 24-h DR tools, but technologies are moving rapidly and other technologies, in particular smartphone applications with visual recognition could evolve quickly and be validated for use in large-scale surveys. Likewise, some new validation studies(Reference Lafrenière, Couillard and Lamarche93,Reference Brassard, Laramée and Robitaille125Reference Osadchiy, Poliakov and Olivier128) or user’s usability studies(Reference Timon, Walton and Flynn77,Reference Osadchiy, Poliakov and Olivier128) have been published since 2019, after the literature search conducted for this paper. Those articles published since 2019, not described in detail in this paper, are related to tools which were already described in this paper.

Conclusion

Eighteen online self-administered 24-h DR tools developed and validated in several contexts were identified. Tools that were validated to estimate nutritional and food intakes, that have confirmed user and researcher usability and that are sufficiently flexible to be adapted to different contexts, are probably the best candidates for use in national dietary surveys, as they are likely to improve response rates and to collect high-quality data. Regardless of the tool, adaptation to another context will require time and funding, and this is probably the most challenging step(131).

Acknowledgements

The authors would like to thank all persons who reviewed and supplemented the information collected: Simone Lemieux from Université Laval, Canada; Polly Page and Toni Steer, University of Cambridge, UK; Ivan Poliakov, Newcastle University, UK; Maria Ana Kadosh, University of Lisboa, Portugal; the National dietary assessment research team from the Swedish Food Agency; Ms Sarah Beer, University of Leeds, UK; Antje Hebestreit from the I.Family project; Valérie Deschamp, University of Paris, France; My Good Life team, Paris, France; Kate Storey, University of Alberta, Canada; ASA24 Support team, National Cancer Institute, USA; Jeanne de Vries, Wageningen University, the Netherlands.

Financial Support

The study was supported by ANSES.

Conflict of Interest

S.H. and C.D. have no conflicts of interest. R.G, S.M. and F.V. are employees of MS-Nutrition.

Authorship

R.G. designed the study, collected, analysed and interpreted the data, and wrote the manuscript. C.D. and S.H. designed the study and contributed to interpretation of the data. S.M. contributed to data collection and interpretation of the data. F.V. contributed to the analysis and assisted in writing the paper. All the authors reviewed the manuscript.

Ethical Standards Disclosure

Not applicable

References

WHO Regional Office for Europe (2015) European Food and Nutrition Action Plan 2015–2020 (2014). Copenhagen, Denmark: WHO.Google Scholar
Galea, S & Tracy, M (2007) Participation rates in epidemiologic studies. Ann Epidemiol 17, 643653.CrossRefGoogle ScholarPubMed
Ioannidou, S, Horváth, Z & Arcella, D (2020) Harmonised collection of national food consumption data in Europe. Food Policy 96, doi: 10.1016/j.foodpol.2020.101908.CrossRefGoogle Scholar
Ax, E, Warensjö Lemming, E, Becker, W et al. (2016) Dietary patterns in Swedish adults; results from a national dietary survey. Br J Nutr 115, 95104.CrossRefGoogle ScholarPubMed
Ahluwalia, N, Dwyer, J, Terry, A et al. (2016) Update on NHANES Dietary Data: focus on collection, release, analytical considerations, and uses to inform public policy. Adv Nutr 7, 121134.CrossRefGoogle ScholarPubMed
Dubuisson, C, Lioret, S, Touvier, M et al. (2010) Trends in food and nutritional intakes of French adults from 1999 to 2007: results from the INCA surveys. Br J Nutr 103, 10351048.CrossRefGoogle ScholarPubMed
Lioret, S, Dubuisson, C, Dufour, A et al. (2010) Trends in food intake in French children from 1999 to 2007: results from the INCA (étude Individuelle Nationale des Consommations Alimentaires) dietary surveys. Br J Nutr 103, 585.CrossRefGoogle ScholarPubMed
Dubuisson, C, Dufour, A, Carrillo, S et al. (2019) The Third French Individual and National Food Consumption (INCA3) Survey 2014–2015: method, design and participation rate in the framework of a European harmonization process. Public Health Nutr 22, 584600.CrossRefGoogle ScholarPubMed
Illner, A-K, Freisling, H, Boeing, H et al. (2012) Review and evaluation of innovative technologies for measuring diet in nutritional epidemiology. Int J Epidemiol 41, 11871203.CrossRefGoogle ScholarPubMed
Slimani, N, Casagrande, C, Nicolas, G et al. (2011) The standardized computerized 24-h dietary recall method EPIC-Soft adapted for pan-European dietary monitoring. Eur J Clin Nutr 65, S5S15.CrossRefGoogle ScholarPubMed
Blanton, CA, Moshfegh, AJ, Baer, DJ et al. (2006) The USDA automated multiple-pass method accurately estimates group total energy and nutrient intake. J Nutr 136, 25942599.CrossRefGoogle ScholarPubMed
Gurinović, M, Milešević, J, Kadvan, A et al. (2018) Development, features and application of DIET ASSESS & PLAN (DAP) software in supporting public health nutrition research in Central Eastern European Countries (CEEC). Food Chem 238, 186194.CrossRefGoogle Scholar
Daniel, CR, Kapur, K, McAdams, MJ et al. (2014) Development of a field-friendly automated dietary assessment tool and nutrient database for India. Br J Nutr 111, 160171.CrossRefGoogle ScholarPubMed
Caswell, BL, Talegawkar, SA, Dyer, B et al. (2015) Assessing child nutrient intakes using a tablet-based 24-hour recall tool in Rural Zambia. Food Nutr Bull 36, 467480.CrossRefGoogle ScholarPubMed
Amoutzopoulos, B, Steer, T, Roberts, C et al. (2018) Traditional methods v. new technologies – dilemmas for dietary assessment in large-scale nutrition surveys and studies: a report following an international panel discussion at the 9th International Conference on Diet and Activity Methods (ICDAM9), Brisban. J Nutr Sci 7, e11.CrossRefGoogle Scholar
Zhang, L, Geelen, A, Boshuizen, HC et al. (2019) Importance of details in food descriptions in estimating population nutrient intake distributions. Nutr J 18, 17.CrossRefGoogle ScholarPubMed
Bel, S & De Ridder, K (2018) Belgian national food consumption survey in adolescents and adults. Belgian Natl Food Consum Surv Adolesc Adults 15, 128.Google Scholar
Dubuisson, C, Carrillo, S, Dufour, A et al. (2017) The French dietary survey on the general population (INCA3). EFSA Support Publ, 14, 133.Google Scholar
Cade, JE (2017) Measuring diet in the 21st century: use of new technologies. Proc Nutr Soc 76, 276282.CrossRefGoogle ScholarPubMed
Eldridge, AL, Piernas, C, Illner, A-K et al. (2018) Evaluation of new technology-based tools for dietary intake assessment-an ILSI Europe dietary intake and exposure task force evaluation. Nutrients 11, 55.CrossRefGoogle ScholarPubMed
Franco, RZ, Fallaize, R, Lovegrove, JA et al. (2016) Popular nutrition-related mobile apps: a feature assessment. JMIR mHealth uHealth 4, e85.CrossRefGoogle ScholarPubMed
Bell, W, Colaiezzi, BA, Prata, CS et al. (2017) Scaling up dietary data for decision-making in low-income countries: new technological frontiers. Adv Nutr 8, 916932.CrossRefGoogle ScholarPubMed
The International Dietary Data Expansion (INDDEX) (2021) Project INDDEX24 Mobile App. 2021; available at https://inddex.nutrition.tufts.edu/inddex24-mobile-app (accessed May 2021).Google Scholar
Wafa, S, Colaiezzi, B, Some, J et al. (2020) INDDEX24: an innovative global dietary assessment platform to scale up the availability, access, and use of dietary data. Curr Dev Nutr 4, 1180.CrossRefGoogle Scholar
Coates, J, Colaiezzi, B, Bell, W et al. (2015) INDDEX Priority Technical Criteria and Review of Technology-Assisted 24-hour Recall Software Programs. Boston, MA, USA: INDDEX Project.Google Scholar
Maringer, M, Wisse-Voorwinden, N, van’t Veer, P et al. (2018) Food identification by barcode scanning in the Netherlands: a quality assessment of labelled food product databases underlying popular nutrition applications. Public Health Nutr 22, 18.CrossRefGoogle ScholarPubMed
Tay, W, Kaur, B, Quek, R et al. (2020) Current developments in digital quantitative volume estimation for the optimisation of dietary assessment. Nutrients 12, 1167.CrossRefGoogle ScholarPubMed
Boushey, CJ, Spoden, M, Zhu, FM et al. (2017) New mobile methods for dietary assessment: review of image-assisted and image-based dietary assessment methods. Proc Nutr Soc 76, 283294.CrossRefGoogle Scholar
Kouvari, M, Mamalaki, E, Bathrellou, E et al. (2021) The validity of technology-based dietary assessment methods in childhood and adolescence: a systematic review. Crit Rev Food Sci Nutr 61, 10651080.CrossRefGoogle ScholarPubMed
Lindroos, AK, Petrelius Sipinen, J, Axelsson, C et al. (2019) Use of a web-based dietary assessment tool (RiksmatenFlex) in Swedish adolescents: comparison and validation study. J Med Internet Res 21, e12572.CrossRefGoogle ScholarPubMed
Touvier, M, Kesse-Guyot, E, Méjean, C et al. (2011) Comparison between an interactive web-based self-administered 24 h dietary record and an interview by a dietitian for large-scale epidemiological studies. Br J Nutr 105, 10551064.CrossRefGoogle Scholar
Evans, CEL, Melia, KE, Rippin, HL et al. (2020) A repeated cross-sectional survey assessing changes in diet and nutrient quality of English primary school children’s packed lunches between 2006 and 2016. BMJ Open 10, 29688.CrossRefGoogle ScholarPubMed
Maher, J, Robichaud, C & Swanepoel, E (2018) Online nutrition information seeking among Australian primigravid women. Midwifery 58, 3743.CrossRefGoogle ScholarPubMed
Rowland, M, Adamson, A, Poliakov, I et al. (2018) Field testing of the use of intake24—an online 24-hour dietary recall system. Nutrients 10, 1690.CrossRefGoogle ScholarPubMed
Kirkpatrick, S, Gilsing, A, Hobin, E et al. (2017) Lessons from studies to evaluate an online 24-hour recall for use with children and adults in Canada. Nutrients 9, 100.CrossRefGoogle ScholarPubMed
Koch, SAJ, Conrad, J, Hierath, L et al. (2020) Adaptation and evaluation of Myfood24-Germany: a web-based self-administered 24-h dietary recall for the German adult population. Nutrients 12, 160.CrossRefGoogle ScholarPubMed
NCI (National Cancer Institute) (2020) Comparison among ASA24® Versions. Epidemiol Genomics Res Progr; available at https://epi.grants.cancer.gov/asa24/comparison.html (accessed August 2020).Google Scholar
Timon, CM, van den Barg, R, Blain, RJ et al. (2016) A review of the design and validation of web- and computer-based 24-h dietary recall tools. Nutr Res Rev 29, 268280.CrossRefGoogle ScholarPubMed
NIH (National Institutes of Health) & NCI (National Cancer Institute) Dietary Assessment Primer (2020) Key Concepts about Valid; available at https://dietassessmentprimer.cancer.gov/concepts/validation/ (accessed November 2020).Google Scholar
MRC (2020) Epidemiology Unit University of Cambridge DAPA Measurement Toolkit, Validity; available at https://www.measurement-toolkit.org/concepts/validity (accessed November 2020).Google Scholar
International Organization for Standardization (2018) ISO 9241–11:2018(en) Ergonomics of human-system interaction — Part 11: usability: definitions and concepts. ISO; available at https://www.iso.org/obp/ui/#iso:std:iso:9241:-11:ed-2:v1:en (accessed November 2020).Google Scholar
Birns, RH, Joffre, JA, Leclerc, JF et al. (2002) Getting the whole picture – the importance of collecting usability data using both concurrent think aloud and retrospective probing procedures. In Eleventh Usability Professionals Association Conference, 8–12 July 2002, pp. 812. Orlando: Usability Professionals’ Association.Google Scholar
Timmins, KA, Vowden, K, Husein, F et al. (2014) Making the Best Use of New Technologies in the National Diet and Nutrition Survey: A Review. Leeds, UK: University of Leeds.Google Scholar
Conway, JM, Ingwersen, LA, Vinyard, BT et al. (2003) Effectiveness of the US Department of Agriculture 5-step multiple-pass method in assessing food intake in obese and nonobese women. Am J Clin Nutr 77, 11711178.CrossRefGoogle ScholarPubMed
Zimmerman, TP, Hull, SG, McNutt, S et al. (2009) Challenges in converting an interviewer-administered food probe database to self-administration in the National Cancer Institute Automated Self-administered 24-Hour Recall (ASA24). J Food Compost Anal 22, S48S51.CrossRefGoogle Scholar
Vereecken, C, Covents, M, Maes, L et al. (2014) Formative evaluation of the dietary assessment component of Children’s and Adolescents’ Nutrition Assessment and Advice on the Web (CANAA-W). J Hum Nutr Diet 27, 5465.CrossRefGoogle Scholar
Vereecken, CA, Covents, M, Sichert-Hellert, W et al. (2008) Development and evaluation of a self-administered computerized 24-h dietary recall method for adolescents in Europe. Int J Obes 32, S26S34.CrossRefGoogle ScholarPubMed
Shin, S, Park, E, Sun, DH et al. (2014) Development and evaluation of a web-based Computer-Assisted Personal Interview System (CAPIS) for open-ended dietary assessments among Koreans. Clin Nutr Res 3, 115.CrossRefGoogle ScholarPubMed
Meijboom, S, van Houts-Streppel, MT, Perenboom, C et al. (2017) Evaluation of dietary intake assessed by the Dutch self-administered web-based dietary 24-h recall tool (Compl-eatTM) against interviewer-administered telephone-based 24-h recalls. J Nutr Sci 6, e49.CrossRefGoogle Scholar
Probst, YC, Lockyer, L, Tapsell, LC et al. (2007) Towards nutrition education for adults: a systematic approach to the interface design of an online dietary assessment tool. Int J Learn Technol 3, 32.CrossRefGoogle Scholar
Arab, L, Wesseling-Perry, K, Jardack, P et al. (2010) Eight self-administered 24-hour dietary recalls using the internet are feasible in African Americans and Whites: the energetics study. J Am Diet Assoc 110, 857864.CrossRefGoogle ScholarPubMed
Hanning, RM, Royall, D, Toews, JE et al. (2009) Web-based food behaviour questionnaire: validation with grades six to eight students. Can J Diet Pract Res 70, 172178.CrossRefGoogle ScholarPubMed
Comrie, F, Masson, LF & McNeill, G (2009) A novel online Food Recall Checklist for use in an undergraduate student population: a comparison with diet diaries. Nutr J 8, 13.CrossRefGoogle Scholar
Simpson, E, Bradley, J, Poliakov, I et al. (2017) Iterative development of an online dietary recall tool: INTAKE24. Nutrients 9, 118.CrossRefGoogle ScholarPubMed
Carter, M, Albar, S, Morris, M et al. (2015) Development of a UK Online 24-h Dietary assessment tool: myfood24. Nutrients 7, 40164032.CrossRefGoogle ScholarPubMed
Carvalho, MA, Santos, O, Rito, AI et al. (2014) Development of a new computer program to assess dietary intake in Portuguese school-age children: a qualitative approach. Acta Pediatr Port 45, 116123.Google Scholar
Storey, KE, Forbes, LE, Fraser, SN et al. (2009) Diet quality, nutrition and physical activity among adolescents: The Web-SPAN (Web-Survey of Physical Activity and Nutrition) project. Public Health Nutr 12, 20092017.CrossRefGoogle Scholar
Timon, CM, Blain, RJ, McNulty, B et al. (2017) The development, validation, and user evaluation of foodbook24: a web-based dietary assessment tool developed for the Irish adult population. J Med Internet Res 19, e158.CrossRefGoogle ScholarPubMed
Jacques, S, Lemieux, S, Lamarche, B et al. (2016) Development of a web-based 24-h dietary recall for a French-Canadian population. Nutrients 8, 724.CrossRefGoogle ScholarPubMed
Moraeus, L, Lemming, EW, Hursti, U-KK et al. (2018) Riksmaten adolescents 2016–17: a national dietary survey in Sweden – design, methods, and participation. Food Nutr Res 62.CrossRefGoogle ScholarPubMed
Hebestreit, A, Wolters, M, Jilani, H et al. (2019) Web-based 24-h dietary recall: the SACANA program. In Instruments for Health Surveys in Children and Adolescents, pp. 77102 [Bammann, K, Lissner, L, Pigeot, I et al., editors]. Switzerland: Springer Nature.Google ScholarPubMed
Subar, AF, Thompson, FE, Potischman, N et al. (2007) Formative research of a quick list for an automated self-administered 24-hour dietary recall. J Am Diet Assoc 107, 10021007.CrossRefGoogle ScholarPubMed
Subar, AF, Crafts, J, Zimmerman, TP et al. (2010) Assessment of the accuracy of portion size reports using computer-based food photographs aids in the development of an automated self-administered 24-hour recall. J Am Diet Assoc 110, 5564.CrossRefGoogle ScholarPubMed
Probst, Y, Jones, H, Lin, S et al. (2009) Updating the DietAdvice website with new Australian food composition data. J Food Compos Anal 22, S37S41.CrossRefGoogle Scholar
Smith, K, Sampson, G, Probst, Y et al. (2010) Development of Australian portion size photographs to enhance self-administered online dietary assessments for adults. Nutr Diet 67, 275280.Google Scholar
Foster, E, Hawkins, A, Delve, J et al. (2014) Reducing the cost of dietary assessment: self-completed recall and analysis of nutrition for use with children (SCRAN24). J Hum Nutr Diet 27, 2635.CrossRefGoogle Scholar
Carter, M, Hancock, N, Albar, S et al. (2016) Development of a new branded UK food composition database for an online dietary assessment tool. Nutrients 8, 480.CrossRefGoogle ScholarPubMed
Evans, K, Hennessy, Á, Walton, J et al. (2017) Development and evaluation of a concise food list for use in a web-based 24-h dietary recall tool. J Nutr Sci 6, e46.CrossRefGoogle Scholar
Timon, CM, Evans, K, Walton, J et al. (2015) The development of an innovative web based dietary assessment tool for an Irish adult population: the Diet Ireland tool. Proc Nutr Soc 74, E274.CrossRefGoogle Scholar
Storey, KE & Mccargar, LJ (2012) Reliability and validity of Web-SPAN, a web-based method for assessing weight status, diet and physical activity in youth. J Hum Nutr Diet 25, 5968.CrossRefGoogle ScholarPubMed
NCI (National Cancer Institute) (2020) Current and past versions of the ASA24 respondent website; available at https://epi.grants.cancer.gov/asa24/respondent/ (accessed May 2021).Google Scholar
Foster, E, Lee, C, Imamura, F et al. (2019) Validity and reliability of an online self-report 24-h dietary recall method (Intake24): a doubly labelled water study and repeated-measures analysis. J Nutr Sci 8, e29.CrossRefGoogle ScholarPubMed
Equipe de Recherche en Epidémiologie Nutritionnelle (EREN) (Nutritional Epidemiology Research Team (EREN)) (2013) étude NutriNet-Santé Belgique (NutriNet-Santé Belgium Study); available at https://www.etude-nutrinet-sante.be/ (accessed May 2021).Google Scholar
Scarpa, G, Berrang-Ford, L, Bawajeeh, AO et al. (2021) Developing an online food composition database for an Indigenous population in south-western Uganda. Public Health Nutr 24, 24552464.CrossRefGoogle ScholarPubMed
Institute of National C (2020) ASA24® Respondent Nutrition Reports; available at https://epi.grants.cancer.gov/asa24/respondent/nutrition-report.html (accessed May 2020).Google Scholar
Vereecken, C, Covents, M, Maes, L et al. (2014) Formative evaluation of the feedback component of children’s and adolescents’ nutrition assessment and advice on the web (CANAA-W) among parents of schoolchildren. Public Health Nutr 16, 1526.CrossRefGoogle Scholar
Timon, CM, Walton, J, Flynn, A et al. (2021) Respondent characteristics and dietary intake data collected using web-based and traditional nutrition surveillance approaches: comparison and usability study. JMIR Public Heal Surveill 7, e22759.CrossRefGoogle ScholarPubMed
Rowland, M, Rose, J, McLean, J et al. (2020) Pilot of Intake24 in the Scottish Health Survey. Scotland: ScotCen Social Research.Google Scholar
Frankenfeld, CL, Poudrier, JK, Waters, NM et al. (2012) Dietary intake measured from a self-administered, online 24-hour recall system compared with 4-day diet records in an adult US population. J Acad Nutr Diet 112, 16421647.CrossRefGoogle Scholar
Kirkpatrick, SI, Subar, AF, Douglass, D et al. (2014) Performance of the automated self-administered 24-hour recall relative to a measure of true intakes and to an interviewer-administered 24-h recall. Am J Clin Nutr 100, 233240.CrossRefGoogle Scholar
Kirkpatrick, SI, Potischman, N, Dodd, KW et al. (2016) The use of digital images in 24-hour recalls may lead to less misestimation of portion size compared with traditional interviewer-administered recalls. J Nutr 146, 25672573.CrossRefGoogle ScholarPubMed
Thompson, FE, Dixit-Joshi, S, Potischman, N et al. (2015) Comparison of interviewer-administered and automated self-administered 24-hour dietary recalls in 3 diverse integrated health systems. Am J Epidemiol 181, 970978.CrossRefGoogle ScholarPubMed
Yuan, C, Spiegelman, D, Rimm, EB et al. (2018) Relative validity of nutrient intakes assessed by questionnaire, 24-hour recalls, and diet records as compared with urinary recovery and plasma concentration biomarkers: findings for women. Am J Epidemiol 187, 10511063.CrossRefGoogle ScholarPubMed
Park, Y, Dodd, KW, Kipnis, V et al. (2018) Comparison of self-reported dietary intakes from the Automated Self-Administered 24-h recall, 4-d food records, and food-frequency questionnaires against recovery biomarkers. Am J Clin Nutr 107, 8093.CrossRefGoogle ScholarPubMed
Wardenaar, FC, Steennis, J, Ceelen, IJM et al. (2015) Validation of web-based, multiple 24-h recalls combined with nutritional supplement intake questionnaires against nitrogen excretions to determine protein intake in Dutch elite athletes. Br J Nutr 114, 20832092.CrossRefGoogle ScholarPubMed
Probst, Y, Sarmas, V & Tapsell, LC (2009) Comparison of computerised dietary assessments with diet history and food record data at baseline in an Australian food-based clinical trial. In 33rd National Nutrient Databank Conference, April 27 2009. New Orleans: CBORD Group, 10-10.Google Scholar
Probst, Y, Sarmas, V, O’Shea, J et al. (2009) Relative validity of three different dietary assessment tools as a part of a food-based clinical trial for weight loss. In Dietitians Association of Australia, National Conference, 28–30 May 2009, vol. 66, Suppl. 1, pp. A45A45. Darwin: Nutrition and Dietetics.Google Scholar
Arab, L, Tseng, CH, Ang, A et al. (2011) Validity of a multipass, web-based, 24-hour self-administered recall for assessment of total energy intake in blacks and whites. Am J Epidemiol 174, 12561265.CrossRefGoogle ScholarPubMed
Bradley, J, Simpson, E, Poliakov, I et al. (2016) Comparison of INTAKE24 (an Online 24-h dietary recall tool) with interviewer-led 24-h recall in 11–24 year-old. Nutrients 8, 358.CrossRefGoogle ScholarPubMed
Wark, PA, Hardie, LJ, Frost, GS et al. (2018) Validity of an online 24-h recall tool (myfood24) for dietary assessment in population studies: comparison with biomarkers and standard interviews. BMC Med 16, 136.CrossRefGoogle ScholarPubMed
Albar, SA, Alwan, NA, Evans, CEL et al. (2016) Agreement between an online dietary assessment tool (myfood24) and an interviewer-administered 24-h dietary recall in British adolescents aged 11–18 years. Br J Nutr 115, 16781686.CrossRefGoogle Scholar
Carvalho, MA, Baranowski, T, Foster, E et al. (2015) Validation of the Portuguese self-administered computerised 24-hour dietary recall among second-, third- and fourth-grade children. J Hum Nutr Diet 28, 666674.CrossRefGoogle ScholarPubMed
Lafrenière, J, Couillard, C, Lamarche, B et al. (2019) Associations between self-reported vegetable and fruit intake assessed with a new web-based 24-h dietary recall and serum carotenoids in free-living adults: a relative validation study. J Nutr Sci 8, e26.CrossRefGoogle ScholarPubMed
Lafrenière, J, Laramée, C, Robitaille, J et al. (2019) Relative validity of a web-based, self-administered, 24-h dietary recall to evaluate adherence to Canadian dietary guidelines. Nutrition 57, 252256.CrossRefGoogle ScholarPubMed
Lafrenière, J, Laramée, C, Robitaille, J et al. (2018) Assessing the relative validity of a new, web-based, self-administered 24 h dietary recall in a French-Canadian population. Public Health Nutr 21, 27442752.CrossRefGoogle Scholar
Lafrenière, J, Lamarche, B, Laramée, C et al. (2017) Validation of a newly automated web-based 24-hour dietary recall using fully controlled feeding studies. BMC Nutr 3, 34.CrossRefGoogle ScholarPubMed
Intemann, T, Pigeot, I, De Henauw, S et al. (2019) Urinary sucrose and fructose to validate self-reported sugar intake in children and adolescents: results from the I. Family study. Eur J Nutr 58, 12471258.CrossRefGoogle ScholarPubMed
Kupis, J, Johnson, S, Hallihan, G et al. (2019) Assessing the usability of the automated self-administered dietary assessment tool (ASA24) among low-income adults. Nutrients 11, 132.CrossRefGoogle ScholarPubMed
Rowland, M, Poliakov, I, Christie, S et al. (2016) Field Testing of the Use of INTAKE24 in a Sample of Young People and Adults Living in Scotland. Scotland: Foods Standards Scotland.Google Scholar
Albar, SA, Carter, MC, Alwan, NA et al. (2015) Formative evaluation of the usability and acceptability of myfood24 among adolescents: a UK online dietary assessments tool. BMC Nutr 1, 29.CrossRefGoogle Scholar
Gilsing, A, Mayhew, AJ, Payette, H et al. (2018) Validity and reliability of a short diet questionnaire to estimate dietary intake in older adults in a subsample of the Canadian longitudinal study on aging. Nutrients 10, 1522.CrossRefGoogle Scholar
Arab, L, Tseng, C-H, Ang, A et al. (2011) Validity of a multipass, web-based, 24-hour self-administered recall for assessment of total energy intake in Blacks and Whites. Am J Epidemiol 174, 12561265.CrossRefGoogle ScholarPubMed
Timon, C, van den Barg, R, Blain, R et al. (2016) A review of the design and validation of web- and computer-based 24-h dietary recall tools. Nutr Res Rev 29, 268280.CrossRefGoogle ScholarPubMed
Lombard, MJ, Steyn, NP, Charlton, KE et al. (2015) Application and interpretation of multiple statistical tests to evaluate validity of dietary intake assessment methods. Nutr J 14, 40.CrossRefGoogle ScholarPubMed
Brooke, J (1996) SUS: A “quick and dirty” usability scale. In Usability Evaluation in Industry, pp. 189–194 [Jordan, PW, Thomas, B, Weerdmeester, BA, McClelland, IL et al., editors]. London, UK: Taylor & F.Google Scholar
Bangor, J, Kortum, P & Miller, JT (2009) Determining what individual SUS scores mean: adding an adjective rating scale. J Usuability Stud 4, 114123.Google Scholar
Kupis, J, Johnson, S, Hallihan, G et al. (2019) Assessing the usability of the automated self-administered dietary assessment tool (Asa24) among low-income adults. Nutrients 11, 132.CrossRefGoogle ScholarPubMed
Eysenbach, G (2005) The law of attrition. J Med Internet Res 7, e11.CrossRefGoogle ScholarPubMed
Sieverink, F, Kelders, SM & van Gemert-Pijnen, JE (2017) Clarifying the concept of adherence to eHealth technology: systematic review on when usage becomes adherence. J Med Internet Res 19, e402.CrossRefGoogle ScholarPubMed
Ludden, GD, van Rompay, TJ, Kelders, SM et al. (2015) How to increase reach and adherence of web-based interventions: a design research viewpoint. J Med Internet Res 17, e172.CrossRefGoogle ScholarPubMed
Ryan, C, Bergin, M & Wells, JS (2018) Theoretical perspectives of adherence to web-based interventions: a scoping review. Int J Behav Med 25, 1729.CrossRefGoogle ScholarPubMed
Open Food Facts (2020) OpenFoodFact, The Free Food Product Database; available at https://world.openfoodfacts.org/ (accessed December 2020).Google Scholar
Lamarine, M, Hager, J, Saris, WHM et al. (2018) Fast and accurate approaches for large-scale, automated mapping of food diaries on food composition tables. Front Nutr 5, 38.CrossRefGoogle ScholarPubMed
Chin, EL, Simmons, G, Bouzid, YY et al. (2019) Nutrient estimation from 24-hour food recalls using machine learning and database mapping: a case study with lactose. Nutrients 11, 3045.CrossRefGoogle ScholarPubMed
Carter, M, Hancock, N, Albar, S et al. (2016) Development of a new branded UK food composition database for an online dietary assessment tool. Nutrients 8, 480.CrossRefGoogle ScholarPubMed
National Cancer Institute (2020) ASA24® Respondent Website Features; available at https://epi.grants.cancer.gov/asa24/respondent/features.html (accessed December 2020).Google Scholar
Ward, HA, McLellan, H, Udeh-Momoh, C et al. (2019) Use of online dietary recalls among older UK adults: a feasibility study of an online dietary assessment tool. Nutrients 11, 1451.CrossRefGoogle ScholarPubMed
Kirkpatrick, SI, Guenther, PM, Douglass, D et al. (2019) The provision of assistance does not substantially impact the accuracy of 24-hour dietary recalls completed using the automated self-administered 24-h dietary assessment tool among women with low incomes. J Nutr 149, 114122.CrossRefGoogle Scholar
Krehbiel, CF, DuPaul, GJ & Hoffman, JA (2017) A validation study of the automated self-administered 24-hour dietary recall for children, 2014 version, at school lunch. J Acad Nutr Diet 117, 715724.CrossRefGoogle ScholarPubMed
Chouraqui, J-P, Tavoularis, G, Emery, Y et al. (2018) The French national survey on food consumption of children under 3 years of age – Nutri-Bébé 2013: design, methodology, population sampling and feeding practices. Public Health Nutr 21, 502514.CrossRefGoogle ScholarPubMed
König, J, Hasenegger, V & Rust, P (2019) EU menu Austria: food consumption data for Austrian adolescents, adults and pregnant women. EFSA Support Publ 16, 121.Google Scholar
van Rossum, C, Nelis, K, Wilson, C et al. (2018) National dietary survey in 2012–2016 on the general population aged 1–79 years in the Netherlands. EFSA Support Publ 15, 125.Google Scholar
Gibson, RS, Charrondiere, UR & Bell, W (2017) Measurement errors in dietary assessment using self-reported 24-hour recalls in low-income countries and strategies for their prevention. Adv Nutr An Int Rev J 8, 980991.CrossRefGoogle ScholarPubMed
Cade, JE (2017) Measuring diet in the 21st century: use of new technologies. Proc Nutr Soc 76, 276282.CrossRefGoogle ScholarPubMed
Brassard, D, Laramée, C, Robitaille, J et al. (2020) Differences in population-based dietary intake estimates obtained from an interviewer-administered and a self-administered web-based 24-h recall. Front Nutr 7, 137.CrossRefGoogle Scholar
Koch, SAJ, Conrad, J, Cade, JE et al. (2021) Validation of the web-based self-administered 24-h dietary recall myfood24-Germany: comparison with a weighed dietary record and biomarkers. Eur J Nutr. Published online 11 May 2021. doi: 10·1007/s00394-021-02547-7.CrossRefGoogle ScholarPubMed
Subar, AF, Potischman, N, Dodd, KW et al. (2020) Performance and feasibility of recalls completed using the automated self-administered 24-hour dietary assessment tool in relation to other self-report tools and biomarkers in the interactive diet and activity tracking in AARP (IDATA) study. J Acad Nutr Diet 120, 18051820.CrossRefGoogle ScholarPubMed
Osadchiy, T, Poliakov, I, Olivier, P et al. (2020) Progressive 24-hour recall: usability study of short retention intervals in web-based dietary assessment surveys. J Med Internet Res 22, e13266.CrossRefGoogle ScholarPubMed
Figure 0

Fig. 1 Criteria used to describe the tools. 24-h DR, 24-h dietary recall*‘Eating occasion’ step is the collection of time, name and place of consumption of each food reported.†‘Quick list’ step is the identification of all foods that the respondent consumed during the previous day.‡‘Forgotten food list’ step provides cues about the consumption of often forgotten foods.§ ‘Detail cycle’ step is the collection of detailed information on each food such as the fat content, brand name, preservation method and the consumed amount.|| ‘Review and validation’ step is the final review of the 24-h DR.

Figure 1

Fig. 2 Flow chart for the selection of the online 24-h DR tools. 24-h DR, 24-h dietary recall* The two reviews were the followings (38 and 43).† The two reports were the followings (44 and 25).

Figure 2

Table 1 General description of the online 24-hD R tools*

Figure 3

Table 2 Step number and method of the multiple-pass methodology and main functionalities to collect dietary intakes

Figure 4

Table 3 Methodological characteristics of the validation studies for the online 24-h DR tools

Figure 5

Table 4 Methodological characteristics of the user usability studies for the online 24-h DR tools