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Effectiveness of interactive technology-assisted interventions on promoting healthy food choices: a scoping review and meta-analysis

Published online by Cambridge University Press:  25 January 2023

Han Shi Jocelyn Chew*
Affiliation:
Alice Lee Centre for Nursing Studies, Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore
Nagadarshini Nicole Rajasegaran
Affiliation:
Alice Lee Centre for Nursing Studies, Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore
Samuel Chng
Affiliation:
Lee Kuan Yew Centre for Innovative Cities, Singapore University of Technology and Design, Singapore, Singapore
*
*Corresponding author: Han Shi Jocelyn Chew, email jocelyn.chew.hs@nus.edu.sg
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Abstract

Making healthy food choices is crucial for health promotion and disease prevention. While there are an increasing number of technology-assisted interventions to promote healthy food choices, the underlying mechanism by which consumption behaviours and weight status change remains unclear. Our scoping review and meta-analysis of seventeen studies represents 3988 individuals with mean ages ranging from 19·2 to 54·2 years and mean BMI ranging from 24·5 kg/m2 to 35·6 kg/m2. Six main outcomes were identified namely weight, total calories, vegetables, fruits, healthy food, and fats and other food groups including sugar-sweetened beverages, saturated fats, snacks, wholegrains, Na, proteins, fibre, cholesterol, dairy products, carbohydrates, and takeout meals. Technology-assisted interventions were effective for weight loss (g = –0·29; 95 % CI –0·54, −0·04; I2 = 65·7 %, t = –2·83, P = 0·03) but not for promoting healthy food choices. This highlights the complexity in creating effective interactive technology-assisted interventions and understanding its mechanisms of influence and change. We also identified that there needs to be greater application of theory to inform the development of technology-assisted interventions in this area as new and improved interventions are being developed.

Type
Scoping Review
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of The Nutrition Society

By 2030, more than 38·5 % of the global adult population will be living with overweight or obesity(Reference Kelly, Yang and Chen1), increasing one’s risk of chronic diseases including cardiometabolic diseases(Reference Da Costa, Arora and García-Bailo2), certain cancer(Reference Arnold, Leitzmann and Freisling3), musculoskeletal disorders(Reference Collins, Herzog and MacDonald4), cognitive impairment(Reference Sellbom and Gunstad5), and depression(Reference Jantaratnotai, Mosikanon and Lee6). Local and international health organisations have implemented public campaigns, programmes and initiatives to improve population diets but remains insufficient. For example, one study found only a 16 % more people who were exposed to a public health advertisement focusing on healthy food choices and physical activity searched up on more information on weight loss as compared with the control group(Reference Yom-Tov, Shembekar and Barclay7). The authors further reported that an advertisement targeted at lifestyle preferences and sociodemographic profiles explained 49 % of the variance in responses, highlighting the intricate interactions between individual, interpersonal and environmental (micro and macro) factors(Reference Swinburn and Egger8,Reference Blüher9) . Individual factors include biological (e.g. appetite and hunger), psychological (e.g. emotion-trigger eating) and cognitive (e.g. preference) factors and interpersonal factors include family, cultural and peer influence(Reference Rolls, Keller and Hayes10). Micro-environmental factors includes schools, workplace, residential neighbourhood and community health care facilities. Macro-environmental factors include the built environment (e.g. transport and infrastructure) and food environment (e.g. food availability, accessibility and advertising)(Reference Lake and Townshend11). In this 21st century, technology has been integrated into our everyday lives and must be added to the obesogenic system of factors. For example, technology has been used as an obesogenic vector marketing practices leverages the power of artificial intelligence to influence consumer dietary preferences towards unhealthy food choices(Reference Kumar, Rajan and Venkatesan12). Food can also be conveniently, cheaply and readily obtained via smartphone food delivery apps, further promoting the consumerism culture that encourages easy consumption, overconsumption and food wastage(Reference Gupta13). On the other hand, technology has been used to improve eating habits through smartphone apps as an interactive interventions (requiring a two-way engagement between the user and technology system(Reference Chew14), and hereinafter stated as technology-assisted interventions) to enhance health promotion efforts by prolonging engagement and hence behaviour change activation(Reference Chew, Ang and Lau15,Reference Michie, Ashford and Sniehotta16) . Such apps commonly include functions of food logging, goal setting and to deliver health messages, which has been shown in various systematic reviews to result in successful weight loss(Reference Chew, Lim, Kim, Kayambu, So, Shabbir and Gao17Reference Dounavi and Tsoumani20). However, the underlying mechanism by which technology-assisted interventions influence weight loss, perhaps through adopting a healthy diet, remains unclear(Reference Caudwell, Hopkins and King21).

A healthy diet generally constitutes the consumption of a balanced diet that is rich in fruits, vegetables, wholegrains, fibre, low-fat dairy products, fish, legumes, nuts, PUFA, low saturated and trans-fats, sugar, refined carbohydrates and sodium(Reference de Ridder, Kroese and Evers22,Reference Rong, Liao and Zhou23) . However, research studies on the effectiveness of technology-assisted interventions seldom evaluate all the food groups that contribute to a healthy diet. To our best knowledge, there is no review on the food choices that are commonly examined as outcomes of technology-assisted interventions. Knowing the effects of such interventions on various food choices would inform the underlying mechanism of weight loss arising from such intervention and inform future health promotion interventions(Reference Tobi, Harris and Rana24,Reference Cecchini and Warin25) .

Therefore, we aimed to scope the food choice-related outcomes assessed in studies to conduct a post hoc evaluation on the effects of technology-assisted interventions on each of the outcomes using meta-analysis, whenever statistically possible.

Methods

We conducted a scoping review according to the Arksey and O’Malley framework(Reference Arksey and O’Malley26) and reported our findings according to the Preferred Reporting Items for Systematic reviews and Meta-Analyses extension for Scoping Reviews (PRISMA-ScR) Checklist (Appendix 1)(Reference Tricco, Lillie and Zarin27).

Search strategy

We searched through seven electronic databases (i.e. Embase, CINAHL, PubMed, PsycINFO, The Cochrane Library, Scopus and Web of Science) for articles published from inception through 22 March 2022. An initial search of PubMed was first conducted using keywords and medical subject headings (MeSH) terms derived from the concepts of ‘food choice’ and ‘technology’ to identify more keywords and index terms. The search was then refined according to each database using Boolean operators AND and OR and keywords shown in Appendix 2.

Study selection

Titles and abstracts screening were first performed by HSJC according to a prespecified set of eligibility criteria defined using the population, intervention, comparison, outcome and study design (PICOS) framework.

Population: Studies on adults aged above 18 years, normal or overweight were included. Studies on subjects with existing health conditions and pregnancy were excluded as the dietary requirements may be different.

Intervention: Studies on technology-assisted interventions were included. Studies that focused on food labelling, message reminders or other non-interactive provision of nutritional information were excluded. Studies that used a virtual supermarket as a test setting or an online home grocery delivery service with no other technology-assisted components were excluded.

Outcomes: Studies that measured food choice in terms of purchase or consumption were included. Studies that measured alcohol consumption only were excluded as alcohol is not a common part of one’s daily diet.

Study design: Randomised controlled trials

Studies that were not in the English language or was without version in the English language were excluded. Once the duplicated articles were removed, full texts of the articles were screened independently by HSJC and SC to further shortlist the articles to be included in this review. Interrater agreement was calculated for methodological quality assessment using the Cohen’s Kappa statistic.

Of a total of 1324 articles retrieved, 526 duplicated articles were removed, resulting in 798 articles screened for eligibility using titles and abstracts. After removing 749 articles and adding three articles found through reference hand searching, forty-nine full-text articles were retrieved and screened for eligibility. Thirty-two articles were removed with reasons as shown in Fig. 1, resulting in a final seventeen articles included in this review. Sixteen articles reporting thirty-five unique outcome results were included in the meta-analysis. Interrater agreement for the risk of bias (RoB) was k = 0·822, P =< 0·001, indicating a strong level of interrater agreement.

Fig. 1. PRISMA flow chart.

Data extraction

A form was created using an excel spreadsheet to extract information according to the following headings: authors, year of publication, outcomes measured, measurement unit of each outcomes measured, country, sample size, sample characteristics, programme name, intervention type, intervention components, duration, intervention group condition, control group condition, delivery mode (i.e. individual or group), mean age, percentage of male subjects, socio-economic status, educational level, baseline weight, weight measurement instrument, baseline BMI, follow-up time point(s), attrition rate by the time of analysis, presence of comparison between participants retained and lost to follow-ups, method of missing data management (e.g. intention-to-treat (ITT)/per-protocol (PP) analysis), presence of protocol registration, and presence of funding. Data extraction was first piloted on three articles, and additional headings were added. Measures of central tendency (mean or mean difference) and variance (standard deviation or standard error) on each outcome were extracted in its raw form.

Methodological quality and certainty of evidence assessment

The methodological quality of the included articles was assessed using the Cochrane’s RoB tool. Articles were rated as low, unclear or high RoB according to six domains namely random sequence generation, allocation concealment, blinding of participants and personnel, blinding of outcome assessment, outcome data completeness, and selective reporting(Reference Higgins, Altman and Gøtzsche28).

Data analysis

Effect size estimates were converted to standard mean differences expressed as Hedges’ g and pooled using random effects models. Hedges’ g was used to correct for the small number of studies included in the meta-analysis (four to seven studies) where a magnitude of 0·2 = small, 0·5 = moderate, 0·8 = large and 1·2 = very large(Reference Hedges and Olkin29). The Hartung–Knapp–Sidik–Jonkman (HKSJ) was used for to adjust the random effects models instead of the more widely used DerSimonian–Laird (DL) method as it has been shown to result in less false-positive estimates, especially in small samples and high heterogeneity(Reference IntHout, Ioannidis and Borm30). Between-study heterogeneity was assessed using Cochrane’s Q statistics and quantified by I2 statistics where a statistic of 50 % indicates heterogeneity(Reference Higgins, Thomas and Chandler31).

All analyses were performed using R version 4.1.3.

Results

The seventeen included studies in this review represents 3988 individuals with mean ages ranging from 19·2(Reference O’Brien and Palfai32) to 54·2(Reference Eisenhauer, Brito and Kupzyk33) years and mean BMI ranging from 24·5 kg/m2(Reference Kaur, Kaur and Chakrapani34) to 35·6 kg/m2(Reference Eisenhauer, Brito and Kupzyk33) (one study did not report the subjects’ BMI(Reference Plaete, De Bourdeaudhuij and Verloigne35)) (Table 1). Most of the included studies were conducted in the USA (n 7, 41·2 %) and Australia (n 6, 35·3 %), and there was a relatively proportionate number of studies performed with subject with (n 8, 47·1 %) and without the criteria of having overweight (n 9, 52·9 %). Four articles were assessed to have a high RoB (23·5 %)(Reference Eisenhauer, Brito and Kupzyk33,Reference Blackburne, Rodriguez and Johnstone36Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38) , four articles were assessed to have a low RoB (23·5 %)(Reference Allman-Farinelli, Partridge and McGeechan39Reference Spring, Pellegrini and McFadden42) and nine had an unclear RoB (Appendix 3).

Table 1. Summary of sample characteristics of the seventeen studies

NS, not specified.

The interventional durations ranged from 2 weeks to 1 year and the attrition rates ranging from 3·9 %(Reference O’Brien and Palfai32) to 76 %(Reference Plaete, De Bourdeaudhuij and Verloigne35). Various modes of delivery were used, including smartphone apps (n 12, 70·6 %), websites (n 7, 41·2 %) and hardcopy handouts (n 3, 7·3 %) (Table 2). The technology-assisted components of the interventions were designed to improve food choices through self-monitoring(Reference O’Brien and Palfai32,Reference Eisenhauer, Brito and Kupzyk33,Reference Plaete, De Bourdeaudhuij and Verloigne35,Reference Duncan, Fenton and Brown37Reference Allman-Farinelli, Partridge and McGeechan39,Reference Partridge, McGeechan and Hebden41Reference Hutchesson, Callister and Morgan44) , goal setting(Reference O’Brien and Palfai32,Reference Eisenhauer, Brito and Kupzyk33,Reference Duncan, Fenton and Brown37,Reference Allman-Farinelli, Partridge and McGeechan39,Reference Partridge, McGeechan and Hebden41,Reference Mummah, Robinson and Mathur43) , feedback(Reference O’Brien and Palfai32,Reference Eisenhauer, Brito and Kupzyk33,Reference Plaete, De Bourdeaudhuij and Verloigne35,Reference Duncan, Fenton and Brown37,Reference Spring, Pellegrini and McFadden42,Reference Mummah, Robinson and Mathur43) , education(Reference Eisenhauer, Brito and Kupzyk33,Reference Kaur, Kaur and Chakrapani34,Reference Duncan, Fenton and Brown37,Reference Irvine, Ary and Grove45) , inhibitory control(Reference Blackburne, Rodriguez and Johnstone36,Reference Lawrence, O’Sullivan and Parslow40,Reference Hutchesson, Callister and Morgan44,Reference Kakoschke, Hawker and Castine46) , nudging(Reference Palacios, Torres and López47,Reference Coffino, Han and Evans48) and social support(Reference Hutchesson, Callister and Morgan44). Two studies seemed to have been conducted on the same population(Reference Allman-Farinelli, Partridge and McGeechan39,Reference Partridge, McGeechan and Hebden41) . Seven studies (41·2 %)(Reference O’Brien and Palfai32,Reference Kaur, Kaur and Chakrapani34,Reference Duncan, Fenton and Brown37,Reference Allman-Farinelli, Partridge and McGeechan39,Reference Partridge, McGeechan and Hebden41,Reference Hutchesson, Callister and Morgan44,Reference Irvine, Ary and Grove45) reported the use of a theory or framework when developing the intervention and study. All studies except two were funded(Reference Plaete, De Bourdeaudhuij and Verloigne35,Reference Blackburne, Rodriguez and Johnstone36) , and five studies did not report the registration of the study protocol(Reference Plaete, De Bourdeaudhuij and Verloigne35,Reference Blackburne, Rodriguez and Johnstone36,Reference Lawrence, O’Sullivan and Parslow40,Reference Irvine, Ary and Grove45) .

Table 2. Intervention characteristics of the seventeen studies

MI, motivational interviewing; MVPA, moderate to vigorous physical activity; NS, not specified; RCT, randomized controlled trial; TTM, transtheorethical model.

Weight loss

Eight studies(Reference Eisenhauer, Brito and Kupzyk33,Reference Kaur, Kaur and Chakrapani34,Reference Duncan, Fenton and Brown37,Reference Allman-Farinelli, Partridge and McGeechan39Reference Partridge, McGeechan and Hebden41,Reference Hutchesson, Callister and Morgan44,Reference Kakoschke, Hawker and Castine46) reported interventional effects on weight of which four studies(Reference Kaur, Kaur and Chakrapani34,Reference Allman-Farinelli, Partridge and McGeechan39Reference Partridge, McGeechan and Hebden41) reported significantly higher weight loss in participants from the intervention groups. A meta-analysis of seven studies showed a significant (t = –2·83, P = 0·03) small to moderate pooled interventional effect size on weight (g = –0·29; 95 % CI –0·54, −0·04; I2 = 65·7 %; refer to Table 3, Fig. 2). One study did not report the subjects’ BMI(Reference Plaete, De Bourdeaudhuij and Verloigne35).

Table 3. Meta-analyses of the effects of interactive technology-assisted interventions on weight, total calories, vegetables, fruits, healthy food and fats

g, Hedges’ g; t, t-statistic.

* P < 0·05.

Hartung–Knapp–Sidik–Jonkman (HKSJ) method for random effects meta-analysis.

Fig. 2. Forest plot of the pooled effect sizes of seven studies on weight expressed in Hedges’ g.

Total calories consumption

Six studies(Reference Kaur, Kaur and Chakrapani34,Reference Duncan, Fenton and Brown37,Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Lawrence, O’Sullivan and Parslow40,Reference Hutchesson, Callister and Morgan44,Reference Coffino, Han and Evans48) reported interventional effects on total calories consumed per d (one study reported the total calories of food to be consumed per d in the users’ shopping cart(Reference Coffino, Han and Evans48)) of which two studies(Reference Duncan, Fenton and Brown37,Reference Lawrence, O’Sullivan and Parslow40) reported significantly reduced total calorie consumption in participants from the intervention groups. A meta-analysis of the six studies showed a non-significant (t = –0·61, P = 0·57) pooled interventional effect size on total calories consumption per d (g = –0·08; 95 % CI –0·44, 0·27; I2 = 87·3 %; refer to Table 3, Fig. 3).

Fig. 3. Forest plot of the pooled effect sizes of six studies on total calories consumption per d expressed in Hedges’ g.

Vegetables consumption

Seven studies(Reference Plaete, De Bourdeaudhuij and Verloigne35,Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Allman-Farinelli, Partridge and McGeechan39,Reference Mummah, Robinson and Mathur43,Reference Hutchesson, Callister and Morgan44,Reference Palacios, Torres and López47,Reference Coffino, Han and Evans48) reported interventional effects on vegetables consumption of which four studies(Reference Plaete, De Bourdeaudhuij and Verloigne35,Reference Allman-Farinelli, Partridge and McGeechan39,Reference Hutchesson, Callister and Morgan44,Reference Coffino, Han and Evans48) reported significantly higher vegetables consumption per d in participants from the intervention groups. A meta-analysis of five studies showed a non-significant (t = 0·99, P = 0·37) pooled interventional effect size on vegetables consumption per d (g = 6·29; 95 % CI –10·00, 22·59; I2 = 97·9 %; refer to Table 3, Fig. 4).

Fig. 4. Forest plot of the pooled effect sizes of six studies on vegetables consumption per d expressed in Hedges’ g.

Fruits consumption

Six studies(Reference Plaete, De Bourdeaudhuij and Verloigne35,Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Allman-Farinelli, Partridge and McGeechan39,Reference Hutchesson, Callister and Morgan44,Reference Palacios, Torres and López47,Reference Coffino, Han and Evans48) reported interventional effects on fruits consumption of which four studies(Reference Plaete, De Bourdeaudhuij and Verloigne35,Reference Allman-Farinelli, Partridge and McGeechan39,Reference Hutchesson, Callister and Morgan44,Reference Coffino, Han and Evans48) reported significantly higher fruits consumption per d in participants from the intervention groups. A meta-analysis of five studies showed a non-significant (t = 0·17, P = 0·87) pooled interventional effect size on fruits consumption per d (g = 0·06; 95 % CI –0·85, 0·86; I2 = 95·4 %) (Table 3, Fig. 5).

Fig. 5. Forest plot of the pooled effect sizes of six studies on fruits consumption per d expressed in Hedges’ g.

Healthy food consumption

One article reported two intervention arms which were analysed as two separate studies(Reference Kakoschke, Hawker and Castine46), resulting in five studies that reported interventional effects on healthy food consumption(Reference O’Brien and Palfai32,Reference Blackburne, Rodriguez and Johnstone36,Reference Mummah, Robinson and Mathur43,Reference Kakoschke, Hawker and Castine46) . Two studies reported significantly higher healthy food consumption per d in participants from the intervention groups(Reference Blackburne, Rodriguez and Johnstone36,Reference Kakoschke, Hawker and Castine46) . A meta-analysis of four studies showed a non-significant (t = 1·00, P = 0·39) pooled interventional effect size on healthy food consumption per d (g = 0·20; 95 % CI –0·42, 0·81; I2 = 55·9 %) (Table 3, Fig. 6).

Fig. 6. Forest plot of the pooled effect sizes of six studies on healthy food consumption per d expressed in Hedges’ g.

Fats consumption

Four studies(Reference Kaur, Kaur and Chakrapani34,Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Irvine, Ary and Grove45,Reference Coffino, Han and Evans48) reported interventional effects on fats consumption of which three studies(Reference Kaur, Kaur and Chakrapani34,Reference Irvine, Ary and Grove45,Reference Coffino, Han and Evans48) reported significantly higher fats consumption per d in participants from the intervention groups. A meta-analysis of four studies showed a non-significant (t = 0·99, P = 0·38) pooled interventional effect size on fats consumption per d (g = –1·05; 95 % CI –2·15, 0·05; I2 = 98·0 %; refer to Table 3, Fig. 7).

Fig. 7. Forest plot of the pooled effect sizes of six studies on fat consumption per d expressed in Hedges’.

Findings from other food groups

The interventional effects on other food groups were reported including that of sugar-sweetened beverages(Reference Eisenhauer, Brito and Kupzyk33,Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Allman-Farinelli, Partridge and McGeechan39,Reference Palacios, Torres and López47) , fruits and vegetables (examined together instead of separately)(Reference Eisenhauer, Brito and Kupzyk33,Reference Kaur, Kaur and Chakrapani34,Reference Spring, Pellegrini and McFadden42) , saturated fats(Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Spring, Pellegrini and McFadden42,Reference Coffino, Han and Evans48) , snacks(Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Lawrence, O’Sullivan and Parslow40,Reference Palacios, Torres and López47) , wholegrains(Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Palacios, Torres and López47,Reference Coffino, Han and Evans48) , Na(Reference Kaur, Kaur and Chakrapani34,Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Coffino, Han and Evans48) , proteins(Reference Kaur, Kaur and Chakrapani34,Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Palacios, Torres and López47) , fibre(Reference Kaur, Kaur and Chakrapani34,Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Coffino, Han and Evans48) , cholesterol(Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Coffino, Han and Evans48) , dairy products(Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38,Reference Palacios, Torres and López47) , carbohydrates(Reference Kaur, Kaur and Chakrapani34,Reference Lugones-Sánchez, Recio-Rodríguez and Menéndez-Suárez38) and takeout meals(Reference Allman-Farinelli, Partridge and McGeechan39,Reference Hutchesson, Callister and Morgan44) .

Discussion

We conducted a scoping review and meta-analysis to provide an overview of the effectiveness of interactive technology-assisted interventions on commonly targeted food choice outcomes and consequently weight loss. The common food choice outcomes reported in the included articles were total calorie consumption and consumption of vegetables, fruits, healthy food and fats. Although more than 50 % of the included studies reported significant interventional effects on their respective outcomes, our meta-analysis only found significant interventional effects on weight loss.

Given that weight loss results from a caloric deficit either from a decrease in caloric intake or an increase in caloric expenditure, the non-significant interventional effect on total caloric consumption remains unclear. Though four studies reported findings on both weight loss and total calorie intake, only one study reported consistent findings for the effectiveness of an interactive technology-assisted intervention resulting in a decrease in total calorie intake and significant weight loss(Reference Lawrence, O’Sullivan and Parslow40). One study(Reference Allman-Farinelli, Partridge and McGeechan39) reported a significant weight loss but non-significant change in total calorie intake, while two studies reported the opposite(Reference Kaur, Kaur and Chakrapani34,Reference Duncan, Fenton and Brown37) . One reason for this inconsistency could be due to the small number of studies included in the meta-analysis, and the fact that there was a wide range of sample sizes thus the statistical weight could not be proportionally distributed by sample size. Another reason could be due to the proportionate increase in healthy food consumption (especially energy-dense food groups like protein and wholegrain instead of calorie-light food groups like vegetables) and decrease in unhealthy food consumption, leading to no change in calorie intake when aggregated(Reference Basciani, Camajani and Contini49). Lastly, this could indicate the complexity in weight loss such that it should not be understood merely as an equation of calories intake and output, but also as an outcome of food quality. Further studies are necessary to ascertain the optimal dietary composition for weight loss, considering important biopsychosocial factors such as demographics(Reference Jambhekar, Maselli and Robinson50), environments, lifestyles (i.e. sleep, meal frequency and physical activity)(Reference Paoli, Tinsley and Bianco51), resources, genetics(Reference Goodarzi52) and gut health(Reference Crovesy, Masterson and Rosado53) which may not be as effectively influenced, if possible at all to do so, by interactive technology-assisted interventions.

Given the general prevalence of technology in our daily lives, it was surprising to have identified only a small number of studies that have developed, piloted and evaluated the use of technology-assisted interventions to influence food choices and consequently weight loss outcomes. Nevertheless, from the studies identified, 53 % were published in the last 4 years (from 2018), indicating a clear trend of more technology-assisted interventions being explored. In particular, the use of smartphone app-based intervention is the dominant choice, moving away from website-based and mobile text message-based interventions. It was not possible, in this scoping review, to analyse the effectiveness of the different types of technology-assisted interventions because of the heterogeneity of the interventions, but as a critical mass of similar interventions are tested and published this analysis should be conducted in future reviews to evaluate the effectiveness of these interventions.

From our reviewed studies, we also identified that the development of the technology-assisted interventions and the studies evaluating them should be more theoretically informed. Majority of the studies (58·8 %) did not use or specify an underpinning theory or framework. Greater and effective use of theory going forward would be important in advancing the research and development of interventions in this area. The technology employed in the interventions are a means of delivering interventions, but these interventions should be theoretically informed to target specific levers of informed behaviour change. Introducing a technology without clearly understanding how it might lead to behaviour change should not be an intervention.

This scoping review is not without limitations. Firstly, it might have been possible that some studies on the effects of interactive technology-assisted interventions on the consumption of various foods may have been excluded due to lack of mention about food choice, leading us to preclude these relevant studies. However, when identifying studies in this review, we searched using a list of commonly targeted food groups to ensure that we were able to identify the relevant studies. Secondly, with the small number of studies reviewed, an even smaller number of studies was included in the meta-analysis, and thus this could have introduced biased estimates. We tackled this problem by adjusting the random effects models with the HKSJ method, which is a well-established method for such situations(Reference Mathes and Kuss54). Thirdly, due to the heterogeneity of the technology-assisted interventions identified, we were not able to conduct further needed analysis to compare between the types of interventions. Lastly, the studies reviewed here spanned a wide age range. Given that there might be differences in the level of affinity with technology and across age groups, this could have been an influential in some studies included in this review. Future intervention studies might consider exploring potential age differences as part of their evaluation process. This, together with the heterogeneity of interventions identified will be the remit of a similar review conducted in the future as the body of knowledge expands.

The above notwithstanding, in this scoping review, we have provided an overview of the available evidence on the use of technology-assisted interventions to improve food choices and its effectiveness on weight-related outcomes. Our meta-analysis found that technology-assisted interventions were effective for weight loss outcomes but not for improving food choices. This could be due to the heterogeneity within the small number of interventions identified in this review as this field is still in its nascency. We identified that there needs to be greater application of theory to inform the development of technology-assisted interventions in this area as new and improved interventions are being developed.

Acknowledgements

This research did not receive any specific grant from funding agencies in the public, commercial or not-for-profit sectors.

H. S. J. C.: Conceptualisation, Data curation, Formal Analysis, Investigation, Methodology, Project administration, Resources, Software, Supervision, Validation, Visualisation, Writing – original draft, and Writing – review and editing. N. N. R.: Data curation, Formal Analysis, Visualisation and Validation. S. C.: Data curation, Validation, Visualisation and Writing – review and editing.

There are no conflicts of interest.

Supplementary material

For supplementary material accompanying this paper visit https://doi.org/10.1017/S0007114523000193

References

Kelly, T, Yang, W, Chen, C-S, et al. (2008) Global burden of obesity in 2005 and projections to 2030. Int J Obes 32, 14311437.CrossRefGoogle ScholarPubMed
Da Costa, LA, Arora, P, García-Bailo, B, et al. (2012) The association between obesity, cardiometabolic disease biomarkers, and innate immunity-related inflammation in Canadian adults. Diabetes Metab Syndrome Obes: Target Ther 5, 347.Google ScholarPubMed
Arnold, M, Leitzmann, M, Freisling, H, et al. (2016) Obesity and cancer: an update of the global impact. Cancer Epidemiol 41, 815.CrossRefGoogle ScholarPubMed
Collins, KH, Herzog, W, MacDonald, GZ, et al. (2018) Obesity, metabolic syndrome, and musculoskeletal disease: common inflammatory pathways suggest a central role for loss of muscle integrity. Front Physiol 9, 112.CrossRefGoogle ScholarPubMed
Sellbom, KS & Gunstad, J (2012) Cognitive function and decline in obesity. J Alzheimer’s Disease 30, S89S95.CrossRefGoogle ScholarPubMed
Jantaratnotai, N, Mosikanon, K, Lee, Y, et al. (2017) The interface of depression and obesity. Obes Res Clin Pract 11, 110.CrossRefGoogle ScholarPubMed
Yom-Tov, E, Shembekar, J, Barclay, S, et al. (2018) The effectiveness of public health advertisements to promote health: a randomized-controlled trial on 7 94 000 participants. Npj Digital Med 1, 16.Google Scholar
Swinburn, B & Egger, G (2002) Preventive strategies against weight gain and obesity. Obes Rev 3, 289301.CrossRefGoogle ScholarPubMed
Blüher, M (2019) Obesity: global epidemiology and pathogenesis. Nat Rev Endocrinol 15, 288298.CrossRefGoogle ScholarPubMed
Rolls, BJ, Keller, KL, Hayes, JE, et al. (2021) Food choice: behavioral aspects. Reference Module in Food Science, Elsevier. ISBN 9780081005965.Google Scholar
Lake, A & Townshend, T (2006) Obesogenic environments: exploring the built and food environments. J Royal Soc Promot Health 126, 262267.CrossRefGoogle ScholarPubMed
Kumar, V, Rajan, B, Venkatesan, R, et al. (2019) Understanding the role of artificial intelligence in personalized engagement marketing. California Manage Rev 61, 135155.CrossRefGoogle Scholar
Gupta, M (2019) A study on impact of online food delivery app on restaurant business special reference to zomato and swiggy. Int J Res Anal Rev 6, 889893.Google Scholar
Chew, HSJ (2022) The use of artificial intelligence-based conversational agents (chatbots) for weight loss: a scoping review and practical recommendations. J Med Internet Res 10(4), 1–14, e32578.Google ScholarPubMed
Chew, HSJ, Ang, WHD, Lau, Y (2021) The potential of artificial intelligence in enhancing adult weight loss: a scoping review. Public Health Nutr. 24(8), 19932020.CrossRefGoogle ScholarPubMed
Michie, S, Ashford, S, Sniehotta, FF, et al. (2011) A refined taxonomy of behaviour change techniques to help people change their physical activity and healthy eating behaviours: the CALO-RE taxonomy. Psychol Health 26, 14791498.CrossRefGoogle ScholarPubMed
Chew, HSJ, Lim, SL, Kim, G, Kayambu, G, So, JBY, Shabbir, A, Gao, Y (2023) Essential elements of weight loss apps for a multi-ethnic population with high BMI: a qualitative study with practical recommendations. Transl Behav Med, in press.CrossRefGoogle Scholar
Cheatham, SW, Stull, KR, Fantigrassi, M, et al. (2018) The efficacy of wearable activity tracking technology as part of a weight loss program: a systematic review. J Sports Med Phys Fitness 58, 534548.CrossRefGoogle ScholarPubMed
Chew, HSJ, Koh, WL, Ng, JSHY, et al. (2022) The sustainability of weight loss through smartphone apps: a systematic review and meta-analysis on anthropometric, metabolic, and dietary outcomes. J Med Int Res 24, e40141.Google ScholarPubMed
Dounavi, K & Tsoumani, O (2019) Mobile health applications in weight management: a systematic literature review. Am J Prev Med 56, 894903.CrossRefGoogle ScholarPubMed
Caudwell, P, Hopkins, M, King, NA, et al. (2009) Exercise alone is not enough: weight loss also needs a healthy (Mediterranean) diet? Public Health Nutr 12, 16631666.CrossRefGoogle ScholarPubMed
de Ridder, D, Kroese, F, Evers, C, et al. (2017) Healthy diet: health impact, prevalence, correlates, and interventions. Psychol Health 32, 907941.CrossRefGoogle ScholarPubMed
Rong, S, Liao, Y, Zhou, J, et al. (2021) Comparison of dietary guidelines among 96 countries worldwide. Trends Food Sci Tech 109, 219229.CrossRefGoogle Scholar
Tobi, RC, Harris, F, Rana, R, et al. (2019) Sustainable diet dimensions. Comparing consumer preference for nutrition, environmental and social responsibility food labelling: a systematic review. Sustainability 11, 6575.CrossRefGoogle Scholar
Cecchini, M & Warin, L (2016) Impact of food labelling systems on food choices and eating behaviours: a systematic review and meta-analysis of randomized studies. Obes Rev 17, 201210.CrossRefGoogle ScholarPubMed
Arksey, H & O’Malley, L (2005) Scoping studies: towards a methodological framework. Int J Soc Res Methodol 8, 1932.CrossRefGoogle Scholar
Tricco, AC, Lillie, E, Zarin, W, et al. (2018) PRISMA extension for scoping reviews (PRISMA-ScR): checklist and explanation. Ann Int Med 169, 467473.CrossRefGoogle ScholarPubMed
Higgins, JP, Altman, DG, Gøtzsche, PC, et al. (2011) The Cochrane Collaboration’s tool for assessing risk of bias in randomised trials. BMJ 343.Google ScholarPubMed
Hedges, LV & Olkin, I (2014) Statistical Methods for Meta-Analysis. London: Academic Press.Google Scholar
IntHout, J, Ioannidis, JP & Borm, GF (2014) The Hartung-Knapp-Sidik-Jonkman method for random effects meta-analysis is straightforward and considerably outperforms the standard DerSimonian-Laird method. BMC Med Res Method 14, 112.CrossRefGoogle ScholarPubMed
Higgins, JP, Thomas, J, Chandler, J, et al. (2019) Cochrane Handbook for Systematic Reviews of Interventions. Glascow: John Wiley & Sons.CrossRefGoogle Scholar
O’Brien, LM & Palfai, TP (2016) Efficacy of a brief web-based intervention with and without SMS to enhance healthy eating behaviors among university students. Eat Behav 23, 104109.CrossRefGoogle ScholarPubMed
Eisenhauer, CM, Brito, F, Kupzyk, K, et al. (2021) Mobile health assisted self-monitoring is acceptable for supporting weight loss in rural men: a pragmatic randomized controlled feasibility trial. BMC Public Health 21, 1568.CrossRefGoogle Scholar
Kaur, J, Kaur, M, Chakrapani, V, et al. (2020) Effectiveness of information technology–enabled ‘SMART Eating’health promotion intervention: a cluster randomized controlled trial. PLoS One 15, e0225892.CrossRefGoogle Scholar
Plaete, J, De Bourdeaudhuij, I, Verloigne, M, et al. (2015) Acceptability, feasibility and effectiveness of an eHealth behaviour intervention using self-regulation:‘MyPlan’. Patient Educ Counsel 98, 16171624.CrossRefGoogle Scholar
Blackburne, T, Rodriguez, A & Johnstone, SJ (2016) A serious game to increase healthy food consumption in overweight or obese adults: randomized controlled trial. JMIR Serious Games 4, e10.CrossRefGoogle ScholarPubMed
Duncan, MJ, Fenton, S, Brown, WJ, et al. (2020) Efficacy of a multi-component m-health weight-loss intervention in overweight and obese adults: a randomised controlled trial. Int J Environ Res Public Health 17, 6200.CrossRefGoogle ScholarPubMed
Lugones-Sánchez, C, Recio-Rodríguez, JI, Menéndez-Suárez, M, et al. (2022) Effect of a multicomponent mhealth intervention on the composition of diet in a population with overweight and obesity—randomized clinical trial EVIDENT 3. Nutrients 14, 270.CrossRefGoogle Scholar
Allman-Farinelli, M, Partridge, SR, McGeechan, K, et al. (2016) A mobile health lifestyle program for prevention of weight gain in young adults (TXT2BFiT): nine-month outcomes of a randomized controlled trial. JMIR mHealth uHealth 4, e5768.CrossRefGoogle ScholarPubMed
Lawrence, NS, O’Sullivan, J, Parslow, D, et al. (2015) Training response inhibition to food is associated with weight loss and reduced energy intake. Appetite 95, 1728.CrossRefGoogle ScholarPubMed
Partridge, SR, McGeechan, K, Hebden, L, et al. (2015) Effectiveness of a mHealth lifestyle program with telephone support (TXT2BFiT) to prevent unhealthy weight gain in young adults: randomized controlled trial. JMIR mHealth uHealth 3, e4530.CrossRefGoogle ScholarPubMed
Spring, B, Pellegrini, C, McFadden, HG, et al. (2018) Multicomponent mHealth intervention for large, sustained change in multiple diet and activity risk behaviors: the make better choices 2 randomized controlled trial. J Med Int Res 20, e10528.Google ScholarPubMed
Mummah, S, Robinson, TN, Mathur, M, et al. (2017) Effect of a mobile app intervention on vegetable consumption in overweight adults: a randomized controlled trial. Int J Behav Nutr Phys Act 14, 110.CrossRefGoogle ScholarPubMed
Hutchesson, MJ, Callister, R, Morgan, PJ, et al. (2018) A targeted and tailored ehealth weight loss program for young women: the be positive be health e randomized controlled trial. Healthcare 6, 39.CrossRefGoogle Scholar
Irvine, AB, Ary, DV, Grove, DA, et al. (2004) The effectiveness of an interactive multimedia program to influence eating habits. Health Educ Res 19, 290305.CrossRefGoogle ScholarPubMed
Kakoschke, N, Hawker, C, Castine, B, et al. (2018) Smartphone-based cognitive bias modification training improves healthy food choice in obesity: a pilot study. Eur Eat Disord Rev 26, 526532.CrossRefGoogle ScholarPubMed
Palacios, C, Torres, M, López, D, et al. (2018) Effectiveness of the nutritional app “MyNutriCart” on food choices related to purchase and dietary behavior: a pilot randomized controlled trial. Nutrients 10, 1967.CrossRefGoogle ScholarPubMed
Coffino, JA, Han, GT, Evans, EW, et al. (2021) A default option to improve nutrition for adults with low income using a prefilled online grocery shopping cart. J Nutr Educ Behav 53, 759769.CrossRefGoogle ScholarPubMed
Basciani, S, Camajani, E, Contini, S, et al. (2020) Very-low-calorie ketogenic diets with whey, vegetable, or animal protein in patients with obesity: a randomized pilot study. J Clin Endocrinol Metabolism 105, 29392949.CrossRefGoogle ScholarPubMed
Jambhekar, A, Maselli, A, Robinson, S, et al. (2018) Demographics and socioeconomic status as predictors of weight loss after laparoscopic sleeve gastrectomy: a prospective cohort study. Int J Surgery 54, 163169.CrossRefGoogle ScholarPubMed
Paoli, A, Tinsley, G, Bianco, A, et al. (2019) The influence of meal frequency and timing on health in humans: the role of fasting. Nutrients 11, 719.CrossRefGoogle ScholarPubMed
Goodarzi, MO (2018) Genetics of obesity: what genetic association studies have taught us about the biology of obesity and its complications. Lancet Diabetes Endocrinol 6, 223236.CrossRefGoogle ScholarPubMed
Crovesy, L, Masterson, D & Rosado, EL (2020) Profile of the gut microbiota of adults with obesity: a systematic review. Eur J Clin Nutr 74, 12511262.CrossRefGoogle ScholarPubMed
Mathes, T & Kuss, O (2018) A comparison of methods for meta-analysis of a small number of studies with binary outcomes. Res Synth Methods 9, 366381.CrossRefGoogle ScholarPubMed
Figure 0

Fig. 1. PRISMA flow chart.

Figure 1

Table 1. Summary of sample characteristics of the seventeen studies

Figure 2

Table 2. Intervention characteristics of the seventeen studies

Figure 3

Table 3. Meta-analyses of the effects of interactive technology-assisted interventions on weight, total calories, vegetables, fruits, healthy food and fats

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Fig. 2. Forest plot of the pooled effect sizes of seven studies on weight expressed in Hedges’ g.

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Fig. 3. Forest plot of the pooled effect sizes of six studies on total calories consumption per d expressed in Hedges’ g.

Figure 6

Fig. 4. Forest plot of the pooled effect sizes of six studies on vegetables consumption per d expressed in Hedges’ g.

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Fig. 5. Forest plot of the pooled effect sizes of six studies on fruits consumption per d expressed in Hedges’ g.

Figure 8

Fig. 6. Forest plot of the pooled effect sizes of six studies on healthy food consumption per d expressed in Hedges’ g.

Figure 9

Fig. 7. Forest plot of the pooled effect sizes of six studies on fat consumption per d expressed in Hedges’.

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