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Participation in structured programming may prevent unhealthy weight gain during the summer in school-aged children from low-income neighbourhoods: feasibility, fidelity and preliminary efficacy findings from the Camp NERF study

Published online by Cambridge University Press:  03 January 2019

Laura C Hopkins
Affiliation:
Department of Human Sciences, The Ohio State University, 313 Campbell Hall, 1787 Neil Avenue, Columbus, OH 43210, USA Department of Family and Consumer Sciences, Office of Extension, The Ohio State University, Columbus, OH, USA
Christopher Holloman
Affiliation:
Department of Statistics, The Ohio State University, Columbus, OH, USA
Bernadette Melnyk
Affiliation:
College of Nursing, The Ohio State University, Columbus, OH, USA
Mary Fristad
Affiliation:
Department of Psychiatry and Behavioral Health, The Ohio State University, Columbus, OH, USA
Jacqueline D Goodway
Affiliation:
Department of Human Sciences, The Ohio State University, 313 Campbell Hall, 1787 Neil Avenue, Columbus, OH 43210, USA
Julie A Kennel
Affiliation:
Department of Human Sciences, The Ohio State University, 313 Campbell Hall, 1787 Neil Avenue, Columbus, OH 43210, USA
Ihuoma Eneli
Affiliation:
Nationwide Children’s Hospital Center for Healthy Weight and Nutrition, Columbus, OH, USA
Carolyn Gunther*
Affiliation:
Department of Human Sciences, The Ohio State University, 313 Campbell Hall, 1787 Neil Avenue, Columbus, OH 43210, USA Department of Family and Consumer Sciences, Office of Extension, The Ohio State University, Columbus, OH, USA Department of Pediatrics, College of Medicine, The Ohio State University, Columbus, OH, USA
*
*Corresponding author: Email Gunther.22@osu.edu
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Abstract

Objective

Evaluate the feasibility, fidelity and preliminary efficacy of Camp NERF to prevent unhealthy weight gain and promote healthy behaviours in children during the summer.

Design

Camp NERF was an 8-week, multicomponent, theory-based programme coupled with the US Department of Agriculture’s Summer Food Service Program. Twelve eligible elementary-school sites were randomized to one of three treatment groups: (i) Active Control (non-nutrition, -physical activity (PA), -mental health); (ii) Standard Care (nutrition and PA); or (iii) Enhanced Care (nutrition and PA, plus cognitive behavioural techniques) programming. Efficacy was determined by assessing mean change by group in child outcomes using hierarchical linear regression models.

Setting

Low-income, urban neighbourhoods in Columbus, OH, USA.

Participants

Economically disadvantaged, racial minority children of elementary school age (kindergarten–5th grade).

Results

Eighty-seven child–caregiver dyads consented; eighty-one completed pre- and post-intervention assessments resulting in a 93·10 % retention rate. Delivery of the intended lesson occurred 79–90 % of the time. Of the children, 56·98 % (n 49) were female; 89·53 % (n 77) were Black. Overall mean change in BMI Z-score from baseline to post-intervention was −0·03 (se 0·05); change in BMI Z-score did not differ significantly between treatment group. Change in nutrition, PA, mental health or psychosocial outcomes did not differ between groups.

Conclusions

Results from the current study demonstrate feasibility and fidelity, yet no intervention effect of Camp NERF. Instead, findings suggest that participation in structured programming of any type (health behaviour-related or not) may prevent unhealthy summer weight gain. Additional studies are needed to confirm findings. Results have implications for child nutrition policy addressing the issue of summer health.

Type
Research paper
Copyright
© The Authors 2018 

While recent reports indicate a plateau in US childhood obesity rates, the number of obese children remains high( Reference Ogden, Carroll and Kit 1 Reference Hales, Carroll and Fryar 3 ). In 2015–2016, obesity affected 18·5 % of US youth( Reference Hales, Carroll and Fryar 3 ). This is concerning due to the devastating consequences on children’s physical and mental health and academic success( Reference Hopkins, Fristad and Goodway 2 , Reference Halfon, Larson and Slusser 4 , Reference Taras and Potts-Datema 5 ). Troubling data indicate that school-aged children experience unhealthy gains in BMI at a rate nearly twice as fast during the summer months when school is out of session compared with the school year( Reference Hopkins, Fristad and Goodway 2 , Reference von Hippel, Powell and Downey 6 Reference Franckle, Adler and Davison 12 ). African-American and Hispanic minority groups, sub-populations already at increased risk for obesity, as well as girls, may be particularly vulnerable to unhealthy weight gain during these non-academic months( Reference Ogden, Carroll and Kit 1 , Reference Hopkins, Fristad and Goodway 2 ).

Schools play a critical role in promoting healthy diet and physical activity behaviours during the academic year( Reference Hopkins, Fristad and Goodway 2 , Reference Briefel, Crepinsek and Cabili 13 ). There is a belief that the loss of access to the structure of the school environment may in part explain unhealthy summer weight gain (i.e. provision of healthy snacks and meals; opportunity for structured and unstructured physical activity; nutrition-, physical activity- and health-related policies and programmes)( Reference Brazendale, Beets and Weaver 14 ). The US Department of Agriculture’s (USDA) food security net, specifically the Summer Food Service Program (SFSP), is intended to address this problem by providing access to nutritious meals to children during the summer when school is out of session( Reference Hopkins, Fristad and Goodway 2 , 15 ). Unfortunately, attendance at USDA SFSP sites, particularly open v. closed sites in which the site is ‘open’ to all children aged <18 years old and enrolment is not required, and amount of meals served are low relative to school-based nutrition programmes( Reference Hopkins, Fristad and Goodway 2 ). According to the Food Research Action Center, only one of seven free or reduced-cost school lunch participants in the 2015–2016 school year received lunch in the summer of 2016 nationally( Reference Hayes, Rosso and Anderson 16 ). In Ohio, only 10·1 % of free or reduced-cost school lunch participants participated in the SFSP( Reference Hayes, Rosso and Anderson 16 ). Stakeholders hypothesize that these low numbers are due in large part to a lack of age-appropriate and engaging structured programming at sites to attract children( Reference Hopkins, Fristad and Goodway 2 ).

Unfortunately, few efforts have been invested in designing and testing evidence-informed nutrition and physical activity programmes that may be delivered in companion with the USDA SFSP to provide underserved children with the resources to prevent excess weight gain during the summer recess( Reference Hopkins, Fristad and Goodway 2 ). The main objective of the present study was to determine the impact of Camp Nutrition Education Recreation and Fitness (Camp NERF), a multicomponent nutrition, physical activity and mental health intervention coupled with USDA SFSP open sites, on child behavioural health and anthropometric outcomes. Specifically, the aims and hypotheses were to:

  1. 1. Evaluate feasibility and fidelity outcomes of Camp NERF. Hypothesis 1: Camp NERF will demonstrate high feasibility (retention, attendance and satisfaction) and fidelity (implementation, engagement) with child participants.

  2. 2. Evaluate the efficacy of Camp NERF to improve child anthropometric outcomes. Hypothesis 2: BMI Z-scores will improve more from baseline to post-intervention among children participating at the Enhanced Care sites compared with Standard Care and Active Control sites.

  3. 3. Evaluate the efficacy of Camp NERF to improve child nutrition, physical activity, mental health and psychosocial outcomes. Hypothesis 3: Fruit and vegetable preferences, snack preferences, diet quality, physical activity, self-concept, and social support for healthy and unhealthy eating will improve more from baseline to post-intervention among children participating at Enhanced Care sites compared with Standard Care and Active Control sites.

Methods

Research design

Camp NERF was a multicomponent nutrition, physical activity and mental health intervention coupled to the USDA SFSP, specifically open sites located at public elementary schools (twelve were recruited). It was an 8-week pre-test/post-test group (site) randomized controlled trial. Through daily access to healthy foods, safe play and structured physical activity, along with engagement in an evidence-informed health behaviour educational curriculum, Camp NERF was designed to prevent unhealthy weight gain during summer months in school-aged children. Potential sites were identified by a community partner whose responsibility is to support SFSP sites in Franklin County, Ohio, and were considered eligible if they were: (i) an elementary school; (ii) a USDA SFSP open site; and (iii) lacking structured programming. Twelve sites were identified as meeting these criteria and randomized to one of three treatment or programming groups: (i) Active Control (non-nutrition, -physical activity or -mental health 4-H programming); (ii) Standard Care (nutrition and physical activity programming); and (iii) Enhanced Care (nutrition, physical activity and mental health (i.e. cognitive behavioural techniques) programming). Additional information regarding the Camp NERF intervention research design and methods has been published elsewhere( Reference Hopkins, Fristad and Goodway 2 ).

Participants and recruitment

The Camp NERF target population was low-income, racial minority children entering kindergarten through 5th grade and their primary adult caregiver from urban neighbourhoods in Columbus, Ohio. Participants were recruited through various methods including school announcements, emails, flyers, phone calls and neighbourhood canvassing. Prior to study enrolment, a caregiver consent form, caregiver permission form and child assent form were completed by participants. Participants received gift card incentives at baseline and post-intervention for their participation in the study.

Data collection

Data collector training

Data collectors were undergraduate and graduate students from nutrition, public health or other related fields, and registered dietitian nutritionists. All data collectors underwent an 8 h data collector training, which included didactic sessions followed by role-playing to practice techniques and become familiar with the instruments. Toward the end of the 8-week intervention, prior to post-test data collection, data collectors completed a 2 h review training to reacquaint them with the instruments and learn additional post-test data collection surveys.

Data collection timing

Children were interviewed at baseline and post-intervention using the Camp NERF child assessment form, which consisted of nutrition, physical activity, mental health and psychosocial questionnaires. Demographic information was obtained from the Camp NERF caregiver assessment form completed with each child’s primary caregiver( Reference Hopkins, Fristad and Goodway 2 , Reference Hopkins, Webster and Sharn 17 ). Twenty-four-hour dietary recalls were also conducted with children. In addition, child height and weight were measured.

Interviews took approximately 30 min and were conducted in participants’ homes, the school site or another community location. The assessment form was data collector-administered, with the data collector reading each question verbatim, including all possible responses, and recording the participant’s response. If the participant provided an ambiguous response, the data collector asked questions to probe for a specific response. For younger children, caregivers were asked to assist in completing and verifying responses from the child interview when deemed necessary.

Outcome measures

Demographic information was coded as follows. Child age was ascertained by date of birth, which was utilized for BMI Z-score calculations. For race, participants were classified as either Black or non-Black (0 = Black, 1 = non-Black). Participants were classified as Black if their caregiver reported their child as being African, African American, or both African or African American and another race or ethnicity. All others were classified as non-Black. For household income, a binomial variable (low-income = 0; non-low-income = 1) was created. Annual household income data were collected categorically: (i) <$US 10 000; (ii) $US 10 001–20 000; (iii) $US 20 001–30 000; (iv) $US 30 001–40 000; (v) $US 40 001–50 000; (vi) $US 50 001–60 000; (vii) $US 60 001–80 000; and (viii) >$US 80 000. Participants were assigned an income level based on the midpoint of their reported income range. This annual household income level was compared with national poverty guidelines( 18 ) and, based on the number of individuals living in the household (another question on the caregiver assessment form), participants were classified as low-income or non-low-income.

Children’s height and weight were assessed using the National Health and Nutrition Examination Survey protocol( 19 ). They were measured by a trained data collector using a Hopkins Road Rod Portable Stadiometer and BalanceForm High Accuracy Digital Scale. Height and weight measurements were taken twice, averaged, and BMI Z-score was calculated using the statistical software Stata zanthro package, with age included as days calculated as the date of survey administration minus date of birth( 20 ).

Domel et al.’s validated preferences survey( Reference Domel, Baranowski and Davis 21 , Reference Domel, Baranowski and Davis 22 ) was utilized to assess potential changes in child liking of fruits, vegetables and snacks under the presumption that preferences precede behaviour change( Reference Bandura 23 ). This twenty-eight-item fruit and vegetable questionnaire lists ten fruits and ten vegetables and enquires about liking each item (‘not a lot’ = 0, ‘a little’ = 1 or ‘a lot’ = 2). Total (0–40), fruit subscale (0–20) and vegetable subscale (0–20) ‘liked it’ scores were calculated. Subsequently, eight snack preference scenarios were presented, e.g. ‘For a snack, do you prefer chips or veggies and dip?’ Less healthy options were assigned a value of 0 and healthier options were assigned a value of 1, and a healthy snack preference score on a scale of 0–8 was calculated. Internal consistency α coefficients( Reference Tavakol and Dennick 24 ) for the liking vegetable and fruit combined scale, vegetable subscale, fruit subscale and snack preferences scale were 0·75, 0·67, 0·60 and 0·74 at baseline and 0·77, 0·68, 0·61 and 0·72 post-intervention, respectively.

The research plan for child dietary data was to collect three (two weekdays and one weekend day) 24 h dietary recalls( Reference Burrows, Martin and Collins 25 Reference Baxter, Hardin and Guinn 27 ). However, due to staffing constraints and difficulty contacting caregivers, only one weekday 24h dietary recall was completed at baseline and post-intervention. The data were collected in-person, utilizing the USDA’s five-step multi-pass dietary recall method( Reference Conway, Ingwersen and Vinyard 28 , Reference Conway, Ingwersen and Moshfegh 29 ). Data were entered using the Nutrition Data System for Research (NDSR), version 2015( 30 ). Dietary outcomes included daily whole fruit servings (cup equivalents), fruit juice servings (cup equivalents), total fruit servings (cup equivalents), total vegetable servings (cup equivalents), total fruit and vegetable servings (cup equivalents), sugar-sweetened beverage servings (cup equivalents) and total energy intake (kilocalories).

The ten-item School Physical Activity and Nutrition (SPAN) questionnaire was used to assess child physical activity and media-related sedentary behaviours( Reference Hoelscher, Barroso and Springer 31 Reference Penkilo, George and Hoelscher 34 ). Sufficiency in physical activity behaviours was based on the Youth Risk Behavior Surveillance System( 35 ) criteria and recommendations of at least 20 min of vigorous physical activity on 3 d/week or at least 30 min of moderate physical activity on 5 d/week( Reference Hoelscher, Barroso and Springer 31 Reference Penkilo, George and Hoelscher 34 ). Physical activity variables were created (0 = insufficient moderate or vigorous physical activity; 1 = sufficient moderate or vigorous physical activity). Finally, an overall insufficient physical activity variable was created, defined as participating in less than 4 d of moderate physical activity for 30 min and less than 2 d of vigorous physical activity for 20 min.

Child self-concept was assessed using the thirty-item Positive and Negative Affect Schedule (PANAS) survey( Reference Laurent, Catanzaro and Joiner 36 , Reference Joiner, Catanzaro and Laurent 37 ). Thirty feelings or emotions (fifteen-item positive and fifteen-item negative affect subscales) were presented to the respondent and they were asked how often or to what extent they experienced those feelings or emotions over the past couple of weeks on a 4-point Likert scale (0 = ‘very slightly or not at all’; 4 = ’extremely or a lot’). Positive and negative affect scale scores from 0 to 60 were calculated, which for the scale representing positive affect, a higher score representing more positive feelings and for the scale representing negative affect, a higher score representing more negative feelings. Internal consistency α coefficients( Reference Tavakol and Dennick 24 ) for positive and negative affect scales baseline and post-intervention were 0·75 and 0·88 and 0·81 and 0·88, respectively.

The Social Support for Healthy and Unhealthy Eating Questionnaire for Children consisted of four subscales to measure support from friends or peers and caregivers for healthy and unhealthy eating( Reference Fitzgerald, Heary and Kelly 38 , Reference Anderson Steeves, Jones-Smith and Hopkins 39 ). The support for healthy eating scales contained four items and the support for unhealthy eating scales contained three items. Each question inquired as to how often a friend or peer and caregiver performed a task related to healthy and unhealthy eating activities. Response options were on a 5-point Likert scale (0 = ‘never’; 4 = ‘very often’). Scale scores ranged from 0 to 16 for the healthy eating scales (a higher score represented higher support for healthy eating) and from 0 to 12 for the unhealthy eating scales (a higher score represented higher support for unhealthy eating). Internal consistency α coefficients( Reference Tavakol and Dennick 24 ) for peer support for healthy eating, peer support for unhealthy eating, caregiver support for healthy eating and caregiver support for unhealthy eating scales were 0·79, 0·68, 0·56 and 0·45 baseline and 0·76, 0·68, 0·67 and 0·64 post-intervention, respectively.

Process measures

Daily child attendance data at the individual level were collected by the Camp NERF community partner starting in July (week 3 of the 8-week intervention), when attendance at SFSP sites normalizes, through the end of the intervention.

To assess satisfaction with Camp NERF programming, child participants completed a brief satisfaction survey during the post-intervention interview. Children were asked to rate how much they liked or enjoyed Camp NERF on a 4-point Likert scale (1 = ‘I didn’t like it’; 4 = ‘I liked it a lot’). Also, children were asked three open-ended questions: (i) ‘What did you like best about Camp NERF?’; (ii) ‘What didn’t you like about Camp NERF?’; and (iii) ‘What would you change about Camp NERF?’

A Camp NERF daily process evaluation form was developed for the present study and completed by trained process evaluators who were not involved with intervention implementation. For each component of the Camp NERF curriculum – 4-H Programming (Active Control sites only)( Reference Banbury-Robinson 40 ), CATCH (Coordinated Approach to Child Health) Nutrition Education and Physical Education (Standard Care and Enhanced Care sites)( Reference Hans and McGaugh 41 Reference Luton and Berry 43 ) and COPE (Creating Opportunities for Personal Empowerment) Mental Health Education (Enhanced Care sites only)( Reference Melnyk 44 ) – number of minutes of each lesson and number of participants were recorded and seven ‘yes’ or ‘no’ questions pertaining to feasibility, fidelity and acceptability were answered. Space for additional comments for each question was also provided and answers were summarized.

Data analysis

Power was calculated using change in BMI Z-score as the primary outcome of interest. Based on results from a previous pilot test( Reference Hopkins, Rose and Gunther 45 , Reference Hopkins, Rose and Higgins 46 ), we assumed that between-subject variation was normally distributed with an sd of 1·03 and that between-site variation (nested within treatment group) was negligible. Under these assumptions, recruiting twenty participants per site (planning for 20 % attrition) provided approximately 70 % power to detect a difference of 0·5 points in change in BMI between the treatment group and either of the two control groups using a one-sided test at α = 0·05.

Exploratory data analyses were conducted. One child was considered an outlier (change BMI Z-score) and dropped from the baseline demographic and outcomes analyses, but was included in process measure analyses (i.e. retention). The χ 2 test and ANOVA were completed to determine if there were any significant demographic differences by age, gender, race, income, baseline BMI Z-score and weight status category between intervention groups. Respective baseline and post-intervention means and proportions of all child outcomes were calculated.

Missing data were present due to sensitivity of questions for household income (n 12), fruit and vegetable preferences (n 2), snack preferences (n 3), self-concept positive affect (n 8), self-concept negative affect (n 7), social support for healthy and unhealthy eating scales (n 3), physical activity (n 2), dietary intake (n 14), height (n 7) and weight (n 7). Multiple imputation( Reference Rubin 47 , Reference Schafer 48 ) was employed to fill missing data values using the MI procedure in the statistical software package Stata IC version 14( 20 ). Imputation models were built with predicting variables including: site, site type, gender, age, race/ethnicity, total Camp NERF attendance, number of adults residing in the household and total number of individuals residing in the household, as well as dependent variables of interest when imputing an independent variable for analysis models. Fifty imputation iterations were run for each missing value and convergence was met( Reference von Hippel, Powell and Downey 6 ).

Cronbach’s α tests of internal consistency were conducted for food preference, self-concept, and social support for healthy and unhealthy eating scale and subscale responses at baseline and post-intervention (reported above). The intervention was tested by comparing change from baseline to post-intervention in fruit and vegetable preferences, snack preference, dietary intake, positive affect, negative affect, friend or peer and caregiver social support for healthy and unhealthy eating (Hypothesis 3) and BMI Z-score (Hypothesis 2).

For fruit and vegetable preferences, snack preferences, dietary intake, positive and negative affect, and social support for healthy and unhealthy eating, mixed-effects hierarchical linear regression models were fit with site type as the primary predictor. Other covariates included baseline BMI Z-score, income, race and attendance. These models (Models 1–17; Hypothesis 3) were calculated using the following equation:

$$\eqalign { { y_{{ijt}} {\equals}\mu {\plus}{\rm }\beta _{1} (Site{\rm } \,Type)X_{{1ijt}} {\plus}\beta _{2} (Baseline\,zBMI)X_{{2ijt}}} \cr \qquad{\plus}\beta _{3} (Income)X_{{3ijt}} {\plus}\beta _{4} (Race)X_{{4ijt}} {\plus}\beta _{5} \left( {Attendance} \right)X_{{5ijt}} \cr \qquad{\plus}\delta _{j} {\plus}{\epsilon}_{{ijt}} $$

where y ijt is the change in response/outcome variable for the tth child (t = 1,…, N ij ) in treatment i (Enhanced Care v. Standard Care or Active Control) at site j (j = 1,…, 9). X 1, X 2, X 3, X 4 and X 5 are the predictor variables site type, baseline BMI Z-score (zBMI), income, race and attendance, and β 1, β 2, β 3, β 4 and β 5 are the corresponding regression coefficients. μ is the y-intercept term; δ j is a random effect for the site; and ϵ ijt is a random measurement error term. In Models 1–17, y ijt is Δ Vegetable Preference; Δ Fruit Preference; Δ Vegetable and Fruit Preference; Δ Snack Preference; Δ Total Energy Intake; Δ Whole Fruit Servings; Δ Fruit Juice Servings; Δ Total Fruit Servings; Δ Total Vegetable Servings; Δ Total Fruit and Vegetable Servings; Δ Sugar-Sweetened Beverage Servings; Δ Positive Affect; Δ Negative Affect; Δ Caregiver Support for Healthy Eating; Δ Peer Support for Healthy Eating; Δ Caregiver Support for Unhealthy Eating; Δ Peer Support for Unhealthy Eating.

Similarly, for BMI Z-score, a mixed-effects hierarchical linear regression model was fit with site type as the primary predictor. Covariates included income, race and attendance. This model (Model 18; Hypothesis 2) was calculated using the following equation:

$$\eqalign{ y_{{ijt}} {\equals} \mu {\plus}{\rm }\beta _{1} (S ite\,Type)X_{{1ijt}} {\plus}\beta _{2} (Income)X_{{2ijt}} \cr {\plus}\beta _{3} (Race)X_{{3ijt}} {\plus}\beta _{4} \left( {Attendance} \right)X_{{4ijt}} {\plus}\delta _{j} {\plus}{\epsilon}_{{ijt}} $$

where y ijt is Δ BMI Z-score.

For physical activity outcomes – sufficient moderate physical activity, sufficient vigorous physical activity and insufficient physical activity – mixed-effects hierarchical logistic regression models were fit with site type as the primary predictor. Other covariates included baseline moderate/vigorous physical activity or baseline insufficient physical activity, baseline BMI Z-score, income, race and attendance. These models (Models 19–21; Hypothesis 3) were calculated using the following equation:

$$\eqalign{ y_{{ijt}} {\equals} \mu {\plus} \beta _{1} (S ite\,Type)X_{{1ijt}} {\plus}\beta _{2} (Baseline\,Physical\,Activity)X_{{2ijt}} \cr {\plus}\beta _{3} (Income)X_{{3ijt}} {\plus}\beta _{4} (Race)X_{{4ijt}} {\plus}\beta _{5} \left( {Attendance} \right)X_{{5ijt}} \cr {\plus} \beta _{6} \left( {Baseline\ zBMI} \right)X_{{6ijt}} {\plus}\delta _{j} {\plus}{\epsilon}_{{ijt}} $$

where y ijt is Sufficient Moderate Physical Activity; Sufficient Vigorous Physical Activity; Insufficient Physical Activity.

Mixed-effects hierarchical linear and logistic regression models account for any random-effects variability at the site level. Introducing this random effect implies that there were two sources of variability in these models: (i) a between-site variability (captured in the $\sigma _{\delta }^{2} $ variance term) and (ii) a residual per-observation or within-site variability (captured in the $\sigma _{{\epsilon}}^{2} $ variance term). Furthermore, these models estimated the degree to which the response for participants at the same treatment site were correlated.

The study was approved by The Ohio State University Social and Behavioral Institutional Review Board (approval number 2014B0197).

Results

Baseline demographics

Eighty-seven children enrolled in Camp NERF. Descriptive summaries of sample baseline measures are presented in Table 1. There were significant differences between groups in income level (P <0·01) and baseline weight status (BMI Z-score (P = 0·01) and weight classification (P = 0·02)). Standard Care participants were had higher income and higher mean BMI Z-score at baseline.

Table 1 Camp NERF baseline demographics, by site type, of school-aged children (kindergarten–5th grade) from low-income urban neighbourhoods, Columbus, OH, USA, June–August 2015

For household income, a binomial variable (low-income = 0; non-low-income = 1) was created. Annual household income data were collected categorically: (i) <$US 10 000; (ii) $US 10 001–20 000; (iii) $US 20 001–30 000; (iv) $US 30 001–40 000; (v) $US 40 001–50 000; (vi) $US 50 001–60 000; (vii) $US 60 001–80 000; and (viii) >$US 80 000. Based on responses to the categorical annual household income question, participants were assigned an income-level based on the midpoint between the income range. For example, if a participant responded that her/his annual household income was between $US 10 001 and $US 20 000, s/he was assigned an income level of $US 15 000. This annual household income level was compared with the national poverty guidelines( 18 ) and, based on the number of individuals living in the household (another question on the caregiver assessment form), participants were classified is low-income or non-low-income.

Participants were classified as Black if their caregiver reported the child as being African, or African American, or both African or African American and another race/ethnicity.

§ Missing values pre-set; numbers presented do not represent imputed values.

By ANOVA.

By χ 2 test.

Process outcomes

Feasibility

Three of the twelve sites (two Active Control and one Standard Care) dropped out after study launch due to low attendance, which resulted in a 75 % site retention rate (Table 2). Eighty-one children (93·10 % retention) completed post-intervention assessments (Table 2). Retention rates by site type were 95·24 % (n 20), 93·10 % (n 27) and 91·89 % (n 34) for Active Control, Standard Care and Enhanced Care sites, respectively. There was no significant difference in participant retention rate between sites (P = 0·89; Table 2).

Table 2 Camp NERF daily feasibility and fidelity process evaluation outcomes in low-income urban neighbourhoods, Columbus, OH, USA, June–August 2015

CATCH, Coordinated Approach to Child Health; COPE, Creating Opportunities for Personal Empowerment.

** P <0·01.

Attendance at site.

Attended >1 time.

§ Attendance at programming delivered at site (note: children were not required to participate in programming at the site).

By χ 2 test.

By ANOVA.

Daily attendance (month of July; total possible days n 23) was examined in two ways: (i) raw attendance and (ii) attendance among children who participated in Camp NERF more than once. The latter measure may be more accurate, given that Camp NERF sites were open USDA SFSP feeding sites. When considering raw attendance, the mean was 56·77 (se 3·66) %. Attendance rates by site type were 66·67 (se 8·24) %, 73·70 (se 3·89) % and 38·33 (se 5·16) % for Active Control, Standard Care and Enhanced Care sites, respectively, and varied significantly (Table 2; P <0·01). When considering attendance among children who participated in Camp NERF more than once, the mean was 66·75 (se 3·08) %. Attendance rates by site type were 77·78 (se 6·51) %, 76·43 (se 2·88) % and 50·32 (se 5·00) % for Active Control, Standard Care and Enhanced Care sites, respectively, and varied significantly (Table 2; P <0·01).

Camp NERF child participants were highly satisfied with programming offered. The overall mean satisfaction score was 3·33 (se 0·15), which falls between ‘I liked it’ and ‘I liked it a lot’ on the satisfaction survey. Mean scores by site type were 3·53 (se 0·21), 3·56 (se 0·24) and 3·04 (se 0·28) for Active Control, Standard Care and Enhanced Care site participants, respectively, and did not differ significantly between site type (P = 0·26). Responses to open-ended questions on the satisfaction survey are summarized in Table 3.

Table 3 Summary of Camp NERF participant satisfaction survey responses from school-aged children (kindergarten–5th grade) from low-income urban neighbourhoods, Columbus, OH, USA, June–August 2015

COPE, Creating Opportunities for Personal Empowerment.

Fidelity

Overall, high fidelity was demonstrated for all Camp NERF components, as was the 4-H curriculum at the Active Control sites (Table 2). Delivery of the intended lesson occurred between 79 and 90 % of the time. The entirety of material was presented 79–100 % of the time. Child participants were actively engaged 76–89 % of the time. Camp NERF counsellors were able to create positive and interactive environments 77–95 % of the time and help child participants overcome barriers and problem solve 75–100 % of the time.

The mean number of children participating in Active Control (4-H) and Standard Care (CATCH) programming was 9·65 (se 1·28) and 2·81 (se 0·30), respectively. The mean number of children participating in Enhanced Care programming was 6·50 (se 0·37; CATCH portion) and 10·09 (se 0·62; COPE portion). Additionally, the mean length of programming was 73·44 (se 11·20) min for Active Control (4-H) and 35·53 (se 1·95) min for Standard Care (CATCH). For Enhanced Care, the mean length of programming was 39·58 (se 1·37) min (CATCH) and 20·88 (se 1·19) min (COPE). These times are consistent with expected delivery times( Reference Hopkins, Fristad and Goodway 2 ).

Child outcomes

Anthropometrics

There was no intervention effect on weight status (Table 4). Overall mean change in BMI Z-score from baseline to post-intervention was −0·03 (se 0·05; CI −0·13, 0·06). Mean change in BMI Z-score was −0·13 (se 0·10; CI −0·33, 0·06) for males and 0·04 (se 0·04; CI −0·05, 0·12) for females.

Table 4 Impact of Camp NERF intervention on outcomes of school-aged children (kindergarten–5th grade) from low-income urban neighbourhoods, Columbus, OH, USA, June–August 2015

B0, baseline; T1, post-intervention.

Reference group = Enhanced Care.

Predictor variables: site type (multinomial variable; 0 = Enhanced Care, 1 = Standard Care, 2 = Active Control); income (dichotomous variable; 0 = low-income, 1 = non-low-income); race/ethnicity (dichotomous variable; 0 = Black, 1 = non-Black); baseline sufficient moderate physical activity (dichotomous variable; 0 = not sufficient, 1 = sufficient); baseline sufficient vigorous physical activity (dichotomous variable; 0 = not sufficient, 1 = sufficient); baseline insufficient physical activity (dichotomous variable; 0 = sufficient, 1 = insufficient); baseline BMI Z-score (continuous variable; −∞ to +∞).

Within-group difference:

* P <0·05

** P <0·01.

To convert to kJ, multiply kcal values by 4·184.

Child nutrition, physical activity, mental health and psychosocial outcomes

There was no intervention effect on vegetable, fruit, vegetable and fruit, or snack preference outcomes (Table 4). In addition, there was no intervention effect on dietary outcomes. Regarding physical activity outcomes, there was no intervention effect; however, overall proportions of participants achieving sufficient moderate (5·24 %) and sufficient vigorous (4·36 %) physical activity improved from baseline to post-intervention. In addition, there was an overall decrease (12·99 %) in the proportion of participants who engaged in insufficient physical activity from baseline to post-intervention. Finally, there was no intervention effect on self-concept or perceived social support from caregivers or peers for healthy and unhealthy eating (Table 4).

Discussion

The summertime presents a window of risk for unhealthy weight gain among low-income, minority children( Reference von Hippel, Powell and Downey 6 Reference Franckle, Adler and Davison 12 ). Few research efforts have been directed at testing evidence-informed nutrition and physical activity programmes to equip children with necessary knowledge, skills and other resources to prevent excess weight gain during the summer. Camp NERF is the first evidence-informed intervention to address disproportionate childhood weight gain in underserved children during the summer.

In the current study, we observed feasibility and fidelity of Camp NERF, but no intervention effect. Rather a prevention of unhealthy weight gain was observed across all groups, indicating that participation in structured programming of any type (health behaviour-related or not) may prevent unhealthy weight gain during the summer. This finding is consistent with the physical activity data in which there were overall proportional improvements with regard to physical activity from baseline to post-intervention. However, it is worth noting that due to reliance on the Youth Risk Behavior Surveillance System physical activity recommendations (20 min of vigorous physical activity on 3 d/week or 30 min of moderate physical activity on 5 d/week), children in the present study designated as sufficiently active may in fact not be meeting the Centers for Disease Control and Prevention’s recommendation of 60 min or more every day of the week( 49 ).

Results from the current study are in line with the Structured Days Hypothesis, which posits that obesogenic behaviours are better regulated when a child is exposed to structure (e.g. a school day, compared with times they are not exposed to structure, e.g. weekend days or summer)( Reference Brazendale, Beets and Weaver 14 ). Specifically, these results suggest that when a child participates in structured programming of any type (i.e. health behaviour-related or not) during the summer (e.g. a summer camp, where they have access to nutritious foods and opportunities for safe play), obesogenic behaviours may be better regulated, contributing to a maintenance, as opposed to a decline, in health. That said, the current study was not adequately powered to detect differences between groups. To avoid a premature acceptance of the null hypothesis, it is imperative for future efforts to be invested in repeating the study with a sufficient sample size. Also, it is important to reference the feasibility data, which indicated greater length (minutes) of lessons, higher fidelity of lesson implementation and greater satisfaction among participants at the Active Control and Standard Care sites compared with the Enhanced Care sites. In the future, more work needs to be done to integrate the CATCH and COPE curricula into daily site activities to assure dose equality, and COPE may need additional adaptations to assure age-appropriateness and suitability for delivery in the summer camp setting.

Males’ overall change in BMI Z-score was negative compared with females’ overall change in BMI Z-score, which was positive. These data are consistent with national trends, which indicate that girls are at increased risk for overweight and obesity and for inappropriate weight gain during the summer( Reference Ogden, Carroll and Kit 1 , Reference Baranowski, O’Connor and Johnston 11 , Reference Franckle, Adler and Davison 12 ) and that as children age, girls tend to be less physically active and more sedentary than boys( Reference Janssen, Mann and Basterfield 50 , Reference Cooper, Goodman and Page 51 ). Mere exposure to a more structured day may not have the same beneficial effects on weight status for girls and must be explored in future research.

The current study had many strengths. To our knowledge, Camp NERF is one of the first evidence-informed interventions designed specifically to address the issue of unhealthy summer weight gain among economically disadvantaged school-aged children. The study design was a group randomized controlled trial, strengthening the interpretability and generalizability of the results. Finally, the evaluation plan was robust in that it included an assessment of feasibility and fidelity outcomes, as well as measures of health behaviours and anthropometrics.

There were also limitations. First, the target sample size of twenty participants per site was not achieved. Given the small sample size, along with an imbalance in sample size across groups with respect to income, a key confounding variable, the results presented here should be interpreted with caution and the experiment should be replicated to avoid premature acceptance of the null hypothesis( Reference Kraemer, Mintz and Noda 52 ). At most sites, child attendance was consistently more than twenty individuals; however, ability to obtain caregiver permission and consent was difficult as it is not required for caregivers to drop off or pick up their children from open SFSP sites. Investigators of future studies utilizing open USDA SFSP sites as locations of research should explore passive caregiver permission and consent options with their respective Institutional Review Board. A second limitation was the lack of a true control group. Because Camp NERF was coupled with the USDA SFSP, a federal child nutrition programme, the statutory right for participation applies. Ethically, restricting participation in open SFSP sites was not allowable. Future research should focus on identifying ways (i.e. alternative recruitment methods) to include a control group (i.e. children who do not attend SFSP sites) that are ethically compliant. For instance, recruiting and enrolling participants (i.e. both those who do and do not intend to attend an SFSP site during the summer) prior to the end of the school year and tracking them longitudinally into the following school year. A final limitation is the limited or lack of validity testing of certain subjective measures among younger children, which re-emphasizes the need to exercise caution in interpreting findings from the current study and demonstrates the need for future research in this area of inquiry.

Conclusions

Camp NERF built on successful childhood obesity prevention interventions that include nutrition and physical activity components, concurrent knowledge and skill building, coupling of intervention curriculum to availability of healthy foods, and opportunity for physical activity and play( Reference Contento, Balch and Bronner 53 , Reference Katz, O’Connell and Yeh 54 ). Studying the impact of such an intervention over the summer provided valuable information to address a high-risk period for children who are vulnerable to excessive summer weight gain. Results from the current study indicate that mere engagement in programming (v. programming type, health behaviour-related or not) may lead to prevention of weight gain, which has direct implications for child nutrition policy with regard to the SFSP. However, to conclusively determine the lack of an intervention effect, it will be important for future research to be adequately powered. In addition, as there is a near complete dearth of information regarding health behaviours and environmental settings of disadvantaged school-aged children during the summer, future studies should include an in-depth examination of key dietary and physical activity behaviours as well as food, physical activity and social environments of children.

Acknowledgements

Acknowledgements: The authors thank the Camp NERF participants and their community partners, City of Columbus, Columbus Recreation and Parks Department, and Columbus City Schools. Financial support: Aetna Foundation and The Ohio State University Office of Outreach and Engagement provided for funding this study. The funders had no role in the design, analysis or writing of this article. Conflict of interest: B.M. is the founder and creator of COPE2thrive, LLC. All other authors declared no conflict of interest. Authorship: C.G. conceptualized and designed the study. L.C.H. coordinated and supervised data collection and carried out the analyses. L.C.H. drafted the initial manuscript and reviewed and revised the paper with C.G. C.H. provided direction on the statistical analyses. C.H., B.M., M.F., J.D.G., J.A.K. and I.E. provided input on the study design and methods; and reviewed and revised the manuscript. All authors approved the final manuscript as submitted and agree to be accountable for all aspects of the work. Ethics of human subject participation: This study was conducted according to the guidelines laid down in the Declaration of Helsinki and all procedures involving human subjects were approved by The Ohio State University Institutional Review Board. Written informed consent was obtained from all subjects.

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Figure 0

Table 1 Camp NERF baseline demographics, by site type, of school-aged children (kindergarten–5th grade) from low-income urban neighbourhoods, Columbus, OH, USA, June–August 2015

Figure 1

Table 2 Camp NERF daily feasibility and fidelity process evaluation outcomes in low-income urban neighbourhoods, Columbus, OH, USA, June–August 2015

Figure 2

Table 3 Summary of Camp NERF participant satisfaction survey responses from school-aged children (kindergarten–5th grade) from low-income urban neighbourhoods, Columbus, OH, USA, June–August 2015

Figure 3

Table 4 Impact of Camp NERF intervention on outcomes of school-aged children (kindergarten–5th grade) from low-income urban neighbourhoods, Columbus, OH, USA, June–August 2015