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Article

Effect of School-Based Nutrition and Health Education for Rural Chinese Children

1
Chinese Center for Disease Control and Prevention, NHC Key Laboratory of Trace Element Nutrition, National Institute for Nutrition and Health, Beijing 100050, China
2
Beijing Tongzhou District Center for Disease Control and Prevention, Beijing 101199, China
3
Beijing Shunyi District Center for Disease Control and Prevention, Beijing 101300, China
4
School of Public Health, Xinjiang Medical University, Urumqi 830017, China
*
Author to whom correspondence should be addressed.
Nutrients 2022, 14(19), 3997; https://doi.org/10.3390/nu14193997
Submission received: 29 August 2022 / Revised: 20 September 2022 / Accepted: 22 September 2022 / Published: 27 September 2022
(This article belongs to the Section Nutritional Policies and Education for Health Promotion)

Abstract

:
The nutritional status of rural Chinese children has improved in recent years, but their nutritional knowledge is still relatively lacking. School-based nutrition and health education was conducted for children in three counties of China from 2018 to 2020. The students in the intervention schools were given two-year nutrition and health education courses, while the control schools did not receive any intervention. Students’ nutrition knowledge, dietary intake, and dietary behaviors were collected using a questionnaire, and height and weight were measured uniformly. The nutrition knowledge score in the intervention group was increased by 1.01 and 0.64 points in the first and second years. A multilevel model was used to evaluate the intervention effects. Statistically significant interactions between groups and time were observed in nutrition knowledge, the frequency of eating breakfast, and dietary intake, including meat, eggs, milk, and vegetables (p < 0.05), but not in nutritional status. Therefore, the supplementation of school-based nutrition and health education had a positive impact on the nutrition knowledge and dietary intake of rural Chinese children.

1. Introduction

Childhood and adolescence are key periods of growth and development and are also critical periods for cultivating healthy dietary behaviors. With economic development in recent years, the nutritional status of rural Chinese children has continuously improved [1]. However, the nutritional knowledge of children is still relatively insufficient, which affects their physical and intellectual development [2,3]. There is evidence from studies in some countries that school-based nutrition and health education can effectively improve nutrition knowledge and develop healthy dietary behaviors in children [4,5,6,7]. For instance, Vered et al. conducted a school-based nutrition knowledge intervention for six months in children aged 4–7 years in Israeli schools of low socioeconomic status, which significantly improved nutrition knowledge and increased the food variety of children in the intervention group [8].
Chinese children have experienced a dramatic shift from traditional dietary patterns (mainly grains, vegetables, and tubers) to Western dietary patterns (mainly desserts, fast food, and meat) [9]. The consumption of beverages has become increasingly common among Chinese children aged 6–17 years [10]. Therefore, it is imperative to strengthen the nutrition and health education of rural children. The China Youth Development Foundation promoted and implemented the Hope Kitchen Plan in rural schools in Guangxi and Hubei Province from 2018 to 2020. This study aimed to evaluate the effects of school-based nutrition and health education on children’s nutrition knowledge, dietary behaviors, dietary intake, and nutritional status.

2. Materials and Methods

2.1. Participants

Three counties were selected for this study: Zigui County in Hubei Province and Du‘an County and Long‘an County in Guangxi Province, China. The GDP of these three counties was CHY 36,682.85 (USD 5451.07), CHY 16,468.00 (USD 2447.14), and CHY 24,169.00 (USD 3591.51) per person in 2018, respectively, while the national average GDP was CHY 65,534.00 (USD 9738.35) [11,12].
A total of 15 rural primary schools were selected, including four schools in Long’an county, five schools in Zigui County, and six schools in Du’an County. Nine schools were selected as the intervention group. Six schools were recruited as the control group. These schools were similar in size, school facilities, and student composition to the schools in the intervention group. There were two control schools in each county and two intervention schools in Long’an county, three intervention schools in Zigui County, and four intervention schools in Du’an County.
All children from grades 2 to 4 (8–10 years) were recruited at baseline. There were 2655 children (grades 2–4), 2567 children (grades 3–5), and 2503 children (grades 4–6) in September 2018, September 2019, and December 2020, respectively. The reason for being unable to follow up (5.7%) was the graduation of children. A total of 2066 children who participated in all three surveys were selected. Children had the right to refuse to participate in the study, and no one refused to participate (Figure 1).

2.2. Intervention Methods

Children in the intervention schools were provided nutrition education with nutrition and health courses as the main measure for two consecutive academic years from September 2018, after the baseline survey, to June 2020, before the final survey. Nutrition and health education courses were taught to children by professionally trained teachers as daily courses. We also carried out nutrition-related activities on campus. The main interventions included the following.
  • A nutrition class series of textbooks (including two student books and one teacher book) and electronic courseware were used to provide nutrition and health courses for two consecutive academic years in the intervention schools, with one 40 min class every two weeks and five to six classes per semester. The main contents of the textbooks included food, nutrients, and dietary behaviors.
  • Organizing unified training for teachers of nutrition courses, including four face-to-face training sessions and three online training sessions in total. The main contents included basic knowledge of nutrition, interpretation of the Chinese Dietary Guidelines, nutrition deficiency and dietary prevention for rural children, and the national nutrition policy for children.
  • Holding the nutrition class competition for teachers, the nutrition class essay, painting and speech competitions for children, the Healthy Life Weekly Notes during winter and summer holidays, and other nutrition promotion and education activities.
  • Providing physical activity resources that can improve the convenience and enthusiasm of children participating in sports such as basketball and skipping rope.
  • Organizing children plating vegetables themselves, which not only improved children’s awareness of increasing intake of fresh fruits and vegetables but also became a labor practice base for students to understand nature.
Children in the control schools received their usual curriculum and did not receive any intervention in the nutrition education or physical activities.

2.3. Data Collection

Data related to the date of birth, sex, grade, area, nutritional knowledge, dietary intake, dietary behaviors, and physical activities were collected using a student questionnaire based on the China National Nutrition and Health Surveillance [13]. Children completed the questionnaires by themselves after the investigators explained them to the children in detail. Data were collected at baseline, after the first and second years.
Nutrition knowledge: The questionnaire consisted of 10 questions. Each correct response was assigned one point, and an incorrect or no answer was assigned 0 points. The total knowledge score ranged from 0 to 10 points with a higher score indicating a higher level of nutrition knowledge.
Dietary intake: The questionnaire consisted of five questions, including milk and egg consumption, the frequency of consumption of meat and fruits, and the variety of vegetables consumed in the past week. The total dietary intake score ranged from 0 to 15 points. A higher score indicates a healthier dietary intake (see Table 1).
Dietary behaviors: The questionnaire consisted of four questions on the frequency of eating breakfast, snacks, beverages, and plain water in the past week. The total score for dietary behaviors ranged from 0 to 12 points. Higher scores indicate healthier dietary behaviors.
The children’s fasting height and weight were examined early in the morning. Weight was measured to the nearest 0.1 kg in light indoor clothing, and height was measured without shoes to the nearest 0.1 cm. Body mass index (BMI) (kg/m2) was calculated by dividing weight (kg) by height squared (m2). Nutritional status was based on BMI by age and sex and divided into stunting, wasting, normal, bodyweight, and obesity. Malnutrition, including stunting and wasting, was screened according to the Chinese Screening Standard for Malnutrition in School Children and Adolescents (WS/T456-2014) [14]. Overweight and obesity screening was conducted according to the Chinese Screening for Overweight and Obesity among school-age children and adolescents (WS/T586-2018) [15].
This study was approved by the Ethics Committee of the China Center for Disease Control and Prevention. All participants provided informed consent prior to participating in the study.

2.4. Statistical Analyses

All statistical analyses were performed using SAS (SAS 9.4 for Windows, SAS Institute, Inc., Cary, NC, USA). Means ± SDs were used to describe quantitative data, and qualitative data were summarized as percentages.
This study measured each subject for three consecutive years; therefore, the three measurements of the same subject were not independent. A multilevel model was used to evaluate the effect of the intervention, and time was used as a level 1 variable to explain the difference in outcome indicators of the control group at baseline in the first and second year. Taking the individual as the level 2 variable, we included the group in the model as a fixed effect to explain the difference in outcome indicators between the intervention and control groups at baseline. The interaction effect between time and group explains the effects of the intervention. All p-values < 0.05 were considered to indicate statistical significance.

3. Results

3.1. The Characteristics of the Participants

A total of 2066 children were enrolled in this study, which included 1077 boys and 989 girls at baseline. There were 1563 children in the intervention group and 503 children in the control group. The average age of children was 9.0 years at baseline. The number of children in grades 2, 3, and 4 was 682 (33.0%), 662 (32.0%), and 722 (35.0%), respectively. There were 837 (40.5%), 875 (42.4%), and 354 (17.1%) children in Zigui County, Du Unk County, and Long Unk County, respectively. The number of children whose physical activity times were 0–30, 30–60, and ≥60 min/day was 603 (29.2%), 722 (35.0%), and 741 (35.9%), respectively (see Table 2).

3.2. Comparison of Nutrition Knowledge, Dietary Intake, and Dietary Behavior Scores at Baseline, First, and Second Year

3.2.1. Nutrition Knowledge

The correct rate of nutrition knowledge at baseline was 10.0–73.5% in the intervention group, compared with 6.0–69.8% in the control group. After the two-year nutrition and health courses, the correct rate in first and second year was 14.6–84.5% and 21.2–93.0% in the intervention group, respectively. In the second year, except for the correct rate of the nutritional characteristics of coarse grains (−13.0%), the correct rate of other nutrition knowledge in the intervention group increased compared with the baseline, with an increasing range of 5.1–39.8% (see Table 3).
The nutrition knowledge score in the intervention group was increased by 1.01 and 0.64 points in the first and second years, compared with the control group (0.70 and 0.57 points), respectively (Figure 2). The results of the multilevel model showed that the interaction effect between time and group was statistically significant in the first year (p < 0.05) and marginally significant in the second year (p = 0.068) (Table 4).

3.2.2. Dietary Intake

Table 5 presents the differences (intervention versus control) from baseline to the second year in milk and egg consumption, frequency of meat and fruit consumption, and variety of vegetables among children. The multilevel model showed that the interaction effect between time and group of milk, meat, eggs, and vegetables was statistically significant in the second year (p < 0.05). The frequency of fruit consumption in the intervention group increased compared to the baseline, but there was no statistical significance in the interaction effect between time and group of fruits (p > 0.05).
The dietary intake score in the intervention group was increased by 0.33 and 0.13 points in the first and second years compared with the control group (−0.04 and 0.05 points), respectively (Figure 3). The results of the multilevel model showed that the interaction effect between time and dietary intake group was statistically significant in the first and second year (p < 0.05) (Table 6).

3.2.3. Dietary Behaviors

Table 7 presents the differences (intervention versus control) from baseline to the second year in the frequency of breakfast, snack, beverage, and plain water consumption among children. The multilevel model showed that the interaction effect between time and breakfast group was statistically significant in the first year but not in the second year (p < 0.05). There was no statistically significant interaction effect between time and group of snacks, beverages, or plain water (p > 0.05) (Table 7).
The dietary behavior score in the intervention group was increased by 0.19 and 0.15 points in the first and second years compared with the control group (0.11 and 0.13 points, respectively) (Figure 4). There was no statistically significant interaction effect between time and group of dietary behaviors (p > 0.05) (Table 8).

3.3. Comparison of Height, Weight, BMI, and Nutritional Status at Baseline, First, and Second Year

The proportion of stunting was 6.1% in the intervention group and 10.3% in the control group at baseline and 3.1% and 7.6% in the second year, respectively. The proportion of obesity was 8.0% in the intervention group and 3.4% in the control group at baseline and 7.7% and 3.8% in the second year, respectively (Figure 5 and Figure 6). The results of the multilevel model showed that there was no significant difference in the interaction effect between time and height, weight, BMI, and nutritional status between the intervention and control groups (p > 0.05) (Table 9 and Figure 5 and Figure 6).

4. Discussion

The present study evaluated the effectiveness of school-based nutrition and health education on nutrition knowledge, dietary intake, dietary behaviors, and nutritional status among rural Chinese children. The results of this study suggest that school-based nutrition and health education may have a positive effect on nutrition knowledge, the frequency of eating breakfast, and dietary intake, including meat, eggs, milk, and vegetables, but not on nutritional status.
Countries worldwide have attached importance to nutrition and health education for children [16,17]. The World Health Organization proposed the Nutrition Friendly Schools Initiative in 2006, advocating comprehensive measures of school-based nutrition and health education [18]. In recent years, a wide range of nutrition education interventions have also been carried out for children in countries such as the United States, China, and France, which effectively improved children’s nutrition knowledge [7,8,9,10,19]. Marwa et al. conducted a 6-month school-based nutrition intervention on Syrian refugee children aged 6–14 years in Bekaa, Lebanon. The intervention included educational courses and the provision of local healthy snacks. They found that dietary knowledge in the intervention group (β = 1.22, 95% CI: 0.54–1.89) increased significantly compared to the control group (p < 0.05) [4]. Our research also observed that nutrition knowledge increased by 1.01 points in the intervention group in the first year compared with 0.70 points in the control group (p < 0.05), suggesting that school-based nutrition and health education may contribute to the comprehension of children’s nutrition knowledge. However, we found that awareness of the nutritional characteristics of coarse grains decreased. The possible cause was the low intake of coarse grains in rural Chinese children, making them pay less attention to relevant nutrition knowledge. The intake of coarse grains in rural children aged 6–11 years was only 12.1 g/d in the Report on Nutrition and Chronic Diseases of Chinese Residents (2020) [20], which is much lower than the recommended intake of 30–70 g/day for this age group in the Chinese Dietary Guidelines for School-Aged Children [21]. Our results revealed that the teaching contents and methods should be adjusted according to the dietary characteristics of subjects; therefore, nutrition education on coarse grains needs to be further strengthened in the future.
A reasonable dietary structure is critical to ensure children’s nutrition and health. Our study observed that only 44.4%, 14.3%, and 28.3% of children in the intervention group consumed meat, eggs, and milk every day at baseline, which was far below the recommended intake and frequencies [22]. After two years of nutrition and health education, children’s milk and egg consumption, the frequency of meat consumption, and the variety of vegetables consumed in the intervention group improved and were significantly higher than those the control group in the second year. Our results are consistent with those of other studies in the United States, Asia, and Iran [22,23,24]. This indicates that nutrition and health education can contribute to a rational diet for children.
Breakfast can provide the body with essential nutrients and energy, which is important for the health of children [25]. Our study found that nutritional knowledge related to breakfast and the frequency of eating breakfast improved after the intervention. This showed that the improvement of children’s nutrition knowledge can improve their dietary behaviors to a certain extent. Nevertheless, 21.3% of the intervention group and 33.2% of the control group still failed to eat breakfast every day of second year. Other studies have revealed that skipping or eating breakfast irregularly may not only lead to malnutrition in children but also increase the risk of obesity and other related chronic diseases [26,27,28]. Therefore, education on the importance of breakfast among rural children should be further enhanced.
Similar to the results observed in South Africa and Asia [29,30], our results showed that the behavior of consuming snacks and beverages did not significantly improve after the intervention. This may be related to the current widespread consumption of snacks and beverages among Chinese children [31]. Reports on the consumption of sugar-sweetened beverages by Chinese children have pointed out that the production and consumption of beverages in China have increased rapidly in recent years [32]. In addition, poor self-control in children is also a major cause of snack and beverage consumption [33]. It may also be influenced by family and societal factors such as personal preferences, advertising, and marketing [34].
There were no significant differences in BMI and nutritional status between the intervention and control groups in this study. The United States, Australia, and many European countries have widely adopted school-based interventions to reduce weight by improving children’s nutrition knowledge and changing lifestyles, but their effectiveness is different [35,36]. A recent systematic review showed that school-based prevention interventions are mildly effective in reducing BMI in children. These latest studies tend to be more comprehensive and longer and include more factors, such as environmental modification, diet improvement, and parental support [37]. The different results may be related to the lack of intervention for other factors and confounders in our study. The detailed reasons for this difference require further discussion.
This study has several strengths and limitations. The strengths of this study include having a relatively large sample size, a design with a comparison group, and high adherence rates. One limitation was that the intervention only lasted for two years and did not observe the long-term influence on children’s dietary behaviors and nutritional status.

5. Conclusions

Our findings suggest a promising impact of integrated nutrition health education on nutrition knowledge, the frequency of eating breakfast, and dietary intake of meat, eggs, milk, and vegetables of rural Chinese children.
It is still necessary to explore scientific and long-term nutrition knowledge and behavioral intervention models for children and adolescents. Future studies are needed to test the feasibility of scaling up such nutritional interventions and also to evaluate their long-term impact on children’s dietary behaviors and nutritional status.

Author Contributions

Conceptualization, Y.X., Q.Z., Z.R. and C.Y.; methodology, Y.X. and X.B.; formal analysis, Y.X. and T.G.; investigation, Q.Z., T.G., T.Y., P.X., Q.G., J.X., H.W. and H.P.; data curation, W.C.; writing—original draft preparation, Y.X.; writing—review and editing, Y.X. and Q.Z.; project administration, Q.Z., T.Y., P.X. and Q.G. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

Data available on request due to privacy restrictions. The data presented in this study are available on request from the corresponding author. The data are not publicly available due to privacy.

Acknowledgments

We thank all the participants in our study and all the staff working for the Hope Kitchen Plan in rural schools in Guangxi and Hubei Province.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Liu, X.; Ruan, Q.; Dong, Y.; Ren, Y. Analysis on nutrition improvement of rural students in Guangxi, 2012–2013. Chin. J. Sch. Health 2015, 36, 1130–1133, 1138. [Google Scholar]
  2. Ma, G.S. Nutritional Status and Improvement Measures of Chinese Students. Chin. J. Sch. Health 2014, 35, 641–642. [Google Scholar]
  3. Wan, C.; Hao, L.; Shen, H.; Zheng, J. Effectiveness of nutritional education among pupils in primary school for migrant workers’ children in Pudong New Area. Chin. J. Sch. Health 2017, 38, 1807–1810. [Google Scholar]
  4. El Harake, M.D.; Kharroubi, S.; Hamadeh, S.K.; Jomaa, L. Impact of a pilot school-based nutrition intervention on dietary knowledge, attitudes, behavior and nutritional status of Syrian refugee children in the Bekaa, Lebanon. Nutrients 2018, 10, 913. [Google Scholar] [CrossRef] [PubMed]
  5. Schultz, B.K.; Evans, S.W. A Practical Guide to Implementing School-Based Interventions for Adolescents with ADHD; Springer: New York, NY, USA, 2015. [Google Scholar]
  6. Verstraeten, R.; Roberfroid, D.; Lachat, C.; Leroy, J.L.; Holdsworth, M.; Maes, L.; Kolsteren, P.W. Effectiveness of preventive school-based obesity interventions in low- and middle-income countries: A systematic review. Am. J. Clin. Nutr. 2012, 96, 415–438. [Google Scholar] [CrossRef] [PubMed]
  7. Hamulka, J.; Wadolowska, L.; Hoffmann, M.; Kowalkowska, J.; Gutkowska, K. Effect of an education program on nutrition knowledge, attitudes toward nutrition, diet quality, lifestyle, and body composition in Polish teenagers. The ABC of Healthy Eating Project: Design, protocol, and methodology. Nutrients 2018, 10, 1439. [Google Scholar] [CrossRef] [PubMed]
  8. Kaufman-Shriqui, V.; Fraser, D.; Friger, M.; Geva, D.; Bilenko, N.; Vardi, H.; Elhadad, N.; Mor, K.; Feine, Z.; Shahar, D.R. Effect of a school-based intervention on nutritional knowledge and habits of low-socioeconomic school children in Israel: A cluster-randomized controlled trial. Nutrients 2016, 8, 234. [Google Scholar] [CrossRef] [PubMed]
  9. Zhang, J.; Wang, Z.; Huang, F.; Zhang, B.; Wang, H. Changing trends in dietary patterns among Chinese children and adolescents from 1991 to 2018. Acta Nutr. Sin. 2021, 3, 213–217. [Google Scholar]
  10. Liu, A.; Li, N. Survey Report on Beverage, Milk, Tea and Wine Consumption of Chinese Residents; China Agriculture Press: Beijing, China, 2020. [Google Scholar]
  11. Bureau of Statistics of Yichang, China. Available online: http://xxgk.yichang.gov.cn/list.html?depid=877&catid=150/ (accessed on 10 June 2022).
  12. Urban Data Query Platform. Available online: https://www.gotohui.com/ (accessed on 10 June 2022).
  13. Zhao, L.; Ma, G.; Pu, J.; Zhang, J.; Yu, D.; He, Y.; Huo, J.; Hu, X.; Yang, Z.; Yang, X. Overall Program for monitoring nutrition and health status of Chinese residents 2010–2012. Chin. J. Prevent. Med. 2016, 3, 204–207. [Google Scholar]
  14. National Health and Family Planning Commission of the People’s Republic of China. Chinese Screening Standard for Malnutrition in School Children and Adolescents (WS/T456-2014); China Standard Press: Beijing, China, 2014. [Google Scholar]
  15. National Health and Family Planning Commission of the People’s Republic of China. Chinese Screening for Overweight and Obesity among School-Age Children and Adolescents (WS/T586-2018); China Standard Press: Beijing, China, 2014. [Google Scholar]
  16. Harris, D.M.; Seymour, J.; Grummer-Strawn, L.; Cooper, A.; Collins, B.; DiSogra, L.; Marshall, A.; Evans, N. Let’s move salad bars to schools: A public-private partnership to increase student fruit and vegetable consumption. Child. Obes. 2012, 8, 294–297. [Google Scholar] [CrossRef]
  17. Hartmann, C.; Dohle, S.; Siegrist, M. Importance of cooking skills for balanced food choices. Appetite 2013, 65, 125–131. [Google Scholar] [CrossRef]
  18. Honkala, S. World Health Organization approaches for surveys of health behaviour among schoolchildren and for health-promoting schools. Med. Princ. Pract. 2014, 23 (Suppl. S1), 24–31. [Google Scholar] [CrossRef]
  19. Worsley, A. Nutrition knowledge and food consumption: Can nutrition knowledge change food behaviour? Asia. Pac. J. Clin. Nutr. 2002, 11, S579–S585. [Google Scholar] [CrossRef]
  20. National Health Commission of the People’s Republic of China. Report on Chinese Residents’ Chronic Disease and Nutrition in 2020; People’s Health Publishing House: Beijing, China, 2022. [Google Scholar]
  21. Chinese Nutrition Society. Dietary Guidelines for Chinese School-Age Children; People’s Health Publishing House: Beijing, China, 2022. [Google Scholar]
  22. Ghasab Shirazi, M.; Kazemi, A.; Kelishadi, R.; Mostafavi, F. The improvement of dietary behaviors among Iranian adolescent girls: A theory-based randomized controlled trial. Health Educ. Res. 2019, 34, 159–172. [Google Scholar] [CrossRef]
  23. Prelip, M.; Slusser, W.; Thai, C.L.; Kinsler, J.; Erausquin, J.T. Effects of a school-based nutrition program diffused throughout a large urban community on attitudes, beliefs, and behaviors related to fruit and vegetable consumption. J. Sch. Health 2011, 81, 520–529. [Google Scholar] [CrossRef] [Green Version]
  24. Berger, T.D.; Gorodnichenko, A.; Fradkin, A.; Weiss, B. The impact of a short-term intervention on adolescent eating habits and nutritional knowledge. Isr. Med. Assoc. J. 2021, 23, 720–724. [Google Scholar]
  25. Moreno-Aznar, L.A.; Vidal Carou, M.D.C.; L pez Sobaler, A.M.; Varela-Moreiras, G.; Moreno Villares, J.M. Role of breakfast and its quality in the health of children and adolescents in Spain. Nutr. Hosp. 2021, 38, 396–409. [Google Scholar]
  26. Simões, A.M.; Machado, C.O.; Höfelmann, D.A. Association of regular consumption of breakfast and health-related behavior among adolescents. Ciência Saúde Coletiva 2021, 26, 2243–2251. (In Portuguese) [Google Scholar] [CrossRef]
  27. Rosato, V.; Edefonti, V.; Parpinel, M.; Milani, G.P.; Mazzocchi, A.; Decarli, A.; Agostoni, C.; Ferraroni, M. Energy contribution and nutrient composition of breakfast and their relations to overweight in free-living individuals: A systematic review. Adv. Nutr. 2016, 7, 455–465. [Google Scholar] [CrossRef]
  28. Arora, M.; Nazar, G.P.; Gupta, V.K.; Perry, C.L.; Reddy, K.S.; Stigler, M.H. Association of breakfast intake with obesity, dietary and physical activity behavior among urban school-aged adolescents in Delhi, India: Results of a cross-sectional study. BMC Public Health 2012, 12, 881. [Google Scholar] [CrossRef]
  29. Steyn, N.P.; de Villiers, A.; Gwebushe, N.; Draper, C.E.; Hill, J.; de Waal, M.; Dalais, L.; Abrahams, Z.; Lombard, C.; Lambert, E.V. Did HealthKick, a randomised controlled trial primary school nutrition intervention improve dietary quality of children in low-income settings in South Africa? BMC Public Health 2015, 15, 948. [Google Scholar] [CrossRef]
  30. Ruzita, A.T.; Wan Azdie, M.A.B.; Ismail, M.N. The effectiveness of nutrition education programme for primary school children. Malays. J. Nutr. 2007, 13, 45–54. [Google Scholar]
  31. Bi, X.; Li, L.; Yang, T.; Xu, P.; Cao, W.; Xu, J.; Gan, Q.; Pan, H.; Hu, X.; Zhang, Q. Snack consumption and the influencing factors of students participation in the Nutrition Improvement Program for Rural Compulsory Education in 2019. Chin. J. Sch. Health 2021, 3, 329–333. [Google Scholar]
  32. Ma, G.S. Report on the Consumption of Sugar-Sweetened Beverages of Children in China; Bejing, China Population Publishing House: Bejing, China, 2018; pp. 34–35. [Google Scholar]
  33. Qian, W.; Xin, B.; Shi, C.; Li, P. Study on the relationship between snack consumption and childhood obesity. World Latest Med. Inf. 2016, 16, 31–40. [Google Scholar]
  34. You, L.; Liu, L.; Mao, C.; Yang, Y.; He, X.; Liu, A. Analysis for food intake among school-aged children in poor rural areas. Chin. J. Repro. Health 2017, 4, 306–310. [Google Scholar]
  35. Centeio, E.E.; McCaughtry, N.; Moore, E.W.G.; Kulik, N.; Garn, A.; Martin, J.; Shen, B.; Somers, C.L.; Fahlman, M. Building healthy communities: A comprehensive school health program to prevent obesity in elementary schools. Prev. Med. 2018, 111, 210–215. [Google Scholar] [CrossRef]
  36. Hung, L.S.; Tidwell, D.K.; Hall, M.E.; Lee, M.L.; Briley, C.A.; Hunt, B.P. A meta-analysis of school-based obesity prevention programs demonstrates limited efficacy of decreasing childhood obesity. Nutr. Res. 2015, 35, 229–240. [Google Scholar] [CrossRef]
  37. Sobol-Goldberg, S.; Rabinowitz, J.; Gross, R. School-based obesity prevention programs: A meta-analysis of randomized controlled trials. Obesity 2013, 21, 242–2428. [Google Scholar] [CrossRef]
Figure 1. Flow diagram of participation.
Figure 1. Flow diagram of participation.
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Figure 2. Changes in mean score for children’s nutrition knowledge in first and second year from baseline. Vertical bars indicate standard deviations.
Figure 2. Changes in mean score for children’s nutrition knowledge in first and second year from baseline. Vertical bars indicate standard deviations.
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Figure 3. Changes in mean score for children’s dietary intake in first and second year from baseline. Vertical bars indicate standard deviations.
Figure 3. Changes in mean score for children’s dietary intake in first and second year from baseline. Vertical bars indicate standard deviations.
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Figure 4. Changes in mean score for children’s dietary behaviors in first and second year from baseline. Vertical bars indicate standard deviations.
Figure 4. Changes in mean score for children’s dietary behaviors in first and second year from baseline. Vertical bars indicate standard deviations.
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Figure 5. Changes in proportion for children’s stunting and wasting in first and second year from baseline. Multilevel model was used to evaluate the effect of the intervention after adjusting for physical activity. Stunting: group effect, p < 0.05. Wasting: time effect (two years), p < 0.05. Others all p > 0.05.
Figure 5. Changes in proportion for children’s stunting and wasting in first and second year from baseline. Multilevel model was used to evaluate the effect of the intervention after adjusting for physical activity. Stunting: group effect, p < 0.05. Wasting: time effect (two years), p < 0.05. Others all p > 0.05.
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Figure 6. Changes in proportion for children’s overweight and obesity in first and second year from baseline. Multilevel model was used to evaluate the effect of the intervention after adjusting for physical activity. Overweight: group effect: p < 0.05; time effect (two years): p < 0.05. Obesity: group effect, p < 0.05. Others all p > 0.05.
Figure 6. Changes in proportion for children’s overweight and obesity in first and second year from baseline. Multilevel model was used to evaluate the effect of the intervention after adjusting for physical activity. Overweight: group effect: p < 0.05; time effect (two years): p < 0.05. Obesity: group effect, p < 0.05. Others all p > 0.05.
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Table 1. Points assigned to each variable of dietary intake and dietary behaviors.
Table 1. Points assigned to each variable of dietary intake and dietary behaviors.
VariablePoints
Dietary intake
1Milk consumptionLess than 1 bag/week = 0; 1–3 bags/week = 1 point; 4–6 bags/week = 2 points; 1 bag/day and above = 3 points
2Meat consumption frequencyLess than 1 time/week = 0; 1–3 times/week = 1 point; 4–6 times/week = 2 points; 1 time/day and above = 3 points
3Egg consumption Less than 1/week = 0; 1–3/week = 1 point; 4–6/week = 2 points; 1/day and above = 3 points
4Vegetable consumption varietyLess than 1 kind/week = 0; 1 kind/day = 1 point; 2 kinds/day = 2 points; 3 kinds/day and above = 3 points
5Fruit consumption frequencyLess than 1 time/week = 0; 1–3 times/week = 1 point; 4–6 times/week = 2 points; 1 time/day and above = 3 points
Dietary behaviors
6Breakfast consumption frequency1–2 days/week = 0; 3–4 days/week = 1 point; 5–6 days/week = 2 points; everyday = 3 points
7Snack consumption frequencyLess than 1 time/week = 3 points; 1–3 times/week = 2 points; 4–6 times/week = 1 point; 1 time/day and above = 0
8Beverage consumption frequencyLess than 1 time/week = 3 points; 1–3 times/week = 2 points; 4–6 times/week = 1 point; 1 time/day and above = 0
9Plain water consumptionLess than 1 cup/day = 0; 1–2 cups/day = 1 point; 3–4 cups/day = 2 points; 5 cups/day and above = 3 points
Note: The volume of milk is 250 mL. The weight of an egg is 50~60 g. The volume of a cup of water is about 300 mL.
Table 2. Comparison of characteristics of children from the intervention group and control group at baseline.
Table 2. Comparison of characteristics of children from the intervention group and control group at baseline.
Total Sample (n = 2066)Control (n = 503)Intervention (n = 1563)
Age (years), mean ± SD9.0 ± 1.049.2 ± 1.118.9 ± 1.01
Gender, n (%)
Male1077 (52.1)268 (53.3)809 (48.2)
Female989 (47.9)235 (46.7)754 (51.8)
Grade, n (%)
Two682 (33.0)180 (35.8)502 (32.1)
Three662 (32.0)139 (27.6)523 (33.5)
Four722 (35.0)184 (36.6)538 (34.4)
County, n (%)
Zigui County837 (40.5)172 (34.2)665 (42.6)
Du‘an County875 (42.4)240 (47.7)635 (40.6)
Long‘an county354 (17.1)91 (18.1)263 (16.8)
Physical activity, n (%)
0–30 min/d603 (29.2)196 (39.0)407 (26.0)
30–60 min/d722 (35.0)146 (29.0)576 (36.9)
≥60 min/d741 (35.9)161 (32.0)580 (37.1)
Table 3. Comparison of correct rate of children’s nutrition knowledge between the intervention group and control group (%).
Table 3. Comparison of correct rate of children’s nutrition knowledge between the intervention group and control group (%).
BaselineFirst YearSecond YearChange (Baseline-Second Year)
ControlInterventionControlInterventionControlInterventionControlIntervention
Health is not only the absence of disease but also good psychological and social adaptability #,@,@@30.845.058.367.173.284.842.439.8
The most abundant protein is meat, poultry, fish and eggs @,@@26.830.542.347.762.263.635.433.1
The best source of calcium is milk @@,*37.640.441.752.358.462.120.821.8
Iron deficiency anemia can be prevented by eating more lean meat and vegetables@,@@48.749.362.863.170.075.521.326.2
A nutritious breakfast should include four types of food #,@@,**6.010.06.814.610.325.74.315.7
China recommends that school-age children drink more than 300 g of milk and dairy products every day #,@,*,**21.516.110.917.016.721.2−4.85.1
Fresh vegetables and fruits cannot be substituted for each other @,@@,**51.754.365.068.168.879.817.125.5
Coarse grains have more comprehensive nutritional characteristics than fine grains @,**66.465.453.956.963.052.4−3.4−13.0
Obese children are more prone to hypertension, hyperlipidemia, and other diseases: yes @@,*,**69.866.673.480.483.387.513.520.9
Food not less likely to deteriorate when put in the refrigerator #,@,@@64.473.578.784.585.593.021.119.5
Note: A multilevel model was used to evaluate the effect of the intervention. Group effect: # p < 0.05; time effect: @ one year p < 0.05; @@ two years p < 0.05; time × group effects: * p < 0.05; ** two years p < 0.05.
Table 4. Test of the fixed effects of various factors of nutrition knowledge score.
Table 4. Test of the fixed effects of various factors of nutrition knowledge score.
EffectTypeβ *SE #T-Valuep-Value
Intercept 0.08351.16<0.001
GroupIntervention 0.0962.100.007
ControlRef.
TimeSecond Year 0.11115.40<0.001
First Year 0.1135.97<0.001
BaselineRef.
Time × GroupSecond Year × Intervention 0.1281.830.068
Second Year × Control
First Year × Intervention 0.1292.440.015
First Year × Control
Baseline × InterventionRef.
Baseline × Control
Note: * β, coefficient. # SE, standard error.
Table 5. Comparison of milk consumption; the frequency of meat, egg, and fruit consumption; and the variety of vegetables of children in the past week between the intervention group and control group (%).
Table 5. Comparison of milk consumption; the frequency of meat, egg, and fruit consumption; and the variety of vegetables of children in the past week between the intervention group and control group (%).
Consumption/Frequency/VarietyBaselineFirst YearSecond Year
ControlInterventionControlInterventionControlIntervention
Milk #,@,**
Less than 1 bag/week14.37.97.611.46.03.8
1–3 bags/week45.551.247.738.853.539.2
4–6 bags/week19.512.522.713.526.618.4
1 bag/day and above20.728.322.136.313.938.6
Meat @,@@,*,**
Less than 1 time/week1.82.73.62.01.21.5
1–3 times/week39.036.645.540.237.630.5
4–6 times/week12.716.319.718.124.723.8
1 time/day and above46.544.431.239.736.644.1
Eggs *,**
Less than 1/week11.96.510.56.58.34.4
1–3/week54.361.962.452.062.849.6
4–6/week20.117.217.321.218.529.4
1/day and above13.714.310.720.410.316.6
Vegetables #,@,@@,**
Less than 1 kind/week1.40.31.20.80.20.4
1 kind/day18.39.013.56.59.53.9
2 kinds/day27.620.724.919.325.821.8
3 kinds/day and above52.770.160.473.464.473.9
Fruits #
Less than 1 time/week3.01.73.03.03.02.2
1–3 times/week55.542.649.536.647.537.5
4–6 times/week20.525.929.428.727.628.6
1 time/day and above21.129.818.131.721.931.7
Note: Multi-level model was used to evaluate the effect of the intervention after adjusting the nutrition knowledge score. Group effect: # p < 0.05; time effect: @ one year p < 0.05; @@ two years p < 0.05; time × group effects: * p < 0.05; ** two years p < 0.05.
Table 6. Test of the fixed effects of various factors of dietary intake score.
Table 6. Test of the fixed effects of various factors of dietary intake score.
EffectTypeβ *SE #T-Valuep-Value
Intercept 0.10483.94<0.001
GroupIntervention 0.1205.95<0.001
ControlRef.
TimeSecond Year 0.1381.190.235
First Year 0.140−0.770.441
BaselineRef.
Time × GroupSecond Year × Intervention 0.1593.45<0.001
Second Year × Control
First Year × Intervention 0.1602.680.007
First Year × Control
Baseline × InterventionRef.
Baseline × Control
Note: After adjusting for the nutrition knowledge score, group effect p < 0.05; time effect p > 0.05; time × group effect p < 0.05. * β, coefficient. # SE, standard error.
Table 7. Comparison of the frequency of breakfast, snack, beverage, and plain water consumption of children in the past week between the intervention group and control group (%).
Table 7. Comparison of the frequency of breakfast, snack, beverage, and plain water consumption of children in the past week between the intervention group and control group (%).
Consumption/
Frequency
BaselineFirst YearSecond Year
ControlInterventionControlInterventionControlIntervention
Breakfast #,@,*
1–2 days/week9.56.112.57.86.24.7
3–4 days/week5.05.111.75.68.05.1
5–6 days/week15.712.115.712.019.111.5
Everyday69.876.760.074.766.878.7
Snacks
Less than 1 time/week8.78.16.05.66.44.9
1–3 times/week11.912.913.114.213.512.9
4–6 times/week65.267.665.867.470.670.2
1 time/day and above14.111.515.112.89.512.0
Beverages #,@@
Less than 1 time/week6.66.73.24.32.02.2
1–3 times/week8.59.99.59.76.65.9
4–6 times/week65.068.365.067.469.069.0
1 time/day and above19.915.122.318.622.522.9
Plain water #,@
Less than 1 cup/day5.21.62.81.92.02.4
1–2 cups/day25.622.318.119.319.914.1
3–4 cups/day27.031.028.825.037.031.2
5 cups/day and above42.145.050.353.941.252.4
Note: Multilevel model was used to evaluate the effect of the intervention after adjusting the nutrition knowledge score. Group effect: # p < 0.05; time effect: @ one year p < 0.05; @@ two years p < 0.05; time × group effects: * p < 0.05.
Table 8. Test of the fixed effects of various factors of dietary behavior score.
Table 8. Test of the fixed effects of various factors of dietary behavior score.
EffectTypeβ *SE #T-Valuep-Value
Intercept 0.076108.69<0.001
GroupIntervention 0.0882.150.032
ControlRef.
TimeSecond Year 0.1002.670.008
First Year 0.1021.010.311
BaselineRef.
Time × GroupSecond Year × Intervention 0.1141.670.094
Second Year × Control
First Year × Intervention 0.1160.660.510
First Year × Control
Baseline × InterventionRef.
Baseline × Control
Note: After adjusting for the nutrition knowledge score, group effect: p > 0.05; time effect: p > 0.05; time × group effect: p > 0.05. * β, coefficient. # SE, standard error.
Table 9. Comparison of height, weight, and BMI of children between intervention group and control group.
Table 9. Comparison of height, weight, and BMI of children between intervention group and control group.
BaselineFirst YearSecond YearChange (Baseline-Second Year)
ControlInterventionControlInterventionControlInterventionControlIntervention
Height (cm) @,@@
Male127.42 ± 6.83128.10 ± 6.93133.37 ± 7.97133.19 ± 9.09141.06 ± 9.27141.26 ± 8.866.79 ± 8.076.58 ± 7.07
Female127.70 ± 8.10127.26 ± 7.73134.34 ± 9.31133.77 ± 8.64142.61 ± 10.03142.52 ± 8.827.38 ± 8.027.65 ± 8.10
Weight (kg) #,@,@@
Male25.99 ± 5.1727.29 ± 6.5829.32 ± 7.0230.38 ± 12.3535.59 ± 8.8936.74 ± 9.464.79 ± 6.174.71 ± 5.55
Female25.32 ± 5.4725.82 ± 5.9028.85 ± 6.8629.07 ± 7.2836.11 ± 8.6536.57 ± 8.945.35 ± 6.275.40 ± 6.20
BMI (kg/m2) @@
Male15.91 ± 2.1216.48 ± 2.8516.32 ± 2.5418.31 ± 2.1617.68 ± 2.8618.18 ± 3.140.88 ± 1.540.85 ± 1.38
Female15.38 ± 1.9915.78 ± 2.3715.79 ± 2.1816.05 ± 2.6617.53 ± 2.6017.77 ± 2.911.07 ± 1.541.00 ± 1.44
Note: Multilevel model was used to evaluate the effect of the intervention after adjusting for physical activity. Group effect: # p < 0.05; time effect: @ one year p < 0.05; @@ two years p < 0.05. Note: Values are presented as mean ± SD.
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MDPI and ACS Style

Xu, Y.; Bi, X.; Gao, T.; Yang, T.; Xu, P.; Gan, Q.; Xu, J.; Cao, W.; Wang, H.; Pan, H.; et al. Effect of School-Based Nutrition and Health Education for Rural Chinese Children. Nutrients 2022, 14, 3997. https://doi.org/10.3390/nu14193997

AMA Style

Xu Y, Bi X, Gao T, Yang T, Xu P, Gan Q, Xu J, Cao W, Wang H, Pan H, et al. Effect of School-Based Nutrition and Health Education for Rural Chinese Children. Nutrients. 2022; 14(19):3997. https://doi.org/10.3390/nu14193997

Chicago/Turabian Style

Xu, Ying, Xiaoyi Bi, Tingting Gao, Titi Yang, Peipei Xu, Qian Gan, Juan Xu, Wei Cao, Hongliang Wang, Hui Pan, and et al. 2022. "Effect of School-Based Nutrition and Health Education for Rural Chinese Children" Nutrients 14, no. 19: 3997. https://doi.org/10.3390/nu14193997

APA Style

Xu, Y., Bi, X., Gao, T., Yang, T., Xu, P., Gan, Q., Xu, J., Cao, W., Wang, H., Pan, H., Ren, Z., Yin, C., & Zhang, Q. (2022). Effect of School-Based Nutrition and Health Education for Rural Chinese Children. Nutrients, 14(19), 3997. https://doi.org/10.3390/nu14193997

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