Machine Learning Approach for Predicting the Impact of Food Insecurity on Nutrient Consumption and Malnutrition in Children Aged 6 Months to 5 Years

Children Pub Date : 2024-07-02 DOI:10.3390/children11070810
R. Qasrawi, Sabri Sgahir, Maysaa Nemer, Mousa Halaikah, Manal Badrasawi, Malak Amro, Stephanny Vicuna Polo, Diala Abu Al-Halawa, Doa’a Mujahed, Lara Nasreddine, Ibrahim Elmadfa, Siham Atari, A. Al-Jawaldeh
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Abstract

Background: Food insecurity significantly impacts children’s health, affecting their development across cognitive, physical, and socio-emotional dimensions. This study explores the impact of food insecurity among children aged 6 months to 5 years, focusing on nutrient intake and its relationship with various forms of malnutrition. Methods: Utilizing machine learning algorithms, this study analyzed data from 819 children in the West Bank to investigate sociodemographic and health factors associated with food insecurity and its effects on nutritional status. The average age of the children was 33 months, with 52% boys and 48% girls. Results: The analysis revealed that 18.1% of children faced food insecurity, with household education, family income, locality, district, and age emerging as significant determinants. Children from food-insecure environments exhibited lower average weight, height, and mid-upper arm circumference compared to their food-secure counterparts, indicating a direct correlation between food insecurity and reduced nutritional and growth metrics. Moreover, the machine learning models observed vitamin B1 as a key indicator of all forms of malnutrition, alongside vitamin K1, vitamin A, and zinc. Specific nutrients like choline in the “underweight” category and carbohydrates in the “wasting” category were identified as unique nutritional priorities. Conclusion: This study provides insights into the differential risks for growth issues among children, offering valuable information for targeted interventions and policymaking.
预测粮食不安全对 6 个月至 5 岁儿童营养素消耗和营养不良影响的机器学习方法
背景:粮食不安全会严重影响儿童的健康,影响他们在认知、身体和社会情感方面的发展。本研究探讨了粮食不安全对 6 个月至 5 岁儿童的影响,重点关注营养素摄入量及其与各种形式营养不良的关系。研究方法本研究利用机器学习算法分析了来自约旦河西岸 819 名儿童的数据,以调查与粮食不安全相关的社会人口和健康因素及其对营养状况的影响。这些儿童的平均年龄为 33 个月,其中 52% 为男孩,48% 为女孩。结果显示分析结果表明,18.1% 的儿童面临粮食不安全问题,家庭教育、家庭收入、地点、地区和年龄是重要的决定因素。与粮食有保障的儿童相比,粮食无保障环境中的儿童平均体重、身高和中上臂围较低,这表明粮食无保障与营养和生长指标下降之间存在直接关联。此外,机器学习模型观察到,维生素 B1 与维生素 K1、维生素 A 和锌一样,是各种形式营养不良的关键指标。体重不足 "类别中的胆碱和 "消瘦 "类别中的碳水化合物等特定营养素被确定为独特的营养重点。结论这项研究深入揭示了儿童生长问题的不同风险,为有针对性的干预措施和政策制定提供了有价值的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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