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Machine Learning Approach for Predicting the Impact of Food Insecurity on Nutrient Consumption and Malnutrition in Children Aged 6 Months to 5 Years.
Qasrawi, Radwan; Sgahir, Sabri; Nemer, Maysaa; Halaikah, Mousa; Badrasawi, Manal; Amro, Malak; Vicuna Polo, Stephanny; Abu Al-Halawa, Diala; Mujahed, Doa'a; Nasreddine, Lara; Elmadfa, Ibrahim; Atari, Siham; Al-Jawaldeh, Ayoub.
Afiliação
  • Qasrawi R; Department of Computer Sciences, Al Quds University, Jerusalem P.O. Box 20002, Palestine.
  • Sgahir S; Department of Computer Engineering, Istinye University, 34010 Istanbul, Turkey.
  • Nemer M; Department of Nutrition and Food Technology, College of Agriculture, Hebron University, Hebron P.O. Box 40, Palestine.
  • Halaikah M; Institute of Community and Public Health, Birzeit University, Ramallah P.O. Box 14, Palestine.
  • Badrasawi M; Nutrition Department, Ministry of Health, Ramallah P.O. Box 4284, Palestine.
  • Amro M; Nutrition and Food Technology Department, Faculty of Agriculture and Veterinary Medicine, An-Najah National University, Nablus P.O. Box 7, Palestine.
  • Vicuna Polo S; Department of Computer Sciences, Al Quds University, Jerusalem P.O. Box 20002, Palestine.
  • Abu Al-Halawa D; Department of Computer Sciences, Al Quds University, Jerusalem P.O. Box 20002, Palestine.
  • Mujahed D; Faculty of Medicine, Al-Quds University, Jerusalem P.O. Box 20002, Palestine.
  • Nasreddine L; Institute of Community and Public Health, Birzeit University, Ramallah P.O. Box 14, Palestine.
  • Elmadfa I; Nutrition and Food Sciences Department, Faculty of Agriculture and Food Sciences, American University of Beirut, Beirut 1107 2020, Lebanon.
  • Atari S; Department of Nutrition, Faculty of Life Sciences, University of Vienna, 1090 Vienna, Austria.
  • Al-Jawaldeh A; Department of Computer Sciences, Al Quds University, Jerusalem P.O. Box 20002, Palestine.
Children (Basel) ; 11(7)2024 Jul 02.
Article em En | MEDLINE | ID: mdl-39062259
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.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Children (Basel) Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Children (Basel) Ano de publicação: 2024 Tipo de documento: Article