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AuthorQasrawi, Radwan
AuthorHoteit, Maha
AuthorTayyem, Reema
AuthorBookari, Khlood
AuthorAl Sabbah, Haleama
AuthorKamel, Iman
AuthorDashti, Somaia
AuthorAllehdan, Sabika
AuthorBawadi, Hiba
AuthorWaly, Mostafa
AuthorIbrahim, Mohammed O.
AuthorPolo, Stephanny Vicuna
AuthorAl-Halawa, Diala Abu
Available date2024-01-29T07:10:08Z
Publication Date2023-09-16
Publication NameBMC Public Health
Identifierhttp://dx.doi.org/10.1186/s12889-023-16694-5
CitationQasrawi, R., Hoteit, M., Tayyem, R., Bookari, K., Al Sabbah, H., Kamel, I., ... & Al-Halawa, D. A. (2023). Machine learning techniques for the identification of risk factors associated with food insecurity among adults in Arab countries during the COVID-19 pandemic. BMC public health, 23(1), 1805.
URIhttps://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85171420184&origin=inward
URIhttp://hdl.handle.net/10576/51308
AbstractBackground: A direct consequence of global warming, and strongly correlated with poor physical and mental health, food insecurity is a rising global concern associated with low dietary intake. The Coronavirus pandemic has further aggravated food insecurity among vulnerable communities, and thus has sparked the global conversation of equal food access, food distribution, and improvement of food support programs. This research was designed to identify the key features associated with food insecurity during the COVID-19 pandemic using Machine learning techniques. Seven machine learning algorithms were used in the model, which used a dataset of 32 features. The model was designed to predict food insecurity across ten Arab countries in the Gulf and Mediterranean regions. A total of 13,443 participants were extracted from the international Corona Cooking Survey conducted by 38 different countries during the COVID -19 pandemic. Results: The findings indicate that Jordanian, Palestinian, Lebanese, and Saudi Arabian respondents reported the highest rates of food insecurity in the region (15.4%, 13.7%, 13.7% and 11.3% respectively). On the other hand, Oman and Bahrain reported the lowest rates (5.4% and 5.5% respectively). Our model obtained accuracy levels of 70%-82% in all algorithms. Gradient Boosting and Random Forest techniques had the highest performance levels in predicting food insecurity (82% and 80% respectively). Place of residence, age, financial instability, difficulties in accessing food, and depression were found to be the most relevant features associated with food insecurity. Conclusions: The ML algorithms seem to be an effective method in early detection and prediction of food insecurity and can profoundly aid policymaking. The integration of ML approaches in public health strategies could potentially improve the development of targeted and effective interventions to combat food insecurity in these regions and globally.
Languageen
PublisherSpringer Nature
SubjectArab countries
COVID-19
Food consumption score
Food insecurity
Machine learning
Prediction
TitleMachine learning techniques for the identification of risk factors associated with food insecurity among adults in Arab countries during the COVID-19 pandemic
TypeArticle
Issue Number1
Volume Number23
ESSN1471-2458
dc.accessType Open Access


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