A comparative analysis of generalized additive models for obesity risk prediction

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dc.date.accessioned 2025-11-18T13:07:22Z
dc.date.available 2025-11-18T13:07:22Z
dc.date.issued 2025-09-29 en
dc.identifier.uri http://hdl.handle.net/20.500.11910/24498
dc.description.abstract relationships between risk factors, limiting predictive accuracy and hindering effective public health interventions. Conventional methods overlook non-linear associations and interaction effects across demographic, socioeconomic, and behavioral predictors, which are particularly important in diverse populations with varying obesity determinants. To address these limitations, we applied Generalized Additive Models for Location, Scale, and Shape (GAMLSS) to analyze obesity predictors in a nationally representative adolescent sample (N = 671). Our framework included comprehensive variable selection across demographic, socioeconomic, behavioral, and clinical domains, comparison with three alternative regression models, and validation using the Generalized Akaike Information Criterion (GAIC). The binomial stepwise GAMLSS model demonstrated superior performance (GAIC = 624.98). Key findings included strong geographic variation, significant gender disparity, a socioeconomic gradient, and important behavioral predictors such as weight gain attempts. The GAMLSS framework improves obesity risk prediction by modeling complex relationships often missed by traditional methods, offering targeted intervention strategies based on geographic, gender, and socioeconomic factors, and challenging assumptions about dietary influences. en
dc.format.medium Print en
dc.subject OBESITY en
dc.subject PUBLIC HEALTH RISKS en
dc.subject RISK BEHAVIOUR en
dc.subject CHRONIC ILLNESS en
dc.title A comparative analysis of generalized additive models for obesity risk prediction en
dc.type Journal Articles en
dc.description.version Y en
dc.ProjectNumber N/A en
dc.Volume August en
dc.BudgetYear 2025/26 en
dc.ResearchGroup Public Health, Societies and Belonging en
dc.SourceTitle Healthcare Analytics en
dc.ArchiveNumber 9815068 en
dc.PageNumber Online en
dc.outputnumber 15726 en
dc.bibliographictitle Awe, O.O., Olaniyan, O.A., Olatunde, A.E., Sewpaul, R. & Dukhi, N. (2025) A comparative analysis of generalized additive models for obesity risk prediction. Healthcare Analytics. August:Online. en
dc.publicationyear 2025 en
dc.contributor.author1 Awe, O.O. en
dc.contributor.author2 Olaniyan, O.A. en
dc.contributor.author3 Olatunde, A.E. en
dc.contributor.author4 Sewpaul, R. en
dc.contributor.author5 Dukhi, N. en


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