Institutional Repository

Predictive modelling of linear growth faltering among pediatric patients with Diarrhea in Rural Western Kenya: an explainable machine learning approach

Show simple item record

dc.contributor.author Ogwel, Billy
dc.contributor.author Mzazi, Vincent H.
dc.contributor.author Awuor, Alex O.
dc.contributor.author Okonji, Caleb
dc.contributor.author Anyango, Raphael O.
dc.contributor.author Oreso, Caren
dc.contributor.author Ochieng, John B.
dc.contributor.author Munga, Stephen
dc.contributor.author Nasrin, Dilruba
dc.contributor.author Tickell, Kirkby D.
dc.contributor.author Pavlinac, Patricia B.
dc.contributor.author Kotloff, Karen L.
dc.contributor.author Omore, Richard
dc.date.accessioned 2025-01-01T04:26:24Z
dc.date.available 2025-01-01T04:26:24Z
dc.date.issued 2024-12-02
dc.identifier.citation BMC Medical Informatics and Decision Making. 2024 Dec 02;24(1):368
dc.identifier.uri https://doi.org/10.1186/s12911-024-02779-7
dc.identifier.uri https://hdl.handle.net/10500/32003
dc.description.abstract Abstract Introduction Stunting affects one-fifth of children globally with diarrhea accounting for an estimated 13.5% of stunting. Identifying risk factors for its precursor, linear growth faltering (LGF), is critical to designing interventions. Moreover, developing new predictive models for LGF using more recent data offers opportunity to enhance model accuracy, interpretability and capture new insights. We employed machine learning (ML) to derive and validate a predictive model for LGF among children enrolled with diarrhea in the Vaccine Impact on Diarrhea in Africa (VIDA) study and the Enterics for Global Heath (EFGH) ― Shigella study in rural western Kenya. Methods We used 7 diverse ML algorithms to retrospectively build prognostic models for the prediction of LGF (≥ 0.5 decrease in height/length for age z-score [HAZ]) among children 6–35 months. We used de-identified data from the VIDA study (n = 1,106) combined with synthetic data (n = 8,894) in model development, which entailed split-sampling and K-fold cross-validation with over-sampling technique, and data from EFGH-Shigella study (n = 655) for temporal validation. Potential predictors (n = 65) included demographic, household-level characteristics, illness history, anthropometric and clinical data were identified using boruta feature selection with an explanatory model analysis used to enhance interpretability. Results The prevalence of LGF in the development and temporal validation cohorts was 187 (16.9%) and 147 (22.4%), respectively. Feature selection identified the following 6 variables used in model development, ranked by importance: age (16.6%), temperature (6.0%), respiratory rate (4.1%), SAM (3.4%), rotavirus vaccination (3.3%), and skin turgor (2.1%). While all models showed good prediction capability, the gradient boosting model achieved the best performance (area under the curve % [95% Confidence Interval]: 83.5 [81.6–85.4] and 65.6 [60.8–70.4]) on the development and temporal validation datasets, respectively. Conclusion Our findings accentuate the enduring relevance of established predictors of LGF whilst demonstrating the practical utility of ML algorithms for rapid identification of at-risk children.
dc.title Predictive modelling of linear growth faltering among pediatric patients with Diarrhea in Rural Western Kenya: an explainable machine learning approach
dc.type Journal Article
dc.date.updated 2025-01-01T04:26:24Z
dc.language.rfc3066 en
dc.rights.holder The Author(s)


Files in this item

This item appears in the following Collection(s)

Show simple item record

Search UnisaIR


Browse

My Account

Statistics