» Articles » PMID: 38249852

Predictive Modeling for Infectious Diarrheal Disease in Pediatric Populations: A Systematic Review

Overview
Date 2024 Jan 22
PMID 38249852
Authors
Affiliations
Soon will be listed here.
Abstract

Introduction: Diarrhea is still a significant global public health problem. There are currently no systematic evaluation of the modeling areas and approaches to predict diarrheal illness outcomes. This paper reviews existing research efforts in predictive modeling of infectious diarrheal illness in pediatric populations.

Methods: We conducted a systematic review via a PubMed search for the period 1990-2021. A comprehensive search query was developed through an iterative process and literature on predictive modeling of diarrhea was retrieved. The following filters were applied to the search results: human subjects, English language, and children (birth to 18 years). We carried out a narrative synthesis of the included publications.

Results: Our literature search returned 2671 articles. After manual evaluation, 38 of these articles were included in this review. The most common research topic among the studies were disease forecasts 14 (36.8%), vaccine-related predictions 9 (23.7%), and disease/pathogen detection 5 (13.2%). Majority of these studies were published between 2011 and 2020, 28 (73.7%). The most common technique used in the modeling was machine learning 12 (31.6%) with various algorithms used for the prediction tasks. With change in the landscape of diarrheal etiology after rotavirus vaccine introduction, many open areas (disease forecasts, disease detection, and strain dynamics) remain for pathogen-specific predictive models among etiological agents that have emerged as important. Additionally, the outcomes of diarrheal illness remain under researched. We also observed lack of consistency in the reporting of results of prediction models despite the available guidelines highlighting the need for common data standards and adherence to guidelines on reporting of predictive models for biomedical research.

Conclusions: Our review identified knowledge gaps and opportunities in predictive modeling for diarrheal illness, and limitations in existing attempts whilst advancing some precursory thoughts on how to address them, aiming to invigorate future research efforts in this sphere.

Citing Articles

Derivation and validation of a clinical predictive model for longer duration diarrhea among pediatric patients in Kenya using machine learning algorithms.

Ogwel B, Mzazi V, Awuor A, Okonji C, Anyango R, Oreso C BMC Med Inform Decis Mak. 2025; 25(1):28.

PMID: 39815316 PMC: 11737202. DOI: 10.1186/s12911-025-02855-6.


Predictive modeling for infectious diarrheal disease in pediatric populations: A systematic review.

Ogwel B, Mzazi V, Nyawanda B, Otieno G, Omore R Learn Health Syst. 2024; 8(1):e10382.

PMID: 38249852 PMC: 10797570. DOI: 10.1002/lrh2.10382.

References
1.
Medina D, Findley S, Guindo B, Doumbia S . Forecasting non-stationary diarrhea, acute respiratory infection, and malaria time-series in Niono, Mali. PLoS One. 2007; 2(11):e1181. PMC: 2077810. DOI: 10.1371/journal.pone.0001181. View

2.
Wu X, Lu Y, Zhou S, Chen L, Xu B . Impact of climate change on human infectious diseases: Empirical evidence and human adaptation. Environ Int. 2015; 86:14-23. DOI: 10.1016/j.envint.2015.09.007. View

3.
Tornheim J, Manya A, Oyando N, Kabaka S, OReilly C, Breiman R . The epidemiology of hospitalization with diarrhea in rural Kenya: the utility of existing health facility data in developing countries. Int J Infect Dis. 2009; 14(6):e499-505. DOI: 10.1016/j.ijid.2009.07.021. View

4.
Levine M, Nasrin D, Acacio S, Bassat Q, Powell H, Tennant S . Diarrhoeal disease and subsequent risk of death in infants and children residing in low-income and middle-income countries: analysis of the GEMS case-control study and 12-month GEMS-1A follow-on study. Lancet Glob Health. 2019; 8(2):e204-e214. PMC: 7025325. DOI: 10.1016/S2214-109X(19)30541-8. View

5.
Matsuda F, Ishimura S, Wagatsuma Y, Higashi T, Hayashi T, Faruque A . Prediction of epidemic cholera due to Vibrio cholerae O1 in children younger than 10 years using climate data in Bangladesh. Epidemiol Infect. 2007; 136(1):73-9. PMC: 2870765. DOI: 10.1017/S0950268807008175. View