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Predicting sexually transmitted infections among men who have sex with men in Zimbabwe using deep learning and ensemble machine learning models

Owen Mugurungi, Elliot Mbunge, Rutendo Birri-Makota, Innocent Chingombe, Munyaradzi Mapingure, Brian Moyo, Amon Mpofu, John Batani, Benhildah Muchemwa, Chesterfield Samba, Delight Murigo, Musa Sibindi, Enos Moyo, Tafadzwa Dzinamarira and Godfrey Musuka

PLOS Digital Health, 2024, vol. 3, issue 7, 1-17

Abstract: There is a substantial increase in sexually transmitted infections (STIs) among men who have sex with men (MSM) globally. Unprotected sexual practices, multiple sex partners, criminalization, stigmatisation, fear of discrimination, substance use, poor access to care, and lack of early STI screening tools are among the contributing factors. Therefore, this study applied multilayer perceptron (MLP), extremely randomized trees (ExtraTrees) and XGBoost machine learning models to predict STIs among MSM using bio-behavioural survey (BBS) data in Zimbabwe. Data were collected from 1538 MSM in Zimbabwe. The dataset was split into training and testing sets using the ratio of 80% and 20%, respectively. The synthetic minority oversampling technique (SMOTE) was applied to address class imbalance. Using a stepwise logistic regression model, the study revealed several predictors of STIs among MSM such as age, cohabitation with sex partners, education status and employment status. The results show that MLP performed better than STI predictive models (XGBoost and ExtraTrees) and achieved accuracy of 87.54%, recall of 97.29%, precision of 89.64%, F1-Score of 93.31% and AUC of 66.78%. XGBoost also achieved an accuracy of 86.51%, recall of 96.51%, precision of 89.25%, F1-Score of 92.74% and AUC of 54.83%. ExtraTrees recorded an accuracy of 85.47%, recall of 95.35%, precision of 89.13%, F1-Score of 92.13% and AUC of 60.21%. These models can be effectively used to identify highly at-risk MSM, for STI surveillance and to further develop STI infection screening tools to improve health outcomes of MSM.Author summary: In this study, we investigated the use of machine learning to identify men who have sex with men (MSM) at high risk of sexually transmitted infections (STIs) in Zimbabwe. MSM face a greater risk of STIs due to factors like unprotected sex and limited access to healthcare. We used data from a survey of over 1500 MSM in Zimbabwe to train machine learning models to predict STIs. These models were more accurate than traditional statistical methods at identifying high-risk individuals. Our findings suggest that machine learning could be a valuable tool for improving STI prevention and screening efforts among MSM, particularly in settings with limited resources. This approach could help healthcare providers target interventions to those most in need and ultimately improve the health outcomes of MSM in Zimbabwe.

Date: 2024
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pdig00:0000541

DOI: 10.1371/journal.pdig.0000541

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