Identifying Predictors of Problematic Substance Use Among Youth Living with HIV in Uganda: A Machine Learning Approach.

IF 2.4 2区 医学 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Claire Najjuuko, Rachel Brathwaite, Massy Mutumba, Saltanat Childress, Sylivia Nannono, Phionah Namatovu, Chenyang Lu, Fred M Ssewamala
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Abstract

Substance use among youth is a significant public health issue, particularly in low resource settings in Sub-Saharan Africa (SSA), where it contributes to HIV transmission and poor engagement in HIV care. This study employs machine learning (ML) techniques to develop models for predicting problematic substance use (PSU) among youth living with HIV (YLHIV) in Uganda, aiming to identify important multilevel risk factors and compare predictive performance of ML algorithms. Utilizing a cross-sectional dataset of 200 YLHIV aged 18-24 in Uganda, we trained and evaluated six predictive models, through 10-fold cross validation. Model performance was assessed using area under receiver operating characteristic curve (AUROC), and precision recall curve (AUPRC). Subsequent feature importance analysis revealed key predictors of PSU. The random forest model achieved the best discriminative performance with an AUROC of 0.78 (0.01) and AUPRC of 0.75 (0.02). Key predictors of PSU spanned individual, interpersonal, and community dimensions including depression, sexual risk-taking behaviors, monthly income, adverse childhood experiences, family involvement in selling alcohol, friends enabling access to alcohol, exposure to community educational campaigns against alcohol, household size, and knowledge of alcohol effects on HIV treatment. Our findings highlight ML's potential in predicting PSU among YLHIV and provide insights to guide targeted interventions and support policy formulations mitigating PSU effects on HIV management.

确定乌干达艾滋病毒感染者中有问题物质使用的预测因素:机器学习方法。
青年药物使用是一个重大的公共卫生问题,特别是在撒哈拉以南非洲资源匮乏的环境中,它助长了艾滋病毒的传播和艾滋病毒护理的不良参与。本研究采用机器学习(ML)技术开发模型,用于预测乌干达艾滋病毒感染者(YLHIV)青年的问题物质使用(PSU),旨在确定重要的多层次风险因素,并比较ML算法的预测性能。利用乌干达200名18-24岁的YLHIV的横断面数据集,我们通过10倍交叉验证训练和评估了6个预测模型。采用受试者工作特征曲线下面积(AUROC)和精确召回曲线(AUPRC)评价模型的性能。随后的特征重要性分析揭示了PSU的关键预测因素。随机森林模型的AUROC为0.78 (0.01),AUPRC为0.75(0.02),具有最佳的判别性能。PSU的主要预测因素涉及个人、人际和社区维度,包括抑郁、性冒险行为、月收入、不良童年经历、家庭参与销售酒精、朋友获得酒精、接触社区禁酒教育运动、家庭规模以及酒精对艾滋病毒治疗影响的知识。我们的研究结果突出了ML在预测YLHIV患者PSU方面的潜力,并为指导有针对性的干预和支持政策制定提供了见解,以减轻PSU对HIV管理的影响。
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来源期刊
AIDS and Behavior
AIDS and Behavior Multiple-
CiteScore
6.60
自引率
13.60%
发文量
382
期刊介绍: AIDS and Behavior provides an international venue for the scientific exchange of research and scholarly work on the contributing factors, prevention, consequences, social impact, and response to HIV/AIDS. This bimonthly journal publishes original peer-reviewed papers that address all areas of AIDS behavioral research including: individual, contextual, social, economic and geographic factors that facilitate HIV transmission; interventions aimed to reduce HIV transmission risks at all levels and in all contexts; mental health aspects of HIV/AIDS; medical and behavioral consequences of HIV infection - including health-related quality of life, coping, treatment and treatment adherence; and the impact of HIV infection on adults children, families, communities and societies. The journal publishes original research articles, brief research reports, and critical literature reviews. provides an international venue for the scientific exchange of research and scholarly work on the contributing factors, prevention, consequences, social impact, and response to HIV/AIDS. This bimonthly journal publishes original peer-reviewed papers that address all areas of AIDS behavioral research including: individual, contextual, social, economic and geographic factors that facilitate HIV transmission; interventions aimed to reduce HIV transmission risks at all levels and in all contexts; mental health aspects of HIV/AIDS; medical and behavioral consequences of HIV infection - including health-related quality of life, coping, treatment and treatment adherence; and the impact of HIV infection on adults children, families, communities and societies. The journal publishes original research articles, brief research reports, and critical literature reviews.5 Year Impact Factor: 2.965 (2008) Section ''SOCIAL SCIENCES, BIOMEDICAL'': Rank 5 of 29 Section ''PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH'': Rank 9 of 76
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