Ndikumana Fauste, Izabayo Josias, Kalisa Joseph, Nemerimana Mathieu, Nyabyenda Emmanuel Christian, Muzungu Sylivain Hirwa, Komezusenge Isaac, Uwase Melissa, Ndagijimana Similien, Twizere Celestin, Sezibera Vincent
African Center of Excellence in Data Sciences, University of Rwanda, Kigali, Rwanda.
Applied Research and Development & Foresight Incubation, National Industrial Research and Development Agency, Kigali, Rwanda.
Sci Rep. 2025 May 8;15(1):16032. doi: 10.1038/s41598-025-00519-z.
Globally, mental disorders are a significant burden, particularly in low- and middle-income countries, with high prevalence in Rwanda, especially among survivors of the 1994 genocide against Tutsi. Machine learning offers promise in predicting mental health outcomes by identifying patterns missed by traditional methods. However, its application in Rwanda remains under-explored. The study aims to apply machine learning techniques to predict mental health and identify its associated risk factors among Rwandan youth. Mental health data from Rwanda Biomedical Center, collected through the recent Rwanda mental health cross-sectional study and with youth sample of 5221 was used. We used four machine learning models namely logistic regression, Support Vector Machine, Random Forest and Gradient boosting to predict mental health vulnerability among youth. The research findings indicate that the random forest model is the most effective with an accuracy of 88.8% in modeling and predicting factors contributing to mental health vulnerability and 75 % in predicting mental disorders comorbidity. Exposure to traumatic events and violence, heavy drinking and a family history of mental health emerged as the most significant risk factors contributing to the development of mental disorders. While trauma experience, violence experience, affiliation to pro-social group and family history of mental disorders are the main comorbidity drivers. These findings indicate that machine learning can provide insightful results in predicting factors associated with mental health and confirm the role of social and biological factors in mental health. Therefore, it is crucial to consider biological and social factors particularly experience of violence and exposure to traumatic events, when developing mental health interventions and policies in Rwanda. Potential initiatives should prioritize the youth who experience social hardship to strengthen intervention efforts.
在全球范围内,精神障碍是一项重大负担,在低收入和中等收入国家尤为如此,在卢旺达患病率很高,特别是在1994年针对图西族的种族灭绝幸存者中。机器学习有望通过识别传统方法遗漏的模式来预测心理健康结果。然而,其在卢旺达的应用仍有待探索。该研究旨在应用机器学习技术来预测卢旺达青年的心理健康状况,并识别其相关风险因素。使用了卢旺达生物医学中心通过近期卢旺达心理健康横断面研究收集的心理健康数据,青年样本为5221人。我们使用了四种机器学习模型,即逻辑回归、支持向量机、随机森林和梯度提升,来预测青年的心理健康脆弱性。研究结果表明,随机森林模型最为有效,在建模和预测导致心理健康脆弱性的因素方面准确率为88.8%,在预测精神障碍合并症方面准确率为75%。遭受创伤事件和暴力、酗酒以及心理健康家族史是导致精神障碍发展的最主要风险因素。而创伤经历、暴力经历、加入亲社会群体以及精神障碍家族史是主要的合并症驱动因素。这些发现表明,机器学习在预测与心理健康相关的因素方面可以提供有洞察力的结果,并证实了社会和生物学因素在心理健康中的作用。因此,在卢旺达制定心理健康干预措施和政策时,考虑生物学和社会因素,特别是暴力经历和遭受创伤事件,至关重要。潜在的举措应优先考虑经历社会困境的青年,以加强干预力度。