Harnessing Machine Learning for Predictive Healthcare: A Path to Efficient Health Systems in Africa
| المؤلف | Gulma, Kabiru |
| المؤلف | Saidu, Zainab |
| المؤلف | Godfrey, Kingsley |
| المؤلف | Wada, Abubakar |
| المؤلف | Shitu, Zayyanu |
| المؤلف | Bala, Auwal Adam |
| المؤلف | Borodo, Safiya Bala |
| المؤلف | Julde, Sa’adatu M |
| المؤلف | Mohammed, Mustapha |
| تاريخ الإتاحة | 2026-01-27T05:33:17Z |
| تاريخ النشر | 2025 |
| اسم المنشور | Health Informatics and Information Management |
| المعرّف | http://dx.doi.org/10.17352/hiim.000001 |
| الاقتباس | Gulma K, Saidu Z, Godfrey K, Wada A, Shitu Z, Bala AA, et al. Harnessing Machine Learning for Predictive Healthcare: A Path to Efficient Health Systems in Africa. Health Inform Inf Manag. 2025;1(1):001-010. Available from: 10.17352/hiim.000001 |
| الملخص | Machine learning (ML) presents a transformative opportunity to strengthen African health systems through predictive healthcare. This paper explores the applications, benefits, and implementation challenges of ML in African health contexts, where resource limitations and infrastructure gaps often impede efficient healthcare delivery. By leveraging supervised and unsupervised ML models-such as decision trees, neural networks, and support vector machines-predictive healthcare can aid in early disease detection, improve patient outcomes, and optimize resource allocation. Real-world case studies across the continent, including malaria forecasting and telemedicine applications, illustrate the potential of ML to mitigate the burdens of delayed diagnosis, an underutilized workforce, and a fragmented health infrastructure. However, barriers such as limited access to high-quality, structured health data, privacy concerns, algorithmic bias, and ethical dilemmas related to fairness and transparency must be addressed. The manuscript critically examines data preprocessing techniques, data source diversity, and the necessity of ethical frameworks for AI integration. Future directions include leveraging wearable technologies, integrating interdisciplinary research, and contextualizing ML models within Africa’s unique socio-political and epidemiological realities. The study argues for developing equitable, data-driven, and scalable ML solutions tailored to Africa’s public health priorities, shifting from reactive to predictive health systems. |
| اللغة | en |
| الناشر | HealthDISGroup |
| الموضوع | Machine-learning Predictive healthcare Health systems strengthening Healthcare optimization Data-driven health Artifi cial intelligence Ethical AI in healthcare |
| النوع | Article Review |
| رقم المجلد | 1 |
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