Application of deep learning and machine learning models to improve healthcare in sub-Saharan Africa: Emerging opportunities, trends and implications

Elliot Mbunge , John Batani
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Abstract

Deep learning and machine learning techniques present unmatched opportunities to improve healthcare in sub-Saharan Africa (SSA). However, there is a paucity of literature on AI-based applications deployed to improve care in SSA, which makes it challenging to organise the research contributions in the present and to highlight obstacles and emerging research areas that need to be explored in the future. This study applied the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analysis) model to conduct a comprehensive review of deep learning and machine learning models deployed in SSA to improve access to care while exploring emerging opportunities, trends and implications for integrating AI-based models in SSA healthcare. This study reveals that AI models can analyse and derive inferences from massive health data for early detection, diagnosis, monitoring for chronic disorders, prediction of diseases, monitoring large-scale public health patterns and help limit exposure in contagious environments. AI can facilitate the development of targeted health interventions and improve patient outcomes in all stages of diagnosis, treatment, drug development and monitoring, personalised medicine, patient control and care. Integrating AI models with health applications can tremendously assist health professionals and policymakers in disease diagnosis and making informed decisions. AI algorithms bias, poor access to health data and formats, and lack of policies and frameworks supporting the integration of data-driven AI-based solutions into health systems hinder the integration of AI-based models into health systems. There is a need for transparency and ethical use of AI and crafting policies that support the use of AI in SSA health systems. Utilising AI-based models in healthcare can also assist researchers and healthcare workers to move towards smart care and better comprehend future research needs of AI in smart care.

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应用深度学习和机器学习模型改善撒哈拉以南非洲的医疗保健:新出现的机遇、趋势和影响
深度学习和机器学习技术为改善撒哈拉以南非洲(SSA)的医疗保健提供了无与伦比的机会。然而,关于用于改善SSA护理的基于人工智能的应用程序的文献很少,这使得目前组织研究贡献以及强调未来需要探索的障碍和新兴研究领域具有挑战性。本研究应用PRISMA(系统评价和荟萃分析的首选报告项目)模型对SSA中部署的深度学习和机器学习模型进行了全面审查,以改善获得护理的机会,同时探索在SSA医疗保健中集成基于人工智能的模型的新机会、趋势和意义。这项研究表明,人工智能模型可以分析和推断大量健康数据,用于早期检测、诊断、监测慢性疾病、预测疾病、监测大规模公共卫生模式,并有助于限制接触传染性环境。人工智能可以促进有针对性的健康干预措施的发展,并改善患者在诊断、治疗、药物开发和监测、个性化药物、患者控制和护理的各个阶段的结果。将人工智能模型与健康应用程序相结合,可以极大地帮助卫生专业人员和决策者进行疾病诊断和做出明智的决策。人工智能算法的偏见、对健康数据和格式的获取能力差,以及缺乏支持将基于数据驱动的人工智能解决方案集成到健康系统中的政策和框架,阻碍了将基于人工智能的模型集成到健康系统中。人工智能的使用需要透明和合乎道德,并制定支持在SSA卫生系统中使用人工智能的政策。在医疗保健中使用基于人工智能的模型也可以帮助研究人员和医护人员走向智能医疗,更好地理解人工智能在智能医疗中的未来研究需求。
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