Department Engineering Science, Institute of Biomedical Engineering, University of Oxford, Oxford, UK.
Hospital for Tropical Diseases, Ho Chi Minh, Vietnam.
Nat Commun. 2024 Sep 27;15(1):8270. doi: 10.1038/s41467-024-52618-6.
The integration of artificial intelligence (AI) into healthcare systems within low-middle income countries (LMICs) has emerged as a central focus for various initiatives aiming to improve healthcare access and delivery quality. In contrast to high-income countries (HICs), which often possess the resources and infrastructure to adopt innovative healthcare technologies, LMICs confront resource limitations such as insufficient funding, outdated infrastructure, limited digital data, and a shortage of technical expertise. Consequently, many algorithms initially trained on data from non-LMIC settings are now being employed in LMIC contexts. However, the effectiveness of these systems in LMICs can be compromised when the unique local contexts and requirements are not adequately considered. In this study, we evaluate the feasibility of utilizing models developed in the United Kingdom (a HIC) within hospitals in Vietnam (a LMIC). Consequently, we present and discuss practical methodologies aimed at improving model performance, emphasizing the critical importance of tailoring solutions to the distinct healthcare systems found in LMICs. Our findings emphasize the necessity for collaborative initiatives and solutions that are sensitive to the local context in order to effectively tackle the healthcare challenges that are unique to these regions.
人工智能(AI)在中低收入国家(LMICs)医疗系统中的融合已经成为各种旨在改善医疗服务获取和交付质量的倡议的核心关注点。与通常拥有资源和基础设施来采用创新医疗技术的高收入国家(HICs)不同,LMICs 面临着资源限制,如资金不足、基础设施陈旧、数字数据有限以及技术专业知识短缺。因此,许多最初在非 LMIC 环境中训练的算法现在正在 LMIC 环境中使用。然而,当没有充分考虑到独特的当地情况和需求时,这些系统在 LMICs 中的有效性可能会受到影响。在这项研究中,我们评估了在越南(LMIC)的医院中使用在英国(HIC)开发的模型的可行性。因此,我们提出并讨论了旨在提高模型性能的实用方法,强调了针对 LMICs 独特的医疗保健系统定制解决方案的重要性。我们的研究结果强调了需要开展合作举措和制定对当地情况敏感的解决方案,以便有效地应对这些地区特有的医疗保健挑战。