全球卫生中的人工智能——采用和可持续性的框架和战略。

International Journal of MCH and AIDS Pub Date : 2020-01-01 Epub Date: 2020-02-10 DOI:10.21106/ijma.296
Trevor D Hadley, Rowland W Pettit, Tahir Malik, Amelia A Khoei, Hamisu M Salihu
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引用次数: 22

摘要

近年来,人工智能(AI)在医学领域的应用有了显著增长。机器学习、自然语言处理、专家系统、规划和物流方法以及图像处理网络等形式的人工智能提供了巨大的分析能力。虽然人工智能方法最初是为放射学概念化的,但今天的调查已遍及所有医学专业。由于需要适当的基础设施、熟练的劳动力以及获得大型、组织良好的数据集,大多数医疗人工智能应用仍然在高收入国家。然而,关键的技术进步,如云计算和几乎无处不在的智能手机,为在资源贫乏地区使用医疗人工智能应用铺平了道路。全球卫生行动(GHI)已经开始探索如何利用医疗人工智能技术来发现和减轻公共卫生不公平现象。例如,人工智能工具可以帮助优化疫苗提供和社区卫生工作者路线,从而使有限的资源产生最大的影响。其他有前途的人工智能工具已经证明了以下能力:根据智能手机照片预测烧伤愈合时间;结合环境趋势跟踪社会经济差异区域,以预测传染病暴发;并准确预测妊娠并发症,如出生窒息在低资源设置有限的患者临床资料。在这篇评论中,我们讨论了人工智能驱动的GHI的现状,并探讨了过去以技术为中心的GHI的相关经验教训。此外,我们提出了一个概念框架,以指导人工智能驱动的GHI可持续战略的发展,并概述了未来研究的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Artificial Intelligence in Global Health -A Framework and Strategy for Adoption and Sustainability.

Artificial Intelligence (AI) applications in medicine have grown considerably in recent years. AI in the forms of Machine Learning, Natural Language Processing, Expert Systems, Planning and Logistics methods, and Image Processing networks provide great analytical aptitude. While AI methods were first conceptualized for radiology, investigations today are established across all medical specialties. The necessity for proper infrastructure, skilled labor, and access to large, well-organized data sets has kept the majority of medical AI applications in higher-income countries. However, critical technological improvements, such as cloud computing and the near-ubiquity of smartphones, have paved the way for use of medical AI applications in resource-poor areas. Global health initiatives (GHI) have already begun to explore ways to leverage medical AI technologies to detect and mitigate public health inequities. For example, AI tools can help optimize vaccine delivery and community healthcare worker routes, thus enabling limited resources to have a maximal impact. Other promising AI tools have demonstrated an ability to: predict burn healing time from smartphone photos; track regions of socioeconomic disparity combined with environmental trends to predict communicable disease outbreaks; and accurately predict pregnancy complications such as birth asphyxia in low resource settings with limited patient clinical data. In this commentary, we discuss the current state of AI-driven GHI and explore relevant lessons from past technology-centered GHI. Additionally, we propose a conceptual framework to guide the development of sustainable strategies for AI-driven GHI, and we outline areas for future research.

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