医疗融资中的机器学习:效益、风险和监管需求。

IF 8.4 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Bulletin of the World Health Organization Pub Date : 2024-03-01 Epub Date: 2023-12-08 DOI:10.2471/BLT.23.290333
Inke Mathauer, Maarten Oranje
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引用次数: 0

摘要

机器学习越来越多地用于医疗融资功能(筹集资金、集中资金和购买),但其对全民医保(UHC)目标的影响却缺乏证据。本文概述了机器学习的使用案例及其潜在的效益和风险。评估结果表明,机器学习在卫生筹资方面的各种用例有可能影响全民医保的所有中期目标--资源的公平分配(正反两方面)、效率(主要是正面)和透明度(正反两方面)。此外,对全民健康计划的所有三个最终目标,即根据需求利用医疗服务、资金保护和优质护理,也会产生积极和消极影响。当机器学习的使用促进或简化了与全民医保目标背道而驰的医疗融资任务时,就会产生各种风险--例如风险选择、以牺牲医疗质量为代价降低成本、降低财务保护或过度监督。使用机器学习的效果是积极的还是消极的,取决于应用该技术的方式和目的。因此,需要制定具体的医疗融资指南和法规,特别是针对(自愿)医疗保险的指南和法规。为了为制定具体的医疗融资指南和法规提供信息,我们提出了几个关键的政策和研究问题。为了更好地了解机器学习如何影响实现全民健康目标的医疗融资,应在应用机器学习的同时开展更系统、更严格的研究。
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Machine learning in health financing: benefits, risks and regulatory needs.

There is increasing use of machine learning for the health financing functions (revenue raising, pooling and purchasing), yet evidence lacks for its effects on the universal health coverage (UHC) objectives. This paper provides a synopsis of the use cases of machine learning and their potential benefits and risks. The assessment reveals that the various use cases of machine learning for health financing have the potential to affect all the UHC intermediate objectives - the equitable distribution of resources (both positively and negatively); efficiency (primarily positively); and transparency (both positively and negatively). There are also both positive and negative effects on all three UHC final goals, that is, utilization of health services in line with need, financial protection and quality care. When the use of machine learning facilitates or simplifies health financing tasks that are counterproductive to UHC objectives, there are various risks - for instance risk selection, cost reductions at the expense of quality care, reduced financial protection or over-surveillance. Whether the effects of using machine learning are positive or negative depends on how and for which purpose the technology is applied. Therefore, specific health financing guidance and regulations, particularly for (voluntary) health insurance, are needed. To inform the development of specific health financing guidance and regulation, we propose several key policy and research questions. To gain a better understanding of how machine learning affects health financing for UHC objectives, more systematic and rigorous research should accompany the application of machine learning.

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来源期刊
Bulletin of the World Health Organization
Bulletin of the World Health Organization 医学-公共卫生、环境卫生与职业卫生
CiteScore
11.50
自引率
0.90%
发文量
317
审稿时长
3 months
期刊介绍: The Bulletin of the World Health Organization Journal Overview: Leading public health journal Peer-reviewed monthly journal Special focus on developing countries Global scope and authority Top public and environmental health journal Impact factor of 6.818 (2018), according to Web of Science ranking Audience: Essential reading for public health decision-makers and researchers Provides blend of research, well-informed opinion, and news
期刊最新文献
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