医疗保健领域的人工智能:尽管应用令人印象深刻,但发展有限。

IF 5.5 1区 医学
Robert Bergquist, Laura Rinaldi, Xiao-Nong Zhou
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引用次数: 0

摘要

背景:人工智能(AI)仍然知之甚少,其快速增长引发了人们对反乌托邦叙事的担忧。人工智能已经显示出通过优化和标准化产生新的医疗内容和改善管理的能力,从而缩短了排队时间,但它对技术解决方案的完全依赖威胁着传统的医患关系。方法:基于世界经济论坛强调在医疗领域加快采用人工智能的必要性,我们强调了目前对其应用的理解差距,并为未来的研究提供了一套优先事项。对人工智能的历史回顾和最新出版物指出了复杂性和分散的监管等障碍,而对大数据的辅助分析提供了新的见解。人工智能在医疗保健领域的潜力与基于规则的计算的突破有关,通过从经验中学习和推理能力实现自主。正如获得诺贝尔奖的AlphaFold2方法所强调的那样,如果没有人工智能,蛋白质折叠就不会得到解决。预计人工智能在诊断、疾病控制、地理空间卫生和流行病学方面的作用将导致类似的进展。结论:人工智能提高了效率,推动了创新,解决了复杂的问题,但也可能加深偏见,造成安全威胁。控制进展需要行业协作,从而迅速加速将人工智能适当纳入卫生领域。要有效应对这些挑战,需要政府之间以及公共和私营部门之间开展合作,采取多方参与的方式。为了充分利用人工智能在加速医疗改革和缩短排队时间方面的潜力,同时保持医疗保健的慈悲本质,需要所有利益攸关方采取协调一致的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Artificial intelligence for healthcare: restrained development despite impressive applications.

Artificial intelligence for healthcare: restrained development despite impressive applications.

Artificial intelligence for healthcare: restrained development despite impressive applications.

Background: Artificial intelligence (AI) remains poorly understood and its rapid growth raises concerns reminiscent of dystopian narratives. AI has shown the capability of producing new medical content and improving management through optimization and standardization, which shortens queues, while its complete reliance on technical solutions threatens the traditional doctor-patient bond.

Approach: Based on the World Economic Forum's emphasis on the need for faster AI adoption in the medical field, we highlight current gaps in the understanding of its application and offer a set of priorities for future research. The historic review of AI and the latest publications point at barriers like complexity and fragmented regulations, while assisted analysis of big data offers new insights. AI's potential in healthcare is linked to the breakthrough from rule-based computing, enabling autonomy through learning from experience and the capacity of reasoning. Without AI, protein folding would have remained unsolved, as emphasized by the Nobel-honored AlphaFold2 approach. It is expected that AI's role in diagnostics, disease control, geospatial health and epidemiology will lead to similar progress.

Conclusions: AI boosts efficiency, drives innovation, and solves complex problems but can also deepen biases and create security threats. Controlled progress requires industry collaboration leading to prompt acceleration of proper incorporation of AI into the health sphere. Cooperation between governments as well as both public and private sectors with a multi-actor approach is needed to effectively address these challenges. To fully harness AI's potential in accelerating healthcare reform and shorten queues, while maintaining the compassionate essence of healthcare, a well-coordinated approach involving all stakeholders is necessary.

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来源期刊
Infectious Diseases of Poverty
Infectious Diseases of Poverty INFECTIOUS DISEASES-
自引率
1.20%
发文量
368
期刊介绍: Infectious Diseases of Poverty is an open access, peer-reviewed journal that focuses on addressing essential public health questions related to infectious diseases of poverty. The journal covers a wide range of topics including the biology of pathogens and vectors, diagnosis and detection, treatment and case management, epidemiology and modeling, zoonotic hosts and animal reservoirs, control strategies and implementation, new technologies and application. It also considers the transdisciplinary or multisectoral effects on health systems, ecohealth, environmental management, and innovative technology. The journal aims to identify and assess research and information gaps that hinder progress towards new interventions for public health problems in the developing world. Additionally, it provides a platform for discussing these issues to advance research and evidence building for improved public health interventions in poor settings.
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