医疗保健中的机器学习:对挑战和机遇的关键评估。

Mark Sendak, Michael Gao, Marshall Nichols, Anthony Lin, Suresh Balu
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引用次数: 48

摘要

完全集成的机器学习模型驱动临床护理的例子很少。尽管在方法论的发展方面取得了重大进展,机器学习在主流医学文献中的地位日益突出,但仍存在重大挑战。在杜克健康,我们在临床护理中开发、试点和实施机器学习技术已经是第四年了。为了推动机器学习向临床护理的转化,卫生系统领导者必须解决进展的障碍,并进行必要的战略投资,将卫生保健带入新的数字时代。机器学习可以以微妙的方式改善临床工作流程,这与统计学塑造医学的方式截然不同。然而,大多数机器学习研究都是在孤岛中进行的,关于如何在部署后重新训练和验证模型,还有一些重要的、未解决的问题。培养和重视跨学科合作的学术医疗中心非常适合将机器学习整合到临床护理中。在培育协作环境的同时,卫生系统领导者必须投资开发标准电子健康记录之外的工作人员和技术基础设施的新能力。现在是打破障碍,实现临床研究人员和机器学习专家之间高影响力合作数量可扩展增长的机会,以改变临床护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning in Health Care: A Critical Appraisal of Challenges and Opportunities.

Examples of fully integrated machine learning models that drive clinical care are rare. Despite major advances in the development of methodologies that outperform clinical experts and growing prominence of machine learning in mainstream medical literature, major challenges remain. At Duke Health, we are in our fourth year developing, piloting, and implementing machine learning technologies in clinical care. To advance the translation of machine learning into clinical care, health system leaders must address barriers to progress and make strategic investments necessary to bring health care into a new digital age. Machine learning can improve clinical workflows in subtle ways that are distinct from how statistics has shaped medicine. However, most machine learning research occurs in siloes, and there are important, unresolved questions about how to retrain and validate models post-deployment. Academic medical centers that cultivate and value transdisciplinary collaboration are ideally suited to integrate machine learning in clinical care. Along with fostering collaborative environments, health system leaders must invest in developing new capabilities within the workforce and technology infrastructure beyond standard electronic health records. Now is the opportunity to break down barriers and achieve scalable growth in the number of high-impact collaborations between clinical researchers and machine learning experts to transform clinical care.

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