Considerations for the implementation of machine learning into acute care settings.

IF 6.7 2区 医学 Q1 Medicine
Andrew Bishara, Elijah H Maze, Mervyn Maze
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引用次数: 1

Abstract

Introduction: Management of patients in the acute care setting requires accurate diagnosis and rapid initiation of validated treatments; therefore, this setting is likely to be an environment in which cognitive augmentation of the clinician's provision of care with technology rooted in artificial intelligence, such as machine learning (ML), is likely to eventuate.

Sources of data: PubMed and Google Scholar with search terms that included ML, intensive/critical care unit, electronic health records (EHR), anesthesia information management systems and clinical decision support were the primary sources for this report.

Areas of agreement: Different categories of learning of large clinical datasets, often contained in EHRs, are used for training in ML. Supervised learning uses algorithm-based models, including support vector machines, to pair patients' attributes with an expected outcome. Unsupervised learning uses clustering algorithms to define to which disease grouping a patient's attributes most closely approximates. Reinforcement learning algorithms use ongoing environmental feedback to deterministically pursue likely patient outcome.

Areas of controversy: Application of ML can result in undesirable outcomes over concerns related to fairness, transparency, privacy and accountability. Whether these ML technologies irrevocably change the healthcare workforce remains unresolved.

Growing points: Well-resourced Learning Health Systems are likely to exploit ML technology to gain the fullest benefits for their patients. How these clinical advantages can be extended to patients in health systems that are neither well-endowed, nor have the necessary data gathering technologies, needs to be urgently addressed to avoid further disparities in healthcare.

在急症护理环境中实施机器学习的考虑。
简介:在急性护理环境中管理患者需要准确的诊断和快速启动有效的治疗;因此,在这种环境中,临床医生提供护理的认知增强可能最终会基于人工智能技术,如机器学习(ML)。数据来源:PubMed和Google Scholar的搜索词包括ML、重症/重症监护病房、电子健康记录(EHR)、麻醉信息管理系统和临床决策支持是本报告的主要来源。共识领域:通常包含在电子病历中的大型临床数据集的不同类别的学习用于ML的训练。监督学习使用基于算法的模型,包括支持向量机,将患者的属性与预期结果配对。无监督学习使用聚类算法来定义患者属性最接近的疾病分组。强化学习算法使用持续的环境反馈来确定地追求可能的患者结果。争议领域:机器学习的应用可能会导致与公平、透明度、隐私和问责制相关的不良后果。这些机器学习技术是否会不可逆转地改变医疗保健队伍仍未解决。成长点:资源充足的学习型医疗系统可能会利用机器学习技术为患者带来最大的好处。迫切需要解决的问题是,如何将这些临床优势扩展到既不具备条件又不具备必要数据收集技术的卫生系统中的患者,以避免卫生保健方面的进一步差距。
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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来源期刊
British medical bulletin
British medical bulletin 医学-医学:内科
CiteScore
13.10
自引率
1.50%
发文量
24
审稿时长
>12 weeks
期刊介绍: British Medical Bulletin is a multidisciplinary publication, which comprises high quality reviews aimed at generalist physicians, junior doctors, and medical students in both developed and developing countries. Its key aims are to provide interpretations of growing points in medicine by trusted experts in the field, and to assist practitioners in incorporating not just evidence but new conceptual ways of thinking into their practice.
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