Using machine learning and clinical registry data to uncover variation in clinical decision making

Charlotte James , Michael Allen , Martin James , Richard Everson
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引用次数: 0

Abstract

Clinical registry data contains a wealth of information on patients, clinical practice, outcomes and interventions. Machine learning algorithms are able to learn complex patterns from data. We present methods for using machine learning with clinical registry data for quality improvement by identifying where variation in decision making occurs. Using a registry of stroke patients, we demonstrate how machine learning can be used to: investigate whether patients would have been treated differently had they attended a different hospital; group hospitals according to clinical decision making practice; identify where there is variation in decision making between hospitals; characterise patients that hospitals find it hard to agree on how to treat. Our methods should be applicable to any clinical registry and any machine learning algorithm to investigate the extent to which clinical practice is standardized and identify areas for improvement at a hospital level.

使用机器学习和临床注册数据来发现临床决策的变化
临床登记数据包含大量关于患者、临床实践、结果和干预措施的信息。机器学习算法能够从数据中学习复杂的模式。我们提出了使用机器学习和临床注册数据的方法,通过识别决策发生变化的地方来提高质量。通过对中风患者的登记,我们展示了机器学习如何用于:调查如果患者去不同的医院,他们是否会得到不同的治疗;集团医院临床决策实践;确定医院之间在决策方面的差异;描述医院很难就如何治疗达成一致的病人的特征。我们的方法应该适用于任何临床登记和任何机器学习算法,以调查临床实践标准化的程度,并确定医院层面需要改进的领域。
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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来源期刊
Intelligence-based medicine
Intelligence-based medicine Health Informatics
CiteScore
5.00
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0.00%
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审稿时长
187 days
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