James Liley, Gergo Bohner, Samuel R. Emerson, Bilal A. Mateen, Katie Borland, David Carr, Scott Heald, Samuel D. Oduro, Jill Ireland, Keith Moffat, Rachel Porteous, Stephen Riddell, Simon Rogers, Ioanna Thoma, Nathan Cunningham, Chris Holmes, Katrina Payne, Sebastian J. Vollmer, Catalina A. Vallejos, Louis J. M. Aslett
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引用次数: 0
摘要
急诊入院(EA)是指病人需要紧急住院治疗,是医疗保健系统面临的一大挑战。风险预测模型的开发可以在一定程度上缓解这一问题,为初级医疗干预和公共卫生规划提供支持。在此,我们介绍 SPARRAv4,这是一种 EA 风险预测评分,将在苏格兰全国范围内部署。SPARRAv4 采用有监督和无监督的机器学习方法,应用于常规收集的约 480 万苏格兰居民的电子健康记录(2013-18 年)。与之前在苏格兰部署的评分相比,我们证明了该评分在辨别和校准方面的改进,以及在 3 年时间框架内的稳定性。我们的分析还通过研究不同人口亚群和入院原因的预测性能,以及量化单个输入特征的影响,提供了有关苏格兰 EA 风险流行病学的见解。最后,我们讨论了更广泛的挑战,包括可重复性以及如何安全地更新已在人群中部署的风险预测模型。
Development and assessment of a machine learning tool for predicting emergency admission in Scotland
Emergency admissions (EA), where a patient requires urgent in-hospital care, are a major challenge for healthcare systems. The development of risk prediction models can partly alleviate this problem by supporting primary care interventions and public health planning. Here, we introduce SPARRAv4, a predictive score for EA risk that will be deployed nationwide in Scotland. SPARRAv4 was derived using supervised and unsupervised machine-learning methods applied to routinely collected electronic health records from approximately 4.8M Scottish residents (2013-18). We demonstrate improvements in discrimination and calibration with respect to previous scores deployed in Scotland, as well as stability over a 3-year timeframe. Our analysis also provides insights about the epidemiology of EA risk in Scotland, by studying predictive performance across different population sub-groups and reasons for admission, as well as by quantifying the effect of individual input features. Finally, we discuss broader challenges including reproducibility and how to safely update risk prediction models that are already deployed at population level.
期刊介绍:
npj Digital Medicine is an online open-access journal that focuses on publishing peer-reviewed research in the field of digital medicine. The journal covers various aspects of digital medicine, including the application and implementation of digital and mobile technologies in clinical settings, virtual healthcare, and the use of artificial intelligence and informatics.
The primary goal of the journal is to support innovation and the advancement of healthcare through the integration of new digital and mobile technologies. When determining if a manuscript is suitable for publication, the journal considers four important criteria: novelty, clinical relevance, scientific rigor, and digital innovation.