Chan Ho Yin, Yu Alan S, Liu Mei
Department of Health Outcome and Biomedical Informatics, College of Medicine, University of Florida, Gainesville, FL, USA.
AMIA Jt Summits Transl Sci Proc. 2025 Jun 10;2025:115-123. eCollection 2025.
Association rule mining is a widely used data mining technique to uncover knowledge from large datasets. In healthcare, it can reveal meaningful patterns within electronic health records (EHR) that inform clinical decision-making and treatment strategies. However, many studies neglect the temporal aspects of EHR data, potentially overlooking patterns linked to specific time periods or sequence of clinical events. Recent advancements have introduced methods for mining temporal association rules, offering enhanced predictive and descriptive insights. We propose a multi-step framework that utilizes temporal pattern mining algorithm to extract actionable and temporal risk patterns for acute kidney injury (AKI) from EHR data. Our algorithm identified approximately 3,313 rules with 10 actionable features, characterized by low support and high confidence. These rules have a median support of 0.055 and a median confidence of 0.58. We highlight key rules, explore their potential clinical implications, and present a network-based view to provide actionable insights.
关联规则挖掘是一种广泛使用的数据挖掘技术,用于从大型数据集中发现知识。在医疗保健领域,它可以揭示电子健康记录(EHR)中的有意义模式,为临床决策和治疗策略提供信息。然而,许多研究忽略了EHR数据的时间方面,可能会忽略与特定时间段或临床事件序列相关的模式。最近的进展引入了挖掘时间关联规则的方法,提供了增强的预测和描述性见解。我们提出了一个多步骤框架,该框架利用时间模式挖掘算法从EHR数据中提取急性肾损伤(AKI)的可操作和时间风险模式。我们的算法识别出大约3313条规则,具有10个可操作特征,其特点是支持度低和置信度高。这些规则的中位支持度为0.055,中位置信度为0.58。我们突出关键规则,探讨其潜在的临床意义,并提出基于网络的观点以提供可操作的见解。