基于聚类的可操作知识挖掘减少医院再入院

M. Al-Mardini, Ayman Hajja, L. Clover, D. Olaleye, Youngjin Park, Jay Paulson, Yang Xiao
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引用次数: 12

摘要

在过去的几十年里,医疗保健支出一直在增加。这一增长的主要原因之一是再入院,再入院的定义是病人在短时间内出院后再次住院。每年花费在再入院上的巨额资金和提高医疗质量的迫切需要使减少再入院成为必要。在本文中,我们从医学数据集中提取知识,并应用挖掘可操作规则的概念来指导健康领域专家的决策过程。我们提出了一种新的算法,通过根据患者的诊断集对患者进行聚类,来增加患者路径(患者为达到预期治疗而进行的程序序列)的可预测性。此外,我们提出了一个评分指标来评估程序图中的程序(所有可能的程序路径的树)和一个评分指标来评估诊断集群,这将使我们能够预测新患者后续再入院的数量。最后,我们提出了一种算法来评估新患者在应用动作规则之前和之后的评分(平均再入院次数)。本文的实验结果表明,我们的算法能够在很大程度上减少平均再入院次数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reduction of Hospital Readmissions through Clustering Based Actionable Knowledge Mining
Healthcare spending has been increasing in the last few decades. One of the main reasons for this increase is hospital readmissions, which is defined as a re-hospitalization of a patient after being discharged from a hospital within a short period of time. The excessive amount of money spent every year on hospital readmissions and the urge to enhance healthcare quality make reducing hospital readmissions a necessity. In this paper, we extract knowledge from a medical dataset and apply the concept of mining actionable rules to guide the health domain experts in their decision-making process. We present novel algorithms to increase the predictability of the patients' paths (the sequence of procedures that patients undertakes to reach a desired treatment) by clustering the patients according to their set of diagnoses. Moreover, we present a scoring metric to evaluate procedures in procedure graphs (the tree of all possible procedure paths) and a scoring metric to evaluate clusters of diagnoses which would allow us to anticipate the number of following readmissions for a new patient. Finally, we present an algorithm to evaluate the score (average number of following readmissions) for new patients prior to applying the action rules and after. The results presented in this paper show that our algorithms are able to reduce the average number of readmissions to a high degree.
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