使用决策树探索住院时间与潜在可避免再入院之间的关系:一项回顾性队列研究

Mohammad S. Alyahya, Heba H Hijazi, H. Alshraideh, Amjad D. Al-Nasser
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引用次数: 3

摘要

摘要背景:越来越多的人担心住院时间(LOS)的减少可能会增加再入院率。本研究旨在确定可避免的30天再入院率,并找出LOS与再入院之间的关系。方法:分析2012年12月1日至2013年12月31日期间在约旦阿卜杜拉国王大学医院内科服务的所有连续住院患者(n = 5273)。为了识别可避免的再入院,使用了一种被称为SQLape的经过验证的计算机算法。首先采用多项逻辑回归。然后,使用决策树(dt)模型进行详细分析,该模型是临床决策支持系统(CDSS)中最广泛使用的数据挖掘算法之一。结果:潜在可避免的30天再入院率为44%,LOS较长的患者更有可能避免再入院。然而,LOS对不可避免的再入院有显著的负面影响。结论:可避免的再入院率仍然是高度不可接受的。由于LOS可能会增加可避免的再入院的可能性,因此仍有可能在不增加再入院率的情况下实现更短的LOS。此外,DT模型基于患者特征和LOS对再入院患者亚组进行分类的方法适用于实际临床决策。
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Using decision trees to explore the association between the length of stay and potentially avoidable readmissions: A retrospective cohort study
ABSTRACT Background: There is a growing concern that reduction in hospital length of stay (LOS) may raise the rate of hospital readmission. This study aims to identify the rate of avoidable 30-day readmission and find out the association between LOS and readmission. Methods: All consecutive patient admissions to the internal medicine services (n = 5,273) at King Abdullah University Hospital in Jordan between 1 December 2012 and 31 December 2013 were analyzed. To identify avoidable readmissions, a validated computerized algorithm called SQLape was used. The multinomial logistic regression was firstly employed. Then, detailed analysis was performed using the Decision Trees (DTs) model, one of the most widely used data mining algorithms in Clinical Decision Support Systems (CDSS). Results: The potentially avoidable 30-day readmission rate was 44%, and patients with longer LOS were more likely to be readmitted avoidably. However, LOS had a significant negative effect on unavoidable readmissions. Conclusions: The avoidable readmission rate is still highly unacceptable. Because LOS potentially increases the likelihood of avoidable readmission, it is still possible to achieve a shorter LOS without increasing the readmission rate. Moreover, the way the DT model classified patient subgroups of readmissions based on patient characteristics and LOS is applicable in real clinical decisions.
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