使用数据挖掘技术预测医院再入院率。

Q2 Medicine
Mohammad Amiri-Ara, Amiri Gheydani, Maryam Yaghoubi
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引用次数: 0

摘要

导读:由于患者住院费用高,再入院需求的增加导致医院缺乏适当的服务。本研究旨在利用数据挖掘技术预测德黑兰一家大型专科医院收治的患者再入院的风险。方法:本回顾性队列研究采用CRISP-DM方法的数据挖掘技术来确定导致患者再入院的因素。该研究分析了德黑兰一家大型公立医院的47,892份电子病历,分析了2018年8月至2019年8月的数据。该研究利用人口统计和临床数据,提取模式,以提供对再入院风险的见解,并支持医疗保健决策。关键算法包括神经网络和C5决策树。通过预测再入院的准确率来衡量模型的评价。结果:神经网络分析结果显示,出院类型、住院科室和住院时间显著影响再入院率,其相关系数分别为0.28、0.21和0.16。神经网络模型预测再入院的准确率达到61.2%。采用C5决策树算法分析发现,住院时间、用药次数和出院类型对再入院率的影响最大,相关系数分别为0.12、0.11和0.10。在分析的37,832例患者中,11.95%的患者再次入院,8.63%的患者再次入院一次,2.32%的患者再次入院两次,1%的患者再次入院三次及以上。非急诊入院、非手术治疗和特殊出院类型是影响再入院率的显著因素。结论:研究结果显示出院类型、住院科室、住院时间和用药次数等关键因素对再入院可能性有重要影响。数据挖掘模型在预测再入院以及突出显示与再入院相关的变量方面取得了适当的精度。实施策略,使用具有更好数据管理和质量的数据挖掘模型,可以为患者再入院风险的决策提供可操作的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Hospital Readmission Rates Using Data Mining Techniques.

Introduction: Due to the high costs of patient hospitalization, the increasing demand for readmission has led to a lack of suitable services provided by hospitals. The present study aimed to predict the risk of readmission among patients admitted to a large subspecialty hospital in Tehran using data mining techniques. Method: This retrospective cohort study employed data mining techniques following the CRISP-DM methodology to identify factors contributing to patient readmission. The study analyzed 47,892 electronic medical records from a large public hospital in Tehran, analyzing data from August 2018 to August 2019. The study utilized demographic and clinical data, extracting patterns to provide insights into readmission risks and support healthcare decision-making. Key algorithms included neural networks and the C5 decision tree. Model evaluation was measured by the accuracy rate in predicting readmission. Results: The findings from the neural network analysis revealed that the type of discharge, inpatient department, and length of stay significantly impacted readmission rates, with coefficients of 0.28, 0.21, and 0.16, respectively. The neural network model achieved an accuracy rate of 61.2% in predicting readmission. The analysis using the C5 decision tree algorithm showed that the length of stay, number of medications prescribed, and type of discharge had the most influence on readmission rates, with coefficients of 0.12, 0.11, and 0.10, respectively. Among the 37,832 patients analyzed, 11.95% experienced readmission, with 8.63% readmitted once, 2.32% twice, and 1% three or more times. Non-emergency admissions, non-surgical treatments, and specific discharge types were notable factors in readmission rates. Conclusion: Findings revealed that key factors, including the type of discharge, inpatient department, length of stay, and the number of medications prescribed, have substantial impacts on readmission likelihood. The data mining models achieved a suitable accuracy to predict readmissions as well as highlighted variables related to readmissions. Implementing strategies to use data mining models with better data management and quality can provide actionable insights for decision-making on patients' risk of readmission.

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来源期刊
Hospital Topics
Hospital Topics Medicine-Medicine (all)
CiteScore
1.90
自引率
0.00%
发文量
44
期刊介绍: Hospital Topics is the longest continuously published healthcare journal in the United States. Since 1922, Hospital Topics has provided healthcare professionals with research they can apply to improve the quality of access, management, and delivery of healthcare. Dedicated to those who bring healthcare to the public, Hospital Topics spans the whole spectrum of healthcare issues including, but not limited to information systems, fatigue management, medication errors, nursing compensation, midwifery, job satisfaction among managers, team building, and bringing primary care to rural areas. Through articles on theory, applied research, and practice, Hospital Topics addresses the central concerns of today"s healthcare professional and leader.
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