REDESIGNING POST-OPERATIVE PROCESSES USING DATA MINING CLASSIFICATION TECHNIQUES

Hayder Ghazi Alwattar
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Abstract

Data mining classification models are developed and investigated in this paper. These models are adopted to develop and redesign several business processes based on post-operative data. Post-operative data were collected and used via the Waikato Environment for Knowledge Analysis (WEKA), to investigate the factors influencing patients’ admission after surgery and compare the developed DM classification models. The results reveal that each implemented DM technique entails different attributes affecting patients’ post-surgery admission status. The comparison suggests that neural networks outperform other classification techniques. Further, the optimal number of beds required to accommodate post-operative patients is investigated. The simulation was conducted using queuing theory software to compute the expected number of beds required to achieve zero waiting time. The results indicate that the number of beds required to accommodate post-surgery patients waiting in the queue is the length of 1, which means that one bed will be available due to patient discharge.
使用数据挖掘分类技术重新设计术后流程
本文对数据挖掘分类模型进行了开发和研究。采用这些模型来开发和重新设计基于术后数据的几个业务流程。通过Waikato Environment for Knowledge Analysis (WEKA)收集术后数据,探讨影响患者术后入院的因素,并比较已建立的糖尿病分类模型。结果表明,每种实施的DM技术都包含不同的属性,影响患者术后入院状态。比较表明,神经网络优于其他分类技术。此外,研究了容纳术后患者所需的最佳床位数量。利用排队理论软件进行仿真,计算达到零等待时间所需的期望床位数量。结果表明,等待队列的术后患者所需床位数为1,即由于患者出院,将有1张床位可用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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