Implementation of Classification Algorithm C4.5 in Determining the Emergency Patient in the Maternity Hospital Queue System

Y. Septiana, Yoga Handoko Agustin, Muhammad Nashir Mudzakir, A. Mulyani, Dini Destiani Siti Fatimah, Indri Tri Julianto
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引用次数: 1

Abstract

Based on the epidemiological update or weekly spread of Covid-19 on 23 February 2021, Indonesia was ranked second in the Southeast Asia region in the highest new case reporting. The Indonesian government has taken various countermeasures to suppress the spread of Covid-19, starting from implementing health protocols for the public in public places to the Enforcement of Restrictions on Community Activities. Health facilities are shared facilities included in the essential sector, allowing them to operate 100% by regulating operating hours and capacity and implementing more stringent health protocols. This study aimed to implement a patient classification model using the C4.5 algorithm in determining emergency patients in the maternity hospital queue system. The methodology used in this study is the Cross-Industry Standard Process for Data Mining (CRISP-DM). In contrast, the evaluation of classification data uses the Confusion Matrix and Receiver Operating Characteristics (ROC). The implementation of the C4.5 algorithm in the Maternity Hospital Queue System is used to classify emergency and nonemergency patients. The classification accuracy level obtained in this study was 97.08%, and the AUC value received was 0.984.
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分类算法C4.5在妇产医院排队系统急诊患者确定中的实现
根据2021年2月23日Covid-19的流行病学最新情况或每周传播情况,印度尼西亚在东南亚区域新发病例报告最高的国家中排名第二。印尼政府采取了各种应对措施,从实施公共场所公众健康守则到实施社区活动限制,以遏制新冠病毒的传播。卫生设施是包括在基本部门的共享设施,通过调节营业时间和能力以及执行更严格的卫生规程,使其能够100%运作。本研究旨在利用C4.5算法实现产科医院排队系统中急诊患者的分类模型。本研究使用的方法是跨行业数据挖掘标准过程(CRISP-DM)。相比之下,分类数据的评估使用混淆矩阵和接收者工作特征(ROC)。利用C4.5算法在妇产医院排队系统中的实现,对急诊和非急诊患者进行分类。本研究获得的分类准确率水平为97.08%,得到的AUC值为0.984。
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