利用突发事件数据挖掘预测心绞痛的混合方法

Sung-ho Ha, Zhen Zhang, Eun Kyoung Kwon
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引用次数: 0

摘要

几十年来,急诊科(ED)一直被人满为患、等待时间长和费用高的问题所困扰。随着计算机技术的发展,各种信息系统的出现,使人们更有效地工作,急诊科信息系统(EDIS)已被誉为现代急诊科的“必备”。本文试图建立一种以EDIS形式预测心绞痛的混合方法。基于急诊科患者流动的框架,从急诊科的电子病历中收集了真实世界的数据:842名胸痛患者的21万多条记录。利用数据挖掘技术,提出了一个专家系统,以帮助医生在诊断心绞痛患者时更快、更准确地做出诊断决策和实验室检查选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Method to Predict Angina Pectoris through Mining Emergency Data
The Emergency Department (ED) has been frustrated by the problems of overcrowding, long waiting times and high costs over decades. With the development of computer techniques, various kinds of information systems have appeared and make people work more effectively, the Emergency Department Information System (EDIS) has been heralded as a "must" for the modern ED. This paper tries to build a hybrid method to predict angina pectoris in the form of EDIS. Based on the frameworks of patients flow in ED, real-world data were collected from the electronic medical records at the ED: more than 210000 records of 842 registered chest pain patients in total. By utilizing the data mining techniques, an expert system was proposed to help physicians with faster and more accurate decision making of diagnosis and lab test selections when they are diagnosing with angina pectoris patients.
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