心肌梗死——利用数据挖掘确定12导联心电图的关键指标

Kathryn E. Burn-Thornton , Lars Edenbrandt
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引用次数: 15

摘要

在本文中,我们描述了如何使用数据挖掘技术,以便通过确定大数据集中的现有趋势来确定心电图(ECG)中心肌梗死的关键指标。为了给数据挖掘技术提供一个测试平台,开发了一个数据挖掘工具,以确定各种数据挖掘技术的有效性。材料包括在急诊科记录的2730张心电图。共记录517例急性心肌梗死患者的心电图。其余心电图定义为对照心电图。材料的一个子集被用来训练数据挖掘工具。经过训练,数据挖掘工具能够在测试集中精确定位心肌梗死的关键心电图指标(qwave的持续时间和振幅以及导联V2的r持续时间),并成功确定哪些患者患有心脏病。
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Myocardial Infarction—Pinpointing the Key Indicators in the 12-Lead ECG Using Data Mining

In this paper we describe how data mining techniques were used in order to pinpoint the key indicators for myocardial infarction in the electrocardiogram (ECG) by determining existing trends in a large data set. In order to provide a test bed for the data mining techniques a data mining tool was developed so that the effectiveness of various data mining techniques could be determined. The material consisted of 2730 ECGs recorded at an emergency department. A total of 517 ECGs were recorded on patients suffering acute myocardial infarction. The remaining ECGs were defined as control ECGs. A subset of the material was used to train the data mining tool. After training, the data mining tool was able to pinpoint the key ECG indicators for myocardial infarction in the test set (duration and amplitude of theQwave andRduration in lead V2) and successfully determine which patients had suffered a heart attack.

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