Using DecisionTrees for Real-Time Ischemia Detection

L. Dranca, A. Goñi, A. Illarramendi
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引用次数: 9

Abstract

In this paper we investigate if techniques based on decision trees are also useful to classify ischemia. In order to do that, we have based on a previous own algorithm that is able of detecting ST-segment episodes, can be executed in real time and is lightweight enough to be implemented on mobile devices such as PDAs. Three main steps are performed by that algorithm: 1) signal preprocessing that extracts important features from the ECG signal 2) detection of suspect ST segment events and 3) rejection of irrelevant ST segment events. We have found that techniques based on decision trees are interesting for the last step in order to obtain a set of rules that reject some of the suspect ST segment events detected in the second step. The freely available part of the LTST database has been used to develop the detector and the rest of the same database has been used for validation purposes. The sensitivity of the detector over all the records of the LTST database is 89.89% for episodes annotated according to C protocol and the positive predictivity is 70.03% for episodes annotated according to A protocol. Those results improve our previously obtained ones and we think that they are comparable to other results that appear in the literature. However, it has to be noticed that we have not found works that detect ischemia in real time and show validation results over the LTST database
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利用决策树进行实时缺血检测
在本文中,我们研究了基于决策树的技术是否对缺血分类也有用。为了做到这一点,我们基于之前自己的算法,能够检测st段剧集,可以实时执行,并且足够轻量,可以在pda等移动设备上实现。该算法执行了三个主要步骤:1)信号预处理,从心电信号中提取重要特征;2)检测可疑ST段事件;3)拒绝无关ST段事件。我们发现,基于决策树的技术对于最后一步很有趣,因为它可以获得一组规则,这些规则可以拒绝第二步中检测到的一些可疑的ST段事件。LTST数据库中免费提供的部分用于开发检测器,同一数据库的其余部分用于验证目的。对于按C协议注释的事件,检测器对LTST数据库所有记录的灵敏度为89.89%,对按A协议注释的事件的阳性预测率为70.03%。这些结果改善了我们之前得到的结果,我们认为它们与文献中出现的其他结果相当。然而,必须注意的是,我们还没有发现实时检测缺血并在LTST数据库上显示验证结果的作品
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