基于心电多特征提取的ST段变化分类

Hongmei Wang, Wei Zhao, Yanwu Xu, Jing Hu, Cong Yan, Dongya Jia, Tianyuan You
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引用次数: 4

摘要

心电图ST段偏离检测对缺血性心脏病的诊断具有重要意义。本文提出了一种基于多特征提取的ST偏差逐拍分类算法。首先,定位ST段。然后,提取ST段的形态特征和poincarcars特征,并与全局特征结合;最后,采用随机森林将ST段变化分为正常、升高和降低。该算法在欧洲ST- t数据库中进行了评估,ST段正常、抑郁和升高的平均敏感性分别为85.2%、86.9%和88.8%。实验结果表明,该算法能够自动检测出ST段的抬高和下降,显示出缺血综合征的更多细节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ST Segment Change Classification Based on Multiple Feature Extraction Using ECG
ST deviation detection using electrocardiogram (ECG) is of great significance for ischemia heart disease diagnosis. In this paper, we proposed an algorithm based on multiple feature extraction to classify the ST deviation beat by beat. First, the ST segment was located. Then, morphological and Poincaré features of ST segment were extracted and combined with global feature. Finally, random forest was adopted to classify the ST segment change into normal, elevated or depressed. The algorithm was evaluated on the European ST-T Database and the average sensitivity of normal, depressed and elevated ST segment was 85.2%, 86.9% and 88.8% respectively. The result shows that the developed algorithm is helpful in automatically detecting the ST segment elevation and depression, showing more details of the ischemic syndrome.
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