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一种基于知识的技术,用于自动检测长时间心电图中的缺血性发作。

A knowledge-based technique for automated detection of ischaemic episodes in long duration electrocardiograms.

作者信息

Papaloukas C, Fotiadis D I, Liavas A P, Likas A, Michalis L K

机构信息

Department of Medical Physics, Medical School, University of Ioannina, Greece.

出版信息

Med Biol Eng Comput. 2001 Jan;39(1):105-12. doi: 10.1007/BF02345273.

Abstract

A novel method for the detection of ischaemic episodes in long duration ECGs is proposed. It includes noise handling, feature extraction, rule-based beat classification, sliding window classification and ischaemic episode identification, all integrated in a four-stage procedure. It can be executed in real time and is able to provide explanations for the diagnostic decisions obtained. The method was tested on the ESC ST-T database and high scores were obtained for both sensitivity and positive predictive accuracy (93.8% and 78.5% respectively using aggregate gross statistics, and 90.7% and 80.7% using aggregate average statistics).

摘要

提出了一种用于检测长时间心电图缺血发作的新方法。它包括噪声处理、特征提取、基于规则的搏动分类、滑动窗口分类和缺血发作识别,所有这些都集成在一个四阶段程序中。它可以实时执行,并能够为获得的诊断决策提供解释。该方法在ESC ST-T数据库上进行了测试,在敏感性和阳性预测准确性方面都获得了高分(使用总体粗略统计分别为93.8%和78.5%,使用总体平均统计分别为90.7%和80.7%)。

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