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Computer-aided morphological analysis of Holter ECG recordings based on support vector learning system

机译:基于支持向量学习系统的动态心电图记录的计算机辅助形态分析

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The paper presents a new approach to computer-aided analysis of ECG Holter recordings. In contrast to existing tools it is a learning system: the pertinent features of the signal shape are automatically discovered upon the examples carefully selected and commented by cardiologists. Mathematical basis of our system is the theory of support vector machines that are applied for two tasks: signal approximation and pattern classification. Numerical procedures implement the algorithm of sequential minimal optimisation. The computer program is developed in Borland C++ Builder environment. The excellent performances of our approach, high rate of successful pattern recognition and computational efficiency, make use of our tools possible in clinical practice. The system is tested at the Chair and Department of Internal Medicine and Cardiology, Central Teaching Hospital in Warsaw, Poland.
机译:本文提出了一种新的计算机辅助分析心电图动态心电图记录的方法。与现有工具相比,它是一个学习系统:信号形状的相关特征会在心脏病专家精心选择和评论的示例中自动发现。我们系统的数学基础是支持向量机的理论,该理论适用于两个任务:信号逼近和模式分类。数值程序执行顺序最小优化算法。该计算机程序是在Borland C ++ Builder环境中开发的。我们方法的出色性能,成功的模式识别率和高计算效率使我们的工具在临床实践中成为可能。该系统已在波兰华沙中央教学医院内科和心脏病学教研室进行了测试。

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