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Classification and Diagnosis of Heart Sounds and Murmurs Using Artificial Neural Networks

机译:人工神经网络对心音和杂音的分类和诊断

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摘要

Cardiac auscultation still remains today as the basic technique to easily achieve a cardiac valvular diagnosis. Nowadays, auscultation can be powered with automated computer-aided analysis systems to provide objective, accurate, documented and cost-effective diagnosis. This is particulary useful when such systems offer remote diagnosis capabilities. ASEPTIC is a telediagnosis system for cardiac sounds that allows the analysis of remote phonocardiographic signals. The pattern recognition stage of ASEPTIC is presented in this paper. It is based in feature selection from the cardiac events, and classification using a multilayer perceptron artificial neural network trained with Levenberg-Marquardt algorithm for fast convergence. Three categories of records have been considered: normal, with holosystolic murmur, and with midsystolic murmur. Experimental results show high correct classification rates for the three categories: 100%, 92.69%, and 97.57%, respectively.
机译:如今,心脏听诊仍然是轻松实现心脏瓣膜诊断的基本技术。如今,听诊可以通过自动计算机辅助分析系统提供动力,以提供客观,准确,有据可查且具有成本效益的诊断。当此类系统提供远程诊断功能时,这特别有用。 ASEPTIC是一种用于心音的远程诊断系统,可以分析远程心电图信号。本文介绍了ASEPTIC的模式识别阶段。它基于从心脏事件中选择特征,并使用经过Levenberg-Marquardt算法训练的多层感知器人工神经网络进行分类,以实现快速收敛。已经考虑了三类记录:正常,全收缩期杂音和中收缩期杂音。实验结果表明,这三个类别的正确分类率很高:分别为100%,92.69%和97.57%。

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