基于神经网络的冠状动脉闭塞声学检测

M. Akay, W. Welkowitz
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引用次数: 18

摘要

将非线性神经网络分类器应用于冠状动脉疾病的无创声学检测;该分类器包括一个从心脏舒张声中提取的特征向量和一个通过反向传播训练的多层网络。采用自适应线增强方法作为神经网络的输入模式,基于自回归方法的线性预测系数得到特征向量。研究了112个录音(70个异常,42个正常),并随机选择6个异常患者和6个正常患者进行网络训练。它在一个由100个录音组成的数据库上进行了测试,这些录音没有接触过它。该网络正确识别了64名冠状动脉疾病患者中的50名和36名没有冠状动脉闭塞的患者中的32名。这些结果表明,该神经网络能够区分正常患者和异常患者。此外,该方法的诊断能力比任何其他可用的非侵入性方法都要好得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acoustical detection of coronary occlusions using neural networks

A nonlinear neural network classifier was applied to noninvasive acoustic detection of coronary artery disease; the classifier included a feature vector, derived from diastolic heart sounds, and a multi-layered network trained by the backpropagation. The feature vector is based on the linear prediction coefficients of the autoregressive method after an adaptive line enhancement method was used as the input pattern to the neural network. One hundred and twelve recordings (70 abnormal, 42 normal) were studied and the network was trained on a randomly chosen set of six abnormal and six normal patients. It was tested on a database consisting of 100 recordings to which it had not been exposed. The network correctly identified 50 of the 64 patients with coronary artery disease and 32 of the 36 patients without any coronary artery occlusions. These results showed that this neural network is capable of distinguishing normal patients from abnormal patients. In addition, the diagnostic capability of this approach is much better than any other available noninvasive approach.

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