应用人工神经网络对多普勒超声波形进行动脉疾病分类。

J H Smith, J Graham, R J Taylor
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引用次数: 25

摘要

在这项研究中,我们研究了人工神经网络分类器在多普勒超声血流速度/时间波形诊断血管疾病中的应用。使用来自对照受试者和动脉疾病患者的波形训练多层感知器网络。病变病例通过血管造影确诊,并根据狭窄的位置分为三组:近端或远端测量或多节段。我们将网络分类结果与贝叶斯分类器在波形主成分分析后进行了比较。两个分类器的版本被训练来区分两个类(正常和异常)和四个类。在这两种情况下,神经网络都比贝叶斯分类器有更好的辨别能力。虽然四类网络无法提供有用的狭窄位点之间的区分,但可以获得与人类专家观察者相当的异常类别之间的区分。
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The application of an artificial neural network to Doppler ultrasound waveforms for the classification of arterial disease.

In this study we have investigated the application of an Artificial Neural Net classifier to the diagnosis of vascular disease using Doppler ultrasound blood-velocity/time waveforms. A multi-layer perceptron network was trained with waveforms from control subjects and from patients with arterial disease. The diseased cases were confirmed by angiography and allocated to three groups according to the location of the stenosis: proximal or distal to the site of measurement or multi-segmental. We compared network classification results with a Bayesian classifier following a Principal Component Analysis of the waveforms. Versions of both classifiers were trained to discriminate two classes (normal v. abnormal) and four classes. In both cases the neural networks gave superior discrimination to the Bayesian classifier. While the four-class network was unable to provide useful discrimination among the stenosis sites, discrimination between abnormal classes was obtained which is comparable to that achieved by a human expert observer.

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