Allen J, Murray A
Regional Medical Physics Department, Freeman Hospital, Newcastle upon Tyne, UK.
J Med Eng Technol. 1996 May-Jun;20(3):109-14. doi: 10.3109/03091909609008388.
Peripheral pulse waveforms can become stretched and damped with increasing severity of peripheral vascular disease (PVD) and hence could provide valuable diagnostic information. This study compares the diagnostic performance of 3 established classification techniques (a linear discriminant classifier, a k-nearest neighbour classifier, and an artificial neural network) for the detection of lower limb arterial disease from pulse waveforms obtained using photoelectric plethysmography (PPG). Pulse waveforms and pre- and post-exercise Doppler ultrasound ankle to brachial pressure indices (ABPI) were obtained from patients attending a vascular measurement laboratory. A single PPG pulse from each big toe was recorded direct to computer, pre-processed, and then used as classifier input data. The correct classifier outputs were the corresponding ABPI diagnostic classification. Pulse and ABPI measurements from 100 legs were used as training data for each classifier, and the computed classifications for pulses from a further 266 legs were then compared with their ABPI diagnoses. The diagnostic accuracy of the artificial neural network (80%; was higher than for the optimized k-nearest neighbour classifier (k = 27, accuracy 76% and the linear discriminant classifier (71%). The Kappa measure of agreement which excludes chance was highest for the artificial neural network (57%) and significantly higher than that of the linear discriminant classifier (Kappa 40%, p < 0.05). The value of Kappa for the optimized k-nearest neighbour classifier (k = 27) was intermediate at 47%. This study has shown that classifiers can be taught to discriminate between small, and perhaps subtle, differences in features. We have demonstrated that artificial neural networks can be used to classify arterial pulse waveforms, and can perform better overall than k-nearest neighbour or linear discriminant classifiers for this application.
随着外周血管疾病(PVD)严重程度的增加,外周脉搏波形会变得拉长和衰减,因此可以提供有价值的诊断信息。本研究比较了三种既定分类技术(线性判别分类器、k近邻分类器和人工神经网络)从使用光电体积描记法(PPG)获得的脉搏波形中检测下肢动脉疾病的诊断性能。从前往血管测量实验室就诊的患者身上获取脉搏波形以及运动前后的多普勒超声踝臂压力指数(ABPI)。从每个大脚趾记录单个PPG脉冲直接输入计算机,进行预处理,然后用作分类器输入数据。正确的分类器输出是相应的ABPI诊断分类。将来自100条腿的脉搏和ABPI测量值用作每个分类器的训练数据,然后将另外266条腿的脉搏计算分类结果与其ABPI诊断结果进行比较。人工神经网络的诊断准确率(80%)高于优化后的k近邻分类器(k = 27,准确率76%)和线性判别分类器(71%)。排除机遇因素的Kappa一致性度量中,人工神经网络最高(57%),且显著高于线性判别分类器(Kappa 40% , p < 0.05)。优化后的k近邻分类器(k = 27)的Kappa值为47%,处于中间水平。本研究表明,可以训练分类器来区分特征中细微的差异。我们已经证明,人工神经网络可用于对动脉脉搏波形进行分类,并且在此应用中总体表现优于k近邻或线性判别分类器。