Allen J, Murray A
Regional Medical Physics Department, Freeman Hospital, Newcastle upon Tyne, UK.
Physiol Meas. 1995 Feb;16(1):29-38. doi: 10.1088/0967-3334/16/1/003.
The diagnostic performance of an artificial neural network pulse classification system for the detection of peripheral vascular disease was investigated prospectively. Lower limb photoelectric plethysmographic pulses, and Doppler ankle/brachial pressure index (ABPI) measurements (pre- and post-exercise) were obtained from 200 patients referred to a vascular investigation laboratory. A single toe pulse was processed and used as input data to a neural network which had been trained previously with a set of pulses from 100 legs. The neural network outputs represented the diagnostic arterial disease classifications defined by the ABPI. From the 200 patients entered prospectively, 266 legs were available for neural network assessment. A network sensitivity of 92% and specificity of 63% were achieved with a diagnostic accuracy of 80%. By using a higher confidence for the classification decision a small, but insignificant overall improvement was obtained. When a borderline classification was introduced 100% sensitivity and 100% negative predictive value were obtained, though 31% of legs were unclassifiable. Nevertheless, the very high sensitivity and negative predictive value could make this quick and simple technique the one of choice for the first stage in screening large numbers of subjects.
对一个用于检测外周血管疾病的人工神经网络脉搏分类系统的诊断性能进行了前瞻性研究。从转诊至血管检查实验室的200名患者身上获取了下肢光电体积描记脉搏以及运动前后的多普勒踝/臂压力指数(ABPI)测量值。对单个趾脉搏进行处理,并将其用作神经网络的输入数据,该神经网络此前已用来自100条腿的一组脉搏进行过训练。神经网络的输出代表由ABPI定义的诊断性动脉疾病分类。在前瞻性纳入的200名患者中,有266条腿可用于神经网络评估。该网络的敏感性为92%,特异性为63%,诊断准确性为80%。通过对分类决策使用更高的置信度,整体有了微小但不显著的改善。当引入临界分类时,获得了100%的敏感性和100%的阴性预测值,不过有31%的腿无法分类。尽管如此,极高的敏感性和阴性预测值可能使这种快速简便的技术成为大量受试者筛查第一阶段的首选方法。