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基于深度学习的光电容积脉搏波分类用于外周动脉疾病检测:概念验证研究。

Deep learning-based photoplethysmography classification for peripheral arterial disease detection: a proof-of-concept study.

机构信息

Faculty of Medical Sciences, Newcastle University, Newcastle upon Tyne, United Kingdom.

Research Centre for Intelligent Healthcare, Coventry University, United Kingdom.

出版信息

Physiol Meas. 2021 Jun 17;42(5). doi: 10.1088/1361-6579/abf9f3.

Abstract

A proof-of-concept study to assess the potential of a deep learning (DL) based photoplethysmography PPG ('DLPPG') classification method to detect peripheral arterial disease (PAD) using toe PPG signals.PPG spectrogram images derived from our previously published multi-site PPG datasets (214 participants; 31.3% legs with PAD by ankle brachial pressure index (ABPI)) were input into a pretrained 8-layer (five convolutional layers + three fully connected layers) AlexNet as tailored to the 2-class problem with transfer learning to fine tune the convolutional neural network (CNN).-fold random cross validation (CV) was performed (for = 5 and = 10), with each evaluated over k training/validation runs. Overall test sensitivity, specificity, accuracy, and Cohen's Kappa statistic with 95% confidence interval ranges were calculated and compared, as well as sensitivities in detecting mild-moderate (0.5 ≤ ABPI < 0.9) and major (ABPI < 0.5) levels of PAD.CV with either = 5 or 10 folds gave similar diagnostic performances. The overall test sensitivity was 86.6%, specificity 90.2% and accuracy 88.9% (Kappa: 0.76 [0.70-0.82]) (at= 5). The sensitivity to mild-moderate disease was 83.0% (75.5%-88.9%) and to major disease was 100.0% (90.5%-100.0%).Substantial agreements have been demonstrated between the DL-based PPG classification technique and the ABPI PAD diagnostic reference. This novel automatic approach, requiring minimal pre-processing of the pulse waveforms before PPG trace classification, could offer significant benefits for the diagnosis of PAD in a variety of clinical settings where low-cost, portable and easy-to-use diagnostics are desirable.

摘要

一项概念验证研究评估了基于深度学习(DL)的光体积描记图(PPG)分类方法(“DLPPG”)通过脚趾 PPG 信号检测外周动脉疾病(PAD)的潜力。将源自我们之前发表的多站点 PPG 数据集(214 名参与者;踝肱指数(ABI)的 31.3%腿部有 PAD)的 PPG 频谱图像输入到经过预训练的 8 层(五个卷积层+三个全连接层)AlexNet 中,该网络经过量身定制,适用于 2 类问题,并采用迁移学习来微调卷积神经网络(CNN)。进行了 5 折和 10 折随机交叉验证(CV),在每个 CV 中进行 k 次训练/验证运行。计算并比较了总体测试敏感性、特异性、准确性和 95%置信区间范围内的 Cohen Kappa 统计量,以及检测轻度至中度(0.5≤ABI<0.9)和主要(ABI<0.5)PAD 水平的敏感性。使用 5 折或 10 折 CV 得出的诊断性能相似。总体测试敏感性为 86.6%,特异性为 90.2%,准确性为 88.9%(Kappa:0.76 [0.70-0.82])(=5)。对轻度至中度疾病的敏感性为 83.0%(75.5%-88.9%),对主要疾病的敏感性为 100.0%(90.5%-100.0%)。DL 基于的 PPG 分类技术和 ABI PAD 诊断参考之间已经显示出很大的一致性。这种新的自动方法在进行 PPG 迹线分类之前对脉搏波进行最小预处理,可为各种临床环境中的 PAD 诊断提供显著的益处,在这些环境中,需要低成本、便携式和易于使用的诊断方法。

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