基于无监督学习方法的光容积脉搏图信号质量评价

M. S. Roy, Rajarshi Gupta, K. D. Sharma
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引用次数: 17

摘要

光容积脉搏波(PPG)逐渐成为动态状态下心血管和呼吸功能监测的常用工具。然而,这些测量容易产生运动伪影(MA)损坏,因此,在计算机化分析之前,信号质量评估(SQA)是必不可少的。已发表的关于PPG SQA的研究大多采用监督学习方法,存在特征选择的普适性和PPG形态的可变性的问题。其次,从损坏的MA中检测节拍是一项具有挑战性的任务,并且在一定程度上限制了使用节拍分割方法的SQA的成功。本研究描述了一种无监督学习方法,用于识别MA污染PPG数据中的“干净”,“部分干净”和“损坏”部分。将统计方法在5 s窗口内计算的少量熵特征和一些与信号复杂度相关的特征输入到自组织映射(SOM)中,用于直接评价PPG数据的质量。SOM的输入节点数为7,输出连接到一个由25个节点组成的方阵。多类分类模型对30名健康和心血管疾病志愿者在轻度到高水平手部运动下200 min的PPG数据进行分类,准确率分别达到94.10%、89.27%和92.67%。该模型比最近发表的基于PPG SQA的非分割方法取得了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Photoplethysmogram Signal Quality Evaluation by Unsupervised Learning Approach
Photoplethysmography (PPG) is gradually becoming popular tool for cardiovascular and respiratory function monitoring under ambulatory condition. However, these measurements are prone to motion artifact (MA) corruption, and hence, signal quality assessment (SQA) is essential before computerized analysis. The published research on PPG SQA, mostly utilizing supervised learning approaches, suffer from the universality of feature selection against PPG morphology variability. Secondly, beat detection from the MA corrupted is a challenging task and partly limits the success of SQA utilizing beat segmenting approaches. The present research describes an unsupervised learning approach for identification of ‘clean’, ‘partly clean’ and ‘corrupted’ segments in the MA contaminated PPG data. Few entropy features and some signal complexity related features calculated by statistical methods in a 5 s window were fed to a self-organizing map (SOM) for direct quality assessment of PPG data. The number of input node to the SOM was 7 and the output was connected to a square matrix consisting of 25 nodes. The multiclass classification model achieved 94.10%, 89.27%, 92.67% accuracy score for the three classes respectively on 200 min of PPG data collected from 30 healthy and CVD human volunteers under mild to high level of hand movement. The model achieved better result than recently published work utilizing non-segmenting approach based PPG SQA.
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