计算机科学
自编码
人工智能
光容积图
特征选择
冠状动脉疾病
分类器(UML)
计算机辅助设计
模式识别(心理学)
机器学习
合成数据
数据建模
人工神经网络
数据挖掘
心脏病学
医学
滤波器(信号处理)
工程类
数据库
工程制图
计算机视觉
作者
Oishee Mazumder,Rohan Banerjee,Dibyendu Roy,Sakyajit Bhattacharya,Avik Ghose,Aniruddha Sinha
标识
DOI:10.1109/jbhi.2022.3147383
摘要
This paper presents a novel approach of generating synthetic Photoplethysmogram (PPG) data using a physical model of the cardiovascular system to improve classifier performance with a combination of synthetic and real data. The physical model is an in-silico cardiac computational model, consisting of a four-chambered heart with electrophysiology, hemodynamic, and blood pressure auto-regulation functionality. Starting with a small number of measured PPG data, the cardiac model is used to synthesize healthy as well as PPG time-series pertaining to coronary artery disease (CAD) by varying pathophysiological parameters. A Variational Autoencoder (VAE) structure is proposed to derive a statistical feature space for CAD classification. Results are presented in two perspectives namely, (i) using artificially reduced real disease data and (ii) using all the real disease data. In both cases, by augmenting with the synthetic data for training, the performance (sensitivity, specificity) of the classifier changes from (i) (0.65, 1) to (1, 0.9) and (ii) (1, 0.95) to (1, 1). The proposed hybrid approach of combining physical modelling and statistical feature space selection generates realistic PPG data with pathophysiological interpretation and can outperform a baseline Generative Adversarial Network (GAN) architecture with a relatively small amount of real data for training. This proposed method could aid as a substitution technique for handling the problem of bulk data required for training machine learning algorithms for cardiac health-care applications.
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