计算机科学
支持向量机
人工智能
分割
脉冲波
分类器(UML)
逻辑回归
特征(语言学)
桡动脉
模式识别(心理学)
脉搏(音乐)
信号(编程语言)
接收机工作特性
机器学习
动脉
医学
外科
电信
哲学
抖动
探测器
程序设计语言
语言学
作者
Xiaodong Ding,Feng Cheng,Robert Morris,Cong Chen,Yiqin Wang
摘要
Background The radial artery pulse wave is a widely used physiological signal for disease diagnosis and personal health monitoring because it provides insight into the overall health of the heart and blood vessels. Periodic radial artery pulse signals are subsequently decomposed into single pulse wave periods (segments) for physiological parameter evaluations. However, abnormal periods frequently arise due to external interference, the inherent imperfections of current segmentation methods, and the quality of the pulse wave signals. Objective The objective of this paper was to develop a machine learning model to detect abnormal pulse periods in real clinical data. Methods Various machine learning models, such as k-nearest neighbor, logistic regression, and support vector machines, were applied to classify the normal and abnormal periods in 8561 segments extracted from the radial pulse waves of 390 outpatients. The recursive feature elimination method was used to simplify the classifier. Results It was found that a logistic regression model with only four input features can achieve a satisfactory result. The area under the receiver operating characteristic curve from the test set was 0.9920. In addition, these classifiers can be easily interpreted. Conclusions We expect that this model can be applied in smart sport watches and watchbands to accurately evaluate human health status.
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