Title :
System Light-Loading Technology for mHealth: Manifold-Learning-Based Medical Data Cleansing and Clinical Trials in WE-CARE Project
Author :
Anpeng Huang ; Wenyao Xu ; Zhinan Li ; Linzhen Xie ; Sarrafzadeh, Majid ; Xiaoming Li ; Cong, J.
Author_Institution :
Mobile Health Lab., Peking Univ., Beijing, China
Abstract :
Cardiovascular disease (CVD) is a major issue to public health. It contributes 41% to the Chinese death rate each year. This huge loss encouraged us to develop a Wearable Efficient teleCARdiology systEm (WE-CARE) for early warning and prevention of CVD risks in real time. WE-CARE is expected to work 24/7 online for mobile health (mHealth) applications. Unfortunately, this purpose is often disrupted in system experiments and clinical trials, even if related enabling technologies work properly. This phenomenon is rooted in the overload issue of complex Electrocardiogram (ECG) data in terms of system integration. In this study, our main objective is to get a system light-loading technology to enable mHealth with a benchmarked ECG anomaly recognition rate. To achieve this objective, we propose an approach to purify clinical features from ECG raw data based on manifold learning, called the Manifold-based ECG-feature Purification algorithm. Our clinical trials verify that our proposal can detect anomalies with a recognition rate of up to 94% which is highly valuable in daily public health-risk alert applications based on clinical criteria. Most importantly, the experiment results demonstrate that the WE-CARE system enabled by our proposal can enhance system reliability by at least two times and reduce false negative rates to 0.76%, and extend the battery life by 40.54%, in the system integration level.
Keywords :
Internet; alarm systems; biomedical electronics; biomedical telemetry; body sensor networks; diseases; electrocardiography; feature extraction; information storage; learning (artificial intelligence); medical signal detection; medical signal processing; mobile computing; risk management; signal classification; telemedicine; CVD prevention; Chinese death rate; ECG raw data; WE-CARE project; WE-CARE system; Wearable Efficient teleCARdiology systEm; anomay detection; battery life; benchmarked ECG anomaly recognition rate; cardiovascular disease; clinical criteria; clinical feature purification; clinical trial; complex ECG data overload issue; complex electrocardiogram data; daily public health-risk alert applications; early CVD risk warning; enabling technology; false negative rate reduction; mHealth applications; manifold learning-based medical data cleansing; manifold-based ECG-feature purification algorithm; mobile health applications; online system; real time CVD risk warning; system experiments; system integration level; system light-loading technology; system reliability; Clinical trials; Electrocardiography; Manifolds; Mobile communication; Proposals; Real-time systems; Wireless communication; Manifold learning; Manifold-based ECG-feature Purification (MEP); Wearable Efficient teleCARdiology systEm (WE-CARE); mHealth (mobile health); system light-loading;
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/JBHI.2013.2292576