IEEE J Biomed Health Inform. 2014 Sep;18(5):1581-9. doi: 10.1109/JBHI.2013.2292576.
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.
心血管疾病(CVD)是一个主要的公共卫生问题。它每年导致中国 41%的死亡率。这一巨大损失促使我们开发了一个可穿戴的高效远程心脏病学系统(WE-CARE),以便实时预警和预防 CVD 风险。WE-CARE 预计将 24/7 在线运行,用于移动健康(mHealth)应用。不幸的是,即使相关的使能技术正常工作,这一目的也经常在系统实验和临床试验中被打乱。这种现象源于系统集成中复杂心电图(ECG)数据的过载问题。在这项研究中,我们的主要目标是获得一种系统轻载技术,以实现具有基准 ECG 异常识别率的 mHealth。为了实现这一目标,我们提出了一种基于流形学习从 ECG 原始数据中提取临床特征的方法,称为基于流形的 ECG 特征净化算法。我们的临床试验验证了我们的方法可以以高达 94%的识别率检测异常,这在基于临床标准的日常公共卫生风险预警应用中具有很高的价值。最重要的是,实验结果表明,我们的方法所启用的 WE-CARE 系统可以在系统集成层面上至少提高两倍的系统可靠性,将误报率降低到 0.76%,并延长电池寿命 40.54%。