ECG classification and prognostic approach towards personalized healthcare

Amit Walinjkar, John Woods
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引用次数: 21

Abstract

A very important aspect of personalized healthcare is to continuously monitor an individual’s health using wearable biomedical devices and essentially to analyse and if possible to predict potential health hazards that may prove fatal if not treated in time. The prediction aspect embedded in the system helps in avoiding delays in providing timely medical treatment, even before an individual reaches a critical condition. Despite of the availability of modern wearable health monitoring devices, the real-time analyses and prediction component seems to be missing with these devices. The research work illustrated in this paper, at an outset, focussed on constantly monitoring an individual's ECG readings using a wearable 3-lead ECG kit and more importantly focussed on performing real-time analyses to detect arrhythmia to be able to identify and predict heart risk. Also, current research shows extensive use of heart rate variability (HRV) analysis and machine learning for arrhythmia classification, which however depends on the morphology of the ECG waveforms and the sensitivity of the ECG equipment. Since a wearable 3-lead ECG kit was used, the accuracy of classification had to be dealt with at the machine learning phase, so a unique feature extraction method was developed to increase the accuracy of classification. As a case study a very widely used Arrhythmia database (MIT-BIH, Physionet) was used to develop learning, classification and prediction models. Neuralnet fitting models on the extracted features showed mean-squared error of as low as 0.0085 and regression value as high as 0.99. Current experiments show 99.4% accuracy using k-NN Classification models and show values of Cross-Entropy Error of 7.6 and misclassification error value of 1.2 on test data using scaled conjugate gradient pattern matching algorithms. Software components were developed for wearable devices that took ECG readings from a 3-Lead ECG data acquisition kit in real time, de-noised, filtered and relayed the sample readings to the tele health analytical server. The analytical server performed the classification and prediction tasks based on the trained classification models and could raise appropriate alarms if ECG abnormalities of V (Premature Ventricular Contraction: PVC), A (Atrial Premature Beat: APB), L (Left bundle branch block beat), R (Right bundle branch block beat) type annotations in MITDB were detected. The instruments were networked using IoT (Internet of Things) devices and abnormal ECG events related to arrhythmia, from analytical server could be logged using an FHIR web service implementation, according to a SNOMED coding system and could be accessed in Electronic Health Record by the concerned medic to take appropriate and timely decisions. The system focused on ‘preventive care rather than remedial cure’ which has become a major focus of all the health care and cure institutions across the globe.
心电图分类和个性化医疗的预后方法
个性化医疗保健的一个非常重要的方面是使用可穿戴生物医学设备持续监测个人的健康状况,本质上是分析并在可能的情况下预测如果不及时治疗可能致命的潜在健康危害。系统中嵌入的预测方面有助于避免延误及时提供医疗,甚至在个人达到危急状态之前。尽管现代可穿戴式健康监测设备的可用性,但这些设备似乎缺少实时分析和预测组件。本文所述的研究工作,首先侧重于使用可穿戴式三导联ECG试剂盒持续监测个人的ECG读数,更重要的是侧重于执行实时分析以检测心律失常,从而能够识别和预测心脏风险。此外,目前的研究显示心率变异性(HRV)分析和机器学习在心律失常分类中的广泛应用,但这取决于ECG波形的形态和ECG设备的灵敏度。由于使用可穿戴式三导联ECG试剂盒,在机器学习阶段需要处理分类的准确性问题,因此开发了一种独特的特征提取方法来提高分类的准确性。作为一个案例研究,我们使用了一个非常广泛使用的心律失常数据库(MIT-BIH, Physionet)来开发学习、分类和预测模型。对提取的特征进行Neuralnet拟合模型,均方误差低至0.0085,回归值高达0.99。目前的实验表明,使用k-NN分类模型的准确率为99.4%,使用缩放共轭梯度模式匹配算法对测试数据的交叉熵误差为7.6,误分类误差为1.2。为可穿戴设备开发了软件组件,可实时从3导联心电数据采集套件中获取心电读数,对样本读数进行降噪、滤波并将其转发到远程健康分析服务器。分析服务器根据训练好的分类模型完成分类和预测任务,当MITDB中检测到V(室性早搏:PVC)、A(房性早搏:APB)、L(左束支传导阻滞)、R(右束支传导阻滞)类型标注异常时,可以适时报警。仪器使用IoT(物联网)设备联网,与心律失常相关的异常ECG事件可以从分析服务器使用FHIR web服务实现记录,根据SNOMED编码系统,相关医生可以在电子健康记录中访问,以采取适当和及时的决策。该系统侧重于“预防保健而不是补救治疗”,这已成为全球所有卫生保健和治疗机构的主要重点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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