Real-time Atrial Fibrillation Detection Using Artificial Neural Network on a Wearable Electrocardiogram

A. A. Iskandar, K. Schilling
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Abstract

Providing equal healthcare quality on heart diseases are an issue in developing countries, especially in Indonesia, due to is wide-spread areas. It is founded that the heart diseases occur not only in big cities but also in rural areas, that is caused by unhealthy lifestyle and foods. Heart disease itself is a disease with gradually symptoms changes that can be seen based on the hearts' electrical activity or electrocardiogram signals. Now, wearable medical devices are capable to be worn daily, so that, it can monitor our heart condition and alert if there is an abnormality. An embedded device worn on the chest can be used to perform a real-time data acquisition and processing of the electrocardiogram, that consists of a 1-lead ECG, an ARM processor, a Bluetooth module, an SD card, and rechargeable batteries. Also, by performing a digital filter and Tompkins algorithm, we obtain the P-wave presences and the heart rate variability values (heartbeat, average heartbeat, standard deviation, and root mean square) then by using an artificial neural network with 4 input, 6 hidden, and 1 output layers that has multi-layer perceptrons and backpropagation. We are able to perform a pre-diagnosis of atrial fibrillation, that is one of the common arrhythmias, from 41 recorded training samples (Physionet MIT/BIH AFDB and NSRDB) and 6 healthy subjects as test samples. The neural network has 0.1% error rate and needed 31548 epochs to train itself for classification the heart disease. Based on the results, this prototype can be used as a medical-grade wearable device thatcan help cardiologist in giving an early warning on the user's heart condition, so that it can prevent sudden death due to heart diseases in rural areas.
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基于人工神经网络的可穿戴心电图房颤实时检测
在发展中国家,特别是在印度尼西亚,提供同等质量的心脏病医疗保健是一个问题,因为它分布广泛。一项调查发现,心脏病不仅发生在大城市,也发生在农村地区,这是由不健康的生活方式和饮食引起的。心脏病本身是一种症状逐渐改变的疾病,可以根据心脏的电活动或心电图信号来观察。现在,可穿戴医疗设备可以每天佩戴,因此,它可以监测我们的心脏状况,并在有异常时发出警报。佩戴在胸前的嵌入式设备可用于对心电图进行实时数据采集和处理,该设备由1导联心电图、ARM处理器、蓝牙模块、SD卡和可充电电池组成。此外,通过执行数字滤波器和汤普金斯算法,我们获得p波存在和心率变异性值(心跳,平均心跳,标准差和均方根),然后通过使用具有多层感知器和反向传播的具有4个输入层,6个隐藏层和1个输出层的人工神经网络。我们能够从41个记录的训练样本(Physionet MIT/BIH AFDB和NSRDB)和6个健康受试者作为测试样本对房颤进行预诊断,房颤是常见的心律失常之一。该神经网络的错误率为0.1%,需要31548次训练才能对心脏病进行分类。根据研究结果,该原型可以作为医疗级可穿戴设备,帮助心脏病专家对用户的心脏状况进行早期预警,从而防止农村地区因心脏病导致的猝死。
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