S. M. Ahsanuzzaman, Toufiq Ahmed, Md Atiqur Rahman
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引用次数: 12
摘要
多年来,心电图(ECG)一直是检测心血管疾病的黄金标准。任何导致心脏收缩的电脉冲中断都可能导致心律失常。心律失常患者没有心律失常的迹象,但医生可以在常规检查中识别心律失常。因此,连续式可穿戴个人监控系统发挥了很大的作用,并日益受到人们的欢迎。本研究的重点是设计和开发一种结合心电信号预测心律失常(房颤)的方法。本文应用长短期记忆神经网络、递归神经网络、TensorFlow和Keras库构建心律失常预测模型和基于android的实时心电监测系统。这些深度学习模型和算法有助于心律失常预测的总体准确率达到97.57%。该系统采用Raspberry pi 3、Arduino UNO、AD8232单导联ECG传感器、HC-05蓝牙、生物医学传感器垫和电池设计。该系统将使医生更容易在医院外监测患者的心电图,也有助于远程心电监测。这项研究工作的总元件成本在58美元左右。
Low Cost, Portable ECG Monitoring and Alarming System Based on Deep Learning
Electrocardiogram (ECG) has been the golden standard for the detection of cardiovascular disease for many years. Any electrical impulse disruption that causes the heart to the contract may lead to arrhythmia. Arrhythmia patients have no indications of having an arrhythmia, but a doctor may recognize arrhythmias in a routine test. Therefore, continuous wearable personal monitoring system plays a big role, and it's become popular day by day. This research focuses on designing and developing a method for predicting arrhythmia (atrial fibrillation) along with monitoring the ECG signals. To create an arrhythmia prediction model and an Android-based real-time ECG surveillance system, Long Short-Term Memories neural network, Recurrent Neural Network, TensorFlow and Keras library are applied here. Those deep learning models and algorithms help to achieve overall 97.57% accuracy on arrhythmia prediction. The system is being designed with Raspberry pi 3, Arduino UNO, AD8232 single lead ECG sensor, HC-05 Bluetooth, biomedical sensor pad and battery. This system will make easier for doctors to monitor the ECG of their patients outside the hospital and also help for remote ECG monitoring. The total components cost of this research work is around USD 58.