A portable household detection system based on the combination of bidirectional LSTM and residual block for automatical arrhythmia detection.

Biomedizinische Technik. Biomedical engineering Pub Date : 2023-09-29 Print Date: 2024-04-25 DOI:10.1515/bmt-2021-0146
Zeqiong Huang, Shaohua Yang, Qinhong Zou, Xuliang Gao, Bin Chen
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Abstract

Objectives: Arrhythmia is an important component of cardiovascular disease, and electrocardiogram (ECG) is a method to detect arrhythmia. Arrhythmia detection is often paroxysmal, and ECG signal analysis is time-consuming and expensive. We propose a model and device for convenient monitoring of arrhythmia at any time.

Methods: This work proposes a model combining residual block and bidirectional long-term short-term memory network (BiLSTM) to detect and classify ECG signals. Residual blocks can extract deep features and avoid performance degradation caused by convolutional networks. Combined with the feature of BiLSTM to strengthen the connection relationship of the local window, it can achieve a better classification and prediction effect.

Results: Model optimization experiments were performed on the MIT-BIH Atrial Fibrillation Database (AFDB) and MIT-BIH Arrhythmia Database (MITDB). The accuracy simulation results on both long and short signal was higher than 99 %. To further demonstrate the applicability of the model, validation experiments were conducted on MIT-BIH Normal Sinus Rhythm Database (NSRDB) and the Long-Term AF Database (LTAFDB) datasets, and the related recognition accuracy were 99.830 and 91.252 %, respectively. Additionally, we proposed a portable household detection system including an ECG and a blood pressure detection module. The detection accuracy was higher than 98 % using the collected data as testing set.

Conclusions: Hence, we thought our system can be used for practical application.

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一种基于双向LSTM和残差块相结合的便携式家庭心律失常自动检测系统。
目的:心律失常是心血管疾病的重要组成部分,心电图是检测心律失常的一种方法。心律失常检测通常是阵发性的,心电图信号分析耗时且昂贵。我们提出了一种便于随时监测心律失常的模型和装置。方法:本文提出了一种结合残差块和双向长短期记忆网络(BiLSTM)的心电信号检测和分类模型。残差块可以提取深层特征,避免卷积网络导致的性能下降。结合BiLSTM的特点,加强局部窗口的连接关系,可以达到更好的分类和预测效果。结果:在MIT-BIH心房颤动数据库(AFDB)和MIT-BIH心律失常数据库(MITDB)上进行了模型优化实验。长短信号的精度仿真结果均高于99 %. 为了进一步证明该模型的适用性,在MIT-BIH正常窦性心律数据库(NSRDB)和长期房颤数据库(LTAFDB)数据集上进行了验证实验,相关识别准确率分别为99.830和91.252 %, 分别地此外,我们提出了一种便携式家庭检测系统,包括心电图和血压检测模块。检测准确度高于98 % 使用所收集的数据作为测试集。结论:因此,我们认为我们的系统可以用于实际应用。
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