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Detection of Congestive Heart Failure Based on LSTM-Based Deep Network via Short-Term RR Intervals

机译:基于LSTM的深度网络基于短期RR间隔的充血性心力衰竭检测

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摘要

Congestive heart failure (CHF) refers to the inadequate blood filling function of the ventricular pump and it may cause an insufficient heart discharge volume that fails to meet the needs of body metabolism. Heart rate variability (HRV) based on the RR interval is a proven effective predictor of CHF. Short-term HRV has been used widely in many healthcare applications to monitor patients’ health, especially in combination with mobile phones and smart watches. Inspired by the inception module from GoogLeNet, we combined long short-term memory (LSTM) and an Inception module for CHF detection. Five open-source databases were used for training and testing, and three RR segment length types (N = 500, 1000 and 2000) were used for the comparison with other studies. With blindfold validation, the proposed method achieved 99.22%, 98.85% and 98.92% accuracy using the Beth Israel Deaconess Medical Center (BIDMC) CHF, normal sinus rhythm (NSR) and the Fantasia database (FD) databases and 82.51%, 86.68% and 87.55% accuracy using the NSR-RR and CHF-RR databases, with N = 500, 1000 and 2000 length RR interval segments, respectively. Our end-to-end system can help clinicians to detect CHF using short-term assessment of the heartbeat. It can be installed in healthcare applications to monitor the status of human heart.
机译:充血性心力衰竭(CHF)是指心室泵的充血功能不足,可能会导致心脏排出量不足,无法满足机体新陈代谢的需求。基于RR间隔的心率变异性(HRV)是CHF的有效预测指标。短期HRV在许多医疗保健应用中已广泛用于监视患者的健康状况,尤其是与手机和智能手表结合使用时。受GoogLeNet的Inception模块的启发,我们将长期短期记忆(LSTM)和Inception模块结合在一起用于CHF检测。使用五个开源数据库进行培训和测试,并使用三种RR片段长度类型(N = 500、1000和2000)与其他研究进行比较。经过眼罩验证,使用贝斯以色列女执事医疗中心(BIDMC)CHF,正常窦性心律(NSR)和幻想曲数据库(FD)的数据库以及82.51%,86.68%和82.51%的方法,该方法的准确率达到了99.22%,98.85%和98.92%。使用NSR-RR和CHF-RR数据库的精度为87.55%,分别具有N = 500、1000和2000个长度的RR间隔段。我们的端到端系统可以使用短期心跳评估来帮助临床医生检测CHF。它可以安装在医疗保健应用程序中,以监视人的心脏状况。

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