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A non-invasive continuous cuffless blood pressure estimation using dynamic Recurrent Neural Networks

机译:使用动态复发性神经网络的非侵入性连续齿轮压估计

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Cardiovascular diseases (CVD) have become the most important health problem of our time. High blood pressure, which is cardiovascular disease, is a risk factor for death, stroke, and heart attack. Blood pressure measurement is commonly used to limit blood flow in the arm or wrist, with the cuff. Since blood pressure cannot be measured continuously in this method, the dynamics underlying blood pressure cannot be determined and are inefficient in capturing symptoms. This paper aims to perform blood pressure estimation using Photoplethysmography (PPG) and Electrocardiography (ECG) signals that do not obstruct the vascular access. These signals were filtered and segmented synchronously from the R interval of the ECG signal, and chaotic, time, and frequency domain features were subtracted, and estimation methods were applied. Different methods of machine learning in blood pressure estimation are compared. Dynamic learning methods such as Recurrent Neural Network (RNN), Nonlinear Autoregressive Network with Exogenous Inputs Neural Networks NARX-NN and Long-Short Term Memory Neural Network (LSTM-NN) used. Estimation results have been evaluated with performance criteria. Systolic Blood Pressure (SBP) error mean +/- standard deviation = 0.0224 +/- (2.211), Diastolic Blood Pressure (DBP) error mean +/- standard deviation = 0.0417 +/- (1.2193) values have been detected in NARX artificial neural network. The blood pressure estimation results are evaluated by the British Hypertension Society (BHS) and American National Standard for Medical Instrumentation ANSI/AAMI SP10: 2002. Finding the most accurate and easy method in blood pressure measurement will contribute to minimizing the errors. (C) 2020 Elsevier Ltd. All rights reserved.
机译:心血管疾病(CVD)已成为我们时间最重要的健康问题。高血压,即心血管疾病,是死亡,中风和心脏病发作的危险因素。血压测量通常用于将臂或手腕的血流限制在袖口中。由于在该方法中不能连续测量血压,因此不能确定血压下面的动态,并且在捕获症状方面是低效的。本文旨在使用PhotocletySmography(PPG)和心电图(ECG)信号进行血压估计,这些信号不妨碍血管进入。从ECG信号的R间隔进行滤波并同步地滤波并分割,并减去混沌,时间和频域特征,并施加估计方法。比较了血压估计中的机器学习方法。动态学习方法,如经常性神经网络(RNN),具有外源输入神经网络NARX-NN和长短短期内存神经网络(LSTM-NN)的非线性自回归网络。估计结果已通过绩效标准进行评估。收缩压(SBP)误差是+/-标准偏差= 0.0224 +/-(2.211),舒张压(DBP)误差均值+/-标准偏差= 0.0417 +/-(1.2193)在NARX人工中检测到值神经网络。血压估计结果由英国高血压协会(BHS)和美国国家医疗仪表标准评估ANSI / AAMI SP10:2002。在血压测量中找到最准确和简单的方法将有助于最小化错误。 (c)2020 elestvier有限公司保留所有权利。

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