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Continuous blood pressure estimation based on multiple parameters from eletrocardiogram and photoplethysmogram by Back-propagation neural network

机译:基于反传播神经网络的Eletrodardocogram和PhotoLopleSym谱谱法的连续血压估计

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The cuff-less continuous blood pressure monitoring provides reliable and invaluable information about the individuals' health condition. Conventional sphygmomanometer with a cuff measures only the value of the blood pressure intermittently and the measurement process is sometimes inconvenient. In this work, a systematic approach with multi-parameter fusion has been proposed to estimate the noninvasive beat-to-beat systolic and diastolic blood pressure with high accuracy. The methods involve real-time monitoring of the electrocardiogram (ECG) and photoplethysmogram (PPG), and extracting the R peak from the ECG and relevant feature parameters from the synchronous PPG. Also, it covers the creation of the topological model of back-propagation neural network that has fifteen neurons in the input layer, ten neurons in the single interlayer, and two neurons in the output layer, where all the neurons are fully connected. As for the results, the proposed method was validated on the volunteers. The reference blood pressure (BP) is from Finometer (MIDI, Finapres Medical System, Netherlands). The results showed that the mean +/- S.D. for the estimated systolic BP (SBP) and diastolic BP (DBP) with the proposed method against reference were -0.41 +/- 2.02 mmHg and 0.46 +/- 2.21 mmHg, respectively. Thus, the continuous blood pressure algorithm based on Back-Propagation neural network provides a continuous BP with a high accuracy. (C) 2017 Elsevier B.V. All rights reserved.
机译:较少的连续血压监测提供有关个人健康状况的可靠和宝贵的信息。具有袖带的常规血压计仅间歇地衡量血压的值,并且测量过程有时是不方便的。在这项工作中,已经提出了一种具有多参数融合的系统方法,以估计具有高精度的非侵入性节拍收缩和舒张血压。该方法涉及对心电图(ECG)和光增读数(PPG)的实时监测,并从同步PPG提取来自ECG和相关特征参数的R峰值。此外,它涵盖了在输入层中具有十五个神经元的背部繁殖神经网络的拓扑模型的创建,在单个中间层中的十个神经元和输出层中的两个神经元,其中所有神经元都完全连接。至于结果,该方法在志愿者身上验证。参考血压(BP)是来自压力计(MIDI,Finapres医疗系统,荷兰)。结果表明,平均值+/- S.D.对于估计的收缩性BP(SBP)和舒张压BP(DBP)分别具有拟议方法的方法 - 0.41 +/- 2.02mmHg和0.46 +/- 2.21mmHg。因此,基于反向传播神经网络的连续血压算法提供了高精度的连续BP。 (c)2017 Elsevier B.v.保留所有权利。

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