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Blood Pressure Estimation from Photoplethysmogram Using a Spectro-Temporal Deep Neural Network

机译:使用光谱时态深层神经网络从光体积描记图估计血压

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摘要

Blood pressure (BP) is a direct indicator of hypertension, a dangerous and potentially deadly condition. Regular monitoring of BP is thus important, but many people have aversion towards cuff-based devices, and their limitation is that they can only be used at rest. Using just a photoplethysmogram (PPG) to estimate BP is a potential solution investigated in our study. We analyzed the MIMIC III database for high-quality PPG and arterial BP waveforms, resulting in over 700 h of signals after preprocessing, belonging to 510 subjects. We then used the PPG alongside its first and second derivative as inputs into a novel spectro-temporal deep neural network with residual connections. We have shown in a leave-one-subject-out experiment that the network is able to model the dependency between PPG and BP, achieving mean absolute errors of 9.43 for systolic and 6.88 for diastolic BP. Additionally we have shown that personalization of models is important and substantially improves the results, while deriving a good general predictive model is difficult. We have made crucial parts of our study, especially the list of used subjects and our neural network code, publicly available, in an effort to provide a solid baseline and simplify potential comparison between future studies on an explicit MIMIC III subset.
机译:血压(BP)是高血压,危险和可能致命的状况的直接指标。因此,定期监测BP很重要,但是许多人对基于袖带的设备有所厌恶,其局限性在于只能在静止状态下使用。仅使用光电容积描记图(PPG)估计BP是我们研究中研究的潜在解决方案。我们分析了MIMIC III数据库中的高质量PPG和动脉BP波形,经过预处理后产生了700多小时的信号,属于510个受试者。然后,我们将PPG及其一阶和二阶导数与带有剩余连接的新型时空深度神经网络一起用作输入。我们已经在一项留一剂实验中表明,该网络能够对PPG和BP之间的依赖性进行建模,对于收缩压而言,平均绝对误差为9.43,对于舒张压而言,则为6.88。此外,我们已经表明,模型的个性化非常重要,并且可以显着改善结果,而很难获得良好的一般预测模型。我们提供了研究的关键部分,尤其是公开使用的主题列表和神经网络代码,以提供坚实的基准并简化对MIMIC III子集的未来研究之间的潜在比较。

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