基于Bi-LSTM的生理信号相互预测

P. Ghadekar, Aashay Bongulwar, Aayush Jadhav, Rishikesh Ahire, Amogh Dumbre, Sumaan Ali
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引用次数: 0

摘要

在病人护理过程中获得的两个最重要的生理信号是光容积描记图(PPG)和心电图(ECG)。由于最近的技术进步,两者之间的相关性已经暴露出来。每个信号的重要性保证了在另一个信号缺失时预测一个信号的解决方案。此外,PPG的廉价和无创的方法提供了一种更便宜和舒适的监测方式,而不是安装ECG。因此,本研究提出了一个Bi-LSTM模型来预测这两种生理信号。该模型对心电和PPG的MSE分别为0.092和0.065的信号进行滤波和有效对齐后,成功地预测了长期数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bi-LSTM based Interdependent Prediction of Physiological Signals
Two of the most essential physiological signals obtained during patient care are the photoplethysmogram (PPG) and electrocardiogram (ECG). Due to recent technological advancements the correlation between the two has come to light. The significance of each signal warrants a solution to predict one when the other is absent. Also, the inexpensive and non-invasive approach of PPG provides a cheaper and comfortable way of monitoring instead of installing ECG. Thus, This study proposes a Bi-LSTM model to predict the two physiological signals. The model was successful in predicting long term data after filtering and aligning the signals efficiently with an MSE value of 0.092 and 0.065 for ECG and PPG respectively.
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