利用人工神经网络对光容积脉搏波信号进行无创血压估计

Nicolas Bersano, Horacio Sanson
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引用次数: 4

摘要

这项工作的重点是人工神经网络在医疗保健环境中分类生物信号的潜力,特别是在通过医疗设备获得的光容积脉搏波信号读数估计血压方面。已知该信号具有宝贵的心血管信息,并与心率和血压脉搏波有关。在文献中,有人试图将该信号直接与单一血压值联系起来,并/或将其分类为一种血压临床状态(如低血压、正常、高血压前期、1期高血压、2期高血压)。我们提出了基于人工神经网络的模型,该模型实现了与以前作品相似的性能,而不需要工程或人口统计学特征。这些模型能够学习如何从原始光容积脉搏波信号中提取描述性特征,并将其用于血压分类。测试结果很有希望,并验证了人工神经网络架构在此任务中的有效性。
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Non-invasive blood pressure estimation from photoplethysmography signals using artificial neural networks
This work focuses on the potential of artificial neural networks to classify biological signals in a healthcare setting, specifically in the estimation of blood pressure from photoplethysmography signal readings obtained via medical devices. This signal is known to have valuable cardiovascular information and has been related to heart rate and blood pressure pulsewave. Among the literature there have been attempts to correlate this signal directly to a single blood pressure value and/or classify it into one of the blood pressure clinical states (e.g. Hypotension, Normal, Pre Hypertension, Stage 1 Hypertension, Stage 2 Hypertension). We propose models based on artificial neural networks that achieve similar performance to those in previous works, without needing engineered nor demographic features. These models are capable of learning how to extract descriptive features from only the raw photoplethysmography signals, and use them for classification into a blood pressure class. Test results are promising and validate the usefulness of artificial neural network architectures for this task.
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