从动脉血压和光容积脉搏波波形中提取特征的信号处理工具。

R Pal, A Rudas, S Kim, J N Chiang, M Cannesson
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引用次数: 0

摘要

动脉血压(ABP)和光容积脉搏波(PPG)波形包含有价值的临床信息,在心血管健康监测、医学研究和医疗状况管理中起着至关重要的作用。从PPG波形中提取的特征具有多种临床应用,从血压监测到伤害监测,而从ABP波形中提取的特征可用于计算心输出量并预测高血压或低血压。近年来,已经提出了许多机器学习模型来利用这些医疗保健应用的PPG和ABP波形特征。然而,缺乏从这些波形中提取特征的标准化工具可能会影响其临床效果。本文提出了一种用于提取ABP和PPG波形特征的自动信号处理工具。此外,我们使用该工具从包含17,327例患者的大型围手术期数据集中生成了PPG特征库。该PPG特征库可用于探索这些提取特征的潜力,以开发用于非侵入性血压估计的机器学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A signal processing tool for extracting features from arterial blood pressure and photoplethysmography waveforms.

Arterial blood pressure (ABP) and photoplethysmography (PPG) waveforms contain valuable clinical information and play a crucial role in cardiovascular health monitoring, medical research, and managing medical conditions. The features extracted from PPG waveforms have various clinical applications ranging from blood pressure monitoring to nociception monitoring, while features from ABP waveforms can be used to calculate cardiac output and predict hypertension or hypotension. In recent years, many machine learning models have been proposed to utilize both PPG and ABP waveform features for these healthcare applications. However, the lack of standardized tools for extracting features from these waveforms could potentially affect their clinical effectiveness. In this paper, we propose an automatic signal processing tool for extracting features from ABP and PPG waveforms. Additionally, we generated a PPG feature library from a large perioperative dataset comprising 17,327 patients using the proposed tool. This PPG feature library can be used to explore the potential of these extracted features to develop machine learning models for non-invasive blood pressure estimation.

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