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基于光电容积脉搏波技术的创新连续无袖带血压监测。

Innovative continuous non-invasive cuffless blood pressure monitoring based on photoplethysmography technology.

机构信息

Critical Care Department, Vall d'Hebron University Hospital, Barcelona, Spain.

出版信息

Intensive Care Med. 2013 Sep;39(9):1618-25. doi: 10.1007/s00134-013-2964-2. Epub 2013 Jun 6.

Abstract

PURPOSE

To develop and validate a continuous non-invasive blood pressure (BP) monitoring system using photoplethysmography (PPG) technology through pulse oximetry (PO).

METHODS

This prospective study was conducted at a critical care department and post-anesthesia care unit of a university teaching hospital. Inclusion criteria were critically ill adult patients undergoing invasive BP measurement with an arterial catheter and PO monitoring. Exclusion criteria were arrhythmia, imminent death condition, and disturbances in the arterial or the PPG curve morphology. Arterial BP and finger PO waves were recorded simultaneously for 30 min. Systolic arterial pressure (SAP), mean arterial pressure (MAP), and diastolic arterial pressure (DAP) were extracted from computer-assisted arterial pulse wave analysis. Inherent traits of both waves were used to construct a regression model with a Deep Belief Network-Restricted Boltzmann Machine (DBN-RBM) from a training cohort of patients and in order to infer BP values from the PO wave. Bland-Altman analysis was performed.

RESULTS

A total of 707 patients were enrolled, of whom 135 were excluded. Of the 572 studied, 525 were assigned to the training cohort (TC) and 47 to the validation cohort (VC). After data processing, 53,708 frames were obtained from the TC and 7,715 frames from the VC. The mean prediction biases were -2.98 ± 19.35, -3.38 ± 10.35, and -3.65 ± 8.69 mmHg for SAP, MAP, and DAP respectively.

CONCLUSIONS

BP can be inferred from PPG using DBN-RBM modeling techniques. The results obtained with this technology are promising, but its intrinsic variability and its wide limits of agreement do not allow clinical application at this time.

摘要

目的

通过脉搏血氧饱和度(PO)利用光体积描记法(PPG)技术开发和验证一种连续的非侵入性血压(BP)监测系统。

方法

这项前瞻性研究在一所大学教学医院的重症监护病房和麻醉后护理病房进行。纳入标准为接受有创血压测量的危重病成年患者,同时进行动脉导管和 PO 监测。排除标准为心律失常、即将死亡状态和动脉或 PPG 曲线形态的干扰。同时记录动脉血压和手指 PO 波 30 分钟。从计算机辅助动脉脉搏波分析中提取收缩压(SAP)、平均动脉压(MAP)和舒张压(DAP)。使用两个波的固有特征,通过深度置信网络-限制玻尔兹曼机(DBN-RBM)从患者的训练队列中构建一个回归模型,以便从 PO 波推断 BP 值。进行了 Bland-Altman 分析。

结果

共纳入 707 例患者,其中 135 例被排除。在 572 例研究患者中,525 例被分配到训练队列(TC),47 例被分配到验证队列(VC)。经过数据处理,从 TC 获得 53708 帧,从 VC 获得 7715 帧。SAP、MAP 和 DAP 的平均预测偏差分别为-2.98±19.35、-3.38±10.35 和-3.65±8.69mmHg。

结论

可以使用 DBN-RBM 建模技术从 PPG 推断 BP。该技术获得的结果很有前景,但由于其固有变异性和较宽的一致性界限,目前还不能在临床上应用。

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