Department of Computer Science, University of California, Los Angeles, CA, USA.
Department of Computational Medicine, University of California, Los Angeles, CA, USA.
Sci Rep. 2021 Aug 3;11(1):15755. doi: 10.1038/s41598-021-94913-y.
In two-thirds of intensive care unit (ICU) patients and 90% of surgical patients, arterial blood pressure (ABP) is monitored non-invasively but intermittently using a blood pressure cuff. Since even a few minutes of hypotension increases the risk of mortality and morbidity, for the remaining (high-risk) patients ABP is measured continuously using invasive devices, and derived values are extracted from the recorded waveforms. However, since invasive monitoring is associated with major complications (infection, bleeding, thrombosis), the ideal ABP monitor should be both non-invasive and continuous. With large volumes of high-fidelity physiological waveforms, it may be possible today to impute a physiological waveform from other available signals. Currently, the state-of-the-art approaches for ABP imputation only aim at intermittent systolic and diastolic blood pressure imputation, and there is no method that imputes the continuous ABP waveform. Here, we developed a novel approach to impute the continuous ABP waveform non-invasively using two continuously-monitored waveforms that are currently part of the standard-of-care, the electrocardiogram (ECG) and photo-plethysmogram (PPG), by adapting a deep learning architecture designed for image segmentation. Using over 150,000 min of data collected at two separate health systems from 463 patients, we demonstrate that our model provides a highly accurate prediction of the continuous ABP waveform (root mean square error 5.823 (95% CI 5.806-5.840) mmHg), as well as the derived systolic (mean difference 2.398 ± 5.623 mmHg) and diastolic blood pressure (mean difference - 2.497 ± 3.785 mmHg) compared to arterial line measurements. Our approach can potentially be used to measure blood pressure continuously and non-invasively for all patients in the acute care setting, without the need for any additional instrumentation beyond the current standard-of-care.
在三分之二的重症监护病房 (ICU) 患者和 90%的手术患者中,使用血压袖带非侵入性但间歇性地监测动脉血压 (ABP)。由于即使几分钟的低血压也会增加死亡率和发病率,因此对于其余(高风险)患者,使用侵入性设备连续测量 ABP,并从记录的波形中提取派生值。然而,由于侵入性监测与重大并发症(感染、出血、血栓形成)相关,理想的 ABP 监测仪既应是非侵入性的,又应是连续的。有了大量高保真生理波形,今天也许有可能从其他可用信号推断出生理波形。目前,ABP 推断的最新方法仅旨在间歇性地推断收缩压和舒张压,并且没有方法可以推断连续的 ABP 波形。在这里,我们开发了一种新颖的方法,使用目前标准护理中连续监测的两个波形(心电图 (ECG) 和光容积描记图 (PPG))来非侵入性地推断连续的 ABP 波形,该方法适用于专为图像分割而设计的深度学习架构。使用两个独立的健康系统收集的超过 15 万分钟的数据,我们从 463 名患者中证明了我们的模型可以非常准确地预测连续的 ABP 波形(均方根误差 5.823 (95% CI 5.806-5.840) mmHg),以及衍生的收缩压(平均差值 2.398 ± 5.623 mmHg)和舒张压(平均差值 -2.497 ± 3.785 mmHg)与动脉线测量相比。与当前标准护理相比,我们的方法有可能用于在急性护理环境中连续、非侵入性地测量所有患者的血压,而无需任何额外的仪器。