Department of Engineering Science, Institute of Biomedical Engineering, University of Oxford, Oxford, UK.
Critical Care Research Group, Nuffield Department of Clinical Neurosciences, University of Oxford, Oxford, UK.
Sci Rep. 2021 Nov 23;11(1):22767. doi: 10.1038/s41598-021-01358-4.
Various models have been proposed for the estimation of blood pressure (BP) from pulse transit time (PTT). PTT is defined as the time delay of the pressure wave, produced by left ventricular contraction, measured between a proximal and a distal site along the arterial tree. Most researchers, when they measure the time difference between the peak of the R-wave in the electrocardiogram signal (corresponding to left ventricular depolarisation) and a fiducial point in the photoplethysmogram waveform (as measured by a pulse oximeter attached to the fingertip), describe this erroneously as the PTT. In fact, this is the pulse arrival time (PAT), which includes not only PTT, but also the time delay between the electrical depolarisation of the heart's left ventricle and the opening of the aortic valve, known as pre-ejection period (PEP). PEP has been suggested to present a significant limitation to BP estimation using PAT. This work investigates the impact of PEP on PAT, leading to a discussion on the best models for BP estimation using PAT or PTT. We conducted a clinical study involving 30 healthy volunteers (53.3% female, 30.9 ± 9.35 years old, with a body mass index of 22.7 ± 3.2 kg/m[Formula: see text]). Each session lasted on average 27.9 ± 0.6 min and BP was varied by an infusion of phenylephrine (a medication that causes venous and arterial vasoconstriction). We introduced new processing steps for the analysis of PAT and PEP signals. Various population-based models (Poon, Gesche and Fung) and a posteriori models (inverse linear, inverse squared and logarithm) for estimation of BP from PTT or PAT were evaluated. Across the cohort, PEP was found to increase by 5.5 ms ± 4.5 ms from its baseline value. Variations in PTT were significantly larger in amplitude, - 16.8 ms ± 7.5 ms. We suggest, therefore, that for infusions of phenylephrine, the contribution of PEP on PAT can be neglected. All population-based models produced large BP estimation errors, suggesting that they are insufficient for modelling the complex pathways relating changes in PTT or PAT to changes in BP. Although PAT is inversely correlated with systolic blood pressure (SBP), the gradient of this relationship varies significantly from individual to individual, from - 2946 to - 470.64 mmHg/s in our dataset. For the a posteriori inverse squared model, the root mean squared errors (RMSE) for systolic and diastolic blood pressure (DBP) estimation from PAT were 5.49 mmHg and 3.82 mmHg, respectively. The RMSEs for SBP and DBP estimation by PTT were 4.51 mmHg and 3.53 mmHg, respectively. These models take into account individual calibration curves required for accurate blood pressure estimation. The best performing population-based model (Poon) reported error values around double that of the a posteriori inverse squared model, and so the use of population-based models is not justified.
已经提出了各种模型来通过脉搏传输时间 (PTT) 估计血压 (BP)。PTT 定义为左心室收缩产生的压力波的时间延迟,在沿动脉树的近端和远端部位之间测量。大多数研究人员在测量心电图信号中 R 波峰值(对应于左心室去极化)与光体积描记图波形中的基准点(通过附接到指尖的脉搏血氧计测量)之间的时间差时,错误地将其描述为 PTT。实际上,这是脉搏到达时间 (PAT),它不仅包括 PTT,还包括心脏左心室去极化与主动脉瓣开放之间的延迟,称为射前期 (PEP)。PEP 已被建议对使用 PAT 进行 BP 估计提出了重大限制。这项工作研究了 PEP 对 PAT 的影响,从而讨论了使用 PAT 或 PTT 进行 BP 估计的最佳模型。我们进行了一项涉及 30 名健康志愿者(女性占 53.3%,30.9±9.35 岁,体重指数为 22.7±3.2kg/m[Formula: see text])的临床研究。每次就诊平均持续 27.9±0.6 分钟,通过输注苯肾上腺素(一种导致静脉和动脉收缩的药物)来改变血压。我们为 PAT 和 PEP 信号分析引入了新的处理步骤。评估了各种基于人群的模型(Poon、Gesche 和 Fung)和用于从 PTT 或 PAT 估计 BP 的后验模型(线性逆、平方逆和对数)。在整个队列中,发现 PEP 从基线值增加了 5.5ms±4.5ms。PTT 的变化幅度明显更大,为-16.8ms±7.5ms。因此,我们建议对于苯肾上腺素的输注,可以忽略 PEP 对 PAT 的贡献。所有基于人群的模型都产生了较大的 BP 估计误差,表明它们不足以模拟 PTT 或 PAT 变化与 BP 变化之间的复杂关系。尽管 PAT 与收缩压 (SBP) 呈负相关,但这种关系的梯度在个体之间差异很大,在我们的数据集从 -2946 到-470.64mmHg/s。对于后验平方逆模型,从 PAT 估计收缩压和舒张压 (DBP) 的均方根误差 (RMSE) 分别为 5.49mmHg 和 3.82mmHg。从 PTT 估计 SBP 和 DBP 的 RMSE 分别为 4.51mmHg 和 3.53mmHg。这些模型考虑了准确估计血压所需的个体校准曲线。表现最佳的基于人群的模型 (Poon) 报告的误差值大约是后验平方逆模型的两倍,因此不 justifies 使用基于人群的模型。