HUB Center Regione Emilia Romagna for Venous and Lymphatics Disorders, University Hospital of Ferrara, Ferrara, Italy.
Department of Morphology, Surgery and Experimental Medicine, University of Ferrara, Ferrara, Italy.
PLoS One. 2020 Oct 28;15(10):e0240057. doi: 10.1371/journal.pone.0240057. eCollection 2020.
Acquiring central venous pressure (CVP), an important clinical parameter, requires an invasive procedure, which poses risk to patients. The aim of the study was to develop a non-invasive methodology for determining mean-CVP from ultrasound assessment of the jugular venous pulse.
In thirty-four adult patients (age = 60 ± 12 years; 10 males), CVP was measured using a central venous catheter, with internal jugular vein (IJV) cross-sectional area (CSA) variation along the cardiac beat acquired using ultrasound. The resultant CVP and IJV-CSA signals were synchronized with electrocardiogram (ECG) signals acquired from the patients. Autocorrelation signals were derived from the IJV-CSA signals using algorithms in R (open-source statistical software). The correlation r-values for successive lag intervals were extracted and used to build a linear regression model in which mean-CVP was the response variable and the lagging autocorrelation r-values and mean IJV-CSA, were the predictor variables. The optimum model was identified using the minimum AIC value and validated using 10-fold cross-validation.
While the CVP and IJV-CSA signals were poorly correlated (mean r = -0.018, SD = 0.357) due to the IJV-CSA signal lagging behind the CVP signal, their autocorrelation counterparts were highly positively correlated (mean r = 0.725, SD = 0.215). Using the lagging autocorrelation r-values as predictors, mean-CVP was predicted with reasonable accuracy (r2 = 0.612), with a mean-absolute-error of 1.455 cmH2O, which rose to 2.436 cmH2O when cross-validation was performed.
Mean-CVP can be estimated non-invasively by using the lagged autocorrelation r-values of the IJV-CSA signal. This new methodology may have considerable potential as a clinical monitoring and diagnostic tool.
获取中心静脉压(CVP)这一重要的临床参数需要进行有创操作,这会给患者带来风险。本研究旨在开发一种非侵入性方法,通过对颈静脉脉搏的超声评估来确定平均 CVP。
在 34 名成年患者(年龄=60±12 岁;男性 10 名)中,使用中心静脉导管测量 CVP,同时使用超声获取颈内静脉(IJV)随心跳的截面积(CSA)变化。所得 CVP 和 IJV-CSA 信号与从患者获得的心电图(ECG)信号同步。使用 R(开源统计软件)中的算法从 IJV-CSA 信号中得出自相关信号。提取连续滞后间隔的相关 r 值,并将其用于构建线性回归模型,其中平均 CVP 是响应变量,滞后自相关 r 值和平均 IJV-CSA 是预测变量。使用最小 AIC 值确定最佳模型,并使用 10 倍交叉验证进行验证。
尽管由于 IJV-CSA 信号滞后于 CVP 信号,CVP 和 IJV-CSA 信号相关性较差(平均 r=-0.018,SD=0.357),但其自相关对应物高度正相关(平均 r=0.725,SD=0.215)。使用滞后自相关 r 值作为预测因子,可以较准确地预测平均 CVP(r2=0.612),平均绝对误差为 1.455cmH2O,当进行交叉验证时,该值上升至 2.436cmH2O。
可以通过使用 IJV-CSA 信号的滞后自相关 r 值来非侵入性地估计平均 CVP。这种新方法可能具有作为临床监测和诊断工具的巨大潜力。