From the Department of Anesthesiology, Vanderbilt University Medical Center, Nashville, Tennessee.
Department of Anesthesiology, Tennessee Valley Healthcare System Veterans Affairs Medical Center, Nashville, Tennessee.
Anesth Analg. 2023 May 1;136(5):941-948. doi: 10.1213/ANE.0000000000006349. Epub 2023 Apr 14.
Early detection and quantification of perioperative hemorrhage remains challenging. Peripheral intravenous waveform analysis (PIVA) is a novel method that uses a standard intravenous catheter to detect interval hemorrhage. We hypothesize that subclinical blood loss of 2% of the estimated blood volume (EBV) in a rat model of hemorrhage is associated with significant changes in PIVA. Secondarily, we will compare PIVA association with volume loss to other static, invasive, and dynamic markers.
Eleven male Sprague Dawley rats were anesthetized and mechanically ventilated. A total of 20% of the EBV was removed over ten 5 minute-intervals. The peripheral intravenous pressure waveform was continuously transduced via a 22-G angiocatheter in the saphenous vein and analyzed using MATLAB. Mean arterial pressure (MAP) and central venous pressure (CVP) were continuously monitored. Cardiac output (CO), right ventricular diameter (RVd), and left ventricular end-diastolic area (LVEDA) were evaluated via transthoracic echocardiogram using the short axis left ventricular view. Dynamic markers such as pulse pressure variation (PPV) were calculated from the arterial waveform. The primary outcome was change in the first fundamental frequency (F1) of the venous waveform, which was assessed using analysis of variance (ANOVA). Mean F1 at each blood loss interval was compared to the mean at the subsequent interval. Additionally, the strength of the association between blood loss and F1 and each other marker was quantified using the marginal R2 in a linear mixed-effects model.
PIVA derived mean F1 decreased significantly after hemorrhage of only 2% of the EBV, from 0.17 to 0.11 mm Hg, P = .001, 95% confidence interval (CI) of difference in means 0.02 to 0.10, and decreased significantly from the prior hemorrhage interval at 4%, 6%, 8%, 10%, and 12%. Log F1 demonstrated a marginal R2 value of 0.57 (95% CI 0.40-0.73), followed by PPV 0.41 (0.28-0.56) and CO 0.39 (0.26-0.58). MAP, LVEDA, and systolic pressure variation displayed R2 values of 0.31, and the remaining predictors had R2 values ≤0.2. The difference in log F1 R2 was not significant when compared to PPV 0.16 (95% CI -0.07 to 0.38), CO 0.18 (-0.06 to 0.04), or MAP 0.25 (-0.01 to 0.49) but was significant for the remaining markers.
The mean F1 amplitude of PIVA was significantly associated with subclinical blood loss and most strongly associated with blood volume among the markers considered. This study demonstrates feasibility of a minimally invasive, low-cost method for monitoring perioperative blood loss.
围手术期出血的早期检测和定量仍然具有挑战性。外周静脉波形分析(PIVA)是一种使用标准静脉导管检测间隔性出血的新方法。我们假设在失血量占估计血容量(EBV)的 2%的大鼠模型中,亚临床失血与 PIVA 有显著变化相关。其次,我们将比较 PIVA 与容量损失的关联与其他静态、侵入性和动态标志物。
11 只雄性 Sprague Dawley 大鼠接受麻醉并机械通气。共在 10 个 5 分钟间隔内取出 EBV 的 20%。外周静脉压波形通过 saphenous 静脉中的 22-G 血管造影导管连续传递,并使用 MATLAB 进行分析。平均动脉压(MAP)和中心静脉压(CVP)连续监测。通过经胸超声心动图使用短轴左心室视图评估心输出量(CO)、右心室直径(RVd)和左心室舒张末期面积(LVEDA)。通过从动脉波形计算脉搏压变化(PPV)等动态标志物。主要结果是静脉波形的第一基频(F1)的变化,使用方差分析(ANOVA)进行评估。比较每个失血量间隔的平均 F1 与随后间隔的平均 F1。此外,使用线性混合效应模型中的边际 R2 量化失血与 F1 之间以及与每个其他标志物之间的关联强度。
仅在 EBV 失血 2%后,PIVA 衍生的平均 F1 就显著下降,从 0.17 降至 0.11 mmHg,P=0.001,均值差值的 95%置信区间(CI)为 0.02 至 0.10,并且与前一个失血间隔相比,4%、6%、8%、10%和 12%时均显著下降。对数 F1 的边际 R2 值为 0.57(95%CI 0.40-0.73),其次是 PPV 0.41(0.28-0.56)和 CO 0.39(0.26-0.58)。MAP、LVEDA 和收缩压变化的 R2 值为 0.31,其余预测因子的 R2 值≤0.2。与 PPV 0.16(95%CI -0.07 至 0.38)、CO 0.18(-0.06 至 0.04)或 MAP 0.25(-0.01 至 0.49)相比,log F1 R2 的差异无统计学意义,但与其余标志物相比,差异有统计学意义。
PIVA 的平均 F1 幅度与亚临床失血显著相关,在考虑的标志物中与血容量的相关性最强。这项研究证明了监测围手术期失血的微创、低成本方法的可行性。