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Non-invasive Prediction of Peak Systolic Pressure Drop across Coarctation of Aorta using Computational Fluid Dynamics*

机译:利用计算流体力学非侵入性预测主动脉缩窄时的收缩压峰值

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This paper proposes a novel method to noninvasively measure the peak systolic pressure difference (PSPD) across coarctation of the aorta for diagnosing the severity of coarctation. Traditional non-invasive estimates of pressure drop from the ultrasound can underestimate the severity and invasive measurements by cardiac catheterization can carry risks for patients. To address the issues, we employ computational fluid dynamics (CFD) computation to accurately predict the PSPD across a coarctation based on cardiac magnetic resonance (CMR) imaging data and cuff pressure measurements from one arm. The boundary conditions of a patient-specific aorta model are specified at the inlet of the ascending aorta by using the time-dependent blood velocity, and the outlets of descending aorta and supra aortic branches by using a 3-element Windkessel model. To estimate the parameters of the Windkessel model, steady flow simulations were performed using the time-averaged flow rates in the ascending aorta, descending aorta, and two of the three supra aortic branches. The mean cuff pressure from one arm was specified at the outlet of one of the supra aortic branches. The CFD predicted PSPDs of 5 patients (n=5) were compared with the invasively measured pressure drops obtained by catheterization. The PSPDs were accurately predicted (mean µ=0.3mmHg, standard deviation σ =4.3mmHg) in coarctation of the aorta using completely non-invasive flow and cuff pressure data. The results of our study indicate that the proposed method could potentially replace invasive measurements for estimating the severity of coarctations.Clinical relevance—Peak systolic pressure drop is an indicator of the severity of coarctation of the aorta. It can be predicted without any additional risks to patients using non-invasive cuff pressure and flow data from CMR
机译:本文提出了一种新的方法来无创地测量主动脉缩窄时的收缩压峰值(PSPD),以诊断缩窄的严重程度。传统的非侵入式超声压降估计可能会低估严重程度,而通过心脏导管插入术进行的侵入性测量可能会给患者带来风险。为了解决这些问题,我们基于心脏磁共振(CMR)成像数据和一只手的袖带压力测量结果,采用计算流体动力学(CFD)计算来准确预测整个缩窄时的PSPD。通过使用随时间变化的血流速度在升主动脉的入口处指定特定于患者的主动脉模型的边界条件,并使用3元素Windkessel模型在降主动脉和主动脉上分支的出口处指定患者的主动脉模型的边界条件。为了估计Windkessel模型的参数,使用升主动脉,降主动脉和三个上主动脉分支中的两个中的时间平均流速进行了稳态流动模拟。在上主动脉分支之一的出口处指定了来自一只手臂的平均袖带压。将CFD预测的5名患者(n = 5)的PSPD与通过导管插入术测得的有创压降进行了比较。使用完全无创的流量和袖带压数据可以准确地预测主动脉缩窄时的PSPD(平均µ = 0.3mmHg,标准偏差σ= 4.3mmHg)。我们的研究结果表明,该方法可以潜在地替代侵入性测量方法,以估计缩窄的严重程度。临床意义-峰值收缩压下降是主动脉缩窄严重程度的指标。使用CMR的无创式袖套压力和流量数据可以预测出患者没有任何其他风险

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