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肺动脉高压疾病影响因素的计算模型:全肺和局灶性疾病分布的影响

A computational model of contributors to pulmonary hypertensive disease: impacts of whole lung and focal disease distributions.

作者信息

Ebrahimi Behdad Shaarbaf, Tawhai Merryn H, Kumar Haribalan, Burrowes Kelly S, Hoffman Eric A, Wilsher Margaret L, Milne David, Clark Alys R

机构信息

Auckland Bioengineering Institute, University of Auckland, Auckland, New Zealand.

Department of Radiology, University of Iowa, Iowa City, IA, USA.

出版信息

Pulm Circ. 2021 Nov 18;11(4):20458940211056527. doi: 10.1177/20458940211056527. eCollection 2021 Oct-Dec.

Abstract

Pulmonary hypertension has multiple etiologies and so can be difficult to diagnose, prognose, and treat. Diagnosis is typically made via invasive hemodynamic measurements in the main pulmonary artery and is based on observed elevation of mean pulmonary artery pressure. This static mean pressure enables diagnosis, but does not easily allow assessment of the severity of pulmonary hypertension, nor the etiology of the disease, which may impact treatment. Assessment of the dynamic properties of pressure and flow data obtained from catheterization potentially allows more meaningful assessment of the strain on the right heart and may help to distinguish between disease phenotypes. However, mechanistic understanding of how the distribution of disease in the lung leading to pulmonary hypertension impacts the dynamics of blood flow in the main pulmonary artery and/or the pulmonary capillaries is lacking. We present a computational model of the pulmonary vasculature, parameterized to characteristic features of pulmonary arterial hypertension and chronic thromboembolic pulmonary hypertension to help understand how the two conditions differ in terms of pulmonary vascular response to disease. Our model incorporates key features known to contribute to pulmonary vascular function in health and disease, including anatomical structure and multiple contributions from gravity. The model suggests that dynamic measurements obtained from catheterization potentially distinguish between distal and proximal vasculopathy typical of pulmonary arterial hypertension and chronic thromboembolic pulmonary hypertension. However, the model suggests a non-linear relationship between these data and vascular structural changes typical of pulmonary arterial hypertension and chronic thromboembolic pulmonary hypertension which may impede analysis of these metrics to distinguish between cohorts.

摘要

肺动脉高压有多种病因,因此可能难以诊断、预测和治疗。诊断通常通过对主肺动脉进行有创血流动力学测量来进行,并且基于观察到的平均肺动脉压升高。这种静态平均压力有助于诊断,但不容易评估肺动脉高压的严重程度,也难以确定疾病的病因,而病因可能会影响治疗。对导管插入术获得的压力和流量数据的动态特性进行评估,可能会对右心的压力进行更有意义的评估,并有助于区分疾病表型。然而,目前缺乏对肺部疾病分布导致肺动脉高压如何影响主肺动脉和/或肺毛细血管血流动力学的机制理解。我们提出了一种肺血管系统的计算模型,该模型根据肺动脉高压和慢性血栓栓塞性肺动脉高压的特征进行参数化,以帮助理解这两种疾病在肺血管对疾病的反应方面有何不同。我们的模型纳入了已知对健康和疾病状态下肺血管功能有贡献的关键特征,包括解剖结构和重力的多种影响。该模型表明,从导管插入术获得的动态测量结果可能有助于区分肺动脉高压和慢性血栓栓塞性肺动脉高压典型的远端和近端血管病变。然而,该模型表明这些数据与肺动脉高压和慢性血栓栓塞性肺动脉高压典型的血管结构变化之间存在非线性关系,这可能会妨碍对这些指标进行分析以区分不同队列。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4b0e/8607494/f1182ed55b83/10.1177_20458940211056527-fig1.jpg

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