医学
预测值
计算机断层摄影术
肺动脉高压
放射科
计算机断层血管造影
血管造影
心脏病学
肺动脉造影
内科学
作者
Yanxi Zeng,Qing Yu,Nuerbiyemu Maimaitiaili,Bingyu Li,Panjin Liu,Yongzhi Hou,Mima,Cirenguojie,Gupta Sumit,Dejizhuoga,Yong Liu,Wenhui Peng
出处
期刊:JACC: Asia
[Elsevier]
日期:2022-12-01
卷期号:2 (7): 803-815
被引量:3
标识
DOI:10.1016/j.jacasi.2022.09.014
摘要
High-altitude pulmonary hypertension (HAPH), as the group 3 pulmonary hypertension, has been less studied so far. The limited medical conditions in the high-altitude plateau are responsible for the delay of the clinical management of HAPH.This study aims to identify the imaging characteristics of HAPH and explore noninvasive assessment of mean pulmonary arterial pressure (mPAP) based on computed tomography angiography (CTA).Twenty-five patients with suspected HAPH were enrolled. Right heart catheterization (RHC) and pulmonary angiography were performed. Echocardiography and CTA image data were collected for analysis. A multivariable linear regression model was fit to estimate mPAP (mPAPpredicted). A Bland-Altman plot and pathological analysis were performed to assess the diagnostic accuracy of this model.Patients with HAPH showed slow blood flow and coral signs in lower lobe pulmonary artery in pulmonary arteriography, and presented trend for dilated pulmonary vessels, enlarged right atrium, and compressed left atrium in CTA (P for trend <0.05). The left lower pulmonary artery-bronchus ratio (odds ratio: 1.13) and the ratio of right to left atrial diameter (odds ratio: 1.09) were significantly associated with HAPH, and showed strong correlation with mPAPRHC, respectively (r = 0.821 and r = 0.649, respectively; all P < 0.0001). The mPAPpredicted model using left lower artery-bronchus ratio and ratio of right to left atrial diameter as covariates showed high correlation with mPAPRHC (r = 0.907; P < 0.0001). Patients with predicted HAPH also had the typical pathological changes of pulmonary hypertension.Noninvasive mPAP estimation model based on CTA image data can accurately fit mPAPRHC and is beneficial for the early diagnosis of HAPH.
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