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Diagnosis of pulmonary hypertension from magnetic resonance imaging–based computational models and decision tree analysis

机译:基于磁共振成像的计算模型和决策树分析对肺动脉高压的诊断

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摘要

Accurately identifying patients with pulmonary hypertension (PH) using noninvasive methods is challenging, and right heart catheterization (RHC) is the gold standard. Magnetic resonance imaging (MRI) has been proposed as an alternative to echocardiography and RHC in the assessment of cardiac function and pulmonary hemodynamics in patients with suspected PH. The aim of this study was to assess whether machine learning using computational modeling techniques and image-based metrics of PH can improve the diagnostic accuracy of MRI in PH. Seventy-two patients with suspected PH attending a referral center underwent RHC and MRI within 48 hours. Fifty-seven patients were diagnosed with PH, and 15 had no PH. A number of functional and structural cardiac and cardiovascular markers derived from 2 mathematical models and also solely from MRI of the main pulmonary artery and heart were integrated into a classification algorithm to investigate the diagnostic utility of the combination of the individual markers. A physiological marker based on the quantification of wave reflection in the pulmonary artery was shown to perform best individually, but optimal diagnostic performance was found by the combination of several image-based markers. Classifier results, validated using leave-one-out cross validation, demonstrated that combining computation-derived metrics reflecting hemodynamic changes in the pulmonary vasculature with measurement of right ventricular morphology and function, in a decision support algorithm, provides a method to noninvasively diagnose PH with high accuracy (92%). The high diagnostic accuracy of these MRI-based model parameters may reduce the need for RHC in patients with suspected PH.
机译:使用无创方法准确识别肺动脉高压(PH)患者具有挑战性,右心导管检查(RHC)是金标准。已提出磁共振成像(MRI)替代超声心动图和RHC来评估可疑PH患者的心功能和肺血流动力学。这项研究的目的是评估使用计算建模技术和基于图像的PH指标的机器学习是否可以提高MRI对PH的诊断准确性。在转诊中心就诊的72名疑似PH的患者在48小时内接受了RHC和MRI检查。有57名患者被诊断为PH,有15名患者没有PH。将来自2个数学模型以及仅来自主要肺动脉和心脏的MRI的许多功能和结构性心脏和心血管标志物整合到分类算法中,以研究各个标志物组合的诊断实用性。定量显示基于肺动脉波反射定量的生理学标记物表现最佳,但结合几种基于图像的标记物发现了最佳的诊断性能。使用留一法交叉验证进行验证的分类器结果表明,在决策支持算法中,将反映肺血管血流动力学变化的计算衍生指标与右心室形态和功能的测量相结合,提供了一种无创诊断PH的方法。高精度(92%)。这些基于MRI的模型参数的高诊断准确性可以减少疑似PH患者的RHC需求。

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