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Noninvasive Prediction of Pulmonary Hypertension Based on Finite Element Analysis and Machine Learning

机译:基于有限元分析和机器学习的肺动脉高压无创预测

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Geometry morphological features (GMF) of the ventricles were often used to predict the pulmonary hypertension (PH) in the clinical process. This study analyzed the relationship between right ventricular pressure (RVP) and ventricular morphological changes in simplified statistical shape models which were analyzed with finite element analysis method, and the RVP higher than 40 mmHg was adopted as a criterion to determine the presence of PH. Ten GMF features were utilized and three classifiers (decision tree, SVM and random forest) were performed to predict PH and achieved recognition accuracy of 90.7%, 91.4% and 93.5%, respectively. Through this study, the PH can be identified by morphometric features measured from ventricular images.
机译:脑室的几何形态特征(GMF)通常在临床过程中用于预测肺动脉高压(PH)。本研究在简化的统计形状模型中分析了右心室压力(RVP)与心室形态变化之间的关系,并通过有限元分析方法对其进行了分析,并采用RVP高于40 mmHg作为判断是否存在PH的标准。利用了十个GMF特征,并执行了三个分类器(决策树,SVM和随机森林)来预测PH值,并分别达到90.7%,91.4%和93.5%的识别准确率。通过这项研究,可以通过从心室图像测量的形态特征来识别PH。

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