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Site specific prediction of atherosclerotic plaque progression using computational biomechanics and machine learning

机译:使用计算生物力学和机器学习对动脉粥样硬化斑块进展进行现场预测

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Atheromatic plaque progression is considered as a typical pathological condition of arteries and although atherosclerosis is considered as a systemic inflammatory disorder, atheromatic plaque is not uniformly distributed in the arterial tree. Except for the systematic atherosclerosis risk factors, biomechanical forces, LDL concentration and artery geometry contribute to the atherogenesis and atherosclerotic plaque evolution. In this study, we calculate biomechanical forces acting within the artery and we develop a machine learning model for the prediction of atheromatic plaque progression. 1018 coronary sites of 3 mm, derived by 40 individuals, are utilized to develop the model and after the implementation of 4 different tree based prediction schemes, we achieve a prediction accuracy of 0.84. The best accuracy was achieved by the implementation of a tree-based classifier, the Random Forest classifier, after a ranking feature selection methodology. The novel aspect of the proposed methodology is the implementation of machine learning models in order to address the cardiovascular data modeling, aiming to predict the occurrence of an outcome and not to investigate the association of input features.
机译:动脉粥样斑块进展被认为是动脉的典型病理状况,尽管动脉粥样硬化被认为​​是全身性炎症性疾病,但动脉粥样硬化斑块并非均匀分布在动脉树中。除了系统性的动脉粥样硬化危险因素外,生物力学力,LDL浓度和动脉几何形状均有助于动脉粥样硬化的形成和动脉粥样硬化斑块的演变。在这项研究中,我们计算了在动脉内起作用的生物力学力,并开发了用于预测动脉粥样斑块进展的机器学习模型。利用40个个体衍生的1018个3毫米的冠状动脉部位来建立模型,并且在实施4种基于树的不同预测方案后,我们实现了0.84的预测准确度。在基于排名特征选择方法后,通过实施基于树的分类器(即“随机森林”分类器)可以实现最佳准确性。所提出方法的新颖方面是机器学习模型的实现,以解决心血管数据建模问题,旨在预测结果的发生,而不是研究输入特征的关联。

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