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A Machine Learning Approach for the Prediction of the Progression of Cardiovascular Disease based on Clinical and Non-Invasive Imaging Data

机译:基于临床和非侵入性成像数据的心血管疾病进展预测的机器学习方法

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Nowadays, cardiovascular diseases are very common and are considered as the main cause of morbidity and mortality worldwide. Coronary Artery Disease (CAD), the most typical cardiovascular disease is diagnosed by a variety of medical imaging modalities, which involve costs and complications. Therefore, several attempts have been undertaken to early diagnose and predict CAD status and progression through machine learning approaches. The purpose of this study is to present a machine learning technique for the prediction of CAD, using image-based data and clinical data. We investigate the effect of vascular anatomical features of the three coronary arteries on the graduation of CAD. A classification model is built to predict the future status of CAD, including cases of “no CAD” patients, “non-obstructive CAD” patients and “obstructive CAD” patients. The best accuracy was achieved by the implementation of a tree-based classifier, J48 classifier, after a ranking feature selection methodology. The majority of the selected features are the vessel geometry derived features, among the traditional risk factors. The combination of geometrical risk factors with the conventional ones constitutes a novel scheme for the CAD prediction.
机译:如今,心血管疾病非常普遍,被认为是全世界发病率和死亡率的主要原因。冠状动脉疾病(CAD)是最典型的心血管疾病,可通过多种医学影像学方法来诊断,这涉及费用和并发症。因此,已经进行了多种尝试以通过机器学习方法来早期诊断和预测CAD状态和进展。这项研究的目的是使用基于图像的数据和临床数据,提出一种用于预测CAD的机器学习技术。我们调查了三个冠状动脉的血管解剖特征对CAD毕业的影响。建立分类模型以预测CAD的未来状态,包括“无CAD”患者,“非阻塞性CAD”患者和“阻塞性CAD”患者的病例。通过在排序特征选择方法后实施基于树的分类器J48分类器,可以实现最佳准确性。在传统的风险因素中,大多数选定的特征是源自船只几何形状的特征。几何危险因素与常规危险因素的组合构成了CAD预测的新方案。

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