Machine Learning Coronary Artery Disease Prediction Based on Imaging and Non-Imaging Data

被引:3
|
作者
Kigka, Vassiliki I. [1 ,2 ]
Georga, Eleni [1 ,2 ]
Tsakanikas, Vassilis [1 ,2 ]
Kyriakidis, Savvas [1 ,2 ]
Tsompou, Panagiota [1 ]
Siogkas, Panagiotis [1 ,2 ]
Michalis, Lampros K. [3 ]
Naka, Katerina K. [3 ]
Neglia, Danilo [4 ]
Rocchiccioli, Silvia [5 ]
Pelosi, Gualtiero [5 ]
Fotiadis, Dimitrios I. [1 ,2 ]
Sakellarios, Antonis [1 ,2 ]
机构
[1] Univ Ioannina, Dept Mat Sci & Engn, Unit Med Technol & Intelligent Informat Syst, Ioannina 45110, Greece
[2] Univ Campus Ioannina, Inst Mol Biol & Biotechnol, Dept Biomed Res FORTH, Ioannina 45110, Greece
[3] Univ Ioannina, Sch Med, Dept Cardiol, Ioannina 45110, Greece
[4] Fdn Toscana Gabriele Monasterio, I-56126 Pisa, Italy
[5] CNR, Inst Clin Physiol, I-56124 Pisa, Italy
关键词
coronary artery disease; noninvasive cardiovascular imaging; coronary artery disease risk stratification; machine learning models; COMPUTED-TOMOGRAPHY ANGIOGRAPHY; RISK; CALCIFICATION; PROGRESSION; COLLEGE; HEALTH;
D O I
10.3390/diagnostics12061466
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
The prediction of obstructive atherosclerotic disease has significant clinical meaning for the decision making. In this study, a machine learning predictive model based on gradient boosting classifier is presented, aiming to identify the patients of high CAD risk and those of low CAD risk. The machine learning methodology includes five steps: the preprocessing of the input data, the class imbalance handling applying the Easy Ensemble algorithm, the recursive feature elimination technique implementation, the implementation of gradient boosting classifier, and finally the model evaluation, while the fine tuning of the presented model was implemented through a randomized search optimization of the model's hyper-parameters over an internal 3-fold cross-validation. In total, 187 participants with suspicion of CAD previously underwent CTCA during EVINCI and ARTreat clinical studies and were prospectively included to undergo follow-up CTCA. The predictive model was trained using imaging data (geometrical and blood flow based) and non-imaging data. The overall predictive accuracy of the model was 0.81, using both imaging and non-imaging data. The innovative aspect of the proposed study is the combination of imaging-based data with the typical CAD risk factors to provide an integrated CAD risk-predictive model.
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页数:14
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