Combining Computational Fluid Dynamics, Structural Analysis, and Machine Learning to Predict Cerebrovascular Events: A Mild ML Approach

被引:0
作者
Siogkas, Panagiotis K. [1 ]
Pleouras, Dimitrios [1 ]
Pezoulas, Vasileios [1 ]
Kigka, Vassiliki [1 ]
Tsakanikas, Vassilis [1 ]
Fotiou, Evangelos [1 ]
Potsika, Vassiliki [1 ]
Charalampopoulos, George [2 ]
Galyfos, George [2 ]
Sigala, Fragkiska [2 ]
Koncar, Igor [3 ]
Fotiadis, Dimitrios I. [1 ,4 ]
机构
[1] Univ Ioannina, Dept Mat Sci & Engn, Unit Med Technol & Intelligent Informat Syst, Ioannina 45110, Greece
[2] Natl & Kapodistrian Univ Athens, Propedeut Dept Surg 1, Athens 11527, Greece
[3] Univ Belgrade, Fac Med, Dept Vasc & Endovasc Surg, Belgrade 11000, Serbia
[4] Fdn Res & Technol Hellas, Biomed Res Inst, Ioannina 45110, Greece
基金
欧盟地平线“2020”;
关键词
computational fluid dynamics (CFD); machine learning (ML); cerebrovascular events; CAROTID ATHEROSCLEROTIC PLAQUES; HEMODYNAMIC SHEAR-STRESS; CORONARY ATHEROSCLEROSIS; MECHANICAL-STRESS; NECROTIC CORE; MRI; RUPTURE; ARTERY; ASSOCIATION; STROKE;
D O I
10.3390/diagnostics14192204
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background/Objectives: Cerebrovascular events, such as strokes, are often preceded by the rupture of atherosclerotic plaques in the carotid arteries. This work introduces a novel approach to predict the occurrence of such events by integrating computational fluid dynamics (CFD), structural analysis, and machine learning (ML) techniques. The objective is to develop a predictive model that combines both imaging and non-imaging data to assess the risk of carotid atherosclerosis and subsequent cerebrovascular events, ultimately improving clinical decision-making. Methods: A multidisciplinary approach was employed, utilizing 3D reconstruction techniques and blood-flow simulations to extract key plaque characteristics. These were combined with patient-specific clinical data for risk evaluation. The study involved 134 asymptomatic individuals diagnosed with carotid artery disease. Data imbalance was addressed using two distinct approaches, with the optimal method chosen for training a Gradient Boosting Tree (GBT) classifier. The model's performance was evaluated in terms of accuracy, sensitivity, specificity, and ROC AUC. Results: The best-performing GBT model achieved a balanced accuracy of 88%, with a ROC AUC of 0.92, a sensitivity of 0.88, and a specificity of 0.91. This demonstrates the model's high predictive power in identifying patients at risk for cerebrovascular events. Conclusions: The proposed method effectively combines CFD, structural analysis, and ML to predict cerebrovascular event risk in patients with carotid artery disease. By providing clinicians with a tool for better risk assessment, this approach has the potential to significantly enhance clinical decision-making and patient outcomes.
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页数:17
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