Simulation-Driven Machine Learning for Predicting Stent Expansion in Calcified Coronary Artery

In this work, we integrated finite element (FE) method and machine learning (ML) method to predict the stent expansion in a calcified coronary artery. The stenting procedure was captured in a patient-specific artery model, reconstructed based on optical coherence tomography images. Following FE simu...

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Main Authors: Pengfei Dong, Guochang Ye, Mehmet Kaya, Linxia Gu
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/10/17/5820
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spelling doaj-05884ad6b3544181bfe3277aa228147f2020-11-25T03:26:56ZengMDPI AGApplied Sciences2076-34172020-08-01105820582010.3390/app10175820Simulation-Driven Machine Learning for Predicting Stent Expansion in Calcified Coronary ArteryPengfei Dong0Guochang Ye1Mehmet Kaya2Linxia Gu3Department of Biomedical and Chemical Engineering, Florida Institute of Technology, Melbourne 32901, AustraliaDepartment of Biomedical and Chemical Engineering, Florida Institute of Technology, Melbourne 32901, AustraliaDepartment of Biomedical and Chemical Engineering, Florida Institute of Technology, Melbourne 32901, AustraliaDepartment of Biomedical and Chemical Engineering, Florida Institute of Technology, Melbourne 32901, AustraliaIn this work, we integrated finite element (FE) method and machine learning (ML) method to predict the stent expansion in a calcified coronary artery. The stenting procedure was captured in a patient-specific artery model, reconstructed based on optical coherence tomography images. Following FE simulation, eight geometrical features in each of 120 cross sections in the pre-stenting artery model, as well as the corresponding post-stenting lumen area, were extracted for training and testing the ML models. A linear regression model and a support vector regression (SVR) model with three different kernels (linear, polynomial, and radial basis function kernels) were adopted in this work. Two subgroups of the eight features, i.e., stretch features and calcification features, were further assessed for the prediction capacity. The influence of the neighboring cross sections on the prediction accuracy was also investigated by averaging each feature over eight neighboring cross sections. Results showed that the SVR models provided better predictions than the linear regression model in terms of bias. In addition, the inclusion of stretch features based on mechanistic understanding could provide a better prediction, compared with the calcification features only. However, there were no statistically significant differences between neighboring cross sections and individual ones in terms of the prediction bias and range of error. The simulation-driven machine learning framework in this work could enhance the mechanistic understanding of stenting in calcified coronary artery lesions, and also pave the way toward precise prediction of stent expansion.https://www.mdpi.com/2076-3417/10/17/5820calcified coronary arterymachine learningsupport vector regression (SVR)stent expansionfinite element (FE) method
collection DOAJ
language English
format Article
sources DOAJ
author Pengfei Dong
Guochang Ye
Mehmet Kaya
Linxia Gu
spellingShingle Pengfei Dong
Guochang Ye
Mehmet Kaya
Linxia Gu
Simulation-Driven Machine Learning for Predicting Stent Expansion in Calcified Coronary Artery
Applied Sciences
calcified coronary artery
machine learning
support vector regression (SVR)
stent expansion
finite element (FE) method
author_facet Pengfei Dong
Guochang Ye
Mehmet Kaya
Linxia Gu
author_sort Pengfei Dong
title Simulation-Driven Machine Learning for Predicting Stent Expansion in Calcified Coronary Artery
title_short Simulation-Driven Machine Learning for Predicting Stent Expansion in Calcified Coronary Artery
title_full Simulation-Driven Machine Learning for Predicting Stent Expansion in Calcified Coronary Artery
title_fullStr Simulation-Driven Machine Learning for Predicting Stent Expansion in Calcified Coronary Artery
title_full_unstemmed Simulation-Driven Machine Learning for Predicting Stent Expansion in Calcified Coronary Artery
title_sort simulation-driven machine learning for predicting stent expansion in calcified coronary artery
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2020-08-01
description In this work, we integrated finite element (FE) method and machine learning (ML) method to predict the stent expansion in a calcified coronary artery. The stenting procedure was captured in a patient-specific artery model, reconstructed based on optical coherence tomography images. Following FE simulation, eight geometrical features in each of 120 cross sections in the pre-stenting artery model, as well as the corresponding post-stenting lumen area, were extracted for training and testing the ML models. A linear regression model and a support vector regression (SVR) model with three different kernels (linear, polynomial, and radial basis function kernels) were adopted in this work. Two subgroups of the eight features, i.e., stretch features and calcification features, were further assessed for the prediction capacity. The influence of the neighboring cross sections on the prediction accuracy was also investigated by averaging each feature over eight neighboring cross sections. Results showed that the SVR models provided better predictions than the linear regression model in terms of bias. In addition, the inclusion of stretch features based on mechanistic understanding could provide a better prediction, compared with the calcification features only. However, there were no statistically significant differences between neighboring cross sections and individual ones in terms of the prediction bias and range of error. The simulation-driven machine learning framework in this work could enhance the mechanistic understanding of stenting in calcified coronary artery lesions, and also pave the way toward precise prediction of stent expansion.
topic calcified coronary artery
machine learning
support vector regression (SVR)
stent expansion
finite element (FE) method
url https://www.mdpi.com/2076-3417/10/17/5820
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AT guochangye simulationdrivenmachinelearningforpredictingstentexpansionincalcifiedcoronaryartery
AT mehmetkaya simulationdrivenmachinelearningforpredictingstentexpansionincalcifiedcoronaryartery
AT linxiagu simulationdrivenmachinelearningforpredictingstentexpansionincalcifiedcoronaryartery
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