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

被引:4
|
作者
Dong, Pengfei [1 ]
Ye, Guochang [1 ]
Kaya, Mehmet [1 ]
Gu, Linxia [1 ]
机构
[1] Florida Inst Technol, Dept Biomed & Chem Engn, Melbourne, FL 32901 USA
来源
APPLIED SCIENCES-BASEL | 2020年 / 10卷 / 17期
关键词
calcified coronary artery; machine learning; support vector regression (SVR); stent expansion; finite element (FE) method; SIROLIMUS-ELUTING STENT; CALCIFICATION VOLUME; CALCIUM; PLAQUE; UNDEREXPANSION; MALAPPOSITION; EVENTS; IMPACT;
D O I
10.3390/app10175820
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Featured Application Integrationof finite element models and machine learning could predict stent expansion for enhanced clinical management. 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.
引用
收藏
页数:12
相关论文
共 50 条
  • [1] Simulation-driven machine learning for robotics and automation
    El-Shamouty, Mohamed
    Kleeberger, Kilian
    Laemmle, Arik
    Huber, Marco
    TM-TECHNISCHES MESSEN, 2019, 86 (11) : 673 - 684
  • [2] Machine-Learning in Simulation-Driven Optimization
    Tenne, Yoel
    2016 INTERNATIONAL CONFERENCE ON COMPUTATIONAL MODELING, SIMULATION AND APPLIED MATHEMATICS (CMSAM 2016), 2016, : 32 - 36
  • [3] Simulation-driven machine learning: Bearing fault classification
    Sobie, Cameron
    Freitas, Carina
    Nicolai, Mike
    MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2018, 99 : 403 - 419
  • [4] OCT-Guided Treatment of Calcified Coronary Artery Disease: Breaking the Barrier to Stent Expansion
    Evan Shlofmitz
    Fernando A. Sosa
    Ziad A. Ali
    Ron Waksman
    Allen Jeremias
    Richard Shlofmitz
    Current Cardiovascular Imaging Reports, 2019, 12
  • [5] OCT-Guided Treatment of Calcified Coronary Artery Disease: Breaking the Barrier to Stent Expansion
    Shlofmitz, Evan
    Sosa, Fernando A.
    Ali, Ziad A.
    Waksman, Ron
    Jeremias, Allen
    Shlofmitz, Richard
    CURRENT CARDIOVASCULAR IMAGING REPORTS, 2019, 12 (08)
  • [6] Prediction of stent under-expansion in calcified coronary arteries using machine learning on intravascular optical coherence tomography images
    Yazan Gharaibeh
    Juhwan Lee
    Vladislav N. Zimin
    Chaitanya Kolluru
    Luis A. P. Dallan
    Gabriel T. R. Pereira
    Armando Vergara-Martel
    Justin N. Kim
    Ammar Hoori
    Pengfei Dong
    Peshala T. Gamage
    Linxia Gu
    Hiram G. Bezerra
    Sadeer Al-Kindi
    David L. Wilson
    Scientific Reports, 13
  • [7] Prediction of stent under-expansion in calcified coronary arteries using machine learning on intravascular optical coherence tomography images
    Gharaibeh, Yazan
    Lee, Juhwan
    Zimin, Vladislav N.
    Kolluru, Chaitanya
    Dallan, Luis A. P.
    Pereira, Gabriel T. R.
    Vergara-Martel, Armando
    Kim, Justin N.
    Hoori, Ammar
    Dong, Pengfei
    Gamage, Peshala T.
    Gu, Linxia
    Bezerra, Hiram G.
    Al-Kindi, Sadeer
    Wilson, David L.
    SCIENTIFIC REPORTS, 2023, 13 (01)
  • [8] Gear fault detection using machine learning techniques- a simulation-driven approach
    Handikherkar V.C.
    Phalle V.M.
    International Journal of Engineering, Transactions A: Basics, 2021, 34 (01): : 212 - 223
  • [9] MaLTESE: Large-Scale Simulation-Driven Machine Learning for Transient Driving Cycles
    Aithal, Shashi M.
    Balaprakash, Prasanna
    HIGH PERFORMANCE COMPUTING, ISC HIGH PERFORMANCE 2019, 2019, 11501 : 186 - 205
  • [10] Simulation-driven machine learning for real-time damage prognosis in masonry structures
    D'Altri, A. M.
    Pereira, M.
    de Miranda, S.
    Glisic, B.
    INTERNATIONAL JOURNAL OF MECHANICAL SCIENCES, 2025, 289