Literature DB >> 30937650

Multi-factor decision-making strategy for better coronary plaque burden increase prediction: a patient-specific 3D FSI study using IVUS follow-up data.

Liang Wang1,2, Dalin Tang3,4, Akiko Maehara5, David Molony6, Jie Zheng7, Habib Samady6, Zheyang Wu2, Wenbin Lu8, Jian Zhu8, Genshan Ma9, Don P Giddens6,10, Gregg W Stone5, Gary S Mintz5.   

Abstract

Plaque progression and vulnerability are influenced by many risk factors. Our goal is to find a simple method to combine multiple risk factors for better plaque development prediction. Intravascular ultrasound data at baseline and follow-up were acquired from nine patients, and fluid-structure interaction models were constructed to obtain plaque wall stress/strain (PWS/PWSn) and wall shear stress (WSS). Two hundred fifty-four slices with noticeable change in plaque burden were selected for analyses. Data of six key morphological and biomechanical factors were extracted from each slice at baseline to predict plaque development measured by plaque burden increase (PBI) from baseline to follow-up. A multi-factor decision-making strategy was proposed to assign a binary predictive outcome YW (W represents any combination of these six factors) based on simple "threshold value" idea to predict the ground truth YPBI: YPBI = 1 if PBI > 0; YPBI = 0 otherwise. A fivefold cross-validation procedure was employed to identify the optimal predictor among all possible combinations. The results showed that PWS was the best single-factor predictor for PBI with a prediction accuracy of 63.0%. Among all 63 combinations, combining lipid percent, PWS and WSS gave the optimal predictor, achieving a prediction accuracy of 68.1%. This demonstrated that compared to single factor alone, integrating morphological and biomechanical factors would lead to higher prediction accuracy. The simple method could be extended to combine factors from different sources to improve prediction accuracy. Efforts in mechanical analysis and modeling automation are needed to bring this strategy closer to potential clinical applications.

Entities:  

Keywords:  Coronary; Fluid–structure interaction; Intravascular ultrasound; Multi-factor strategy; Plaque development prediction

Year:  2019        PMID: 30937650     DOI: 10.1007/s10237-019-01143-3

Source DB:  PubMed          Journal:  Biomech Model Mechanobiol        ISSN: 1617-7940


  1 in total

1.  Predicting Coronary Stenosis Progression Using Plaque Fatigue From IVUS-Based Thin-Slice Models: A Machine Learning Random Forest Approach.

Authors:  Xiaoya Guo; Akiko Maehara; Mingming Yang; Liang Wang; Jie Zheng; Habib Samady; Gary S Mintz; Don P Giddens; Dalin Tang
Journal:  Front Physiol       Date:  2022-05-10       Impact factor: 4.755

  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.