A Boosted Ensemble Algorithm for Determination of Plaque Stability in High-Risk Patients on Coronary CTA. Academic Article uri icon

Overview

abstract

  • OBJECTIVES: This study sought to identify culprit lesion (CL) precursors among acute coronary syndrome (ACS) patients based on qualitative and quantitative computed tomography-based plaque characteristics. BACKGROUND: Coronary computed tomography angiography (CTA) has been validated for patient-level prediction of ACS. However, the applicability of coronary CTA to CL assessment is not known. METHODS: Utilizing the ICONIC (Incident COroNary Syndromes Identified by Computed Tomography) study, a nested case-control study of 468 patients with baseline coronary CTA, the study included ACS patients with invasive coronary angiography-adjudicated CLs that could be aligned to CL precursors on baseline coronary CTA. Separate blinded core laboratories adjudicated CLs and performed atherosclerotic plaque evaluation. Thereafter, the study used a boosted ensemble algorithm (XGBoost) to develop a predictive model of CLs. Data were randomly split into a training set (80%) and a test set (20%). The area under the receiver-operating characteristic curve of this model was compared with that of diameter stenosis (model 1), high-risk plaque features (model 2), and lesion-level features of CL precursors from the ICONIC study (model 3). Thereafter, the machine learning (ML) model was applied to 234 non-ACS patients with 864 lesions to determine model performance for CL exclusion. RESULTS: CL precursors were identified by both coronary angiography and baseline coronary CTA in 124 of 234 (53.0%) patients, with a total of 582 lesions (containing 124 CLs) included in the analysis. The ML model demonstrated significantly higher area under the receiver-operating characteristic curve for discriminating CL precursors (0.774; 95% confidence interval [CI]: 0.758 to 0.790) compared with model 1 (0.599; 95% CI: 0.599 to 0.599; p < 0.01), model 2 (0.532; 95% CI: 0.501 to 0.563; p < 0.01), and model 3 (0.672; 95% CI: 0.662 to 0.682; p < 0.01). When applied to the non-ACS cohort, the ML model had a specificity of 89.3% for excluding CLs. CONCLUSIONS: In a high-risk cohort, a boosted ensemble algorithm can be used to predict CL from non-CL precursors on coronary CTA.

authors

  • Al'Aref, Subhi J
  • Singh, Gurpreet
  • Choi, Jeong W
  • Xu, Zhuoran
  • Maliakal, Gabriel
  • van Rosendael, Alexander R
  • Lee, Benjamin C
  • Fatima, Zahra
  • Andreini, Daniele
  • Bax, Jeroen J
  • Cademartiri, Filippo
  • Chinnaiyan, Kavitha
  • Chow, Benjamin J W
  • Conte, Edoardo
  • Cury, Ricardo C
  • Feuchtner, Gudruf
  • Hadamitzky, Martin
  • Kim, Yong-Jin
  • Lee, Sang-Eun
  • Leipsic, Jonathon A
  • Maffei, Erica
  • Marques, Hugo
  • Plank, Fabian
  • Pontone, Gianluca
  • Raff, Gilbert L
  • Villines, Todd C
  • Weirich, Harald G
  • Cho, Iksung
  • Danad, Ibrahim
  • Han, Donghee
  • Heo, Ran
  • Lee, Ji Hyun
  • Rizvi, Asim
  • Stuijfzand, Wijnand J
  • Gransar, Heidi
  • Lu, Yao
  • Sung, Ji Min
  • Park, Hyung-Bok
  • Berman, Daniel S
  • Budoff, Matthew J
  • Samady, Habib
  • Stone, Peter H
  • Virmani, Renu
  • Narula, Jagat
  • Chang, Hyuk-Jae
  • Lin, Fay Y
  • Baskaran, Lohendran
  • Shaw, Leslee J
  • Min, James K

publication date

  • July 15, 2020

Research

keywords

  • Coronary Artery Disease
  • Plaque, Atherosclerotic

Identity

Scopus Document Identifier

  • 85089294571

Digital Object Identifier (DOI)

  • 10.1016/j.jcmg.2020.03.025

PubMed ID

  • 32682719

Additional Document Info

volume

  • 13

issue

  • 10