Application of CTA-based Radiomic Phenotyping of PCAT and Fluid Dynamics in Atherosclerotic Disease (APPLE)

Last updated: July 6, 2024
Sponsor: Jinling Hospital, China
Overall Status: Active - Recruiting

Phase

N/A

Condition

Inflammation

Treatment

N/A

Clinical Study ID

NCT06498830
2023DZKY-124-01
  • Ages > 18
  • All Genders

Study Summary

This study (APPLE study) intends to retrospectively enroll more than 2000 patients who who underwent ≥2 coronary computed tomography angiography (CCTA) with ≥3 months interval from 11 hospitals in more than 4 provinces in China.

Eligibility Criteria

Inclusion

Inclusion Criteria:

  • patients underwent CCTAs at least twice;

  • patients without any concomitant obstructive CAD, or any concomitant atheroscleroticlesions in the LAD on the baseline CCTA;

  • patients without previous percutaneous coronary intervention or coronary arterybypass grafting, implanted cardiac devices, and anomalous coronary arteries asevidenced by conventional CCTA.

Exclusion

Exclusion Criteria:

  • image quality of CCTA was inadequate for either MB morphological or FAI or CFDanalysis in either cardiac phase;

  • patients received other tube voltages except for 100 kVp and 120 kVp;

  • the interscan interval between serial CCTAs< 3 months;

  • missing CCTA data.

Study Design

Total Participants: 2000
Study Start date:
October 17, 2023
Estimated Completion Date:
December 30, 2024

Study Description

A multicenter, retrospective, observational trial will be conducted (APPLE study). To investigate whether a combined model constructed on the basis of pericoronary adipose tissue (PCAT) radiomics, fluid dynamics and clinical risk factors can predict the formation of atherosclerotic plaque. It will be carried out in 11 hospitals in 4 provinces in China. The Boruta algorithm and correlation proof clustering analysis were used to screen the imaging histological features, and a random forest model was used to construct an imaging histological prediction model for PCAT and fluid dynamics and to construct radiomics' score. To investigate the incremental value of the radiomics' score beyond the traditional prediction model, the radiomics' score was combined with the traditional logistic regression prediction model. Receiver operating characteristic (ROC) curve analysis with integrated discrimination improvement (IDI) and category net reclassification index (NRI) were used to compare the performance of the predictive models. A ML-prediction model incorporates FAI, fluid dynamics and patient clinical characteristics to identify high-risk patients in advance for patients receiving routine CCTA and guide the more precise use of preventative treatments, including anti-inflammatory therapies.

Connect with a study center

  • Research Institute Of Medical Imaging Jinling Hospital

    Nanjing, Jiangsu 210018
    China

    Active - Recruiting

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