Threshold quantification of coronary artery blockage using a cascaded ensemble U-Net-based pipeline
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BRAC University
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Abstract
Coronary artery disease remains a primary driver of morbidity and mortality world-
wide, with precise quantification of arterial stenosis essential for risk stratification
and treatment planning. We propose a fully automated, cascaded–ensemble deep
learning framework for 3D CTA analysis that integrates coarse whole‐volume seg-
mentation with multi‐model patch‐level refinement and skeleton‐based stenosis as-
sessment. First, a 3D U‐Net coarse network localizes the coronary tree across the
entire volume. Regions of interest are then cropped via dilated centerline extrac-
tion and passed through an ensemble of four patch‐level architectures—3D U‐Net,
3D ResU‐Net, Attention U‐Net, and U‐Net++—to capture fine vessel details. Pre-
dicted centerlines are skeletonized and compared against ground truth to compute
percentage stenosis, leveraging distance‐transform radii measurements. We evaluate
performance over 40 training epochs, reporting AUC, Dice, precision, recall, F1 for
training, validation, and test cohorts, alongside bootstrapped 95% CIs, Wilcoxon
p‐values, and correlation matrices. Visual comparisons of all model outputs on the
same Frangi‐enhanced slices demonstrate complementary strengths, while ensemble
voting yields more robust boundary delineation. On a 1000‐case CTA dataset, this
research’s approach achieves a mean Dice >0.80 and significantly less stenosis error,
illustrating its potential and reliability than other prior researches and 2D Unet
Models.
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Cataloged from PDF version of thesis.
Includes bibliographical references (pages 31-37).
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science and Engineering, 2025.
Includes bibliographical references (pages 31-37).
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science and Engineering, 2025.
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Thesis