Selective ensemble methods for deep learning segmentation of major vessels in invasive coronary angiography

Author:

Park Jeeone1,Kweon Jihoon2,Kim Young In1,Back Inwook3,Chae Jihye3,Roh Jae‐Hyung4,Kang Do‐Yoon3,Lee Pil Hyung3,Ahn Jung‐Min3,Kang Soo‐Jin3,Park Duk‐Woo3,Lee Seung‐Whan3,Lee Cheol Whan3,Park Seong‐Wook3,Park Seung‐Jung3,Kim Young‐Hak3

Affiliation:

1. Department of Medical Science Asan Medical Institute of Convergence Science and Technology Asan Medical Center University of Ulsan College of Medicine Seoul South Korea

2. Department of Convergence Medicine Asan Medical Center University of Ulsan College of Medicine Seoul South Korea

3. Division of Cardiology Department of Internal Medicine Medical Center University of Ulsan College of Medicine Asan Seoul South Korea

4. Department of Cardiology Chungnam National University Sejong Hospital Chungnam National University School of Medicine Daejeon South Korea

Abstract

AbstractBackgroundInvasive coronary angiography (ICA) is a primary imaging modality that visualizes the lumen area of coronary arteries for diagnosis and interventional guidance. In the current practice of quantitative coronary analysis (QCA), semi‐automatic segmentation tools require labor‐intensive and time‐consuming manual correction, limiting their application in the catheterization room.PurposeThis study aims to propose rank‐based selective ensemble methods that improve the segmentation performance and reduce morphological errors that limit fully automated quantification of coronary artery using deep‐learning segmentation of ICA.MethodsTwo selective ensemble methods proposed in this work integrated the weighted ensemble approach with per‐image quality estimation. The segmentation outcomes from five base models with different loss functions were ranked either by mask morphology or estimated dice similarity coefficient (DSC). The final output was determined by imposing different weights according to the ranks. The ranking criteria based on mask morphology were formulated from empirical insight to avoid frequent types of segmentation errors (MSEN), while the estimation of DSCs was performed by comparing the pseudo‐ground truth generated from a meta‐learner (ESEN). Five‐fold cross‐validation was performed with the internal dataset of 7426 coronary angiograms from 2924 patients, and prediction model was externally validated with 556 images of 226 patients.ResultsThe selective ensemble methods improved the segmentation performance with DSCs up to 93.07% and provided a better delineation of coronary lesion with local DSCs of up to 93.93%, outperforming all individual models. Proposed methods also minimized the chances of mask disconnection in the most narrowed regions to 2.10%. The robustness of the proposed methods was also evident in the external validation. Inference time for major vessel segmentation was approximately one‐sixth of a second.ConclusionProposed methods successfully reduced morphological errors in the predicted masks and were able to enhance the robustness of the automatic segmentation. The results suggest better applicability of real‐time QCA‐based diagnostic methods in routine clinical settings.

Publisher

Wiley

Subject

General Medicine

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