Improving segmentation of calcified and non-calcified plaques on CCTA-CPR scans via masking of the artery wall
Antonio Tejero-de-Pablos, Hiroaki Yamane, Yusuke Kurose, Junichi Iho,, Youji Tokunaga, Makoto Horie, Keisuke Nishizawa, Yusaku Hayashi, Yasushi, Koyama, Tatsuya Harada

TL;DR
This paper introduces a vessel wall masking technique using deep learning to improve the segmentation accuracy of calcified and non-calcified plaques in CCTA-CPR scans, especially for challenging non-calcified plaques.
Contribution
The novel vessel masking methodology enhances plaque segmentation performance by focusing on the artery wall, validated through comprehensive evaluation on annotated datasets.
Findings
Significant improvement in segmentation accuracy with vessel masking.
Effective segmentation of challenging non-calcified plaques.
Potential to handle difficult cases like stenosis with accurate masks.
Abstract
The presence of plaques in the coronary arteries is a major risk to the patients' life. In particular, non-calcified plaques pose a great challenge, as they are harder to detect and more likely to rupture than calcified plaques. While current deep learning techniques allow precise segmentation of real-life images, the performance in medical images is still low. This is caused mostly by blurriness and ambiguous voxel intensities of unrelated parts that fall on the same value range. In this paper, we propose a novel methodology for segmenting calcified and non-calcified plaques in CCTA-CPR scans of coronary arteries. The input slices are masked so only the voxels within the wall vessel are considered for segmentation, thus, reducing ambiguity. This mask can be automatically generated via a deep learning-based vessel detector, that provides not only the contour of the outer artery wall,…
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Taxonomy
TopicsCoronary Interventions and Diagnostics · Medical Image Segmentation Techniques · Cardiac Imaging and Diagnostics
