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 noncalcified 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, but also the inner contour. For evaluation, we utilized a dataset in which each voxel is carefully annotated as one of five classes: background, lumen, artery wall, calcified plaque, or non-calcified plaque. We also provide an exhaustive evaluation by applying different types of masks, in order to validate the potential of vessel masking for plaque segmentation. Our methodology results in a prominent boost in segmentation performance, in both quantitative and qualitative evaluation, achieving accurate plaque shapes even for the challenging non-calcified plaques. Furthermore, when using highly accurate masks, difficult cases such as stenosis become segmentable. We believe our findings can lead the future research for high-performance plaque segmentation.
Deep learning has shown successful performance not only in supervised disease detection but also lesion localization under the weakly supervised learning framework with medical image processing. However, few consider the semantic relationship among the diseases and lesions which plays a critical role in actual clinical diagnosis. In this work, we propose a novel framework: Feature map Graph Representational Probabilistic Class Activation Map (FGR-PCAM) to learn the graph structure of lesion-specific features and consider these relationships while also leveraging the localization ability of PCAM. Considering the relations of localized lesion-specific features has been shown to enhance both thoracic diseases classification and localization tasks on CheXpert and Chest Xray14 datasets. Accurate classification and localization of Chest X-ray images would also help us fight against the COVID-19 and unveil COVID-19 fingerprints.
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