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CACSNet for automatic robust classification and segmentation of carotid artery calcification on panoramic radiographs using a cascaded deep learning network. | LitMetric

AI Article Synopsis

  • Stroke is a leading cause of death linked to carotid artery atherosclerosis, and panoramic radiographs (PRs) can help visualize carotid artery calcification (CAC).
  • This study developed a deep learning network called CACSNet to automatically classify and segment CACs on PRs, achieving high accuracy and sensitivity using optimized Tversky loss function based on CT reference data.
  • CACSNet demonstrated superior classification capabilities compared to previous PR methods and achieved comparable segmentation performance to other imaging modalities, making it a promising tool for identifying variable CAC lesions.

Article Abstract

Stroke is one of the major causes of death worldwide, and is closely associated with atherosclerosis of the carotid artery. Panoramic radiographs (PRs) are routinely used in dental practice, and can be used to visualize carotid artery calcification (CAC). The purpose of this study was to automatically and robustly classify and segment CACs with large variations in size, shape, and location, and those overlapping with anatomical structures based on deep learning analysis of PRs. We developed a cascaded deep learning network (CACSNet) consisting of classification and segmentation networks for CACs on PRs. This network was trained on ground truth data accurately determined with reference to CT images using the Tversky loss function with optimized weights by balancing between precision and recall. CACSNet with EfficientNet-B4 achieved an AUC of 0.996, accuracy of 0.985, sensitivity of 0.980, and specificity of 0.988 in classification for normal or abnormal PRs. Segmentation performances for CAC lesions were 0.595 for the Jaccard index, 0.722 for the Dice similarity coefficient, 0.749 for precision, and 0.756 for recall. Our network demonstrated superior classification performance to previous methods based on PRs, and had comparable segmentation performance to studies based on other imaging modalities. Therefore, CACSNet can be used for robust classification and segmentation of CAC lesions that are morphologically variable and overlap with surrounding structures over the entire posterior inferior region of the mandibular angle on PRs.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11183138PMC
http://dx.doi.org/10.1038/s41598-024-64265-4DOI Listing

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