Receive a weekly summary and discussion of the top papers of the week by leading researchers in the field.

In Computers in biology and medicine

Reconstruction of the carotid artery is demanded in the detection and characterization of atherosclerosis. This study proposes a shape-constrained active contour model for segmenting the carotid artery from MR images, which embeds the output of the deep learning network into the active contour. First the centerline of the carotid artery is localized and then modified active contour initialized from the centerline is used to extract the vessel lumen, finally the probability atlas generated by the deep learning network in polar representation domain is integrated into the active contour as a prior information to detect the outer wall. The results showed that the proposed active contour model was efficient and comparable to manual segmentation.

Huang Xianjue, Wang Jun, Li Zhiyong

2023-Jan-02

Active contours, Carotid artery segmentation, Deep learning, Level set method, Magnetic resonance imaging, Vessel segmentation