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  • SPS
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    Length: 00:02:10
21 Apr 2023

In the field of cerebral vascular segmentation, existing models have achieved excellent results in normal subjects. However, such models may not be satisfactory in cerebral vessels with aneurysms, particularly, when the vessels are small, thus resulting in poor segmentation results. We propose a transfer learning strategy based pre-trained model termed ReSCon-Net, using publicly available dataset for cerebrovascular segmentation with aneurysms. In details, the transfer learning strategy takes advantage of pre-trained models using a large volume of dataset from normal subjects and provides a solution for relatively small clinical datasets of patients. This can be achieved by fine-tuning the parameters in the last layers of the proposed model termed ReSCon-Net, which consists of three blocks: ResMul, DeRes, and REAM. The first two blocks aim to address inadequate extraction of weak vessels by using different convolution sizes to achieve multiscale features; REAM block can enhance the vessel edges by obtaining the probability of a voxel weight corresponding to reverse.

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