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Yang Wen, Yi-Lin Wu, Lei Bi, Wu-Zhen Shi, Xiao-Xiao Liu, Yu-Peng Xu, Xun Xu, Wen-Ming Cao, David Dagan Feng. A Transformer-Assisted Cascade Learning Network for ChoroidalVessel Segmentation[J]. Journal of Computer Science and Technology. DOI: 10.1007/s11390-024-3679-2
Citation: Yang Wen, Yi-Lin Wu, Lei Bi, Wu-Zhen Shi, Xiao-Xiao Liu, Yu-Peng Xu, Xun Xu, Wen-Ming Cao, David Dagan Feng. A Transformer-Assisted Cascade Learning Network for ChoroidalVessel Segmentation[J]. Journal of Computer Science and Technology. DOI: 10.1007/s11390-024-3679-2

A Transformer-Assisted Cascade Learning Network for Choroidal Vessel Segmentation

  • As a highly vascular eye part, the choroid is crucial in various eye disease diagnoses. However, limited research has focused on the inner structure of the choroid due to the challenges in obtaining sufficient accurate label data, particularly for the choroidal vessels. Meanwhile, the existing direct choroidal vessel segmentation methods for the intelligent diagnosis of vascular assisted ophthalmic diseases are still unsatisfactory due to noise data, while the synergistic segmentation methods compromise vessel segmentation performance for the choroid layer segmentation tasks. Common cascaded structures grapple with error propagation during training. To address these challenges, we propose a cascade learning segmentation method for the inner vessel structures of the choroid in this paper. Specifically, we propose Transformer-assisted cascade learning network (TACLNet) for choroidal vessel segmentation, which comprises a two-stage training strategy: pre-training for choroid layer segmentation and joint training for choroid layer and choroidal vessel segmentation. We also enhance the skip connection structures by introducing a multi-scale subtraction connection module designated as MSC, capturing differential and detailed information simultaneously. Additionally, we implement an auxiliary Transformer branch named ATB to integrate global features into the segmentation process. Experimental results exhibit that our method achieves state-of-the-art performance for choroidal vessel segmentation. Besides, we further validate the significant superiority of the proposed method for retinal fluid segmentation in OCT scans on a publicly available dataset. All these fully prove that our TACLNet contributes to the advancement of choroidal vessel segmentation and is of great significance for ophthalmic research and clinical application.
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