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首页|Patch Progression Masked Autoencoder with Fusion CNN Network for Classifying Evolution Between Two Pairs of 2D OCT Slices

Patch Progression Masked Autoencoder with Fusion CNN Network for Classifying Evolution Between Two Pairs of 2D OCT Slices

Patch Progression Masked Autoencoder with Fusion CNN Network for Classifying Evolution Between Two Pairs of 2D OCT Slices

来源:Arxiv_logoArxiv
英文摘要

Age-related Macular Degeneration (AMD) is a prevalent eye condition affecting visual acuity. Anti-vascular endothelial growth factor (anti-VEGF) treatments have been effective in slowing the progression of neovascular AMD, with better outcomes achieved through timely diagnosis and consistent monitoring. Tracking the progression of neovascular activity in OCT scans of patients with exudative AMD allows for the development of more personalized and effective treatment plans. This was the focus of the Monitoring Age-related Macular Degeneration Progression in Optical Coherence Tomography (MARIO) challenge, in which we participated. In Task 1, which involved classifying the evolution between two pairs of 2D slices from consecutive OCT acquisitions, we employed a fusion CNN network with model ensembling to further enhance the model's performance. For Task 2, which focused on predicting progression over the next three months based on current exam data, we proposed the Patch Progression Masked Autoencoder that generates an OCT for the next exam and then classifies the evolution between the current OCT and the one generated using our solution from Task 1. The results we achieved allowed us to place in the Top 10 for both tasks. Some team members are part of the same organization as the challenge organizers; therefore, we are not eligible to compete for the prize.

Philippe Zhang、Weili Jiang、Yihao Li、Jing Zhang、Sarah Matta、Yubo Tan、Hui Lin、Haoshen Wang、Jiangtian Pan、Hui Xu、Laurent Borderie、Alexandre Le Guilcher、Béatrice Cochener、Chubin Ou、Gwenolé Quellec、Mathieu Lamard

10.1007/978-3-031-86651-7_9

医学研究方法眼科学

Philippe Zhang,Weili Jiang,Yihao Li,Jing Zhang,Sarah Matta,Yubo Tan,Hui Lin,Haoshen Wang,Jiangtian Pan,Hui Xu,Laurent Borderie,Alexandre Le Guilcher,Béatrice Cochener,Chubin Ou,Gwenolé Quellec,Mathieu Lamard.Patch Progression Masked Autoencoder with Fusion CNN Network for Classifying Evolution Between Two Pairs of 2D OCT Slices[EB/OL].(2025-08-27)[2025-09-06].https://arxiv.org/abs/2508.20064.点此复制

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