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楼主: patch-test
发表于 2025-3-23 12:49:04 | 显示全部楼层
Enhancing Cell Detection in Histopathology Images: A ViT-Based U-Net Approachckbone, intending to enhance its suitability for our specific task. Our approach achieves highly promising results in cell detection on the OCELOT dataset, with an F1-detection score of 0.7558, as indicated by the preliminary results on the validation set. What’s more, we achieved . place on the off
发表于 2025-3-23 14:12:40 | 显示全部楼层
发表于 2025-3-23 20:37:45 | 显示全部楼层
https://doi.org/10.1007/978-981-13-1462-9sion tasks, as well as continuous adjacency matrices, and propose a lightweight CCNS distance for discrete and continuous adjacency matrices. We show the correlation of these metrics with model performance on different medical population graphs and under different learning settings, using the TADPOL
发表于 2025-3-24 01:10:32 | 显示全部楼层
https://doi.org/10.1007/978-3-319-27156-97 subjects) and OASIS3 (771 subjects). The proposed model demonstrates the highest performance compared to the existing machine-learning algorithms we tested, including classical methods and (graph and non-graph) deep learning. We provide a detailed analysis of each component of our model.
发表于 2025-3-24 03:20:32 | 显示全部楼层
发表于 2025-3-24 06:43:47 | 显示全部楼层
发表于 2025-3-24 14:00:30 | 显示全部楼层
发表于 2025-3-24 16:18:38 | 显示全部楼层
https://doi.org/10.1007/978-981-13-0508-5e graph representation. We showcase the efficacy of our methodology on the BRACS dataset where our algorithm generates superior representations compared to other self-supervised graph representation learning algorithms and comes close to pathologists and supervised learning algorithms. The code and
发表于 2025-3-24 20:36:18 | 显示全部楼层
发表于 2025-3-25 02:42:50 | 显示全部楼层
https://doi.org/10.1007/978-1-349-19814-6ormer architecture for modeling the intricate relationships within tissue and cell graphs. Our model demonstrates superior efficiency in terms of parameter count and achieves higher accuracy compared to the transformer-based state-of-the-art approach on three publicly available breast cancer dataset
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