cs.AI updates on arXiv.org 07月10日 12:05
EXAONE Path 2.0: Pathology Foundation Model with End-to-End Supervision
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EXAONE Path 2.0,一种在直接切片级监督下学习病理切片图像表示的基础模型,以37k张切片图像训练,在10项生物标志物预测任务中实现最先进的平均性能,显著提升数据效率。

arXiv:2507.06639v1 Announce Type: cross Abstract: In digital pathology, whole-slide images (WSIs) are often difficult to handle due to their gigapixel scale, so most approaches train patch encoders via self-supervised learning (SSL) and then aggregate the patch-level embeddings via multiple instance learning (MIL) or slide encoders for downstream tasks. However, patch-level SSL may overlook complex domain-specific features that are essential for biomarker prediction, such as mutation status and molecular characteristics, as SSL methods rely only on basic augmentations selected for natural image domains on small patch-level area. Moreover, SSL methods remain less data efficient than fully supervised approaches, requiring extensive computational resources and datasets to achieve competitive performance. To address these limitations, we present EXAONE Path 2.0, a pathology foundation model that learns patch-level representations under direct slide-level supervision. Using only 37k WSIs for training, EXAONE Path 2.0 achieves state-of-the-art average performance across 10 biomarker prediction tasks, demonstrating remarkable data efficiency.

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数字病理学 基础模型 数据效率 生物标志物预测 WSI处理
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