AI4Meder
返回论文列表
论文ICLR 2026 Poster2026 年医学影像

Mini Experts 混合:突破多实例学习中的线性层瓶颈

ICLR 2026 Poster accepted paper at ICLR 2026. Multiple Instance Learning (MIL) is the predominant framework for classifying gigapixel whole-slide images in computational pathology. MIL follows a sequence of 1) extracting patch features, 2) applying a linear layer to obtain task-specific patch features, and 3) aggregating the patches into a slide feature for classification. While substantial efforts have been devoted to optimizing patch feature extraction and aggregation, none have yet addressed the second point, the critical layer which transforms general-purpose features into task-specific features. We hypothesize that this layer constitutes an overlooked performance bottleneck and that stronger representations can be achieved with a low-rank transformation tailored to each patch's phenotype, yielding synergistic effects with any of the existing MIL approaches.

论文默认配图 - 医学影像计算

论文详情

英文标题
Mixture of Mini Experts: Overcoming the Linear Layer Bottleneck in Multiple Instance Learning
作者
Daniel Shao, Joel Runevic, Richard J. Chen, Drew FK Williamson, Ahrong Kim, Andrew H. Song, Faisal Mahmood
期刊/会议
ICLR 2026 Poster
发表年份
2026 年
研究方向
医学影像