像素
桥接(联网)
航程(航空)
数学
计算机科学
人工智能
工程类
计算机网络
航空航天工程
作者
Zhongwei Qiu,Hanqing Chao,Tiancheng Lin,Wanxing Chang,Zijiang Yang,Wenpei Jiao,Yixuan Shen,Yunshuo Zhang,Yelin Yang,Wenbin Liu,Hui Jiang,Yun Bian,Yan Ke,Dakai Jin,Le Lu
出处
期刊:Cornell University - arXiv
日期:2024-12-21
标识
DOI:10.48550/arxiv.2412.16711
摘要
Histopathology plays a critical role in medical diagnostics, with whole slide images (WSIs) offering valuable insights that directly influence clinical decision-making. However, the large size and complexity of WSIs may pose significant challenges for deep learning models, in both computational efficiency and effective representation learning. In this work, we introduce Pixel-Mamba, a novel deep learning architecture designed to efficiently handle gigapixel WSIs. Pixel-Mamba leverages the Mamba module, a state-space model (SSM) with linear memory complexity, and incorporates local inductive biases through progressively expanding tokens, akin to convolutional neural networks. This enables Pixel-Mamba to hierarchically combine both local and global information while efficiently addressing computational challenges. Remarkably, Pixel-Mamba achieves or even surpasses the quantitative performance of state-of-the-art (SOTA) foundation models that were pretrained on millions of WSIs or WSI-text pairs, in a range of tumor staging and survival analysis tasks, {\bf even without requiring any pathology-specific pretraining}. Extensive experiments demonstrate the efficacy of Pixel-Mamba as a powerful and efficient framework for end-to-end WSI analysis.
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