Accurate cancer survival prediction is crucial for personalized precision medicine. However, existing survival analysis methods based on Whole Slide Images typically rely on single-magnification image patch features, neglecting key multi-magnification level information in histopathological images and failing to effectively integrate biological features such as pathways. To address these limitations, this paper proposes a novel multi-instance learning model called HiMulti, which improves survival prediction accuracy by deeply fusing multi-level pathological image features and pathway features. HiMulti first constructs WSI into multiple multi-level pyramid-structured regions of interest. Then, it utilizes improved Mamba-Inspired Linear Attention model(iMILA) and linear attention Transformer to capture intra-level micro-texture details and inter-level macro-structural interactions, respectively. Simultaneously, the model incorporates pathway features based on RNA-Seq and generates multimodal and unimodal attention weights through a novel dual-branch attention mechanism to accurately select key image regions with the highest prognostic value. Finally, patient-level survival prediction is achieved by aggregating these key region features. Experiments on the TCGA-LUAD, BRCA, and BLCA datasets show that HiMulti's C-Index is significantly improved by 4.45% to 21.01% compared to state-of-the-art weakly supervised methods, and visualization results further confirm the model's superiority.
Xu et al. (Thu,) studied this question.
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