<p>Accurate and generalizable cancer diagnosis from whole slide images (WSIs) remains challenging due to limited fine-grained annotations, complex tumor architectures, and domain shifts across scanners and institutions<sup><CitationRef CitationID="CR1">1</CitationRef></sup>. We introduce <b>StructMIL</b>, a structure-aware and prototype-driven multiple instance learning framework designed for robust and interpretable cancer detection and grading<sup><CitationRef CitationID="CR2">2</CitationRef></sup>. StructMIL integrates graph-based topological priors with histological context, employs prototype-enhanced pooling for stable and transparent predictions, and incorporates a unified domain-generalization strategy that combines contrastive alignment, adversarial confusion, and consistency regularization. Evaluated on Camelyon16 for breast cancer metastasis detection and PANDA for prostate cancer Gleason grading, StructMIL achieves state-of-the-art performance. On Camelyon16, StructMIL improves cross-center AUC by <b>+3.2%</b> over standard MIL baselines, reaching an AUC of <b>0.967</b>. On PANDA, it improves cross-scanner Gleason grading robustness with a <b>+7.4%</b> Cohen’s Kappa gain compared with prior MIL models, demonstrating substantially reduced performance degradation under domain shift. StructMIL further provides interpretable prototype-based attribution maps that highlight biologically meaningful structures more reliably than conventional MIL and graph-free approaches<sup><CitationRef CitationID="CR3">3</CitationRef></sup>. By jointly improving accuracy, interpretability, and generalization across scanners and medical centers, StructMIL offers a practical and clinically aligned solution for large-scale deployment in multi-center computational pathology workflows<sup><CitationRef CitationID="CR4">4</CitationRef></sup>.</p>

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Structure-aware generalization for heterogeneous histopathology via prototype-based multiple instance learning

  • Zhenjun Yu,
  • Zhelin Xia,
  • Donghao Xu,
  • Zhiyuan Zhang,
  • Lingling Zhang,
  • Peng Zhang,
  • Liang Wu,
  • Bibo Wang,
  • Helin Wang,
  • Zhenxiong Zhao

摘要

Accurate and generalizable cancer diagnosis from whole slide images (WSIs) remains challenging due to limited fine-grained annotations, complex tumor architectures, and domain shifts across scanners and institutions1. We introduce StructMIL, a structure-aware and prototype-driven multiple instance learning framework designed for robust and interpretable cancer detection and grading2. StructMIL integrates graph-based topological priors with histological context, employs prototype-enhanced pooling for stable and transparent predictions, and incorporates a unified domain-generalization strategy that combines contrastive alignment, adversarial confusion, and consistency regularization. Evaluated on Camelyon16 for breast cancer metastasis detection and PANDA for prostate cancer Gleason grading, StructMIL achieves state-of-the-art performance. On Camelyon16, StructMIL improves cross-center AUC by +3.2% over standard MIL baselines, reaching an AUC of 0.967. On PANDA, it improves cross-scanner Gleason grading robustness with a +7.4% Cohen’s Kappa gain compared with prior MIL models, demonstrating substantially reduced performance degradation under domain shift. StructMIL further provides interpretable prototype-based attribution maps that highlight biologically meaningful structures more reliably than conventional MIL and graph-free approaches3. By jointly improving accuracy, interpretability, and generalization across scanners and medical centers, StructMIL offers a practical and clinically aligned solution for large-scale deployment in multi-center computational pathology workflows4.