English

Dual-Query Multiple Instance Learning for Dynamic Meta-Embedding based Tumor Classification

Computer Vision and Pattern Recognition 2023-11-20 v2

Abstract

Whole slide image (WSI) assessment is a challenging and crucial step in cancer diagnosis and treatment planning. WSIs require high magnifications to facilitate sub-cellular analysis. Precise annotations for patch- or even pixel-level classifications in the context of gigapixel WSIs are tedious to acquire and require domain experts. Coarse-grained labels, on the other hand, are easily accessible, which makes WSI classification an ideal use case for multiple instance learning (MIL). In our work, we propose a novel embedding-based Dual-Query MIL pipeline (DQ-MIL). We contribute to both the embedding and aggregation steps. Since all-purpose visual feature representations are not yet available, embedding models are currently limited in terms of generalizability. With our work, we explore the potential of dynamic meta-embedding based on cutting-edge self-supervised pre-trained models in the context of MIL. Moreover, we propose a new MIL architecture capable of combining MIL-attention with correlated self-attention. The Dual-Query Perceiver design of our approach allows us to leverage the concept of self-distillation and to combine the advantages of a small model in the context of a low data regime with the rich feature representation of a larger model. We demonstrate the superior performance of our approach on three histopathological datasets, where we show improvement of up to 10% over state-of-the-art approaches.

Keywords

Cite

@article{arxiv.2307.07482,
  title  = {Dual-Query Multiple Instance Learning for Dynamic Meta-Embedding based Tumor Classification},
  author = {Simon Holdenried-Krafft and Peter Somers and Ivonne A. Montes-Majarro and Diana Silimon and Cristina Tarín and Falko Fend and Hendrik P. A. Lensch},
  journal= {arXiv preprint arXiv:2307.07482},
  year   = {2023}
}
R2 v1 2026-06-28T11:30:43.500Z