Explainable Classifier for Malignant Lymphoma Subtyping via Cell Graph and Image Fusion
Malignant lymphoma subtype classification directly impacts treatment strategies and patient outcomes, necessitating classification models that achieve both high accuracy and sufficient explainability. This study proposes a novel explainable Multi-Instance Learning (MIL) framework that identifies subtype-specific Regions of Interest (ROIs) from Whole Slide Images (WSIs) while integrating cell distribution characteristics and image information. Our framework simultaneously addresses three objectives: (1) indicating appropriate ROIs for each subtype, (2) explaining the frequency and spatial distribution of characteristic cell types, and (3) achieving high-accuracy subtyping by leveraging both image and cell-distribution modalities. The proposed method fuses cell graph and image features extracted from each patch in the WSI using a Mixture-of-Experts (MoE) approach and classifies subtypes within an MIL framework. Experiments on a dataset of 1,233 WSIs demonstrate that our approach achieves state-of-the-art accuracy among ten comparative methods and provides region-level and cell-level explanations that align with a pathologist's perspectives.
View on arXiv@article{nishiyama2025_2503.00925, title={ Explainable Classifier for Malignant Lymphoma Subtyping via Cell Graph and Image Fusion }, author={ Daiki Nishiyama and Hiroaki Miyoshi and Noriaki Hashimoto and Koichi Ohshima and Hidekata Hontani and Ichiro Takeuchi and Jun Sakuma }, journal={arXiv preprint arXiv:2503.00925}, year={ 2025 } }