MeCaMIL: Causality-Aware Multiple Instance Learning for Fair and Interpretable Whole Slide Image Diagnosis
Yiran Song, Yikai Zhang, Shuang Zhou, Guojun Xiong, Xiaofeng Yang, Nian Wang, Fenglong Ma, Rui Zhang, Mingquan Lin

TL;DR
MeCaMIL introduces a causality-aware multiple instance learning framework for whole slide image diagnosis that improves accuracy, fairness, and interpretability by explicitly modeling demographic confounders through causal inference techniques.
Contribution
This work presents the first MIL method that incorporates causal inference to disentangle disease signals from demographic biases, enhancing fairness and interpretability in pathology AI.
Findings
Achieves state-of-the-art diagnostic performance on multiple benchmarks.
Reduces demographic disparity variance by over 65%.
Improves fairness for underserved populations and generalizes to survival prediction.
Abstract
Multiple instance learning (MIL) has emerged as the dominant paradigm for whole slide image (WSI) analysis in computational pathology, achieving strong diagnostic performance through patch-level feature aggregation. However, existing MIL methods face critical limitations: (1) they rely on attention mechanisms that lack causal interpretability, and (2) they fail to integrate patient demographics (age, gender, race), leading to fairness concerns across diverse populations. These shortcomings hinder clinical translation, where algorithmic bias can exacerbate health disparities. We introduce \textbf{MeCaMIL}, a causality-aware MIL framework that explicitly models demographic confounders through structured causal graphs. Unlike prior approaches treating demographics as auxiliary features, MeCaMIL employs principled causal inference -- leveraging do-calculus and collider structures -- to…
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Taxonomy
TopicsAI in cancer detection · Digital Imaging for Blood Diseases · Colorectal Cancer Screening and Detection
