PA-MIL: Phenotype-Aware Multiple Instance Learning Guided by Language Prompting and Genotype-to-Phenotype Relationships
Zekang Yang, Hong Liu, Xiangdong Wang

TL;DR
This paper introduces PA-MIL, an interpretable deep learning framework for pathology WSIs that identifies phenotypes and leverages genotype-phenotype relationships for improved cancer subtyping and interpretability.
Contribution
PA-MIL is the first to integrate phenotype-aware features with genotype-to-phenotype guidance in an ante-hoc interpretable MIL framework for pathology analysis.
Findings
Achieves competitive accuracy with existing MIL methods.
Provides reliable phenotype-based interpretability.
Demonstrates the effectiveness of genotype-phenotype relationships.
Abstract
Deep learning has been extensively researched in the analysis of pathology whole-slide images (WSIs). However, most existing methods are limited to providing prediction interpretability by locating the model's salient areas in a post-hoc manner, failing to offer more reliable and accountable explanations. In this work, we propose Phenotype-Aware Multiple Instance Learning (PA-MIL), a novel ante-hoc interpretable framework that identifies cancer-related phenotypes from WSIs and utilizes them for cancer subtyping. To facilitate PA-MIL in learning phenotype-aware features, we 1) construct a phenotype knowledge base containing cancer-related phenotypes and their associated genotypes. 2) utilize the morphological descriptions of phenotypes as language prompting to aggregate phenotype-related features. 3) devise the Genotype-to-Phenotype Neural Network (GP-NN) grounded in…
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Taxonomy
TopicsAI in cancer detection · Generative Adversarial Networks and Image Synthesis · Cell Image Analysis Techniques
