Class Visualizations and Activation Atlases for Enhancing Interpretability in Deep Learning-Based Computational Pathology
Marco Gustav, Fabian Wolf, Christina Glasner, Nic G. Reitsam, Stefan Schulz, Kira Aschenbroich, Bruno M\"arkl, Sebastian Foersch, Jakob Nikolas Kather

TL;DR
This study evaluates class visualization and activation atlases for transformer models in computational pathology, revealing their strengths and limitations in interpretability and morphological understanding across tissue and cancer classifications.
Contribution
It systematically assesses CVs and AAs in pathology models, demonstrating their potential and challenges for interpretability at different label granularities.
Findings
CVs preserve tissue recognizability but have reduced class separability.
AAs show layer-dependent organization with coherent tissue regions at coarse levels.
Expert agreement correlates with atlas separability, reflecting pathological complexity.
Abstract
The rapid adoption of transformer-based models in computational pathology has enabled prediction of molecular and clinical biomarkers from H&E whole-slide images, yet interpretability has not kept pace with model complexity. While attribution- and generative-based methods are common, feature visualization approaches such as class visualizations (CVs) and activation atlases (AAs) have not been systematically evaluated for these models. We developed a visualization framework and assessed CVs and AAs for a transformer-based foundation model across tissue and multi-organ cancer classification tasks with increasing label granularity. Four pathologists annotated real and generated images to quantify inter-observer agreement, complemented by attribution and similarity metrics. CVs preserved recognizability for morphologically distinct tissues but showed reduced separability for overlapping…
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Taxonomy
TopicsAI in cancer detection · Cell Image Analysis Techniques · Generative Adversarial Networks and Image Synthesis
