PC-MIL: Decoupling Feature Resolution from Supervision Scale in Whole-Slide Learning
Syed Fahim Ahmed, Gnanesh Rasineni, Florian Koehler, Abu Zahid Bin Aziz, Mei Wang, Attila Gyulassy, Brian Summa, J. Quincy Brown, Valerio Pascucci, and Shireen Y. Elhabian

TL;DR
This paper introduces PC-MIL, a novel framework for whole-slide image classification that decouples feature resolution from supervision scale, improving anatomical localization and generalization in pathology.
Contribution
It proposes a method to treat supervision scale as a key design dimension, enabling explicit control over anatomical context in MIL models.
Findings
Regional supervision enhances cross-context generalization.
Balanced multi-context training stabilizes accuracy.
Supervision extent influences MIL inductive bias.
Abstract
Whole-slide image (WSI) classification in computational pathology is commonly formulated as slide-level Multiple Instance Learning (MIL) with a single global bag representation. However, slide-level MIL is fundamentally underconstrained: optimizing only global labels encourages models to aggregate features without learning anatomically meaningful localization. This creates a mismatch between the scale of supervision and the scale of clinical reasoning. Clinicians assess tumor burden, focal lesions, and architectural patterns within millimeter-scale regions, whereas standard MIL is trained only to predict whether "somewhere in the slide there is cancer." As a result, the model's inductive bias effectively erases anatomical structure. We propose Progressive-Context MIL (PC-MIL), a framework that treats the spatial extent of supervision as a first-class design dimension. Rather than…
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