CVFeb 28, 2025

Can We Simplify Slide-level Fine-tuning of Pathology Foundation Models?

Tsinghua
arXiv:2502.20823v13 citationsh-index: 9
Originality Incremental advance
AI Analysis

This work addresses the need for efficient slide-level fine-tuning in digital pathology, offering a simpler alternative to complex MIL-based methods, though it is incremental in improving existing adaptation techniques.

The paper tackles the problem of adapting patch-level foundation models to slide-level tasks in computational pathology by proposing SiMLP, a simple nonlinear mapping strategy, which outperforms traditional MIL-based methods by 3.52% on a pan-cancer classification task.

The emergence of foundation models in computational pathology has transformed histopathological image analysis, with whole slide imaging (WSI) diagnosis being a core application. Traditionally, weakly supervised fine-tuning via multiple instance learning (MIL) has been the primary method for adapting foundation models to WSIs. However, in this work we present a key experimental finding: a simple nonlinear mapping strategy combining mean pooling and a multilayer perceptron, called SiMLP, can effectively adapt patch-level foundation models to slide-level tasks without complex MIL-based learning. Through extensive experiments across diverse downstream tasks, we demonstrate the superior performance of SiMLP with state-of-the-art methods. For instance, on a large-scale pan-cancer classification task, SiMLP surpasses popular MIL-based methods by 3.52%. Furthermore, SiMLP shows strong learning ability in few-shot classification and remaining highly competitive with slide-level foundation models pretrained on tens of thousands of slides. Finally, SiMLP exhibits remarkable robustness and transferability in lung cancer subtyping. Overall, our findings challenge the conventional MIL-based fine-tuning paradigm, demonstrating that a task-agnostic representation strategy alone can effectively adapt foundation models to WSI analysis. These insights offer a unique and meaningful perspective for future research in digital pathology, paving the way for more efficient and broadly applicable methodologies.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes