English

Unlocking adaptive digital pathology through dynamic feature learning

Image and Video Processing 2024-12-31 v1 Computer Vision and Pattern Recognition

Abstract

Foundation models have revolutionized the paradigm of digital pathology, as they leverage general-purpose features to emulate real-world pathological practices, enabling the quantitative analysis of critical histological patterns and the dissection of cancer-specific signals. However, these static general features constrain the flexibility and pathological relevance in the ever-evolving needs of clinical applications, hindering the broad use of the current models. Here we introduce PathFiT, a dynamic feature learning method that can be effortlessly plugged into various pathology foundation models to unlock their adaptability. Meanwhile, PathFiT performs seamless implementation across diverse pathology applications regardless of downstream specificity. To validate PathFiT, we construct a digital pathology benchmark with over 20 terabytes of Internet and real-world data comprising 28 H\&E-stained tasks and 7 specialized imaging tasks including Masson's Trichrome staining and immunofluorescence images. By applying PathFiT to the representative pathology foundation models, we demonstrate state-of-the-art performance on 34 out of 35 tasks, with significant improvements on 23 tasks and outperforming by 10.20% on specialized imaging tasks. The superior performance and versatility of PathFiT open up new avenues in computational pathology.

Keywords

Cite

@article{arxiv.2412.20430,
  title  = {Unlocking adaptive digital pathology through dynamic feature learning},
  author = {Jiawen Li and Tian Guan and Qingxin Xia and Yizhi Wang and Xitong Ling and Jing Li and Qiang Huang and Zihan Wang and Zhiyuan Shen and Yifei Ma and Zimo Zhao and Zhe Lei and Tiandong Chen and Junbo Tan and Xueqian Wang and Xiu-Wu Bian and Zhe Wang and Lingchuan Guo and Chao He and Yonghong He},
  journal= {arXiv preprint arXiv:2412.20430},
  year   = {2024}
}

Comments

49 pages, 14 figures

R2 v1 2026-06-28T20:51:04.427Z