Continual Learning for Tumor Classification in Histopathology Images
Veena Kaustaban, Qinle Ba, Ipshita Bhattacharya, Nahil Sobh, Satarupa, Mukherjee, Jim Martin, Mohammad Saleh Miri, Christoph Guetter, Amal, Chaturvedi

TL;DR
This paper explores continual learning methods for histopathology image analysis, addressing model forgetting in evolving data scenarios and demonstrating promising results for clinical tumor classification applications.
Contribution
It introduces systematic CL scenarios for digital pathology, creates a new dataset for colorectal cancer, and evaluates CL methods across multiple tumor types and settings.
Findings
CL methods improve model retention across data shifts
Augmented datasets effectively simulate real-world data variability
Online few-shot CL shows potential in resource-constrained environments
Abstract
Recent years have seen great advancements in the development of deep learning models for histopathology image analysis in digital pathology applications, evidenced by the increasingly common deployment of these models in both research and clinical settings. Although such models have shown unprecedented performance in solving fundamental computational tasks in DP applications, they suffer from catastrophic forgetting when adapted to unseen data with transfer learning. With an increasing need for deep learning models to handle ever changing data distributions, including evolving patient population and new diagnosis assays, continual learning models that alleviate model forgetting need to be introduced in DP based analysis. However, to our best knowledge, there is no systematic study of such models for DP-specific applications. Here, we propose CL scenarios in DP settings, where…
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Taxonomy
TopicsAI in cancer detection · Colorectal Cancer Screening and Detection · Radiomics and Machine Learning in Medical Imaging
