Whole Slide Images (WSIs) are crucial in histological diagnostics, providing high-resolution insights into cellular structures. In addition to challenges like the gigapixel scale of WSIs and the lack of pixel-level annotations, privacy restrictions further complicate their analysis. For instance, in a hospital network, different facilities need to collaborate on WSI analysis without the possibility of sharing sensitive patient data. A more practical and secure approach involves sharing models capable of continual adaptation to new data. However, without proper measures, catastrophic forgetting can occur. Traditional continual learning techniques rely on storing previous data, which violates privacy restrictions. To address this issue, this paper introduces Context Optimization Multiple Instance Learning (CooMIL), a rehearsal-free continual learning framework explicitly designed for WSI analysis. It employs a WSI-specific prompt learning procedure to adapt classification models across tasks, efficiently preventing catastrophic forgetting. Evaluated on four public WSI datasets from TCGA projects, our model significantly outperforms state-of-the-art methods within the WSI-based continual learning framework. The source code is available at https://github.com/FrancescaMiccolis/CooMIL.

Context-guided Prompt Learning for Continual WSI Classification / Corso, Giulia; Miccolis, Francesca; Porrello, Angelo; Bolelli, Federico; Calderara, Simone; Ficarra, Elisa. - (2025). ( Computational Pathology and MultimodaL Data, MICCAI Workshop Daejeon, South Korea Sep 23-27).

Context-guided Prompt Learning for Continual WSI Classification

Corso, Giulia;Miccolis, Francesca;Porrello, Angelo;Bolelli, Federico;Calderara, Simone;Ficarra, Elisa
2025

Abstract

Whole Slide Images (WSIs) are crucial in histological diagnostics, providing high-resolution insights into cellular structures. In addition to challenges like the gigapixel scale of WSIs and the lack of pixel-level annotations, privacy restrictions further complicate their analysis. For instance, in a hospital network, different facilities need to collaborate on WSI analysis without the possibility of sharing sensitive patient data. A more practical and secure approach involves sharing models capable of continual adaptation to new data. However, without proper measures, catastrophic forgetting can occur. Traditional continual learning techniques rely on storing previous data, which violates privacy restrictions. To address this issue, this paper introduces Context Optimization Multiple Instance Learning (CooMIL), a rehearsal-free continual learning framework explicitly designed for WSI analysis. It employs a WSI-specific prompt learning procedure to adapt classification models across tasks, efficiently preventing catastrophic forgetting. Evaluated on four public WSI datasets from TCGA projects, our model significantly outperforms state-of-the-art methods within the WSI-based continual learning framework. The source code is available at https://github.com/FrancescaMiccolis/CooMIL.
2025
8-ago-2025
Computational Pathology and MultimodaL Data, MICCAI Workshop
Daejeon, South Korea
Sep 23-27
Corso, Giulia; Miccolis, Francesca; Porrello, Angelo; Bolelli, Federico; Calderara, Simone; Ficarra, Elisa
Context-guided Prompt Learning for Continual WSI Classification / Corso, Giulia; Miccolis, Francesca; Porrello, Angelo; Bolelli, Federico; Calderara, Simone; Ficarra, Elisa. - (2025). ( Computational Pathology and MultimodaL Data, MICCAI Workshop Daejeon, South Korea Sep 23-27).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1384608
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