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📄 Abstract
Abstract: Foundational models are trained on extensive datasets to capture the general
trends of a domain. However, in medical imaging, the scarcity of data makes
pre-training for every domain, modality, or task challenging. Continual
learning offers a solution by fine-tuning a model sequentially on different
domains or tasks, enabling it to integrate new knowledge without requiring
large datasets for each training phase. In this paper, we propose UNIfied
CONtinual Learning for Medical Foundational Models (UNICON), a framework that
enables the seamless adaptation of foundation models to diverse domains, tasks,
and modalities. Unlike conventional adaptation methods that treat these changes
in isolation, UNICON provides a unified, perpetually expandable framework.
Through careful integration, we show that foundation models can dynamically
expand across imaging modalities, anatomical regions, and clinical objectives
without catastrophic forgetting or task interference. Empirically, we validate
our approach by adapting a chest CT foundation model initially trained for
classification to a prognosis and segmentation task. Our results show improved
performance across both additional tasks. Furthermore, we continually
incorporated PET scans and achieved a 5\% improvement in Dice score compared to
respective baselines. These findings establish that foundation models are not
inherently constrained to their initial training scope but can evolve, paving
the way toward generalist AI models for medical imaging.