Deep transfer learning from limited source for abdominal CT and MR image segmentation
Chetana Krishnan,
Emma Schmidt,
Ezinwanne Onuoha
et al.
Abstract:Medical image segmentation benefits from machine learning advancements, offering potential automation. Yet, accuracy depends on substantial annotated data and significant computing resources. Transfer learning addresses these challenges by leveraging a model's knowledge from one task for another with minor adjustments. The idea is to adapt learned features to new tasks, even with differing datasets but shared characteristics. Studies explore the impact of using large source datasets for limited target datasets… Show more
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