Meta-Learning Reduces Amount Data Needed to Build AI Models in Oncology

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Olivier Gevaert
BritishJournalofCancer.JPG

Abstract

Meta-learning is showing promise in recent genomic studies in oncology. Meta-learning can facilitate transfer learning and reduce the amount of data that is needed in a target domain by transferring knowledge from abundant genomic data in different source domains enabling the use of AI in data scarce scenarios.