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AuthorBaiju, B.V.
AuthorSuresh, P.
AuthorSubathra, G.
AuthorKeerthika, P.
AuthorSadasivuni, Kishor Kumar
AuthorLogeswaran, K.
Available date2025-02-16T05:44:25Z
Publication Date2024
Publication NameApplying Machine Learning Techniques to Bioinformatics: Few-Shot and Zero-Shot Methods
ResourceScopus
Identifierhttp://dx.doi.org/10.4018/979-8-3693-1822-5.ch014
URIhttp://hdl.handle.net/10576/63014
AbstractPersonalized medicine leverages patient-specific biological data to tailor prevention, diagnosis, and treatment. Biomarkers are critical for enabling this precision approach. However, biomarker development faces challenges in discovery, validation, and robust modelling, often requiring extensive labelled data. Machine learning (ML) methods like few-shot and zero-shot learning offer potential solutions by enabling model generalization from limited examples. This chapter provides comprehensive exploration of biomarker types and applications and how few-shot and zero-shot techniques could enhance biomarker prediction tasks. Few-shot learning shows promise for biomarker discovery and validation by transferring knowledge from established biomarkers. Zero-shot learning provides opportunities to detect novel biomarker candidates unconstrained by predefined labels. While nascent, few-shot and zero-shot learning present intriguing paradigms for more efficient biomarker modelling, which could accelerate progress towards personalized medicine.
Languageen
PublisherIGI Global
SubjectBiomarkers
Personalized Medicine
Machine Learning
Few-shot Learning
Zero-shot Learning
TitleUnlocking the future of healthcare: Biomarkers and personalized medicine
TypeBook chapter
Pagination258-280
dc.accessType Abstract Only


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