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Labels in a haystack: Approaches beyond supervised learning in biomedical applications

Artur Yakimovich, Anaël Beaugnon, Yi Huang, Elif Özkırımlı

2021Patterns37 citationsDOIOpen Access PDF

Abstract

Recent advances in biomedical machine learning demonstrate great potential for data-driven techniques in health care and biomedical research. However, this potential has thus far been hampered by both the scarcity of annotated data in the biomedical domain and the diversity of the domain's subfields. While unsupervised learning is capable of finding unknown patterns in the data by design, supervised learning requires human annotation to achieve the desired performance through training. With the latter performing vastly better than the former, the need for annotated datasets is high, but they are costly and laborious to obtain. This review explores a family of approaches existing between the supervised and the unsupervised problem setting. The goal of these algorithms is to make more efficient use of the available labeled data. The advantages and limitations of each approach are addressed and perspectives are provided.

Topics & Concepts

HaystackComputer scienceMachine learningArtificial intelligenceDomain (mathematical analysis)AnnotationSemi-supervised learningSupervised learningData scienceUnsupervised learningLabeled dataArtificial neural networkMathematicsMathematical analysisMachine Learning and Data ClassificationAI in cancer detectionImage Retrieval and Classification Techniques
Labels in a haystack: Approaches beyond supervised learning in biomedical applications | Litcius