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  4. Matching the clinical reality: Accurate OCT-based diagnosis from few labels
 
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2020
Conference Paper
Title

Matching the clinical reality: Accurate OCT-based diagnosis from few labels

Abstract
Unlabeled data is often abundant in the clinic, making machine learning methods based on semi-supervised learning a good match for this setting. Despite this, they are currently receiving relatively little attention in medical image analysis literature. Instead, most practitioners and researchers focus on supervised or transfer learning approaches. The recently proposed MixMatch and FixMatch algorithms have demonstrated promising results in extracting useful representations while requiring very few labels. Motivated by these recent successes, we apply MixMatch and FixMatch in an ophthalmological diagnostic setting and investigate how they fare against standard transfer learning. We find that both algorithms outperform the transfer learning baseline on all fractions of labelled data. Furthermore, our experiments show that Mean Teacher, which is a component of both algorithms, is not needed for our classification problem, as disabling it leaves the outcome unchanged.
Author(s)
Melnychuk, V.
Faerman, E.
Manakov, I.
Seidl, T.
Mainwork
CIKMW2020, Proceeding of the CIKM 2020 Workshops. Online resource  
Conference
International Conference on Information & Knowledge Management (CIKM) 2020  
Link
Link
Language
English
Fraunhofer-Institut für Integrierte Schaltungen IIS  
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