2024
DOI: 10.1101/2024.02.29.24303535
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How many labels do I need? Self-supervised learning strategies for multiple blood parasites classification in microscopy images

Roberto Mancebo-Martín,
Lin Lin,
Elena Dacal
et al.

Abstract: Bloodborne parasitic diseases such as malaria, filariasis or chagas pose significant challenges in clinical diagnosis, with microscopy as the primary tool for diagnosis. However, limitations such as time-consuming processes and the dependence on trained microscopists is critical, particularly in resource-constrained settings. Deep learning techniques have shown value to interpret microscopy images using large annotated databases for training. In this work, we propose a methodology leveraging self-supervised le… Show more

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