IVCVLGSep 17, 2021

Self-supervised learning methods and applications in medical imaging analysis: A survey

arXiv:2109.08685v3259 citations
Originality Synthesis-oriented
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It provides a comprehensive overview for researchers in medical imaging analysis, but it is incremental as it surveys existing work without introducing new methods.

This survey addresses the problem of scarce annotated medical imaging data by reviewing self-supervised learning methods as a solution, covering 40 recent papers and categorizing approaches as predictive, generative, and contrastive.

The scarcity of high-quality annotated medical imaging datasets is a major problem that collides with machine learning applications in the field of medical imaging analysis and impedes its advancement. Self-supervised learning is a recent training paradigm that enables learning robust representations without the need for human annotation which can be considered an effective solution for the scarcity of annotated medical data. This article reviews the state-of-the-art research directions in self-supervised learning approaches for image data with a concentration on their applications in the field of medical imaging analysis. The article covers a set of the most recent self-supervised learning methods from the computer vision field as they are applicable to the medical imaging analysis and categorize them as predictive, generative, and contrastive approaches. Moreover, the article covers 40 of the most recent research papers in the field of self-supervised learning in medical imaging analysis aiming at shedding the light on the recent innovation in the field. Finally, the article concludes with possible future research directions in the field.

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