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Mine yOur owN Anatomy: Revisiting Medical Image Segmentation With Extremely Limited Labels

  • Chenyu You
  • , Weicheng Dai
  • , Fenglin Liu
  • , Yifei Min
  • , Nicha C. Dvornek
  • , Xiaoxiao Li
  • , David A. Clifton
  • , Lawrence Staib
  • , James S. Duncan
  • Yale University
  • University of Oxford
  • University of British Columbia

Research output: Contribution to journalArticlepeer-review

69 Scopus citations

Abstract

Recent studies on contrastive learning have achieved remarkable performance solely by leveraging few labels in medical image segmentation. Existing methods mainly focus on instance discrimination and invariant mapping. However, they face three common pitfalls: (1) tailness: medical image data usually follows an implicit long-tail class distribution. Blindly leveraging all pixels in training hence can lead to the data imbalance issues, and cause deteriorated performance; (2) consistency: it remains unclear whether a segmentation model has learned meaningful and yet consistent anatomical features due to the intra-class variations between different anatomical features; and (3) diversity: the intra-slice correlations within the entire dataset have received significantly less attention. This motivates us to seek a principled approach for strategically making use of the dataset itself to discover similar yet distinct samples from different anatomical views. In this paper, we introduce a novel semi-supervised medical image segmentation framework termed Mine yOur owN Anatomy (MONA), and make three contributions. First, prior work argues that every pixel equally matters to the training; we observe empirically that this alone is unlikely to define meaningful anatomical features, mainly due to lacking the supervision signal. We show two simple solutions towards learning invariances. Second, we construct a set of objectives that encourage the model to be capable of decomposing medical images into a collection of anatomical features in an unsupervised manner. Lastly, we both empirically and theoretically, demonstrate the efficacy of our MONA on three benchmark datasets with different labeled settings, achieving new state-of-the-art under different labeled semi-supervised settings.

Original languageEnglish
Pages (from-to)11136-11151
Number of pages16
JournalIEEE Transactions on Pattern Analysis and Machine Intelligence
Volume46
Issue number12
DOIs
StatePublished - 2024

Keywords

  • Contrastive learning
  • imbalanced learning
  • long-tailed medical image segmentation
  • semi-supervised learning

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