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arxiv: 2101.05224 · v2 · pith:JLOXXFP2new · submitted 2021-01-13 · 📡 eess.IV · cs.CV· cs.LG

Big Self-Supervised Models Advance Medical Image Classification

classification 📡 eess.IV cs.CVcs.LG
keywords self-supervisedmedicalclassificationimagelearningimagesaccuracychest
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Self-supervised pretraining followed by supervised fine-tuning has seen success in image recognition, especially when labeled examples are scarce, but has received limited attention in medical image analysis. This paper studies the effectiveness of self-supervised learning as a pretraining strategy for medical image classification. We conduct experiments on two distinct tasks: dermatology skin condition classification from digital camera images and multi-label chest X-ray classification, and demonstrate that self-supervised learning on ImageNet, followed by additional self-supervised learning on unlabeled domain-specific medical images significantly improves the accuracy of medical image classifiers. We introduce a novel Multi-Instance Contrastive Learning (MICLe) method that uses multiple images of the underlying pathology per patient case, when available, to construct more informative positive pairs for self-supervised learning. Combining our contributions, we achieve an improvement of 6.7% in top-1 accuracy and an improvement of 1.1% in mean AUC on dermatology and chest X-ray classification respectively, outperforming strong supervised baselines pretrained on ImageNet. In addition, we show that big self-supervised models are robust to distribution shift and can learn efficiently with a small number of labeled medical images.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. PaCX-MAE: Physiology-Augmented Chest X-Ray Masked Autoencoder

    cs.CV 2026-06 unverdicted novelty 5.0

    PaCX-MAE augments masked autoencoding of chest X-rays with dual contrastive-predictive alignment to ECG and laboratory embeddings, reporting gains on physiology-dependent tasks while remaining unimodal at test time.