Extreme Consistency: Overcoming Annotation Scarcity and Domain Shifts
Gaurav Fotedar, Nima Tajbakhsh, Shilpa Ananth, and Xiaowei Ding

TL;DR
This paper introduces 'extreme consistency', a semi-supervised learning method that leverages extreme image transformations to improve medical image analysis across limited labels and domain shifts, outperforming existing models.
Contribution
The paper proposes a novel extreme consistency loss that enhances semi-supervised learning by enforcing prediction stability under extreme transformations, applicable across various tasks without extra annotations.
Findings
Significant performance improvements over supervised and semi-supervised baselines.
Effective handling of domain shifts and limited annotations in medical imaging.
Applicable to classification, segmentation, and detection tasks.
Abstract
Supervised learning has proved effective for medical image analysis. However, it can utilize only the small labeled portion of data; it fails to leverage the large amounts of unlabeled data that is often available in medical image datasets. Supervised models are further handicapped by domain shifts, when the labeled dataset, despite being large enough, fails to cover different protocols or ethnicities. In this paper, we introduce \emph{extreme consistency}, which overcomes the above limitations, by maximally leveraging unlabeled data from the same or a different domain in a teacher-student semi-supervised paradigm. Extreme consistency is the process of sending an extreme transformation of a given image to the student network and then constraining its prediction to be consistent with the teacher network's prediction for the untransformed image. The extreme nature of our consistency loss…
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Taxonomy
TopicsRetinal Imaging and Analysis · AI in cancer detection · Digital Imaging for Blood Diseases
