Quality-aware semi-supervised learning for CMR segmentation
Bram Ruijsink, Esther Puyol-Anton, Ye Li, Wenja Bai, Eric Kerfoot,, Reza Razavi, and Andrew P. King

TL;DR
This paper introduces semiQCSeg, a semi-supervised learning method that uses downstream task quality control to select high-quality segmentation outputs, improving cardiac MRI segmentation with less labeled data.
Contribution
It proposes a novel quality-aware semi-supervised learning scheme that leverages downstream task assessments to enhance segmentation training in medical imaging.
Findings
SemiQCSeg outperforms supervised and other SSL methods in Dice and clinical metrics.
It reduces the need for labeled data in CMR segmentation tasks.
The approach is validated on UK Biobank data with multiple network architectures.
Abstract
One of the challenges in developing deep learning algorithms for medical image segmentation is the scarcity of annotated training data. To overcome this limitation, data augmentation and semi-supervised learning (SSL) methods have been developed. However, these methods have limited effectiveness as they either exploit the existing data set only (data augmentation) or risk negative impact by adding poor training examples (SSL). Segmentations are rarely the final product of medical image analysis - they are typically used in downstream tasks to infer higher-order patterns to evaluate diseases. Clinicians take into account a wealth of prior knowledge on biophysics and physiology when evaluating image analysis results. We have used these clinical assessments in previous works to create robust quality-control (QC) classifiers for automated cardiac magnetic resonance (CMR) analysis. In this…
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