Self-supervised Pretraining for Cardiovascular Magnetic Resonance Cine Segmentation
Rob A. J. de Mooij, Josien P. W. Pluim, Cian M. Scannell

TL;DR
This study evaluates self-supervised pretraining methods for cardiovascular magnetic resonance cine segmentation, finding they improve performance mainly when labeled data is scarce, with the choice of method being crucial.
Contribution
It systematically assesses various SSP techniques for CMR segmentation, highlighting their benefits in low-data scenarios and the importance of selecting appropriate methods.
Findings
SSP improves segmentation when labeled data is limited.
No significant gain from SSP with large labeled datasets.
MIM outperforms other SSP methods in scarce data settings.
Abstract
Self-supervised pretraining (SSP) has shown promising results in learning from large unlabeled datasets and, thus, could be useful for automated cardiovascular magnetic resonance (CMR) short-axis cine segmentation. However, inconsistent reports of the benefits of SSP for segmentation have made it difficult to apply SSP to CMR. Therefore, this study aimed to evaluate SSP methods for CMR cine segmentation. To this end, short-axis cine stacks of 296 subjects (90618 2D slices) were used for unlabeled pretraining with four SSP methods; SimCLR, positional contrastive learning, DINO, and masked image modeling (MIM). Subsets of varying numbers of subjects were used for supervised fine-tuning of 2D models for each SSP method, as well as to train a 2D baseline model from scratch. The fine-tuned models were compared to the baseline using the 3D Dice similarity coefficient (DSC) in a test dataset…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Cardiac Imaging and Diagnostics
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Bitcoin Customer Service Number +1-833-534-1729 · Attention Is All You Need · Linear Layer · Average Pooling · Softmax · Global Average Pooling · Dense Connections · Feedforward Network · Multi-Head Attention
