A Self-Supervised Framework for Improved Generalisability in Ultrasound B-mode Image Segmentation
Journal:
arXiv
Published Date:
Feb 4, 2025
Abstract
Ultrasound (US) imaging is clinically invaluable due to its noninvasive and
safe nature. However, interpreting US images is challenging, requires
significant expertise, and time, and is often prone to errors. Deep learning
offers assistive solutions such as segmentation. Supervised methods rely on
large, high-quality, and consistently labeled datasets, which are challenging
to curate. Moreover, these methods tend to underperform on out-of-distribution
data, limiting their clinical utility. Self-supervised learning (SSL) has
emerged as a promising alternative, leveraging unlabeled data to enhance model
performance and generalisability. We introduce a contrastive SSL approach
tailored for B-mode US images, incorporating a novel Relation Contrastive Loss
(RCL). RCL encourages learning of distinct features by differentiating positive
and negative sample pairs through a learnable metric. Additionally, we propose
spatial and frequency-based augmentation strategies for the representation
learning on US images. Our approach significantly outperforms traditional
supervised segmentation methods across three public breast US datasets,
particularly in data-limited scenarios. Notable improvements on the Dice
similarity metric include a 4% increase on 20% and 50% of the BUSI dataset,
nearly 6% and 9% improvements on 20% and 50% of the BrEaST dataset, and 6.4%
and 3.7% improvements on 20% and 50% of the UDIAT dataset, respectively.
Furthermore, we demonstrate superior generalisability on the
out-of-distribution UDIAT dataset with performance boosts of 20.6% and 13.6%
compared to the supervised baseline using 20% and 50% of the BUSI and BrEaST
training data, respectively. Our research highlights that domain-inspired SSL
can improve US segmentation, especially under data-limited conditions.