In-context learning for medical image segmentation
Journal:
arXiv
Published Date:
Dec 17, 2024
Abstract
Annotation of medical images, such as MRI and CT scans, is crucial for
evaluating treatment efficacy and planning radiotherapy. However, the extensive
workload of medical professionals limits their ability to annotate large image
datasets, posing a bottleneck for AI applications in medical imaging. To
address this, we propose In-context Cascade Segmentation (ICS), a novel method
that minimizes annotation requirements while achieving high segmentation
accuracy for sequential medical images. ICS builds on the UniverSeg framework,
which performs few-shot segmentation using support images without additional
training. By iteratively adding the inference results of each slice to the
support set, ICS propagates information forward and backward through the
sequence, ensuring inter-slice consistency. We evaluate the proposed method on
the HVSMR dataset, which includes segmentation tasks for eight cardiac regions.
Experimental results demonstrate that ICS significantly improves segmentation
performance in complex anatomical regions, particularly in maintaining boundary
consistency across slices, compared to baseline methods. The study also
highlights the impact of the number and position of initial support slices on
segmentation accuracy. ICS offers a promising solution for reducing annotation
burdens while delivering robust segmentation results, paving the way for its
broader adoption in clinical and research applications.