Wrist bone segmentation in X-ray images using CT-based simulations
Journal:
arXiv
Published Date:
Jul 8, 2025
Abstract
Plain X-ray is one of the most common image modalities for clinical diagnosis
(e.g. bone fracture, pneumonia, cancer screening, etc.). X-ray image
segmentation is an essential step for many computer-aided diagnostic systems,
yet it remains challenging. Deep-learning-based methods have achieved superior
performance in medical image segmentation tasks but often require a large
amount of high-quality annotated data for model training. Providing such an
annotated dataset is not only time-consuming but also requires a high level of
expertise. This is particularly challenging in wrist bone segmentation in
X-rays, due to the interposition of multiple small carpal bones in the image.
To overcome the data annotation issue, this work utilizes a large number of
simulated X-ray images generated from Computed Tomography (CT) volumes with
their corresponding 10 bone labels to train a deep learning-based model for
wrist bone segmentation in real X-ray images. The proposed method was evaluated
using both simulated images and real images. The method achieved Dice scores
ranging from 0.80 to 0.92 for the simulated dataset generated from different
view angles. Qualitative analysis of the segmentation results of the real X-ray
images also demonstrated the superior performance of the trained model. The
trained model and X-ray simulation code are freely available for research
purposes: the link will be provided upon acceptance.