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📄 Abstract
Abstract: Rheumatoid arthritis (RA) is a common autoimmune disease that has been the
focus of research in computer-aided diagnosis (CAD) and disease monitoring. In
clinical settings, conventional radiography (CR) is widely used for the
screening and evaluation of RA due to its low cost and accessibility. The wrist
is a critical region for the diagnosis of RA. However, CAD research in this
area remains limited, primarily due to the challenges in acquiring high-quality
instance-level annotations. (i) The wrist comprises numerous small bones with
narrow joint spaces, complex structures, and frequent overlaps, requiring
detailed anatomical knowledge for accurate annotation. (ii) Disease progression
in RA often leads to osteophyte, bone erosion (BE), and even bony ankylosis,
which alter bone morphology and increase annotation difficulty, necessitating
expertise in rheumatology. This work presents a multi-task dataset for wrist
bone in CR, including two tasks: (i) wrist bone instance segmentation and (ii)
Sharp/van der Heijde (SvdH) BE scoring, which is the first public resource for
wrist bone instance segmentation. This dataset comprises 1048 wrist
conventional radiographs of 388 patients from four medical centers, with
pixel-level instance segmentation annotations for 618 images and SvdH BE scores
for 800 images. This dataset can potentially support a wide range of research
tasks related to RA, including joint space narrowing (JSN) progression
quantification, BE detection, bone deformity evaluation, and osteophyte
detection. It may also be applied to other wrist-related tasks, such as carpal
bone fracture localization. We hope this dataset will significantly lower the
barrier to research on wrist RA and accelerate progress in CAD research within
the RA-related domain.