RAM-H1200: A Unified Evaluation and Dataset on Hand Radiographs for Rheumatoid Arthritis
Songxiao Yang, Haolin Wang, Yao Fu, Junmu Peng, Lin Fan, Hongruixuan Chen, Jian Song, Masayuki Ikebe, Shinya Takamaeda-Yamazaki, Masatoshi Okutomi, Tamotsu Kamishima, Yafei Ou

TL;DR
RAM-H1200 is a comprehensive dataset and benchmark for evaluating models on multi-level analysis of hand radiographs for rheumatoid arthritis, including anatomical segmentation, lesion delineation, and clinical scoring.
Contribution
It introduces the first large-scale public dataset supporting joint anatomical, pathological, and clinical RA severity analysis from hand radiographs.
Findings
Whole-hand bone segmentation achieves high accuracy.
Bone erosion segmentation remains a significant challenge.
The dataset enables quantitative analysis of bone erosion beyond categorical grading.
Abstract
Rheumatoid arthritis (RA) assessment from hand radiographs requires multi-level analysis and modeling of anatomical structures and fine-grained local pathological changes. However, existing public resources do not support such unified multi-level analysis, often lacking full-hand coverage, fine-grained annotations, and consistent integration with clinical scoring systems. In particular, annotations that enable quantitative analysis of bone erosion (BE) remain scarce. RAM-H1200 contains 1,200 hand radiographs collected from six medical centers, with multi-level annotations including (i) whole-hand bone structure instance segmentation, (ii) pixel-level BE masks, (iii) SvdH-defined joint regions of interest, and (iv) joint-level SvdH scores for both BE and joint space narrowing (JSN). It is designed to evaluate whether models can jointly capture anatomical structure, localized erosive…
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