A Deep Registration Method for Accurate Quantification of Joint Space Narrowing Progression in Rheumatoid Arthritis
Haolin Wang, Yafei Ou, Wanxuan Fang, Prasoon Ambalathankandy, Naoto, Goto, Gen Ota, Masayuki Ikebe, Tamotsu Kamishima

TL;DR
This paper introduces a deep learning-based image registration framework for accurately quantifying joint space narrowing progression in rheumatoid arthritis, outperforming manual methods with high reliability and noise resistance.
Contribution
A novel deep intra-subject rigid registration network for automatic, sub-pixel accuracy quantification of JSN progression in early RA stages.
Findings
Mean-square error of 0.0031 in Euclidean distance
Mismatching rate of 0.48%
Robustness to noise, rotation, and scaling
Abstract
Rheumatoid arthritis (RA) is a chronic autoimmune inflammatory disease that results in progressive articular destruction and severe disability. Joint space narrowing (JSN) progression has been regarded as an important indicator for RA progression and has received sustained attention. In the diagnosis and monitoring of RA, radiology plays a crucial role to monitor joint space. A new framework for monitoring joint space by quantifying JSN progression through image registration in radiographic images has been developed. This framework offers the advantage of high accuracy, however, challenges do exist in reducing mismatches and improving reliability. In this work, a deep intra-subject rigid registration network is proposed to automatically quantify JSN progression in the early stage of RA. In our experiments, the mean-square error of Euclidean distance between moving and fixed image is…
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Taxonomy
TopicsRheumatoid Arthritis Research and Therapies · Systemic Lupus Erythematosus Research · Musculoskeletal synovial abnormalities and treatments
