BLS-GAN: A Deep Layer Separation Framework for Eliminating Bone Overlap in Conventional Radiographs
Haolin Wang, Yafei Ou, Prasoon Ambalathankandy, Gen Ota, Pengyu Dai,, Masayuki Ikebe, Kenji Suzuki, Tamotsu Kamishima

TL;DR
This paper introduces BLS-GAN, a novel deep learning framework that effectively separates overlapped bone layers in conventional radiographs, enhancing diagnostic accuracy and enabling advanced musculoskeletal disease analysis.
Contribution
The study presents a new GAN-based approach with a reconstructor and synthetic pre-training to improve bone layer separation in radiographs, addressing challenges of soft tissue overlap and training stability.
Findings
Generated images passed visual Turing test
Improved downstream diagnostic performance
Demonstrated feasibility of bone layer extraction from radiographs
Abstract
Conventional radiography is the widely used imaging technology in diagnosing, monitoring, and prognosticating musculoskeletal (MSK) diseases because of its easy availability, versatility, and cost-effectiveness. In conventional radiographs, bone overlaps are prevalent, and can impede the accurate assessment of bone characteristics by radiologists or algorithms, posing significant challenges to conventional and computer-aided diagnoses. This work initiated the study of a challenging scenario - bone layer separation in conventional radiographs, in which separate overlapped bone regions enable the independent assessment of the bone characteristics of each bone layer and lay the groundwork for MSK disease diagnosis and its automation. This work proposed a Bone Layer Separation GAN (BLS-GAN) framework that can produce high-quality bone layer images with reasonable bone characteristics and…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Medical Imaging and Analysis · Medical Imaging Techniques and Applications
