A high-quality dataset featuring classified and annotated cervical spine X-ray atlas
Yu Ran,
Wanli Qin,
Changlong Qin
et al.
Abstract:Recent research in computational imaging largely focuses on developing machine learning (ML) techniques for image recognition in the medical field, which requires large-scale and high-quality training datasets consisting of raw images and annotated images. However, suitable experimental datasets for cervical spine X-ray are scarce. We fill the gap by providing an open-access Cervical Spine X-ray Atlas (CSXA), which includes 4963 raw PNG images and 4963 annotated images with JSON format (JavaScript Object Notat… Show more
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