Scientific Data (Jun 2024)

A high-quality dataset featuring classified and annotated cervical spine X-ray atlas

  • Yu Ran,
  • Wanli Qin,
  • Changlong Qin,
  • Xiaobin Li,
  • Yixing Liu,
  • Lin Xu,
  • Xiaohong Mu,
  • Li Yan,
  • Bei Wang,
  • Yuxiang Dai,
  • Jiang Chen,
  • Dongran Han

DOI
https://doi.org/10.1038/s41597-024-03383-0
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 8

Abstract

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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 Notation). Every image in the CSXA is enriched with gender, age, pixel equivalent, asymptomatic and symptomatic classifications, cervical curvature categorization and 118 quantitative parameters. Subsequently, an efficient algorithm has developed to transform 23 keypoints in images into 77 quantitative parameters for cervical spine disease diagnosis and treatment. The algorithm’s development is intended to assist future researchers in repurposing annotated images for the advancement of machine learning techniques across various image recognition tasks. The CSXA and algorithm are open-access with the intention of aiding the research communities in experiment replication and advancing the field of medical imaging in cervical spine.