Scientific Data (Apr 2024)

CT Cadaveric dataset for Radiomics features stability assessment in lumbar vertebrae

  • Riccardo Levi,
  • Maximiliano Mollura,
  • Giovanni Savini,
  • Federico Garoli,
  • Massimiliano Battaglia,
  • Angela Ammirabile,
  • Luca A. Cappellini,
  • Simona Superbi,
  • Marco Grimaldi,
  • Riccardo Barbieri,
  • Letterio S. Politi

DOI
https://doi.org/10.1038/s41597-024-03191-6
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 5

Abstract

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Abstract Radiomics features (RFs) studies have showed limitations in the reproducibility of RFs in different acquisition settings. To date, reproducibility studies using CT images mainly rely on phantoms, due to the harness of patient exposure to X-rays. The provided CadAIver dataset has the aims of evaluating how CT scanner parameters effect radiomics features on cadaveric donor. The dataset comprises 112 unique CT acquisitions of a cadaveric truck acquired on 3 different CT scanners varying KV, mA, field-of-view, and reconstruction kernel settings. Technical validation of the CadAIver dataset comprises a comprehensive univariate and multivariate GLM approach to assess stability of each RFs extracted from lumbar vertebrae. The complete dataset is publicly available to be applied for future research in the RFs field, and could foster the creation of a collaborative open CT image database to increase the sample size, the range of available scanners, and the available body districts.