Automated estimation of thoracic rotation in chest X-ray radiographs: a deep learning approach for enhanced technical assessment.

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  • Additional Information
    • Source:
      Publisher: British Institute of Radiology Country of Publication: England NLM ID: 0373125 Publication Model: Print Cited Medium: Internet ISSN: 1748-880X (Electronic) Linking ISSN: 00071285 NLM ISO Abbreviation: Br J Radiol Subsets: MEDLINE
    • Publication Information:
      Original Publication: London, British Institute of Radiology.
    • Subject Terms:
    • Abstract:
      Objectives: This study aims to develop an automated approach for estimating the vertical rotation of the thorax, which can be used to assess the technical adequacy of chest X-ray radiographs (CXRs).
      Methods: Total 800 chest radiographs were used to train and establish segmentation networks for outlining the lungs and spine regions in chest X-ray images. By measuring the widths of the left and right lungs between the central line of segmented spine and the lateral sides of the segmented lungs, the quantification of thoracic vertical rotation was achieved. Additionally, a life-size, full body anthropomorphic phantom was employed to collect chest radiographic images under various specified rotation angles for assessing the accuracy of the proposed approach.
      Results: The deep learning networks effectively segmented the anatomical structures of the lungs and spine. The proposed approach demonstrated a mean estimation error of less than 2° for thoracic rotation, surpassing existing techniques and indicating its superiority.
      Conclusions: The proposed approach offers a robust assessment of thoracic rotation and presents new possibilities for automated image quality control in chest X-ray examinations.
      Advances in Knowledge: This study presents a novel deep-learning-based approach for the automated estimation of vertical thoracic rotation in chest X-ray radiographs. The proposed method enables a quantitative assessment of the technical adequacy of CXR examinations and opens up new possibilities for automated screening and quality control of radiographs.
      (© The Author(s) 2024. Published by Oxford University Press on behalf of the British Institute of Radiology. All rights reserved. For permissions, please email: [email protected].)
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    • Grant Information:
      12375251 National Natural Science Foundation of China; 18DZ2260400 Construction Project of Shanghai Key Laboratory of Molecular Imaging
    • Contributed Indexing:
      Keywords: CXR; U-Net; asymmetry; technical adequacy; thoracic rotation
    • Publication Date:
      Date Created: 20240814 Date Completed: 20240923 Latest Revision: 20240925
    • Publication Date:
      20240925
    • Accession Number:
      PMC11417390
    • Accession Number:
      10.1093/bjr/tqae149
    • Accession Number:
      39141433