European Respiratory Review (Mar 2024)

Towards the adoption of quantitative computed tomography in the management of interstitial lung disease

  • Simon L.F. Walsh,
  • Jan De Backer,
  • Helmut Prosch,
  • Georg Langs,
  • Lucio Calandriello,
  • Vincent Cottin,
  • Kevin K. Brown,
  • Yoshikazu Inoue,
  • Vasilios Tzilas,
  • Elizabeth Estes

DOI
https://doi.org/10.1183/16000617.0055-2023
Journal volume & issue
Vol. 33, no. 171

Abstract

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The shortcomings of qualitative visual assessment have led to the development of computer-based tools to characterise and quantify disease on high-resolution computed tomography (HRCT) in patients with interstitial lung diseases (ILDs). Quantitative CT (QCT) software enables quantification of patterns on HRCT with results that are objective, reproducible, sensitive to change and predictive of disease progression. Applications developed to provide a diagnosis or pattern classification are mainly based on artificial intelligence. Deep learning, which identifies patterns in high-dimensional data and maps them to segmentations or outcomes, can be used to identify the imaging patterns that most accurately predict disease progression. Optimisation of QCT software will require the implementation of protocol standards to generate data of sufficient quality for use in computerised applications and the identification of diagnostic, imaging and physiological features that are robustly associated with mortality for use as anchors in the development of algorithms. Consortia such as the Open Source Imaging Consortium have a key role to play in the collation of imaging and clinical data that can be used to identify digital imaging biomarkers that inform diagnosis, prognosis and response to therapy.