Scientific Reports (Apr 2024)

Identification of CT radiomic features robust to acquisition and segmentation variations for improved prediction of radiotherapy-treated lung cancer patient recurrence

  • Thomas Louis,
  • François Lucia,
  • François Cousin,
  • Carole Mievis,
  • Nicolas Jansen,
  • Bernard Duysinx,
  • Romain Le Pennec,
  • Dimitris Visvikis,
  • Malik Nebbache,
  • Martin Rehn,
  • Mohamed Hamya,
  • Margaux Geier,
  • Pierre-Yves Salaun,
  • Ulrike Schick,
  • Mathieu Hatt,
  • Philippe Coucke,
  • Pierre Lovinfosse,
  • Roland Hustinx

DOI
https://doi.org/10.1038/s41598-024-58551-4
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 14

Abstract

Read online

Abstract The primary objective of the present study was to identify a subset of radiomic features extracted from primary tumor imaged by computed tomography of early-stage non-small cell lung cancer patients, which remain unaffected by variations in segmentation quality and in computed tomography image acquisition protocol. The robustness of these features to segmentation variations was assessed by analyzing the correlation of feature values extracted from lesion volumes delineated by two annotators. The robustness to variations in acquisition protocol was evaluated by examining the correlation of features extracted from high-dose and low-dose computed tomography scans, both of which were acquired for each patient as part of the stereotactic body radiotherapy planning process. Among 106 radiomic features considered, 21 were identified as robust. An analysis including univariate and multivariate assessments was subsequently conducted to estimate the predictive performance of these robust features on the outcome of early-stage non-small cell lung cancer patients treated with stereotactic body radiation therapy. The univariate predictive analysis revealed that robust features demonstrated superior predictive potential compared to non-robust features. The multivariate analysis indicated that linear regression models built with robust features displayed greater generalization capabilities by outperforming other models in predicting the outcomes of an external validation dataset.