Cancers (Sep 2023)

Association between Contrast-Enhanced Computed Tomography Radiomic Features, Genomic Alterations and Prognosis in Advanced Lung Adenocarcinoma Patients

  • Lisa Rinaldi,
  • Elena Guerini Rocco,
  • Gianluca Spitaleri,
  • Sara Raimondi,
  • Ilaria Attili,
  • Alberto Ranghiero,
  • Giulio Cammarata,
  • Marta Minotti,
  • Giuliana Lo Presti,
  • Francesca De Piano,
  • Federica Bellerba,
  • Gianluigi Funicelli,
  • Stefania Volpe,
  • Serena Mora,
  • Cristiana Fodor,
  • Cristiano Rampinelli,
  • Massimo Barberis,
  • Filippo De Marinis,
  • Barbara Alicja Jereczek-Fossa,
  • Roberto Orecchia,
  • Stefania Rizzo,
  • Francesca Botta

DOI
https://doi.org/10.3390/cancers15184553
Journal volume & issue
Vol. 15, no. 18
p. 4553

Abstract

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Non-invasive methods to assess mutational status, as well as novel prognostic biomarkers, are warranted to foster therapy personalization of patients with advanced non-small cell lung cancer (NSCLC). This study investigated the association of contrast-enhanced Computed Tomography (CT) radiomic features of lung adenocarcinoma lesions, alone or integrated with clinical parameters, with tumor mutational status (EGFR, KRAS, ALK alterations) and Overall Survival (OS). In total, 261 retrospective and 48 prospective patients were enrolled. A Radiomic Score (RS) was created with LASSO-Logistic regression models to predict mutational status. Radiomic, clinical and clinical-radiomic models were trained on retrospective data and tested (Area Under the Curve, AUC) on prospective data. OS prediction models were trained and tested on retrospective data with internal cross-validation (C-index). RS significantly predicted each alteration at training (radiomic and clinical-radiomic AUC 0.95–0.98); validation performance was good for EGFR (AUC 0.86), moderate for KRAS and ALK (AUC 0.61–0.65). RS was also associated with OS at univariate and multivariable analysis, in the latter with stage and type of treatment. The validation C-index was 0.63, 0.79, and 0.80 for clinical, radiomic, and clinical-radiomic models. The study supports the potential role of CT radiomics for non-invasive identification of gene alterations and prognosis prediction in patients with advanced lung adenocarcinoma, to be confirmed with independent studies.

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