Journal for ImmunoTherapy of Cancer (Oct 2020)

Radiomics to predict outcomes and abscopal response of patients with cancer treated with immunotherapy combined with radiotherapy using a validated signature of CD8 cells

  • Jean-Charles Soria,
  • Charles Ferte,
  • Christophe Massard,
  • Roger Sun,
  • Guillaume Louvel,
  • Eric Deutsch,
  • Benjamin Frey,
  • Markus Hecht,
  • Rainer Fietkau,
  • Nora Sundahl,
  • Florian Putz,
  • Andrea Lancia,
  • Angela Rouyar,
  • Marina Milic,
  • Alexandre Carré,
  • Enzo Battistella,
  • Emilie Alvarez Andres,
  • Stéphane Niyoteka,
  • Edouard Romano,
  • Jérôme Durand-Labrunie,
  • Sophie Bockel,
  • Rastilav Bahleda,
  • Charlotte Robert,
  • Celine Boutros,
  • Maria Vakalopoulou,
  • Nikos Paragios,
  • Piet Ost,
  • Udo Gaipl

DOI
https://doi.org/10.1136/jitc-2020-001429
Journal volume & issue
Vol. 8, no. 2

Abstract

Read online

Background Combining radiotherapy (RT) with immuno-oncology (IO) therapy (IORT) may enhance IO-induced antitumor response. Quantitative imaging biomarkers can be used to provide prognosis, predict tumor response in a non-invasive fashion and improve patient selection for IORT. A biologically inspired CD8 T-cells-associated radiomics signature has been developed on previous cohorts. We evaluated here whether this CD8 radiomic signature is associated with lesion response, whether it may help to assess disease spatial heterogeneity for predicting outcomes of patients treated with IORT. We also evaluated differences between irradiated and non-irradiated lesions.Methods Clinical data from patients with advanced solid tumors in six independent clinical studies of IORT were investigated. Immunotherapy consisted of 4 different drugs (antiprogrammed death-ligand 1 or anticytotoxic T-lymphocyte-associated protein 4 in monotherapy). Most patients received stereotactic RT to one lesion. Irradiated and non-irradiated lesions were delineated from baseline and the first evaluation CT scans. Radiomic features were extracted from contrast-enhanced CT images and the CD8 radiomics signature was applied. A responding lesion was defined by a decrease in lesion size of at least 30%. Dispersion metrices of the radiomics signature were estimated to evaluate the impact of tumor heterogeneity in patient’s response.Results A total of 94 patients involving multiple lesions (100 irradiated and 189 non-irradiated lesions) were considered for a statistical interpretation. Lesions with high CD8 radiomics score at baseline were associated with significantly higher tumor response (area under the receiving operating characteristic curve (AUC)=0.63, p=0.0020). Entropy of the radiomics scores distribution on all lesions was shown to be associated with progression-free survival (HR=1.67, p=0.040), out-of-field abscopal response (AUC=0.70, p=0.014) and overall survival (HR=2.08, p=0.023), which remained significant in a multivariate analysis including clinical and biological variables.Conclusions These results enhance the predictive value of the biologically inspired CD8 radiomics score and suggests that tumor heterogeneity should be systematically considered in patients treated with IORT. This CD8 radiomics signature may help select patients who are most likely to benefit from IORT.