Author/Authors :
Feliciani, G Medical Physics Unit - Istituto Scienti co Romagnolo per lo Studio e la Cura dei Tumori (IRST) - Meldola, Italy , Fioroni, F Medical Physics Unit - AUSL-IRCCS - Reggio Emilia, Italy , Grassi, E Medical Physics Unit - AUSL-IRCCS - Reggio Emilia, Italy , Bertolini, M Medical Physics Unit - AUSL-IRCCS - Reggio Emilia, Italy , Rosca, A Radiation Oncology Unit - AUSL-IRCCS - Reggio Emilia, Italy , Timon, G. Radiation Oncology Unit - AUSL-IRCCS - Reggio Emilia, Italy , Galaverni, M Radiation Oncology Unit - AUSL-IRCCS - Reggio Emilia, Italy , Iotti, C Radiation Oncology Unit - AUSL-IRCCS - Reggio Emilia, Italy , Versari, A Nuclear Medicine Unit - AUSL-IRCCS - Reggio Emilia, Italy , Iori, M Medical Physics Unit - AUSL-IRCCS - Reggio Emilia, Italy , Ciammella, P Radiation Oncology Unit - AUSL-IRCCS - Reggio Emilia, Italy
Abstract :
The accurate prediction of prognosis and pattern of failure is crucial for optimizing treatment strategies for
patients with cancer, and early evidence suggests that image texture analysis has great potential in predicting outcome both in terms
of local control and treatment toxicity. The aim of this study was to assess the value of pretreatment 18F-FDG PET texture analysis for
the prediction of treatment failure in primary head and neck squamous cell carcinoma (HNSCC) treated with concurrent chemoradiation therapy. Methods. We performed a retrospective analysis of 90 patients diagnosed with primary HNSCC treated
between January 2010 and June 2017 with concurrent chemo-radiotherapy. All patients underwent 18F-FDG PET/CT before
treatment. 18F-FDG PET/CT texture features of the whole primary tumor were measured using an open-source texture analysis
package. Least absolute shrinkage and selection operator (LASSO) was employed to select the features that are associated the most
with clinical outcome, as progression-free survival and overall survival. We performed a univariate and multivariate analysis between
all the relevant texture parameters and local failure, adjusting for age, sex, smoking, primary tumor site, and primary tumor stage.
Harrell c-index was employed to score the predictive power of the multivariate cox regression models. Results. Twenty patients
(22.2%) developed local failure, whereas the remaining 70 (77.8%) achieved durable local control. Multivariate analysis revealed that
one feature, dened as low-intensity long-run emphasis (LILRE), was a signicant predictor of outcome regardless of clinical
variables (hazard ratio < 0.001, P = 0.001).The multivariate model based on imaging biomarkers resulted superior in predicting local
failure with a c-index of 0.76 against 0.65 of the model based on clinical variables alone. Conclusion. LILRE, evaluated on pretreatment 18F-FDG PET/CT, is associated with higher local failure in patients with HNSCC treated with chemoradiotherapy. Using texture
analysis in addition to clinical variables may be useful in predicting local control.
Keywords :
8F-FDG , PET , HNSCC , CRT