Deep learning in head & neck cancer outcome prediction.

Journal: Scientific reports
Published Date:

Abstract

Traditional radiomics involves the extraction of quantitative texture features from medical images in an attempt to determine correlations with clinical endpoints. We hypothesize that convolutional neural networks (CNNs) could enhance the performance of traditional radiomics, by detecting image patterns that may not be covered by a traditional radiomic framework. We test this hypothesis by training a CNN to predict treatment outcomes of patients with head and neck squamous cell carcinoma, based solely on their pre-treatment computed tomography image. The training (194 patients) and validation sets (106 patients), which are mutually independent and include 4 institutions, come from The Cancer Imaging Archive. When compared to a traditional radiomic framework applied to the same patient cohort, our method results in a AUC of 0.88 in predicting distant metastasis. When combining our model with the previous model, the AUC improves to 0.92. Our framework yields models that are shown to explicitly recognize traditional radiomic features, be directly visualized and perform accurate outcome prediction.

Authors

  • André Diamant
    Medical Physics Unit, McGill University and Cedars Cancer Center, 1001 Décarie Blvd, Montréal, QC, H4A 3J1, Canada. andre.diamantboustead@mail.mcgill.ca.
  • Avishek Chatterjee
    Medical Physics Unit, McGill University and Cedars Cancer Center, 1001 Décarie Blvd, Montréal, QC, H4A 3J1, Canada.
  • Martin Vallières
    Medical Physics Unit, McGill University and Cedars Cancer Center, 1001 Décarie Blvd, Montréal, QC, H4A 3J1, Canada.
  • George Shenouda
    Department of Radiation Oncology, McGill University Health Centre, Montreal, Quebec, Canada.
  • Jan Seuntjens
    Medical Physics Unit, McGill University and Cedars Cancer Center, 1001 Décarie Blvd, Montréal, QC, H4A 3J1, Canada.