Predictive modeling of outcomes following definitive chemoradiotherapy for oropharyngeal cancer based on FDG-PET image characteristics Journal Article


Authors: Folkert, M. R.; Setton, J.; Apte, A. P.; Grkovski, M.; Young, R. J.; Schöder, H.; Thorstad, W. L.; Lee, N. Y.; Deasy, J. O.; Oh, J. H.
Article Title: Predictive modeling of outcomes following definitive chemoradiotherapy for oropharyngeal cancer based on FDG-PET image characteristics
Abstract: In this study, we investigate the use of imaging feature-based outcomes research ('radiomics') combined with machine learning techniques to develop robust predictive models for the risk of all-cause mortality (ACM), local failure (LF), and distant metastasis (DM) following definitive chemoradiation therapy (CRT). One hundred seventy four patients with stage III-IV oropharyngeal cancer (OC) treated at our institution with CRT with retrievable pre- and post-treatment 18F-fluorodeoxyglucose positron emission tomography (FDG-PET) scans were identified. From pre-treatment PET scans, 24 representative imaging features of FDG-avid disease regions were extracted. Using machine learning-based feature selection methods, multiparameter logistic regression models were built incorporating clinical factors and imaging features. All model building methods were tested by cross validation to avoid overfitting, and final outcome models were validated on an independent dataset from a collaborating institution. Multiparameter models were statistically significant on 5 fold cross validation with the area under the receiver operating characteristic curve (AUC) = 0.65 (p = 0.004), 0.73 (p = 0.026), and 0.66 (p = 0.015) for ACM, LF, and DM, respectively. The model for LF retained significance on the independent validation cohort with AUC = 0.68 (p = 0.029) whereas the models for ACM and DM did not reach statistical significance, but resulted in comparable predictive power to the 5 fold cross validation with AUC = 0.60 (p = 0.092) and 0.65 (p = 0.062), respectively. In the largest study of its kind to date, predictive features including increasing metabolic tumor volume, increasing image heterogeneity, and increasing tumor surface irregularity significantly correlated to mortality, LF, and DM on 5 fold cross validation in a relatively uniform single-institution cohort. The LF model also retained significance in an independent population. © 2017 Institute of Physics and Engineering in Medicine.
Keywords: positron emission tomography; tumors; artificial intelligence; fdg-pet; patient treatment; regression analysis; diseases; chemoradiotherapy; oropharyngeal cancer; fdg pet; logistic regression models; learning systems; receiver operating characteristic curves; learning algorithms; machine learning techniques; radiomics; chemoradiation therapies; feature selection methods
Journal Title: Physics in Medicine and Biology
Volume: 62
Issue: 13
ISSN: 0031-9155
Publisher: IOP Publishing Ltd  
Date Published: 2017-07-07
Start Page: 5327
End Page: 5343
Language: English
DOI: 10.1088/1361-6560/aa73cc
PROVIDER: scopus
PUBMED: 28604368
PUBMED: 28604368
PMCID: PMC5729737
DOI/URL:
Notes: Article -- Export Date: 3 July 2017 -- Source: Scopus
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MSK Authors
  1. Robert J Young
    232 Young
  2. Michael Ryan Folkert
    36 Folkert
  3. Nancy Y. Lee
    887 Lee
  4. Heiko Schoder
    552 Schoder
  5. Jung Hun Oh
    188 Oh
  6. Joseph Owen Deasy
    527 Deasy
  7. Aditya Apte
    206 Apte
  8. Jeremy Setton
    94 Setton