Abstract

Imaging of cancer with 18F-fluorodeoxyglucose positron emission tomography (18F-FDG PET) has become a standard component of diagnosis and staging in oncology, and is becoming more important as a quantitative monitor of individual response to therapy. In this article we investigate the challenging problem of predicting a patient’s response to neoadjuvant chemotherapy from a single 18F-FDG PET scan taken prior to treatment. We take a “radiomics” approach whereby a large amount of quantitative features is automatically extracted from pretherapy PET images in order to build a comprehensive quantification of the tumor phenotype. While the dominant methodology relies on hand-crafted texture features, we explore the potential of automatically learning low- to high-level features directly from PET scans. We report on a study that compares the performance of two competing radiomics strategies: an approach based on state-of-the-art statistical classifiers using over 100 quantitative imaging descriptors, including texture features as well as standardized uptake values, and a convolutional neural network, 3S-CNN, trained directly from PET scans by taking sets of adjacent intra-tumor slices. Our experimental results, based on a sample of 107 patients with esophageal cancer, provide initial evidence that convolutional neural networks have the potential to extract PET imaging representations that are highly predictive of response to therapy. On this dataset, 3S-CNN achieves an average 80.7% sensitivity and 81.6% specificity in predicting non-responders, and outperforms other competing predictive models.

Highlights

  • Neoadjuvant chemotherapy (NC) for cancer treatment is often given as a first step before the definitive surgery of a tumor, in order to facilitate surgical resection and improve the likelihood of a R0 resection [1], i.e. where there is a clear surgical margin on the pathological specimen

  • Excluding logistic regression (LR), all the classifiers trained on texture features perform better when the feature vector is replaced by principal components

  • Excluding LR, all the classifiers trained on texture features perform better when the feature vector is replaced by principal components–this is expected since several features contain redundant information

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Summary

Introduction

Neoadjuvant chemotherapy (NC) for cancer treatment is often given as a first step before the definitive surgery of a tumor, in order to facilitate surgical resection and improve the likelihood of a R0 resection [1], i.e. where there is a clear surgical margin on the pathological specimen. NC has been associated with improved survival after surgery for patients who respond to the therapy, and is considered the standard of care in some cancers [2, 3]. Predicting Response to Neoadjuvant Chemotherapy with PET Imaging For PLOS ONE | DOI:10.1371/journal.pone.0137036 September 10, 2015

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