Abstract

Radiomics (radiogenomics) characterizes tumor phenotypes based on quantitative image features derived from routine radiologic imaging to improve cancer diagnosis, prognosis, prediction and response to therapy. Although radiomic features must be reproducible to qualify as biomarkers for clinical care, little is known about how routine imaging acquisition techniques/parameters affect reproducibility. To begin to fill this knowledge gap, we assessed the reproducibility of a comprehensive, commonly-used set of radiomic features using a unique, same-day repeat computed tomography data set from lung cancer patients. Each scan was reconstructed at 6 imaging settings, varying slice thicknesses (1.25 mm, 2.5 mm and 5 mm) and reconstruction algorithms (sharp, smooth). Reproducibility was assessed using the repeat scans reconstructed at identical imaging setting (6 settings in total). In separate analyses, we explored differences in radiomic features due to different imaging parameters by assessing the agreement of these radiomic features extracted from the repeat scans reconstructed at the same slice thickness but different algorithms (3 settings in total). Our data suggest that radiomic features are reproducible over a wide range of imaging settings. However, smooth and sharp reconstruction algorithms should not be used interchangeably. These findings will raise awareness of the importance of properly setting imaging acquisition parameters in radiomics/radiogenomics research.

Highlights

  • Radiogenomics is a rapidly emerging field, the goal of which is to determine the association between a cancer’s genotype and imaging phenotype[1,2,3,4]

  • Using a uniquely acquired same-day repeat computed tomography (CT) lung cancer dataset, with each scan reconstructed at one of the six different imaging settings as discussed in Fig. 1, we explored the reproducibility of radiomic features over a wide range of CT imaging settings used in clinical practice and clinical trials

  • We studied the agreement of radiomic features when computed from repeat CT scans reconstructed using different imaging settings

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Summary

Introduction

Radiogenomics (radiomics) is a rapidly emerging field, the goal of which is to determine the association between a cancer’s genotype and imaging phenotype[1,2,3,4]. For a quantitative image feature to serve as a biomarker for tumor phenotype and to aid in cancer diagnosis, prognosis, response prediction and assessment of therapy, it must be reproducible, i.e., its value should stay unchanged or minimally changed when the feature is computed from a repeat scan acquired after a short time interval[13,14]. Using a uniquely acquired same-day repeat CT lung cancer dataset, with each scan reconstructed at one of the six different imaging settings as discussed, we explored the reproducibility of radiomic features over a wide range of CT imaging settings used in clinical practice and clinical trials. We studied the agreement of radiomic features when computed from repeat CT scans reconstructed using different imaging settings

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