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Associations of Radiomic Data Extracted from Static and Respiratory-Gated CT Scans with Disease Recurrence in Lung Cancer Patients Treated with SBRT

Author

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  • Elizabeth Huynh
  • Thibaud P Coroller
  • Vivek Narayan
  • Vishesh Agrawal
  • John Romano
  • Idalid Franco
  • Chintan Parmar
  • Ying Hou
  • Raymond H Mak
  • Hugo J W L Aerts

Abstract

Radiomics aims to quantitatively capture the complex tumor phenotype contained in medical images to associate them with clinical outcomes. This study investigates the impact of different types of computed tomography (CT) images on the prognostic performance of radiomic features for disease recurrence in early stage non-small cell lung cancer (NSCLC) patients treated with stereotactic body radiation therapy (SBRT). 112 early stage NSCLC patients treated with SBRT that had static free breathing (FB) and average intensity projection (AIP) images were analyzed. Nineteen radiomic features were selected from each image type (FB or AIP) for analysis based on stability and variance. The selected FB and AIP radiomic feature sets had 6 common radiomic features between both image types and 13 unique features. The prognostic performances of the features for distant metastasis (DM) and locoregional recurrence (LRR) were evaluated using the concordance index (CI) and compared with two conventional features (tumor volume and maximum diameter). P-values were corrected for multiple testing using the false discovery rate procedure. None of the FB radiomic features were associated with DM, however, seven AIP radiomic features, that described tumor shape and heterogeneity, were (CI range: 0.638–0.676). Conventional features from FB images were not associated with DM, however, AIP conventional features were (CI range: 0.643–0.658). Radiomic and conventional multivariate models were compared between FB and AIP images using cross validation. The differences between the models were assessed using a permutation test. AIP radiomic multivariate models (median CI = 0.667) outperformed all other models (median CI range: 0.601–0.630) in predicting DM. None of the imaging features were prognostic of LRR. Therefore, image type impacts the performance of radiomic models in their association with disease recurrence. AIP images contained more information than FB images that were associated with disease recurrence in early stage NSCLC patients treated with SBRT, which suggests that AIP images may potentially be more optimal for the development of an imaging biomarker.

Suggested Citation

  • Elizabeth Huynh & Thibaud P Coroller & Vivek Narayan & Vishesh Agrawal & John Romano & Idalid Franco & Chintan Parmar & Ying Hou & Raymond H Mak & Hugo J W L Aerts, 2017. "Associations of Radiomic Data Extracted from Static and Respiratory-Gated CT Scans with Disease Recurrence in Lung Cancer Patients Treated with SBRT," PLOS ONE, Public Library of Science, vol. 12(1), pages 1-17, January.
  • Handle: RePEc:plo:pone00:0169172
    DOI: 10.1371/journal.pone.0169172
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    Cited by:

    1. Qian Du & Michael Baine & Kyle Bavitz & Josiah McAllister & Xiaoying Liang & Hongfeng Yu & Jeffrey Ryckman & Lina Yu & Hengle Jiang & Sumin Zhou & Chi Zhang & Dandan Zheng, 2019. "Radiomic feature stability across 4D respiratory phases and its impact on lung tumor prognosis prediction," PLOS ONE, Public Library of Science, vol. 14(5), pages 1-16, May.

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