Scientific Reports (Jun 2022)

Building reliable radiomic models using image perturbation

  • Xinzhi Teng,
  • Jiang Zhang,
  • Alex Zwanenburg,
  • Jiachen Sun,
  • Yuhua Huang,
  • Saikit Lam,
  • Yuanpeng Zhang,
  • Bing Li,
  • Ta Zhou,
  • Haonan Xiao,
  • Chenyang Liu,
  • Wen Li,
  • Xinyang Han,
  • Zongrui Ma,
  • Tian Li,
  • Jing Cai

DOI
https://doi.org/10.1038/s41598-022-14178-x
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 10

Abstract

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Abstract Radiomic model reliability is a central premise for its clinical translation. Presently, it is assessed using test–retest or external data, which, unfortunately, is often scarce in reality. Therefore, we aimed to develop a novel image perturbation-based method (IPBM) for the first of its kind toward building a reliable radiomic model. We first developed a radiomic prognostic model for head-and-neck cancer patients on a training (70%) and evaluated on a testing (30%) cohort using C-index. Subsequently, we applied the IPBM to CT images of both cohorts (Perturbed-Train and Perturbed-Test cohort) to generate 60 additional samples for both cohorts. Model reliability was assessed using intra-class correlation coefficient (ICC) to quantify consistency of the C-index among the 60 samples in the Perturbed-Train and Perturbed-Test cohorts. Besides, we re-trained the radiomic model using reliable RFs exclusively (ICC > 0.75) to validate the IPBM. Results showed moderate model reliability in Perturbed-Train (ICC: 0.565, 95%CI 0.518–0.615) and Perturbed-Test (ICC: 0.596, 95%CI 0.527–0.670) cohorts. An enhanced reliability of the re-trained model was observed in Perturbed-Train (ICC: 0.782, 95%CI 0.759–0.815) and Perturbed-Test (ICC: 0.825, 95%CI 0.782–0.867) cohorts, indicating validity of the IPBM. To conclude, we demonstrated capability of the IPBM toward building reliable radiomic models, providing community with a novel model reliability assessment strategy prior to prospective evaluation.