Bayesian feature selection for radiomics using reliability metrics

Katherine Shoemaker, Rachel Ger, Laurence E. Court, Hugo Aerts, Marina Vannucci, Christine B. Peterson

Research output: Contribution to journalArticlepeer-review

Abstract

Introduction: Imaging of tumors is a standard step in diagnosing cancer and making subsequent treatment decisions. The field of radiomics aims to develop imaging based biomarkers using methods rooted in artificial intelligence applied to medical imaging. However, a challenging aspect of developing predictive models for clinical use is that many quantitative features derived from image data exhibit instability or lack of reproducibility across different imaging systems or image-processing pipelines. Methods: To address this challenge, we propose a Bayesian sparse modeling approach for image classification based on radiomic features, where the inclusion of more reliable features is favored via a probit prior formulation. Results: We verify through simulation studies that this approach can improve feature selection and prediction given correct prior information. Finally, we illustrate the method with an application to the classification of head and neck cancer patients by human papillomavirus status, using as our prior information a reliability metric quantifying feature stability across different imaging systems.

Original languageEnglish (US)
Article number1112914
JournalFrontiers in Genetics
Volume14
DOIs
StatePublished - 2023

Keywords

  • Bayesian modeling
  • classification
  • probit prior
  • quantitative imaging
  • radiomics
  • variable selection

ASJC Scopus subject areas

  • Genetics(clinical)
  • Genetics
  • Molecular Medicine

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