Litcius/Paper detail

Feature selection methods and predictive models in CT lung cancer radiomics

Gary Ge, Jie Zhang

2022Journal of Applied Clinical Medical Physics75 citationsDOIOpen Access PDF

Abstract

Radiomics is a technique that extracts quantitative features from medical images using data-characterization algorithms. Radiomic features can be used to identify tissue characteristics and radiologic phenotyping that is not observable by clinicians. A typical workflow for a radiomics study includes cohort selection, radiomic feature extraction, feature and predictive model selection, and model training and validation. While there has been increasing attention given to radiomic feature extraction, standardization, and reproducibility, currently, there is a lack of rigorous evaluation of feature selection methods and predictive models. Herein, we review the published radiomics investigations in CT lung cancer and provide an overview of the commonly used radiomic feature selection methods and predictive models. We also compare limitations of various methods in clinical applications and present sources of uncertainty associated with those methods. This review is expected to help raise awareness of the impact of radiomic feature and model selection methods on the integrity of radiomics studies.

Topics & Concepts

RadiomicsFeature selectionComputer scienceFeature (linguistics)Artificial intelligenceFeature extractionWorkflowSelection (genetic algorithm)Data miningPattern recognition (psychology)Machine learningPhilosophyDatabaseLinguisticsRadiomics and Machine Learning in Medical ImagingGastric Cancer Management and OutcomesLung Cancer Diagnosis and Treatment