Unraveling Radiomics Complexity: Strategies for Optimal Simplicity in Predictive Modeling
Mahdi Ait Lhaj Loutfi, Teodora Boblea Podasca, Alex Zwanenburg, Taman, Upadhaya, Jorge Barrios, David R. Raleigh, William C. Chen, Dante P.I., Capaldi, Hong Zheng, Olivier Gevaert, Jing Wu, Alvin C. Silva, Paul J. Zhang,, Harrison X. Bai, Jan Seuntjens, Steffen L\"ock

TL;DR
This paper presents a methodology and tools to identify the minimal set of predictive radiomic features, optimizing model simplicity and interpretability across different cancer datasets.
Contribution
Developed MEDimage, an open-source tool, and a systematic approach to determine the optimal radiomic feature complexity level for predictive modeling.
Findings
Morphological features optimal for MRI meningioma and glioma
Intensity features optimal for renal cell carcinoma and NSCLC
Texture features optimal for MRI renal cell carcinoma
Abstract
Background: The high dimensionality of radiomic feature sets, the variability in radiomic feature types and potentially high computational requirements all underscore the need for an effective method to identify the smallest set of predictive features for a given clinical problem. Purpose: Develop a methodology and tools to identify and explain the smallest set of predictive radiomic features. Materials and Methods: 89,714 radiomic features were extracted from five cancer datasets: low-grade glioma, meningioma, non-small cell lung cancer (NSCLC), and two renal cell carcinoma cohorts (n=2104). Features were categorized by computational complexity into morphological, intensity, texture, linear filters, and nonlinear filters. Models were trained and evaluated on each complexity level using the area under the curve (AUC). The most informative features were identified, and their importance…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Machine Learning in Materials Science
MethodsSparse Evolutionary Training
