Towards robust radiomics and radiogenomics predictive models for brain tumor characterization
Maria Nadeem, Asma Shaheen, Muhammad F.A. Chaudhary, and Hassan, Mohy-ud-Din

TL;DR
This study investigates the stability of radiomics features derived from automatic brain tumor segmentation and their impact on predictive models for IDH status and survival, emphasizing resource-efficient methods suitable for underprivileged clinical settings.
Contribution
It demonstrates that filtering for stable radiomics features enhances predictive accuracy and highlights the importance of using resource-efficient deep segmentation models in developing countries.
Findings
Stable features are mainly texture features from WT region and T1Gd/T1 sequences.
Stability filtering reduces variability in model performance.
Improved predictive accuracy after stability filtering.
Abstract
In the context of brain tumor characterization, we focused on two key questions: (a) stability of radiomics features to variability in multiregional segmentation masks obtained with fully-automatic deep segmentation methods and (b) subsequent impact on predictive performance on downstream tasks: IDH prediction and Overall Survival (OS) classification. We further constrained our study to limited computational resources setting which are found in underprivileged, remote, and (or) resource-starved clinical sites in developing countries. We employed seven SOTA CNNs which can be trained with limited computational resources and have demonstrated superior segmentation performance on BraTS challenge. Subsequent selection of discriminatory features was done with RFE-SVM and MRMR. Our study revealed that highly stable radiomics features were: (1) predominantly texture features (79.1%), (2) mainly…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Brain Tumor Detection and Classification · Advanced X-ray and CT Imaging
