Radiomics and Machine Learning in Diagnostics of Glial Brain Tumors: a Systematic Review and Meta-Analysis
G.V. Danilov, S.B. Agrba, Yu.V. Strunina, A.M. Shevchenko, T.A. Konakova, S.V. Shugay, A.I. Batalov, I.N. Pronin

TL;DR
This paper reviews how radiomics and machine learning can help diagnose glial brain tumors using MRI data, finding high accuracy but noting a need for standardized methods.
Contribution
The study provides a systematic review and meta-analysis of radiomics and machine learning for glial tumor diagnostics, highlighting methodological challenges and accuracy.
Findings
Radiomics and machine learning achieved high diagnostic accuracy (0.86) for glial tumor molecular biomarkers.
Significant methodological heterogeneity exists, particularly in defining regions of interest for radiomic feature extraction.
Standardization of radiomics procedures is crucial for reproducibility in clinical practice.
Abstract
Glial tumors are the most common neuroepithelial neoplasms of the brain. Consequently, investigating robust, non-invasive techniques for subtyping these tumors — specifically through advanced multimodal neuroimaging and radiomics — is warranted. The present systematic review of scientific literature, including meta-analysis, was conducted to specify the major challenges of radiomics and machine learning in diagnostics of glial tumors based on the MRI data as well as to assess the quality of such non-invasive diagnostics. We analyzed 42 publications utilizing radiomics and machine learning to predict molecular biomarker status in glial tumors based on MRI data. The analysis covered mutations in the IDH, ATRX, BRAF, and H3K27M genes, as well as TERT promoter mutations, 1p/19q codeletion, MGMT promoter methylation, and proliferative activity (Ki-67 labeling index). The overall accuracy…
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Taxonomy
TopicsGlioma Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging · Chromatin Remodeling and Cancer
