IDH Mutation Assessment in Gliomas from Anatomical MRI Using Deep Learning: A Comparative Analysis of Centralized and Federated Learning Frameworks
Abstract
1. Introduction
2. Materials and Methods
2.1. Materials
2.2. Methods
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| HIPAA | Health Insurance Portability and Accountability Act |
| GDPR | General Data Protection Regulation |
| GBSF | Gradient-Based Soft Filtering |
| MR | Magnetic Resonance |
| NSF | Naive Soft Filtering |
| RGB | Red, Green, and Blue |
| ROI | Region-of-Interest |
| TI | Inversion Time |
| TE | Echo Time |
| TR | Repetition Time |
| IR-SPGR | Inversion-Recovery Spoiled Gradient Echo |
| UCSF-PDGM | University of California San Francisco Preoperative Diffuse Glioma MRI Dataset |
| FA | Federated Averaging |
| FTM | Federated Trimmed Mean |
| CL | Centralized Learning |
| FL | Federated Learning |
| DTI | Diffusion Tensor Imaging |
| ViT | Vision Transformer |
| FLAIR | Fluid-Attenuated Inversion Recovery |
| T1c/T1CE | T1-weighted Contrast-Enhanced |
| T1 | T1-weighted |
| IDH | Isocitrate Dehydrogenase |
| WHO | World Health Organization |
| WHO CNS5 | WHO Classification of Central Nervous System Tumors (5th Edition) |
| IDH-mut | IDH Mutant |
| IDH-wt | IDH-Wildtype |
| MRI | Magnetic Resonance Imaging |
| DL | Deep Learning |
| CNN | Convolutional Neural Network |
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| Features | Total (n = 501) | IDH-mut (n = 103) | IDH-wt (n = 398) |
|---|---|---|---|
| Age (years) | 56.87 ± 15.02 (17–94) | 38.80 ± 11.52 | 61.54 ± 11.98 |
| Sex | |||
| Male | 299 (59.7%) | 63 (12.6%) | 236 (47.1%) |
| Female | 202 (40.3%) | 40 (8.0%) | 162 (32.3%) |
| WHO Grade | |||
| Grade 2 | 56 (11%) | 46 (9%) | 10 (2%) |
| Grade 3 | 43 (9%) | 29 (5.8%) | 14 (2.8%) |
| Grade 4 | 402 (80%) | 28 (5.6%) | 374 (74.65%) |
| MRI Sequences | T1c (IR-SPGR), T2w (3D FSE), FLAIR | Same | Same |
| Segmentation | Enhancing, necrotic, FLAIR abnormality regions | Same | Same |
| Feature | Centralized Train (n = 361) | Client 1 Train (n = 182) | Client 2 Train (n = 178) | Validation (n = 44) | Test (n = 59) |
|---|---|---|---|---|---|
| Age (years) | 48.94 ± 18.13 | 58.61 ± 13.86 | 59.15 ± 14.10 | 54.23 ± 16.01 | 48.94 ± 18.13 |
| Sex (% male) | 57.50% | 52.24% | 57.87% | 70.45% | 61.02% |
| IDH Mutation Rate | 15.55% | 14.83% | 16.29% | 22.73% | 50.84% |
| Metric | Centralized (NSF *) | Centralized (GBSF **) | Federated Trimmed Mean (NSF *) | Federated Averaging Strategy (NSF *) |
|---|---|---|---|---|
| Accuracy | 0.949 | 0.813 | 0.915 | 0.949 |
| F1 Score | 0.951 | 0.784 | 0.912 | 0.952 |
| Precision | 0.935 | 0.952 | 0.963 | 0.909 |
| Recall | 0.966 | 0.667 | 0.867 | 1.000 |
| Specificity | 0.931 | 0.966 | 0.966 | 0.896 |
| ROC–AUC | 0.971 | 0.907 | 0.957 | 0.967 |
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Share and Cite
Bas, A.; Ozturk-Isik, E. IDH Mutation Assessment in Gliomas from Anatomical MRI Using Deep Learning: A Comparative Analysis of Centralized and Federated Learning Frameworks. Diagnostics 2026, 16, 623. https://doi.org/10.3390/diagnostics16040623
Bas A, Ozturk-Isik E. IDH Mutation Assessment in Gliomas from Anatomical MRI Using Deep Learning: A Comparative Analysis of Centralized and Federated Learning Frameworks. Diagnostics. 2026; 16(4):623. https://doi.org/10.3390/diagnostics16040623
Chicago/Turabian StyleBas, Abdullah, and Esin Ozturk-Isik. 2026. "IDH Mutation Assessment in Gliomas from Anatomical MRI Using Deep Learning: A Comparative Analysis of Centralized and Federated Learning Frameworks" Diagnostics 16, no. 4: 623. https://doi.org/10.3390/diagnostics16040623
APA StyleBas, A., & Ozturk-Isik, E. (2026). IDH Mutation Assessment in Gliomas from Anatomical MRI Using Deep Learning: A Comparative Analysis of Centralized and Federated Learning Frameworks. Diagnostics, 16(4), 623. https://doi.org/10.3390/diagnostics16040623

