Identification of Radiomic Signatures in Brain MRI Sequences T1 and T2 That Differentiate Tumor Regions of Midline Gliomas with H3.3K27M Mutation
Abstract
:1. Introduction
2. Patients and Methods
2.1. Subject and Study Design
2.2. Imaging Evaluation of Midline Gliomas and Software for Calculation of Radiomics
2.3. Statistical Analysis
2.4. Software
3. Results
3.1. Demographics and Clinical Features
3.2. Selected Radiomics Measurements in Post-Gadolinium T1 and T2 Sequences
3.3. Identification of Radiomics Useful for Discriminating DMG in T1 and T2 Sequences
3.4. Comparison of Viable Tumor versus Peritumoral Edema
4. Discussion
5. Limitations
6. Future Directions
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Clinical Characteristics | n = 12 (100%) |
---|---|
Age | Median ten years (range 19–29) years |
Sex (M:F) | 2:1 |
Paediatric patients | 9 (75) |
Young Adults Patients | 3 (25) |
Anatomical location | |
| 3 (25) |
| 3 (25) |
| 6 (50) |
Volume | Median 18.63 mL (range 4.82–140.15) |
Volume voxel | Median 7368.5 voxels (range 1545–28,582) |
KNF | |
≥80 | 3 (25) |
≤70 | 9 (75) |
Surgical intervention | |
| 10 (83.4) |
| 1 (8.3) |
| 1 (8.3) |
Radiation therapy dose | Median: 55 Gy (range 54–55 Gy) |
Radiation therapy scheme | |
| 10 (83.3) |
| 2 (16.7) |
Chemotherapy | |
| 9 (75) |
| 3 (25) |
n | Percentile | IQR | p-Value | |||
---|---|---|---|---|---|---|
Median | 75 | 25 | ||||
Radiomics that showed a significant difference between EMNT vs. tumoral tissue | ||||||
| 24 | 64.756 | 123.139 | 40.629 | 82.51 | 0.003 |
| 24 | 0.115 | 0.592 | −1.122 | 1.714 | 0.027 |
| 24 | 5.197 | 9.514 | 3.401 | 6.113 | 0.043 |
| 24 | 2.197 | 6.514 | 0.401 | 6.113 | 0.043 |
| 24 | 50.362 | 101.225 | 27.328 | 73.897 | 0.005 |
| 24 | 13.000 | 18.750 | 9.250 | 9.5 | 0.047 |
| 24 | 0.120 | 0.592 | −1.128 | 1.72 | 0.027 |
| 24 | 5.166 | 9.152 | 3.396 | 5.756 | 0.043 |
| 24 | 2.166 | 6.152 | 0.396 | 5.756 | 0.043 |
| 24 | 20.000 | 36.711 | 13.528 | 23.183 | 0.020 |
Radiomics that showed a significant difference between EMNT vs. peritumoral edema | ||||||
| 24 | 5.197 | 9.514 | 3.401 | 6.113 | 0.017 |
| 24 | 2.197 | 6.514 | 0.401 | 6.113 | 0.017 |
| 24 | 5.166 | 9.152 | 3.396 | 5.756 | 0.017 |
| 24 | 2.166 | 6.152 | 0.396 | 5.756 | 0.017 |
| 24 | 0.099 | 0.148 | 0.062 | 0.086 | 0.050 |
Radiomics that showed a significant difference between tumor tissue versus peritumoral edema | ||||||
| 24 | 0.115 | 0.592 | −1.122 | 1.714 | 0.028 |
| 24 | 0.120 | 0.592 | −1.128 | 1.72 | 0.028 |
n | Percentile | IQR | p-Value | |||
---|---|---|---|---|---|---|
Median | 75 | 25 | ||||
Radiomics that showed a significant difference between EMNT vs. tumoral tissue | ||||||
| 28 | 19.929 | 24.208 | 12.756 | 11.452 | 0.037 |
| 28 | 16.000 | 21.500 | 11.000 | 10.5 | 0.037 |
| 28 | 20.000 | 23.500 | 12.250 | 11.25 | 0.044 |
| 28 | 23.500 | 27.500 | 15.000 | 12.5 | 0.044 |
| 24 | 0.004 | 0.030 | 0.002 | 0.028 | 0.005 |
| 24 | 435.251 | 672.443 | 135.606 | 536.837 | 0.004 |
| 24 | 0.004 | 0.027 | 0.002 | 0.025 | 0.009 |
| 24 | 405.484 | 604.182 | 127.266 | 476.916 | 0.005 |
| 24 | 0.007 | 0.050 | 0.004 | 0.046 | 0.007 |
| 24 | 592.797 | 1021.915 | 181.131 | 840.784 | 0.004 |
| 25 | 0.005 | 0.027 | 0.004 | 0.023 | 0.026 |
| 25 | 426.704 | 582.915 | 258.133 | 324.782 | 0.026 |
| 25 | 0.003 | 0.015 | 0.002 | 0.013 | 0.016 |
| 25 | 242.679 | 348.291 | 175.596 | 172.695 | 0.033 |
Radiomics that showed a significant difference between EMNT vs. peritumoral edema | ||||||
| 28 | 3.716 | 4.966 | 3.454 | 1.512 | 0.028 |
| 28 | 0.716 | 1.966 | 0.454 | 1.512 | 0.028 |
| 28 | 3.706 | 4.956 | 3.452 | 1.504 | 0.034 |
| 28 | 0.706 | 1.956 | 0.452 | 1.504 | 0.034 |
Radiomics that showed a significant difference between tumor tissue versus peritumoral edema | ||||||
| 24 | 0.007 | 0.050 | 0.004 | 0.046 | 0.032 |
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Chilaca-Rosas, M.-F.; Contreras-Aguilar, M.-T.; Garcia-Lezama, M.; Salazar-Calderon, D.-R.; Vargas-Del-Angel, R.-G.; Moreno-Jimenez, S.; Piña-Sanchez, P.; Trejo-Rosales, R.-R.; Delgado-Martinez, F.-A.; Roldan-Valadez, E. Identification of Radiomic Signatures in Brain MRI Sequences T1 and T2 That Differentiate Tumor Regions of Midline Gliomas with H3.3K27M Mutation. Diagnostics 2023, 13, 2669. https://doi.org/10.3390/diagnostics13162669
Chilaca-Rosas M-F, Contreras-Aguilar M-T, Garcia-Lezama M, Salazar-Calderon D-R, Vargas-Del-Angel R-G, Moreno-Jimenez S, Piña-Sanchez P, Trejo-Rosales R-R, Delgado-Martinez F-A, Roldan-Valadez E. Identification of Radiomic Signatures in Brain MRI Sequences T1 and T2 That Differentiate Tumor Regions of Midline Gliomas with H3.3K27M Mutation. Diagnostics. 2023; 13(16):2669. https://doi.org/10.3390/diagnostics13162669
Chicago/Turabian StyleChilaca-Rosas, Maria-Fatima, Manuel-Tadeo Contreras-Aguilar, Melissa Garcia-Lezama, David-Rafael Salazar-Calderon, Raul-Gabriel Vargas-Del-Angel, Sergio Moreno-Jimenez, Patricia Piña-Sanchez, Raul-Rogelio Trejo-Rosales, Felipe-Alfredo Delgado-Martinez, and Ernesto Roldan-Valadez. 2023. "Identification of Radiomic Signatures in Brain MRI Sequences T1 and T2 That Differentiate Tumor Regions of Midline Gliomas with H3.3K27M Mutation" Diagnostics 13, no. 16: 2669. https://doi.org/10.3390/diagnostics13162669
APA StyleChilaca-Rosas, M. -F., Contreras-Aguilar, M. -T., Garcia-Lezama, M., Salazar-Calderon, D. -R., Vargas-Del-Angel, R. -G., Moreno-Jimenez, S., Piña-Sanchez, P., Trejo-Rosales, R. -R., Delgado-Martinez, F. -A., & Roldan-Valadez, E. (2023). Identification of Radiomic Signatures in Brain MRI Sequences T1 and T2 That Differentiate Tumor Regions of Midline Gliomas with H3.3K27M Mutation. Diagnostics, 13(16), 2669. https://doi.org/10.3390/diagnostics13162669