1Department of Radiology, Zhujiang Hospital, Southern Medical University, Guangzhou, China
2Clinical and Technical Support, Philips Healthcare (Guangzhou), Guangzhou, China
Presenting Author: Yongzhou Xu
Synopsis
Motivation:
Goals:
Approach:
Results:
Full abstract & presentation
The full text, figures, and any recorded presentation for this abstract are not shown here. Log in if you are a member or registered attendee with access.
Full abstracts, figures, and presentations for Cape Town - 2026 ISMRM-ISMRT Annual Meeting and Exhibition are available to registered attendees. This content becomes freely available to the public roughly two years after the meeting.
To request or purchase access, contact the ISMRM Central Office at info@ismrm.org.
1. Louis DN, Perry A, Wesseling P, Brat DJ, Cree IA, Figarella-Branger D, Hawkins C, Ng H, Pfister SM, Reifenberger G: The 2021 WHO classification of tumors of the central nervous system: a summary. Neuro-oncology 2021, 23(8):1231-1251.
2. Weller M, van den Bent M, Preusser M, Le Rhun E, Tonn JC, Minniti G, Bendszus M, Balana C, Chinot O, Dirven L: EANO guidelines on the diagnosis and treatment of diffuse gliomas of adulthood. Nature reviews Clinical oncology 2021, 18(3):170-186.
3. Moodi F, Khodadadi Shoushtari F, Ghadimi DJ, Valizadeh G, Khormali E, Salari HM, Ohadi MAD, Nilipour Y, Jahanbakhshi A, Rad HS: Glioma tumor grading using radiomics on conventional MRI: A comparative study of WHO 2021 and WHO 2016 classification of central nervous tumors. Journal of Magnetic Resonance Imaging 2024, 60(3):923-938.
4. Tan R, Sui C, Wang C, Zhu T: MRI-based intratumoral and peritumoral radiomics for preoperative prediction of glioma grade: a multicenter study. Frontiers in Oncology 2024, 14.
5. Di Salle G, Tumminello L, Laino ME, Shalaby S, Aghakhanyan G, Fanni SC, Febi M, Shortrede JE, Miccoli M, Faggioni L: Accuracy of radiomics in predicting IDH mutation status in diffuse gliomas: a bivariate meta-analysis. Radiology: Artificial Intelligence 2023, 6(1):e220257.
6. Tabassum M, Suman AA, Suero Molina E, Pan E, Di Ieva A, Liu S: Radiomics and Machine Learning in Brain Tumors and Their Habitat: A Systematic Review. Cancers 2023, 15(15):3845.
7. Guo H, Liu J, Hu J, Zhang H, Zhao W, Gao M, Zhang Y, Yang G, Cui Y: Diagnostic performance of gliomas grading and IDH status decoding A comparison between 3D amide proton transfer APT and four diffusion-weighted MRI models. J Magn Reson Imaging 2022, 56(6):1834-1844.
8. Gihr G, Horvath-Rizea D, Kohlhof-Meinecke P, Ganslandt O, Henkes H, Härtig W, Donitza A, Skalej M, Schob S: Diffusion Weighted Imaging in Gliomas: A Histogram-Based Approach for Tumor Characterization. Cancers (Basel) 2022, 14(14).
9. Zhang H, Liu K, Ba R, Zhang Z, Zhang Y, Chen Y, Gu W, Shen Z, Shu Q, Fu J et al: Histological and molecular classifications of pediatric glioma with time-dependent diffusion MRI-based microstructural mapping. Neuro Oncol 2023, 25(6):1146-1156.
10. Wu D, Jiang K, Li H, Zhang Z, Ba R, Zhang Y, Hsu Y-C, Sun Y, Zhang Y-D: Time-Dependent Diffusion MRI for Quantitative Microstructural Mapping of Prostate Cancer. Radiology 2022, 303(3):578-587.
11. Calabrese E, Villanueva-Meyer JE, Rudie JD, Rauschecker AM, Baid U, Bakas S, Cha S, Mongan JT, Hess CP: The University of California San Francisco preoperative diffuse glioma MRI dataset. Radiology: Artificial Intelligence 2022, 4(6):e220058.