» Articles » PMID: 29145421

Radiographic Prediction of Meningioma Grade by Semantic and Radiomic Features

Abstract

Objectives: The clinical management of meningioma is guided by tumor grade and biological behavior. Currently, the assessment of tumor grade follows surgical resection and histopathologic review. Reliable techniques for pre-operative determination of tumor grade may enhance clinical decision-making.

Methods: A total of 175 meningioma patients (103 low-grade and 72 high-grade) with pre-operative contrast-enhanced T1-MRI were included. Fifteen radiomic (quantitative) and 10 semantic (qualitative) features were applied to quantify the imaging phenotype. Area under the curve (AUC) and odd ratios (OR) were computed with multiple-hypothesis correction. Random-forest classifiers were developed and validated on an independent dataset (n = 44).

Results: Twelve radiographic features (eight radiomic and four semantic) were significantly associated with meningioma grade. High-grade tumors exhibited necrosis/hemorrhage (ORsem = 6.6, AUCrad = 0.62-0.68), intratumoral heterogeneity (ORsem = 7.9, AUCrad = 0.65), non-spherical shape (AUCrad = 0.61), and larger volumes (AUCrad = 0.69) compared to low-grade tumors. Radiomic and sematic classifiers could significantly predict meningioma grade (AUCsem = 0.76 and AUCrad = 0.78). Furthermore, combining them increased the classification power (AUCradio = 0.86). Clinical variables alone did not effectively predict tumor grade (AUCclin = 0.65) or show complementary value with imaging data (AUCcomb = 0.84).

Conclusions: We found a strong association between imaging features of meningioma and histopathologic grade, with ready application to clinical management. Combining qualitative and quantitative radiographic features significantly improved classification power.

Citing Articles

Performance of Radiomics-based machine learning and deep learning-based methods in the prediction of tumor grade in meningioma: a systematic review and meta-analysis.

Tavanaei R, Akhlaghpasand M, Alikhani A, Hajikarimloo B, Ansari A, Yong R Neurosurg Rev. 2025; 48(1):78.

PMID: 39849257 DOI: 10.1007/s10143-025-03236-3.


Differentiating Cystic Lesions in the Sellar Region of the Brain Using Artificial Intelligence and Machine Learning for Early Diagnosis: A Prospective Review of the Novel Diagnostic Modalities.

Patel K, Sanghvi H, Gill G, Agarwal O, Pandya A, Agarwal A Cureus. 2025; 16(12):e75476.

PMID: 39791061 PMC: 11717160. DOI: 10.7759/cureus.75476.


A large scale multi institutional study for radiomics driven machine learning for meningioma grading.

Karabacak M, Patil S, Feng R, Shrivastava R, Margetis K Sci Rep. 2024; 14(1):26191.

PMID: 39478140 PMC: 11525589. DOI: 10.1038/s41598-024-78311-8.


Preoperative prediction of CNS WHO grade and tumour aggressiveness in intracranial meningioma based on radiomics and structured semantics.

Kalasauskas D, Kosterhon M, Kurz E, Schmidt L, Altmann S, Grauhan N Sci Rep. 2024; 14(1):20586.

PMID: 39232068 PMC: 11374997. DOI: 10.1038/s41598-024-71200-0.


Prediction of early recurrence of adult-type diffuse gliomas following radiotherapy using multi-modal magnetic resonance images.

Salari E, Chen X, Wynne J, Qiu R, Roper J, Shu H Med Phys. 2024; 51(11):8638-8648.

PMID: 39221589 PMC: 11530302. DOI: 10.1002/mp.17382.


References
1.
Liu Y, Chotai S, Chen M, Jin S, Qi S, Pan J . Preoperative radiologic classification of convexity meningioma to predict the survival and aggressive meningioma behavior. PLoS One. 2015; 10(3):e0118908. PMC: 4364713. DOI: 10.1371/journal.pone.0118908. View

2.
Gillies R, Kinahan P, Hricak H . Radiomics: Images Are More than Pictures, They Are Data. Radiology. 2015; 278(2):563-77. PMC: 4734157. DOI: 10.1148/radiol.2015151169. View

3.
Balagurunathan Y, Gu Y, Wang H, Kumar V, Grove O, Hawkins S . Reproducibility and Prognosis of Quantitative Features Extracted from CT Images. Transl Oncol. 2014; 7(1):72-87. PMC: 3998690. DOI: 10.1593/tlo.13844. View

4.
Louis D, Ohgaki H, Wiestler O, Cavenee W, Burger P, Jouvet A . The 2007 WHO classification of tumours of the central nervous system. Acta Neuropathol. 2007; 114(2):97-109. PMC: 1929165. DOI: 10.1007/s00401-007-0243-4. View

5.
Zhao B, Tan Y, Tsai W, Qi J, Xie C, Lu L . Reproducibility of radiomics for deciphering tumor phenotype with imaging. Sci Rep. 2016; 6:23428. PMC: 4806325. DOI: 10.1038/srep23428. View