MRI radiomics in the prediction of the volumetric response in meningiomas after gamma knife radiosurgery

Purpose This report presents the first investigation of the radiomics value in predicting the meningioma volumetric response to gamma knife radiosurgery (GKRS). Methods The retrospective study included 93 meningioma patients imaged by three Tesla MRI. Tumor morphology was quantified by calculating 3...

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Veröffentlicht in:Journal of neuro-oncology 2022-09, Vol.159 (2), p.281-291
Hauptverfasser: Speckter, Herwin, Radulovic, Marko, Trivodaliev, Kire, Vranes, Velicko, Joaquin, Johanna, Hernandez, Wenceslao, Mota, Angel, Bido, Jose, Hernandez, Giancarlo, Rivera, Diones, Suazo, Luis, Valenzuela, Santiago, Stoeter, Peter
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Sprache:eng
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Zusammenfassung:Purpose This report presents the first investigation of the radiomics value in predicting the meningioma volumetric response to gamma knife radiosurgery (GKRS). Methods The retrospective study included 93 meningioma patients imaged by three Tesla MRI. Tumor morphology was quantified by calculating 337 shape, first- and second-order radiomic features from MRI obtained before GKRS. Analysis was performed on original 3D MR images and after their laplacian of gaussian (LoG), logarithm and exponential filtering. The prediction performance was evaluated by Pearson correlation, linear regression and ROC analysis, with meningioma volume change per month as the outcome. Results Sixty calculated features significantly correlated with the outcome. The feature selection based on LASSO and multivariate regression started from all available 337 radiomic and 12 non-radiomic features. It selected LoG-sigma-1-0-mm-3D_firstorder_InterquartileRange and logarithm_ngtdm_Busyness as the predictively most robust and non-redundant features. The radiomic score based on these two features produced an AUC = 0.81. Adding the non-radiomic karnofsky performance status (KPS) to the score has increased the AUC to 0.88. Low values of the radiomic score defined a homogeneous subgroup of 50 patients with consistent absence (0%) of tumor progression. Conclusion This is the first report of a strong association between MRI radiomic features and volumetric meningioma response to radiosurgery. The clinical importance of the early and reliable prediction of meningioma responsiveness to radiosurgery is based on its potential to aid individualized therapy decision making.
ISSN:0167-594X
1573-7373
DOI:10.1007/s11060-022-04063-y