Integrated models incorporating radiologic and radiomic features predict meningioma grade, local failure, and overall survival

Author:

Morin Olivier1,Chen William C1,Nassiri Farshad2,Susko Matthew1,Magill Stephen T3,Vasudevan Harish N1,Wu Ashley1,Vallières Martin1,Gennatas Efstathios D1,Valdes Gilmer1,Pekmezci Melike4,Alcaide-Leon Paula5,Choudhury Abrar13,Interian Yannet1,Mortezavi Siavash1,Turgutlu Kerem1,Bush Nancy Ann Oberheim3,Solberg Timothy D1,Braunstein Steve E1,Sneed Penny K1,Perry Arie43,Zadeh Gelareh1,McDermott Michael W3,Villanueva-Meyer Javier E5,Raleigh David R13

Affiliation:

1. Department of Radiation Oncology, University of California San Francisco, California

2. Department of Surgery, University of Toronto, Toronto, Ontario, Canada

3. Department of Neurological Surgery, University of California San Francisco, California

4. Department of Pathology, University of California San Francisco, California

5. Department of Radiology and Biomedical Imaging, University of California San Francisco, California

Abstract

Abstract Background We investigated prognostic models based on clinical, radiologic, and radiomic feature to preoperatively identify meningiomas at risk for poor outcomes. Methods Retrospective review was performed for 303 patients who underwent resection of 314 meningiomas (57% World Health Organization grade I, 35% grade II, and 8% grade III) at two independent institutions, which comprised primary and external datasets. For each patient in the primary dataset, 16 radiologic and 172 radiomic features were extracted from preoperative magnetic resonance images, and prognostic features for grade, local failure (LF) or overall survival (OS) were identified using the Kaplan–Meier method, log-rank tests and recursive partitioning analysis. Regressions and random forests were used to generate and test prognostic models, which were validated using the external dataset. Results Multivariate analysis revealed that apparent diffusion coefficient hypointensity (HR 5.56, 95% CI 2.01–16.7, P = .002) was associated with high grade meningioma, and low sphericity was associated both with increased LF (HR 2.0, 95% CI 1.1–3.5, P = .02) and worse OS (HR 2.94, 95% CI 1.47–5.56, P = .002). Both radiologic and radiomic predictors of adverse meningioma outcomes were significantly associated with molecular markers of aggressive meningioma biology, such as somatic mutation burden, DNA methylation status, and FOXM1 expression. Integrated prognostic models combining clinical, radiologic, and radiomic features demonstrated improved accuracy for meningioma grade, LF, and OS (area under the curve 0.78, 0.75, and 0.78, respectively) compared to models based on clinical features alone. Conclusions Preoperative radiologic and radiomic features such as apparent diffusion coefficient and sphericity can predict tumor grade, LF, and OS in patients with meningioma.

Funder

National Institutes of Health

Publisher

Oxford University Press (OUP)

Subject

Electrical and Electronic Engineering,Building and Construction

Reference33 articles.

1. The 2016 World Health Organization classification of tumors of the central nervous system: a summary;Louis;Acta Neuropathol.,2016

2. CBTRUS Statistical Report: primary brain and other central nervous system tumors diagnosed in the United States in 2010–2014;Ostrom;Neuro Oncol.,2017

3. Meningiomas: knowledge base, treatment outcomes, and uncertainties. A RANO review;Rogers;J Neurosurg.,2015

4. Recurrence of meningiomas;Yamasaki;Cancer.,2000

5. Histopathological features predictive of local control of atypical meningioma after surgery and adjuvant radiotherapy;Chen;J Neurosurg.,2018

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