Imaging meningioma biology: Machine learning predicts integrated risk score in WHO grade 2/3 meningioma

Olivia Kertels, Claire Delbridge, Felix Sahm, Felix Ehret, Güliz Acker, David Capper, Jan C. Peeken, Christian Diehl, Michael Griessmair, Marie Christin Metz, Chiara Negwer, Sandro M. Krieg, Julia Onken, Igor Yakushev, Peter Vajkoczy, Bernhard Meyer, Daniel Zips, Stephanie E. Combs, Claus Zimmer, David KaulDenise Bernhardt, Benedikt Wiestler

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

Background. Meningiomas are the most common primary brain tumors. While most are benign (WHO grade 1) and have a favorable prognosis, up to one-fourth are classified as higher-grade, falling into WHO grade 2 or 3 categories. Recently, an integrated risk score (IRS) pertaining to tumor biology was developed and its prognostic relevance was validated in a large, multicenter study. We hypothesized imaging data to be reflective of the IRS. Thus, we assessed the potential of a machine learning classifier for its noninvasive prediction using preoperative magnetic resonance imaging (MRI). Methods. In total, 160 WHO grade 2 and 3 meningioma patients from 2 university centers were included in this study. All patients underwent surgery with histopathological workup including methylation analysis. Preoperative MRI scans were automatically segmented, and radiomic parameters were extracted. Using a random forest classifier, 3 machine learning classifiers (1 multiclass classifier for IRS and 2 binary classifiers for low-risk and high-risk prediction, respectively) were developed in a training set (120 patients) and independently tested in a hold-out test set (40 patients). Results. Multiclass IRS classification had a test set area under the curve (AUC) of 0.7, mostly driven by the difficulties in clearly separating medium-risk from high-risk patients. Consequently, a classifier predicting low-risk IRS versus medium-/high-risk showed a very high test accuracy of 90% (AUC 0.88). In particular, "sphericity"was associated with low-risk IRS classification. Conclusion. The IRS, in particular molecular low-risk, can be predicted from imaging data with high accuracy, making this important prognostic classification accessible by imaging.

Original languageEnglish
Article numbervdae080
JournalNeuro-Oncology Advances
Volume6
Issue number1
DOIs
StatePublished - 1 Jan 2024

Keywords

  • Integrated risk score
  • Meningioma
  • Neuro-oncology
  • Radiomics

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