Frontiers in Oncology (Feb 2022)

A Deep Learning Model for Preoperative Differentiation of Glioblastoma, Brain Metastasis and Primary Central Nervous System Lymphoma: A Pilot Study

  • Leonardo Tariciotti,
  • Leonardo Tariciotti,
  • Valerio M. Caccavella,
  • Giorgio Fiore,
  • Giorgio Fiore,
  • Luigi Schisano,
  • Luigi Schisano,
  • Giorgio Carrabba,
  • Stefano Borsa,
  • Martina Giordano,
  • Martina Giordano,
  • Paolo Palmisciano,
  • Giulia Remoli,
  • Luigi Gianmaria Remore,
  • Mauro Pluderi,
  • Manuela Caroli,
  • Giorgio Conte,
  • Giorgio Conte,
  • Fabio Triulzi,
  • Fabio Triulzi,
  • Marco Locatelli,
  • Marco Locatelli,
  • Marco Locatelli,
  • Giulio Bertani

DOI
https://doi.org/10.3389/fonc.2022.816638
Journal volume & issue
Vol. 12

Abstract

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BackgroundNeuroimaging differentiation of glioblastoma, primary central nervous system lymphoma (PCNSL) and solitary brain metastasis (BM) remains challenging in specific cases showing similar appearances or atypical features. Overall, advanced MRI protocols have high diagnostic reliability, but their limited worldwide availability, coupled with the overlapping of specific neuroimaging features among tumor subgroups, represent significant drawbacks and entail disparities in the planning and management of these oncological patients.ObjectiveTo evaluate the classification performance metrics of a deep learning algorithm trained on T1-weighted gadolinium-enhanced (T1Gd) MRI scans of glioblastomas, atypical PCNSLs and BMs.Materials and MethodsWe enrolled 121 patients (glioblastoma: n=47; PCNSL: n=37; BM: n=37) who had undergone preoperative T1Gd-MRI and histopathological confirmation. Each lesion was segmented, and all ROIs were exported in a DICOM dataset. The patient cohort was then split in a training and hold-out test sets following a 70/30 ratio. A Resnet101 model, a deep neural network (DNN), was trained on the training set and validated on the hold-out test set to differentiate glioblastomas, PCNSLs and BMs on T1Gd-MRI scans.ResultsThe DNN achieved optimal classification performance in distinguishing PCNSLs (AUC: 0.98; 95%CI: 0.95 - 1.00) and glioblastomas (AUC: 0.90; 95%CI: 0.81 - 0.97) and moderate ability in differentiating BMs (AUC: 0.81; 95%CI: 0.70 - 0.95). This performance may allow clinicians to correctly identify patients eligible for lesion biopsy or surgical resection.ConclusionWe trained and internally validated a deep learning model able to reliably differentiate ambiguous cases of PCNSLs, glioblastoma and BMs by means of T1Gd-MRI. The proposed predictive model may provide a low-cost, easily-accessible and high-speed decision-making support for eligibility to diagnostic brain biopsy or maximal tumor resection in atypical cases.

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