NeuroImage: Clinical (Jan 2022)

Detection of lesions in the optic nerve with magnetic resonance imaging using a 3D convolutional neural network

  • Gerard Martí-Juan,
  • Marcos Frías,
  • Aran Garcia-Vidal,
  • Angela Vidal-Jordana,
  • Manel Alberich,
  • Willem Calderon,
  • Gemma Piella,
  • Oscar Camara,
  • Xavier Montalban,
  • Jaume Sastre-Garriga,
  • Àlex Rovira,
  • Deborah Pareto

Journal volume & issue
Vol. 36
p. 103187

Abstract

Read online

Background: Optic neuritis (ON) is one of the first manifestations of multiple sclerosis, a disabling disease with rising prevalence. Detecting optic nerve lesions could be a relevant diagnostic marker in patients with multiple sclerosis. Objectives: We aim to create an automated, interpretable method for optic nerve lesion detection from MRI scans. Materials and Methods: We present a 3D convolutional neural network (CNN) model that learns to detect optic nerve lesions based on T2-weighted fat-saturated MRI scans. We validated our system on two different datasets (N = 107 and 62) and interpreted the behaviour of the model using saliency maps. Results: The model showed good performance (68.11% balanced accuracy) that generalizes to unseen data (64.11%). The developed network focuses its attention to the areas that correspond to lesions in the optic nerve. Conclusions: The method shows robustness and, when using only a single imaging sequence, its performance is not far from diagnosis by trained radiologists with the same constraint. Given its speed and performance, the developed methodology could serve as a first step to develop methods that could be translated into a clinical setting.

Keywords