Cancers (Apr 2022)

Convolutional Neural Networks to Detect Vestibular Schwannomas on Single MRI Slices: A Feasibility Study

  • Carole Koechli,
  • Erwin Vu,
  • Philipp Sager,
  • Lukas Näf,
  • Tim Fischer,
  • Paul M. Putora,
  • Felix Ehret,
  • Christoph Fürweger,
  • Christina Schröder,
  • Robert Förster,
  • Daniel R. Zwahlen,
  • Alexander Muacevic,
  • Paul Windisch

DOI
https://doi.org/10.3390/cancers14092069
Journal volume & issue
Vol. 14, no. 9
p. 2069

Abstract

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In this study. we aimed to detect vestibular schwannomas (VSs) in individual magnetic resonance imaging (MRI) slices by using a 2D-CNN. A pretrained CNN (ResNet-34) was retrained and internally validated using contrast-enhanced T1-weighted (T1c) MRI slices from one institution. In a second step, the model was externally validated using T1c- and T1-weighted (T1) slices from a different institution. As a substitute, bisected slices were used with and without tumors originating from whole transversal slices that contained part of the unilateral VS. The model predictions were assessed based on the categorical accuracy and confusion matrices. A total of 539, 94, and 74 patients were included for training, internal validation, and external T1c validation, respectively. This resulted in an accuracy of 0.949 (95% CI 0.935–0.963) for the internal validation and 0.912 (95% CI 0.866–0.958) for the external T1c validation. We suggest that 2D-CNNs might be a promising alternative to 2.5-/3D-CNNs for certain tasks thanks to the decreased demand for computational power and the fact that there is no need for segmentations. However, further research is needed on the difference between 2D-CNNs and more complex architectures.

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