NeuroImage (Jan 2021)

Classifyber, a robust streamline-based linear classifier for white matter bundle segmentation

  • Giulia Bertò,
  • Daniel Bullock,
  • Pietro Astolfi,
  • Soichi Hayashi,
  • Luca Zigiotto,
  • Luciano Annicchiarico,
  • Francesco Corsini,
  • Alessandro De Benedictis,
  • Silvio Sarubbo,
  • Franco Pestilli,
  • Paolo Avesani,
  • Emanuele Olivetti

Journal volume & issue
Vol. 224
p. 117402

Abstract

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Virtual delineation of white matter bundles in the human brain is of paramount importance for multiple applications, such as pre-surgical planning and connectomics. A substantial body of literature is related to methods that automatically segment bundles from diffusion Magnetic Resonance Imaging (dMRI) data indirectly, by exploiting either the idea of connectivity between regions or the geometry of fiber paths obtained with tractography techniques, or, directly, through the information in volumetric data. Despite the remarkable improvement in automatic segmentation methods over the years, their segmentation quality is not yet satisfactory, especially when dealing with datasets with very diverse characteristics, such as different tracking methods, bundle sizes or data quality. In this work, we propose a novel, supervised streamline-based segmentation method, called Classifyber, which combines information from atlases, connectivity patterns, and the geometry of fiber paths into a simple linear model. With a wide range of experiments on multiple datasets that span from research to clinical domains, we show that Classifyber substantially improves the quality of segmentation as compared to other state-of-the-art methods and, more importantly, that it is robust across very diverse settings. We provide an implementation of the proposed method as open source code, as well as web service.

Keywords