Multiple b-values improve discrimination of cortical gray matter regions using diffusion MRI: an experimental validation with a data-driven approach

MAGMA. 2021 Oct;34(5):677-687. doi: 10.1007/s10334-021-00914-3. Epub 2021 Mar 12.

Abstract

Objective: To investigate whether varied or repeated b-values provide better diffusion MRI data for discriminating cortical areas with a data-driven approach.

Methods: Data were acquired from three volunteers at 1.5T with b-values of 800, 1400, 2000 s/mm2 along 64 diffusion-encoding directions. The diffusion signal was sampled from gray matter in seven regions of interest (ROIs). Rotational invariants of the local diffusion profile were extracted as features that characterize local tissue properties. Random forest classification experiments assessed whether classification accuracy improved when data with multiple b-values were used over repeated acquisition of the same (1400 s/mm2) b-value to compare all possible pairs of the seven ROIs. Three data sets from the Human Connectome Project were subjected to similar processing and analysis pipelines in eight ROIs.

Results: Three different b-values showed an average improvement in correct classification rates of 5.6% and 4.6%, respectively, in the local and HCP data over repeated measurements of the same b-value. The improvement in correct classification rate reached as high as 16% for individual binary classification experiments between two ROIs. Often using only two of the available three b-values were adequate to make such an improvement in classification rates.

Conclusion: Acquisitions with varying b-values are more suitable for discriminating cortical areas.

Keywords: Brodmann map; Cortical parcellation; Diffusion MRI; In-vivo histology; Microstructural imaging.

MeSH terms

  • Brain
  • Connectome*
  • Diffusion Magnetic Resonance Imaging
  • Gray Matter* / diagnostic imaging
  • Humans
  • Image Processing, Computer-Assisted