4.5 Review

Advances in MRI-based computational neuroanatomy: from morphometry to in-vivo histology

Journal

CURRENT OPINION IN NEUROLOGY
Volume 28, Issue 4, Pages 313-322

Publisher

LIPPINCOTT WILLIAMS & WILKINS
DOI: 10.1097/WCO.0000000000000222

Keywords

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Funding

  1. European Research Council under the European Union [616905]
  2. Wings for Life, UCL SLMS Captial Equipment
  3. Medical Research Council (MRC DPFS)
  4. European Commission [602186]
  5. Deutsche Forschungsgemeinschaft (DFG) [MO 2397/1-1]
  6. Wellcome Trust [0915/Z/10/Z]
  7. Roger de Spoelberg Foundation
  8. Partridge Foundation

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Purpose of review Current computational neuroanatomy based on MRI focuses on morphological measures of the brain. We present recent methodological developments in quantitative MRI (qMRI) that provide standardized measures of the brain, which go beyond morphology. We show how biophysical modelling of qMRI data can provide quantitative histological measures of brain tissue, leading to the emerging field of in-vivo histology using MRI (hMRI). Recent findings qMRI has greatly improved the sensitivity and specificity of computational neuroanatomy studies. qMRI metrics can also be used as direct indicators of the mechanisms driving observed morphological findings. For hMRI, biophysical models of the MRI signal are being developed to directly access histological information such as cortical myelination, axonal diameters or axonal g-ratio in white matter. Emerging results indicate promising prospects for the combined study of brain microstructure and function. Non-invasive brain tissue characterization using qMRI or hMRI has significant implications for both research and clinics. Both approaches improve comparability across sites and time points, facilitating multicentre/longitudinal studies and standardized diagnostics. hMRI is expected to shed new light on the relationship between brain microstructure, function and behaviour, both in health and disease, and become an indispensable addition to computational neuroanatomy.

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