4.7 Article

White matter microstructure across the adult lifespan: A mixed longitudinal and cross-sectional study using advanced diffusion models and brain-age prediction

Journal

NEUROIMAGE
Volume 224, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2020.117441

Keywords

Ageing; White matter; Multi-shell; Longitudinal; Diffusion; Brain age

Funding

  1. Research Council of Norway [223273, 249795, 248238, 286838]
  2. South-Eastern Norway Regional Health Authority [2014097, 2015044, 2015073, 2016083, 2018037, 2018076]
  3. Norwegian ExtraFoundation for Health and Rehabilitation [2015/FO5146]
  4. KG Jebsen Stiftelsen
  5. ERA-Net Cofund through the ERA PerMed project 'IMPLEMENT'
  6. European Research Council under the European Union's Horizon 2020 research and Innovation program (ERC StG) [802998]

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The study reveals that advanced diffusion models provide sensitive measures of age-related microstructural changes in white matter, complementing and extending the conventional DTI contribution. Through linear mixed effects models and machine learning, the research assessed age trajectories in healthy individuals and compared the age prediction accuracy of different diffusion models, showing that advanced models performed similarly to conventional DTI.
The macro- and microstructural architecture of human brain white matter undergoes substantial alterations throughout development and ageing. Most of our understanding of the spatial and temporal characteristics of these lifespan adaptations come from magnetic resonance imaging (MRI), including diffusion MRI (dMRI), which enables visualisation and quantification of brain white matter with unprecedented sensitivity and detail. However, with some notable exceptions, previous studies have relied on cross-sectional designs, limited age ranges, and diffusion tensor imaging (DTI) based on conventional single-shell dMRI. In this mixed cross-sectional and longitudinal study (mean interval: 15.2 months) including 702 multi-shell dMRI datasets, we combined complementary dMRI models to investigate age trajectories in healthy individuals aged 18 to 94 years (57.12% women). Using linear mixed effect models and machine learning based brain age prediction, we assessed the age-dependence of diffusion metrics, and compared the age prediction accuracy of six different diffusion models, including diffusion tensor (DTI) and kurtosis imaging (DKI), neurite orientation dispersion and density imaging (NODDI), restriction spectrum imaging (RSI), spherical mean technique multi-compartment (SMT-mc), and white matter tract integrity (WMTI). The results showed that the age slopes for conventional DTI metrics (fractional anisotropy [FA], mean diffusivity [MD], axial diffusivity [AD], radial diffusivity [RD]) were largely consistent with previous research, and that the highest performing advanced dMRI models showed comparable age prediction accuracy to conventional DTI. Linear mixed effects models and Wilk's theorem analysis showed that the 'FA fine' metric of the RSI model and 'orientation dispersion' (OD) metric of the NODDI model showed the highest sensitivity to age. The results indicate that advanced diffusion models (DKI, NODDI, RSI, SMT mc, WMTI) provide sensitive measures of age-related microstructural changes of white matter in the brain that complement and extend the contribution of conventional DTI.

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