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Published in: Journal of Neurology 3/2017

01-03-2017 | Original Communication

Global and regional annual brain volume loss rates in physiological aging

Authors: Sven Schippling, Ann-Christin Ostwaldt, Per Suppa, Lothar Spies, Praveena Manogaran, Carola Gocke, Hans-Jürgen Huppertz, Roland Opfer

Published in: Journal of Neurology | Issue 3/2017

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Abstract

The objective is to estimate average global and regional percentage brain volume loss per year (BVL/year) of the physiologically ageing brain. Two independent, cross-sectional single scanner cohorts of healthy subjects were included. The first cohort (n = 248) was acquired at the Medical Prevention Center (MPCH) in Hamburg, Germany. The second cohort (n = 316) was taken from the Open Access Series of Imaging Studies (OASIS). Brain parenchyma (BP), grey matter (GM), white matter (WM), corpus callosum (CC), and thalamus volumes were calculated. A non-parametric technique was applied to fit the resulting age–volume data. For each age, the BVL/year was derived from the age–volume curves. The resulting BVL/year curves were compared between the two cohorts. For the MPCH cohort, the BVL/year curve of the BP was an increasing function starting from 0.20% at the age of 35 years increasing to 0.52% at 70 years (corresponding values for GM ranged from 0.32 to 0.55%, WM from 0.02 to 0.47%, CC from 0.07 to 0.48%, and thalamus from 0.25 to 0.54%). Mean absolute difference between BVL/year trajectories across the age range of 35–70 years was 0.02% for BP, 0.04% for GM, 0.04% for WM, 0.11% for CC, and 0.02% for the thalamus. Physiological BVL/year rates were remarkably consistent between the two cohorts and independent from the scanner applied. Average BVL/year was clearly age and compartment dependent. These results need to be taken into account when defining cut-off values for pathological annual brain volume loss in disease models, such as multiple sclerosis.
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Metadata
Title
Global and regional annual brain volume loss rates in physiological aging
Authors
Sven Schippling
Ann-Christin Ostwaldt
Per Suppa
Lothar Spies
Praveena Manogaran
Carola Gocke
Hans-Jürgen Huppertz
Roland Opfer
Publication date
01-03-2017
Publisher
Springer Berlin Heidelberg
Published in
Journal of Neurology / Issue 3/2017
Print ISSN: 0340-5354
Electronic ISSN: 1432-1459
DOI
https://doi.org/10.1007/s00415-016-8374-y

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