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MRI-derived brain age as a biomarker of ageing in rats: validation using a healthy lifestyle intervention

Irene Brusini, Eilidh MacNicol, Eugene Kim, Örjan Smedby, Chunliang Wang, Eric Westman, Mattia Veronese, Federico Turkheimer, Diana Cash

2021Neurobiology of Aging18 citationsDOIOpen Access PDF

Abstract

The difference between brain age predicted from MRI and chronological age (the so-called BrainAGE) has been proposed as an ageing biomarker. We analyse its cross-species potential by testing it on rats undergoing an ageing modulation intervention. Our rat brain age prediction model combined Gaussian process regression with a classifier and achieved a mean absolute error (MAE) of 4.87 weeks using cross-validation on a longitudinal dataset of 31 normal ageing rats. It was then tested on two groups of 24 rats (MAE = 9.89 weeks, correlation coefficient = 0.86): controls vs. a group under long-term environmental enrichment and dietary restriction (EEDR). Using a linear mixed-effects model, BrainAGE was found to increase more slowly with chronological age in EEDR rats (p=0.015 for the interaction term). Cox regression showed that older BrainAGE at 5 months was associated with higher mortality risk (p=0.03). Our findings suggest that lifestyle-related prevention approaches may help to slow down brain ageing in rodents and the potential of BrainAGE as a predictor of age-related health outcomes.

Topics & Concepts

AgeingHealthy ageingMedicineHealthy agingBiomarkerInternal medicineLinear regressionBrain agingBiological ageCorrelationAnalysis of varianceEndocrinologyGerontologyBiologyMathematicsBiochemistryStatisticsGeometryDiseaseGenetics, Aging, and Longevity in Model OrganismsFunctional Brain Connectivity StudiesAdipose Tissue and Metabolism
MRI-derived brain age as a biomarker of ageing in rats: validation using a healthy lifestyle intervention | Litcius