The value of arterial spin labelling perfusion MRI in brain age prediction

Author:

Dijsselhof Mathijs B. J.12ORCID,Barboure Michelle12ORCID,Stritt Michael3,Nordhøy Wibeke4,Wink Alle Meije12ORCID,Beck Dani567ORCID,Westlye Lars T.568ORCID,Cole James H.910ORCID,Barkhof Frederik1211ORCID,Mutsaerts Henk J. M. M.12ORCID,Petr Jan1212ORCID

Affiliation:

1. Department of Radiology and Nuclear Medicine Amsterdam University Medical Centers, Vrije Universiteit Amsterdam The Netherlands

2. Amsterdam Neuroscience Brain Imaging Amsterdam The Netherlands

3. Mediri GmbH Heidelberg Germany

4. Department of Physics and Computational Radiology, Division of Radiology and Nuclear Medicine Oslo University Hospital Oslo Norway

5. Norwegian Centre for Mental Disorders Research (NORMENT) Oslo University Hospital Oslo Norway

6. Department of Psychology University of Oslo Oslo Norway

7. Department of Psychiatric Research Diakonhjemmet Hospital Oslo Norway

8. KG Jebsen Centre for Neurodevelopmental Disorders University of Oslo Oslo Norway

9. Dementia Research Centre Queen Square Institute of Neurology, UCL London UK

10. Centre for Medical Imaging Computing Computer Science, UCL London UK

11. Queen Square Institute of Neurology and Centre for Medical Image Computing UCL London UK

12. Helmholtz‐Zentrum Dresden‐Rossendorf Institute of Radiopharmaceutical Cancer Research Dresden Germany

Abstract

AbstractCurrent structural MRI‐based brain age estimates and their difference from chronological age—the brain age gap (BAG)—are limited to late‐stage pathological brain‐tissue changes. The addition of physiological MRI features may detect early‐stage pathological brain alterations and improve brain age prediction. This study investigated the optimal combination of structural and physiological arterial spin labelling (ASL) image features and algorithms. Healthy participants (n = 341, age 59.7 ± 14.8 years) were scanned at baseline and after 1.7 ± 0.5 years follow‐up (n = 248, mean age 62.4 ± 13.3 years). From 3 T MRI, structural (T1w and FLAIR) volumetric ROI and physiological (ASL) cerebral blood flow (CBF) and spatial coefficient of variation ROI features were constructed. Multiple combinations of features and machine learning algorithms were evaluated using the Mean Absolute Error (MAE). From the best model, longitudinal BAG repeatability and feature importance were assessed. The ElasticNetCV algorithm using T1w + FLAIR+ASL performed best (MAE = 5.0 ± 0.3 years), and better compared with using T1w + FLAIR (MAE = 6.0 ± 0.4 years, p < .01). The three most important features were, in descending order, GM CBF, GM/ICV, and WM CBF. Average baseline and follow‐up BAGs were similar (−1.5 ± 6.3 and − 1.1 ± 6.4 years respectively, ICC = 0.85, 95% CI: 0.8–0.9, p = .16). The addition of ASL features to structural brain age, combined with the ElasticNetCV algorithm, improved brain age prediction the most, and performed best in a cross‐sectional and repeatability comparison. These findings encourage future studies to explore the value of ASL in brain age in various pathologies.

Funder

Rijksdienst voor Ondernemend Nederland

Publisher

Wiley

Subject

Neurology (clinical),Neurology,Radiology, Nuclear Medicine and imaging,Radiological and Ultrasound Technology,Anatomy

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