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Multimodal brain-age prediction and cardiovascular risk: The Whitehall II MRI sub-study

Brain age is becoming a widely applied imaging-based biomarker of neural aging and potential proxy for brain integrity and health. We estimated multimodal and modality-specific brain age in the Whitehall II (WHII) MRI cohort using machine learning and imaging-derived measures of gray matter (GM) mor...

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Autores principales: de Lange, Ann-Marie G., Anatürk, Melis, Suri, Sana, Kaufmann, Tobias, Cole, James H., Griffanti, Ludovica, Zsoldos, Enikő, Jensen, Daria E.A., Filippini, Nicola, Singh-Manoux, Archana, Kivimäki, Mika, Westlye, Lars T., Ebmeier, Klaus P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Academic Press 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8121758/
https://www.ncbi.nlm.nih.gov/pubmed/32835819
http://dx.doi.org/10.1016/j.neuroimage.2020.117292
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author de Lange, Ann-Marie G.
Anatürk, Melis
Suri, Sana
Kaufmann, Tobias
Cole, James H.
Griffanti, Ludovica
Zsoldos, Enikő
Jensen, Daria E.A.
Filippini, Nicola
Singh-Manoux, Archana
Kivimäki, Mika
Westlye, Lars T.
Ebmeier, Klaus P.
author_facet de Lange, Ann-Marie G.
Anatürk, Melis
Suri, Sana
Kaufmann, Tobias
Cole, James H.
Griffanti, Ludovica
Zsoldos, Enikő
Jensen, Daria E.A.
Filippini, Nicola
Singh-Manoux, Archana
Kivimäki, Mika
Westlye, Lars T.
Ebmeier, Klaus P.
author_sort de Lange, Ann-Marie G.
collection PubMed
description Brain age is becoming a widely applied imaging-based biomarker of neural aging and potential proxy for brain integrity and health. We estimated multimodal and modality-specific brain age in the Whitehall II (WHII) MRI cohort using machine learning and imaging-derived measures of gray matter (GM) morphology, white matter microstructure (WM), and resting state functional connectivity (FC). The results showed that the prediction accuracy improved when multiple imaging modalities were included in the model (R(2) = 0.30, 95% CI [0.24, 0.36]). The modality-specific GM and WM models showed similar performance (R(2) = 0.22 [0.16, 0.27] and R(2) = 0.24 [0.18, 0.30], respectively), while the FC model showed the lowest prediction accuracy (R(2) = 0.002 [-0.005, 0.008]), indicating that the FC features were less related to chronological age compared to structural measures. Follow-up analyses showed that FC predictions were similarly low in a matched sub-sample from UK Biobank, and although FC predictions were consistently lower than GM predictions, the accuracy improved with increasing sample size and age range. Cardiovascular risk factors, including high blood pressure, alcohol intake, and stroke risk score, were each associated with brain aging in the WHII cohort. Blood pressure showed a stronger association with white matter compared to gray matter, while no differences in the associations of alcohol intake and stroke risk with these modalities were observed. In conclusion, machine-learning based brain age prediction can reduce the dimensionality of neuroimaging data to provide meaningful biomarkers of individual brain aging. However, model performance depends on study-specific characteristics including sample size and age range, which may cause discrepancies in findings across studies.
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spelling pubmed-81217582021-05-21 Multimodal brain-age prediction and cardiovascular risk: The Whitehall II MRI sub-study de Lange, Ann-Marie G. Anatürk, Melis Suri, Sana Kaufmann, Tobias Cole, James H. Griffanti, Ludovica Zsoldos, Enikő Jensen, Daria E.A. Filippini, Nicola Singh-Manoux, Archana Kivimäki, Mika Westlye, Lars T. Ebmeier, Klaus P. Neuroimage Article Brain age is becoming a widely applied imaging-based biomarker of neural aging and potential proxy for brain integrity and health. We estimated multimodal and modality-specific brain age in the Whitehall II (WHII) MRI cohort using machine learning and imaging-derived measures of gray matter (GM) morphology, white matter microstructure (WM), and resting state functional connectivity (FC). The results showed that the prediction accuracy improved when multiple imaging modalities were included in the model (R(2) = 0.30, 95% CI [0.24, 0.36]). The modality-specific GM and WM models showed similar performance (R(2) = 0.22 [0.16, 0.27] and R(2) = 0.24 [0.18, 0.30], respectively), while the FC model showed the lowest prediction accuracy (R(2) = 0.002 [-0.005, 0.008]), indicating that the FC features were less related to chronological age compared to structural measures. Follow-up analyses showed that FC predictions were similarly low in a matched sub-sample from UK Biobank, and although FC predictions were consistently lower than GM predictions, the accuracy improved with increasing sample size and age range. Cardiovascular risk factors, including high blood pressure, alcohol intake, and stroke risk score, were each associated with brain aging in the WHII cohort. Blood pressure showed a stronger association with white matter compared to gray matter, while no differences in the associations of alcohol intake and stroke risk with these modalities were observed. In conclusion, machine-learning based brain age prediction can reduce the dimensionality of neuroimaging data to provide meaningful biomarkers of individual brain aging. However, model performance depends on study-specific characteristics including sample size and age range, which may cause discrepancies in findings across studies. Academic Press 2020-11-15 /pmc/articles/PMC8121758/ /pubmed/32835819 http://dx.doi.org/10.1016/j.neuroimage.2020.117292 Text en © 2020 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Article
de Lange, Ann-Marie G.
Anatürk, Melis
Suri, Sana
Kaufmann, Tobias
Cole, James H.
Griffanti, Ludovica
Zsoldos, Enikő
Jensen, Daria E.A.
Filippini, Nicola
Singh-Manoux, Archana
Kivimäki, Mika
Westlye, Lars T.
Ebmeier, Klaus P.
Multimodal brain-age prediction and cardiovascular risk: The Whitehall II MRI sub-study
title Multimodal brain-age prediction and cardiovascular risk: The Whitehall II MRI sub-study
title_full Multimodal brain-age prediction and cardiovascular risk: The Whitehall II MRI sub-study
title_fullStr Multimodal brain-age prediction and cardiovascular risk: The Whitehall II MRI sub-study
title_full_unstemmed Multimodal brain-age prediction and cardiovascular risk: The Whitehall II MRI sub-study
title_short Multimodal brain-age prediction and cardiovascular risk: The Whitehall II MRI sub-study
title_sort multimodal brain-age prediction and cardiovascular risk: the whitehall ii mri sub-study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8121758/
https://www.ncbi.nlm.nih.gov/pubmed/32835819
http://dx.doi.org/10.1016/j.neuroimage.2020.117292
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