Identifying predictors of within-person variance in MRI-based brain volume estimates

Standard

Identifying predictors of within-person variance in MRI-based brain volume estimates. / Karch, Julian D; Filevich, Elisa; Wenger, Elisabeth; Lisofsky, Nina; Becker, Maxi; Butler, Oisin; Mårtensson, Johan; Lindenberger, Ulman; Brandmaier, Andreas M; Kühn, Simone.

In: NEUROIMAGE, Vol. 200, 15.10.2019, p. 575-589.

Research output: SCORING: Contribution to journalSCORING: Journal articleResearchpeer-review

Harvard

Karch, JD, Filevich, E, Wenger, E, Lisofsky, N, Becker, M, Butler, O, Mårtensson, J, Lindenberger, U, Brandmaier, AM & Kühn, S 2019, 'Identifying predictors of within-person variance in MRI-based brain volume estimates', NEUROIMAGE, vol. 200, pp. 575-589. https://doi.org/10.1016/j.neuroimage.2019.05.030

APA

Karch, J. D., Filevich, E., Wenger, E., Lisofsky, N., Becker, M., Butler, O., Mårtensson, J., Lindenberger, U., Brandmaier, A. M., & Kühn, S. (2019). Identifying predictors of within-person variance in MRI-based brain volume estimates. NEUROIMAGE, 200, 575-589. https://doi.org/10.1016/j.neuroimage.2019.05.030

Vancouver

Karch JD, Filevich E, Wenger E, Lisofsky N, Becker M, Butler O et al. Identifying predictors of within-person variance in MRI-based brain volume estimates. NEUROIMAGE. 2019 Oct 15;200:575-589. https://doi.org/10.1016/j.neuroimage.2019.05.030

Bibtex

@article{f3c8a7cda0ad4b2aa3b23b85a3b82585,
title = "Identifying predictors of within-person variance in MRI-based brain volume estimates",
abstract = "Adequate reliability of measurement is a precondition for investigating individual differences and age-related changes in brain structure. One approach to improve reliability is to identify and control for variables that are predictive of within-person variance. To this end, we applied both classical statistical methods and machine-learning-inspired approaches to structural magnetic resonance imaging (sMRI) data of six participants aged 24-31 years gathered at 40-50 occasions distributed over 6-8 months from the Day2day study. We explored the within-person associations between 21 variables covering physiological, affective, social, and environmental factors and global measures of brain volume estimated by VBM8 and FreeSurfer. Time since the first scan was reliably associated with Freesurfer estimates of grey matter volume and total cortex volume, in line with a rate of annual brain volume shrinkage of about 1 percent. For the same two structural measures, time of day also emerged as a reliable predictor with an estimated diurnal volume decrease of, again, about 1 percent. Furthermore, we found weak predictive evidence for the number of steps taken on the previous day and testosterone levels. The results suggest a need to control for time-of-day effects in sMRI research. In particular, we recommend that researchers interested in assessing longitudinal change in the context of intervention studies or longitudinal panels make sure that, at each measurement occasion, (a) a given participant is measured at the same time of day; (b) all participants are measured at about the same time of day. Furthermore, the potential effects of physical activity, including moderate amounts of aerobic exercise, and testosterone levels on MRI-based measures of brain structure deserve further investigation.",
author = "Karch, {Julian D} and Elisa Filevich and Elisabeth Wenger and Nina Lisofsky and Maxi Becker and Oisin Butler and Johan M{\aa}rtensson and Ulman Lindenberger and Brandmaier, {Andreas M} and Simone K{\"u}hn",
note = "Copyright {\textcopyright} 2019 The Authors. Published by Elsevier Inc. All rights reserved.",
year = "2019",
month = oct,
day = "15",
doi = "10.1016/j.neuroimage.2019.05.030",
language = "English",
volume = "200",
pages = "575--589",
journal = "NEUROIMAGE",
issn = "1053-8119",
publisher = "Academic Press",

}

RIS

TY - JOUR

T1 - Identifying predictors of within-person variance in MRI-based brain volume estimates

AU - Karch, Julian D

AU - Filevich, Elisa

AU - Wenger, Elisabeth

AU - Lisofsky, Nina

AU - Becker, Maxi

AU - Butler, Oisin

AU - Mårtensson, Johan

AU - Lindenberger, Ulman

AU - Brandmaier, Andreas M

AU - Kühn, Simone

N1 - Copyright © 2019 The Authors. Published by Elsevier Inc. All rights reserved.

PY - 2019/10/15

Y1 - 2019/10/15

N2 - Adequate reliability of measurement is a precondition for investigating individual differences and age-related changes in brain structure. One approach to improve reliability is to identify and control for variables that are predictive of within-person variance. To this end, we applied both classical statistical methods and machine-learning-inspired approaches to structural magnetic resonance imaging (sMRI) data of six participants aged 24-31 years gathered at 40-50 occasions distributed over 6-8 months from the Day2day study. We explored the within-person associations between 21 variables covering physiological, affective, social, and environmental factors and global measures of brain volume estimated by VBM8 and FreeSurfer. Time since the first scan was reliably associated with Freesurfer estimates of grey matter volume and total cortex volume, in line with a rate of annual brain volume shrinkage of about 1 percent. For the same two structural measures, time of day also emerged as a reliable predictor with an estimated diurnal volume decrease of, again, about 1 percent. Furthermore, we found weak predictive evidence for the number of steps taken on the previous day and testosterone levels. The results suggest a need to control for time-of-day effects in sMRI research. In particular, we recommend that researchers interested in assessing longitudinal change in the context of intervention studies or longitudinal panels make sure that, at each measurement occasion, (a) a given participant is measured at the same time of day; (b) all participants are measured at about the same time of day. Furthermore, the potential effects of physical activity, including moderate amounts of aerobic exercise, and testosterone levels on MRI-based measures of brain structure deserve further investigation.

AB - Adequate reliability of measurement is a precondition for investigating individual differences and age-related changes in brain structure. One approach to improve reliability is to identify and control for variables that are predictive of within-person variance. To this end, we applied both classical statistical methods and machine-learning-inspired approaches to structural magnetic resonance imaging (sMRI) data of six participants aged 24-31 years gathered at 40-50 occasions distributed over 6-8 months from the Day2day study. We explored the within-person associations between 21 variables covering physiological, affective, social, and environmental factors and global measures of brain volume estimated by VBM8 and FreeSurfer. Time since the first scan was reliably associated with Freesurfer estimates of grey matter volume and total cortex volume, in line with a rate of annual brain volume shrinkage of about 1 percent. For the same two structural measures, time of day also emerged as a reliable predictor with an estimated diurnal volume decrease of, again, about 1 percent. Furthermore, we found weak predictive evidence for the number of steps taken on the previous day and testosterone levels. The results suggest a need to control for time-of-day effects in sMRI research. In particular, we recommend that researchers interested in assessing longitudinal change in the context of intervention studies or longitudinal panels make sure that, at each measurement occasion, (a) a given participant is measured at the same time of day; (b) all participants are measured at about the same time of day. Furthermore, the potential effects of physical activity, including moderate amounts of aerobic exercise, and testosterone levels on MRI-based measures of brain structure deserve further investigation.

U2 - 10.1016/j.neuroimage.2019.05.030

DO - 10.1016/j.neuroimage.2019.05.030

M3 - SCORING: Journal article

C2 - 31108215

VL - 200

SP - 575

EP - 589

JO - NEUROIMAGE

JF - NEUROIMAGE

SN - 1053-8119

ER -