Scan-rescan reliability of subcortical brain volumes derived from automated segmentation.

dc.contributor.author

Morey, Rajendra A

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Selgrade, Elizabeth S

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Wagner, Henry Ryan

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Huettel, Scott A

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Wang, Lihong

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McCarthy, Gregory

dc.coverage.spatial

United States

dc.date.accessioned

2015-12-03T15:12:49Z

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2010-11

dc.description.abstract

Large-scale longitudinal studies of regional brain volume require reliable quantification using automated segmentation and labeling. However, repeated MR scanning of the same subject, even if using the same scanner and acquisition parameters, does not result in identical images due to small changes in image orientation, changes in prescan parameters, and magnetic field instability. These differences may lead to appreciable changes in estimates of volume for different structures. This study examined scan-rescan reliability of automated segmentation algorithms for measuring several subcortical regions, using both within-day and across-day comparison sessions in a group of 23 normal participants. We found that the reliability of volume measures including percent volume difference, percent volume overlap (Dice's coefficient), and intraclass correlation coefficient (ICC), varied substantially across brain regions. Low reliability was observed in some structures such as the amygdala (ICC = 0.6), with higher reliability (ICC = 0.9) for other structures such as the thalamus and caudate. Patterns of reliability across regions were similar for automated segmentation with FSL/FIRST and FreeSurfer (longitudinal stream). Reliability was associated with the volume of the structure, the ratio of volume to surface area for the structure, the magnitude of the interscan interval, and the method of segmentation. Sample size estimates for detecting changes in brain volume for a range of likely effect sizes also differed by region. Thus, longitudinal research requires a careful analysis of sample size and choice of segmentation method combined with a consideration of the brain structure(s) of interest and the magnitude of the anticipated effects.

dc.identifier

https://www.ncbi.nlm.nih.gov/pubmed/20162602

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1097-0193

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https://hdl.handle.net/10161/10970

dc.language

eng

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Wiley

dc.relation.ispartof

Hum Brain Mapp

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10.1002/hbm.20973

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Adult

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Analysis of Variance

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Brain

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Female

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Humans

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Image Processing, Computer-Assisted

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Magnetic Resonance Imaging

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Male

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Organ Size

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Reproducibility of Results

dc.title

Scan-rescan reliability of subcortical brain volumes derived from automated segmentation.

dc.type

Journal article

duke.contributor.orcid

Wagner, Henry Ryan|0000-0003-3954-6556

duke.contributor.orcid

Huettel, Scott A|0000-0002-5092-4936

pubs.author-url

https://www.ncbi.nlm.nih.gov/pubmed/20162602

pubs.begin-page

1751

pubs.end-page

1762

pubs.issue

11

pubs.organisational-group

Basic Science Departments

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Center for Child and Family Policy

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Center for Cognitive Neuroscience

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Center for Population Health & Aging

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Clinical Science Departments

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Duke

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Duke Institute for Brain Sciences

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Duke Population Research Center

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Duke Population Research Institute

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Duke Science & Society

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Duke-UNC Center for Brain Imaging and Analysis

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Initiatives

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Institutes and Centers

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Institutes and Provost's Academic Units

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Neurobiology

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Psychiatry & Behavioral Sciences

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Psychiatry & Behavioral Sciences, Geriatric Behavioral Health

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Psychiatry & Behavioral Sciences, Translational Neuroscience

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Psychology and Neuroscience

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Sanford School of Public Policy

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School of Medicine

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Trinity College of Arts & Sciences

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University Institutes and Centers

pubs.publication-status

Published

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31

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