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Accuracy of automated amygdala MRI segmentation approaches in Huntington's disease in the IMAGE‐HD cohort

Smaller manually‐segmented amygdala volumes have been associated with poorer motor and cognitive function in Huntington's disease (HD). Manual segmentation is the gold standard in terms of accuracy; however, automated methods may be necessary in large samples. Automated segmentation accuracy ha...

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Autores principales: Alexander, Bonnie, Georgiou‐Karistianis, Nellie, Beare, Richard, Ahveninen, Lotta M., Lorenzetti, Valentina, Stout, Julie C., Glikmann‐Johnston, Yifat
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons, Inc. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7268083/
https://www.ncbi.nlm.nih.gov/pubmed/32034838
http://dx.doi.org/10.1002/hbm.24918
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author Alexander, Bonnie
Georgiou‐Karistianis, Nellie
Beare, Richard
Ahveninen, Lotta M.
Lorenzetti, Valentina
Stout, Julie C.
Glikmann‐Johnston, Yifat
author_facet Alexander, Bonnie
Georgiou‐Karistianis, Nellie
Beare, Richard
Ahveninen, Lotta M.
Lorenzetti, Valentina
Stout, Julie C.
Glikmann‐Johnston, Yifat
author_sort Alexander, Bonnie
collection PubMed
description Smaller manually‐segmented amygdala volumes have been associated with poorer motor and cognitive function in Huntington's disease (HD). Manual segmentation is the gold standard in terms of accuracy; however, automated methods may be necessary in large samples. Automated segmentation accuracy has not been determined for the amygdala in HD. We aimed to determine which of three automated approaches would most accurately segment amygdalae in HD: FreeSurfer, FIRST, and ANTS nonlinear registration followed by FIRST segmentation. T1‐weighted images for the IMAGE‐HD cohort including 35 presymptomatic HD (pre‐HD), 36 symptomatic HD (symp‐HD), and 34 healthy controls were segmented using FreeSurfer and FIRST. For the third approach, images were nonlinearly registered to an MNI template using ANTS, then segmented using FIRST. All automated methods overestimated amygdala volumes compared with manual segmentation. Dice overlap scores, indicating segmentation accuracy, were not significantly different between automated approaches. Manually segmented volumes were most statistically differentiable between groups, followed by those segmented by FreeSurfer, then ANTS/FIRST. FIRST‐segmented volumes did not differ between groups. All automated methods produced a bias where volume overestimation was more severe for smaller amygdalae. This bias was subtle for FreeSurfer, but marked for FIRST, and moderate for ANTS/FIRST. Further, FreeSurfer introduced a hemispheric bias not evident with manual segmentation, producing larger right amygdalae by 8%. To assist choice of segmentation approach, we provide sample size estimation graphs based on sample size and other factors. If automated segmentation is employed in samples of the current size, FreeSurfer may effectively distinguish amygdala volume between controls and HD.
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spelling pubmed-72680832020-06-12 Accuracy of automated amygdala MRI segmentation approaches in Huntington's disease in the IMAGE‐HD cohort Alexander, Bonnie Georgiou‐Karistianis, Nellie Beare, Richard Ahveninen, Lotta M. Lorenzetti, Valentina Stout, Julie C. Glikmann‐Johnston, Yifat Hum Brain Mapp Research Articles Smaller manually‐segmented amygdala volumes have been associated with poorer motor and cognitive function in Huntington's disease (HD). Manual segmentation is the gold standard in terms of accuracy; however, automated methods may be necessary in large samples. Automated segmentation accuracy has not been determined for the amygdala in HD. We aimed to determine which of three automated approaches would most accurately segment amygdalae in HD: FreeSurfer, FIRST, and ANTS nonlinear registration followed by FIRST segmentation. T1‐weighted images for the IMAGE‐HD cohort including 35 presymptomatic HD (pre‐HD), 36 symptomatic HD (symp‐HD), and 34 healthy controls were segmented using FreeSurfer and FIRST. For the third approach, images were nonlinearly registered to an MNI template using ANTS, then segmented using FIRST. All automated methods overestimated amygdala volumes compared with manual segmentation. Dice overlap scores, indicating segmentation accuracy, were not significantly different between automated approaches. Manually segmented volumes were most statistically differentiable between groups, followed by those segmented by FreeSurfer, then ANTS/FIRST. FIRST‐segmented volumes did not differ between groups. All automated methods produced a bias where volume overestimation was more severe for smaller amygdalae. This bias was subtle for FreeSurfer, but marked for FIRST, and moderate for ANTS/FIRST. Further, FreeSurfer introduced a hemispheric bias not evident with manual segmentation, producing larger right amygdalae by 8%. To assist choice of segmentation approach, we provide sample size estimation graphs based on sample size and other factors. If automated segmentation is employed in samples of the current size, FreeSurfer may effectively distinguish amygdala volume between controls and HD. John Wiley & Sons, Inc. 2020-02-07 /pmc/articles/PMC7268083/ /pubmed/32034838 http://dx.doi.org/10.1002/hbm.24918 Text en © 2020 The Authors. Human Brain Mapping published by Wiley Periodicals, Inc. This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Articles
Alexander, Bonnie
Georgiou‐Karistianis, Nellie
Beare, Richard
Ahveninen, Lotta M.
Lorenzetti, Valentina
Stout, Julie C.
Glikmann‐Johnston, Yifat
Accuracy of automated amygdala MRI segmentation approaches in Huntington's disease in the IMAGE‐HD cohort
title Accuracy of automated amygdala MRI segmentation approaches in Huntington's disease in the IMAGE‐HD cohort
title_full Accuracy of automated amygdala MRI segmentation approaches in Huntington's disease in the IMAGE‐HD cohort
title_fullStr Accuracy of automated amygdala MRI segmentation approaches in Huntington's disease in the IMAGE‐HD cohort
title_full_unstemmed Accuracy of automated amygdala MRI segmentation approaches in Huntington's disease in the IMAGE‐HD cohort
title_short Accuracy of automated amygdala MRI segmentation approaches in Huntington's disease in the IMAGE‐HD cohort
title_sort accuracy of automated amygdala mri segmentation approaches in huntington's disease in the image‐hd cohort
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7268083/
https://www.ncbi.nlm.nih.gov/pubmed/32034838
http://dx.doi.org/10.1002/hbm.24918
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