MRIQC: Advancing the automatic prediction of image quality in MRI from unseen sites.

Quality control of MRI is essential for excluding problematic acquisitions and avoiding bias in subsequent image processing and analysis. Visual inspection is subjective and impractical for large scale datasets. Although automated quality assessments have been demonstrated on single-site datasets, i...

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Main Authors: Oscar Esteban, Daniel Birman, Marie Schaer, Oluwasanmi O Koyejo, Russell A Poldrack, Krzysztof J Gorgolewski
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5612458?pdf=render
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spelling doaj-4bdbc1d9672a4fd8a90807b82e7499122020-11-25T02:47:07ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01129e018466110.1371/journal.pone.0184661MRIQC: Advancing the automatic prediction of image quality in MRI from unseen sites.Oscar EstebanDaniel BirmanMarie SchaerOluwasanmi O KoyejoRussell A PoldrackKrzysztof J GorgolewskiQuality control of MRI is essential for excluding problematic acquisitions and avoiding bias in subsequent image processing and analysis. Visual inspection is subjective and impractical for large scale datasets. Although automated quality assessments have been demonstrated on single-site datasets, it is unclear that solutions can generalize to unseen data acquired at new sites. Here, we introduce the MRI Quality Control tool (MRIQC), a tool for extracting quality measures and fitting a binary (accept/exclude) classifier. Our tool can be run both locally and as a free online service via the OpenNeuro.org portal. The classifier is trained on a publicly available, multi-site dataset (17 sites, N = 1102). We perform model selection evaluating different normalization and feature exclusion approaches aimed at maximizing across-site generalization and estimate an accuracy of 76%±13% on new sites, using leave-one-site-out cross-validation. We confirm that result on a held-out dataset (2 sites, N = 265) also obtaining a 76% accuracy. Even though the performance of the trained classifier is statistically above chance, we show that it is susceptible to site effects and unable to account for artifacts specific to new sites. MRIQC performs with high accuracy in intra-site prediction, but performance on unseen sites leaves space for improvement which might require more labeled data and new approaches to the between-site variability. Overcoming these limitations is crucial for a more objective quality assessment of neuroimaging data, and to enable the analysis of extremely large and multi-site samples.http://europepmc.org/articles/PMC5612458?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Oscar Esteban
Daniel Birman
Marie Schaer
Oluwasanmi O Koyejo
Russell A Poldrack
Krzysztof J Gorgolewski
spellingShingle Oscar Esteban
Daniel Birman
Marie Schaer
Oluwasanmi O Koyejo
Russell A Poldrack
Krzysztof J Gorgolewski
MRIQC: Advancing the automatic prediction of image quality in MRI from unseen sites.
PLoS ONE
author_facet Oscar Esteban
Daniel Birman
Marie Schaer
Oluwasanmi O Koyejo
Russell A Poldrack
Krzysztof J Gorgolewski
author_sort Oscar Esteban
title MRIQC: Advancing the automatic prediction of image quality in MRI from unseen sites.
title_short MRIQC: Advancing the automatic prediction of image quality in MRI from unseen sites.
title_full MRIQC: Advancing the automatic prediction of image quality in MRI from unseen sites.
title_fullStr MRIQC: Advancing the automatic prediction of image quality in MRI from unseen sites.
title_full_unstemmed MRIQC: Advancing the automatic prediction of image quality in MRI from unseen sites.
title_sort mriqc: advancing the automatic prediction of image quality in mri from unseen sites.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Quality control of MRI is essential for excluding problematic acquisitions and avoiding bias in subsequent image processing and analysis. Visual inspection is subjective and impractical for large scale datasets. Although automated quality assessments have been demonstrated on single-site datasets, it is unclear that solutions can generalize to unseen data acquired at new sites. Here, we introduce the MRI Quality Control tool (MRIQC), a tool for extracting quality measures and fitting a binary (accept/exclude) classifier. Our tool can be run both locally and as a free online service via the OpenNeuro.org portal. The classifier is trained on a publicly available, multi-site dataset (17 sites, N = 1102). We perform model selection evaluating different normalization and feature exclusion approaches aimed at maximizing across-site generalization and estimate an accuracy of 76%±13% on new sites, using leave-one-site-out cross-validation. We confirm that result on a held-out dataset (2 sites, N = 265) also obtaining a 76% accuracy. Even though the performance of the trained classifier is statistically above chance, we show that it is susceptible to site effects and unable to account for artifacts specific to new sites. MRIQC performs with high accuracy in intra-site prediction, but performance on unseen sites leaves space for improvement which might require more labeled data and new approaches to the between-site variability. Overcoming these limitations is crucial for a more objective quality assessment of neuroimaging data, and to enable the analysis of extremely large and multi-site samples.
url http://europepmc.org/articles/PMC5612458?pdf=render
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