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2017 journal original-research PLoS Comput Biol

Mindboggling morphometry of human brains

Klein A, Ghosh SS, Bao FS, Giard J, Häme Y, Stavsky E, Lee N, Rossa B, Reuter M, Chaibub Neto E, Keshavan A

Identifiers and access

DOI
10.1371/journal.pcbi.1005350
PubMed
28231282
PMC
PMC5322885
PDF
Open-access copy →
Cited by
796

Key findings

Mindboggle is an open-source morphometry platform that, beyond volume and cortical thickness, computes a range of primarily surface-based shape measures — curvature, depth, Laplace-Beltrami spectra, Zernike moments and more — and is evaluated on the largest publicly available manually labeled brain set.

Abstract

Source: pubmed

Mindboggle (http://mindboggle.info) is an open source brain morphometry platform that takes in preprocessed T1-weighted MRI data and outputs volume, surface, and tabular data containing label, feature, and shape information for further analysis. In this article, we document the software and demonstrate its use in studies of shape variation in healthy and diseased humans. The number of different shape measures and the size of the populations make this the largest and most detailed shape analysis of human brains ever conducted. Brain image morphometry shows great potential for providing much-needed biological markers for diagnosing, tracking, and predicting progression of mental health disorders. Very few software algorithms provide more than measures of volume and cortical thickness, while more subtle shape measures may provide more sensitive and specific biomarkers. Mindboggle computes a variety of (primarily surface-based) shapes: area, volume, thickness, curvature, depth, Laplace-Beltrami spectra, Zernike moments, etc. We evaluate Mindboggle's algorithms using the largest set of manually labeled, publicly available brain images in the world and compare them against state-of-the-art algorithms where they exist. All data, code, and results of these evaluations are publicly available.

Topics

  • neuroimaging-methods
  • reproducibility-tooling

Preprint precursors

Earlier versions of this work that have been superseded by the published record above.

Lab authors

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