Beyond crossing fibers: Bootstrap probabilistic tractography using complex subvoxel fiber geometries

Diffusion magnetic resonance imaging fiber tractography is a powerful tool for investigating human white matter connectivity in vivo. However, it is prone to false positive and false negative results, making interpretation of the tractography result difficult. Optimal tractography must begin with...

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Main Authors: Jennifer S.W. Campbell, Parya eMomayyezSiahkal, Peter eSavadjiev, Kaleem eSiddqi, Ilana R. Leppert, G. Bruce ePike
Format: Article
Language:English
Published: Frontiers Media S.A. 2014-10-01
Series:Frontiers in Neurology
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fneur.2014.00216/full
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spelling doaj-97e622c64e9844e383fe25622594988c2020-11-24T20:40:29ZengFrontiers Media S.A.Frontiers in Neurology1664-22952014-10-01510.3389/fneur.2014.00216104831Beyond crossing fibers: Bootstrap probabilistic tractography using complex subvoxel fiber geometriesJennifer S.W. Campbell0Parya eMomayyezSiahkal1Peter eSavadjiev2Kaleem eSiddqi3Ilana R. Leppert4G. Bruce ePike5McGill UniversityMcGill UniversityHarvard Medical SchoolMcGill UniversityMcGill UniversityUniversity of CalgaryDiffusion magnetic resonance imaging fiber tractography is a powerful tool for investigating human white matter connectivity in vivo. However, it is prone to false positive and false negative results, making interpretation of the tractography result difficult. Optimal tractography must begin with an accurate description of the subvoxel white matter fiber structure, include quantification of the uncertainty in the fiber directions obtained, and quantify the confidence in each reconstructed fiber tract. This paper presents a novel and comprehensive pipeline for fiber tractography that meets the above requirements. The subvoxel fiber geometry is described in detail using a technique that allows not only for straight, crossing fibers, but for fibers that curve and splay. This technique is repeatedly performed within a residual bootstrap statistical process in order to efficiently quantify the uncertainty in the subvoxel geometries obtained. A robust connectivity index is defined to quantify the confidence in the reconstructed connections. The tractography pipeline is demonstrated in the human brain.http://journal.frontiersin.org/Journal/10.3389/fneur.2014.00216/fulldiffusion MRIfiber dispersionfiber orientation distribution functionhigh angular resolution diffusion imagingcurve inference
collection DOAJ
language English
format Article
sources DOAJ
author Jennifer S.W. Campbell
Parya eMomayyezSiahkal
Peter eSavadjiev
Kaleem eSiddqi
Ilana R. Leppert
G. Bruce ePike
spellingShingle Jennifer S.W. Campbell
Parya eMomayyezSiahkal
Peter eSavadjiev
Kaleem eSiddqi
Ilana R. Leppert
G. Bruce ePike
Beyond crossing fibers: Bootstrap probabilistic tractography using complex subvoxel fiber geometries
Frontiers in Neurology
diffusion MRI
fiber dispersion
fiber orientation distribution function
high angular resolution diffusion imaging
curve inference
author_facet Jennifer S.W. Campbell
Parya eMomayyezSiahkal
Peter eSavadjiev
Kaleem eSiddqi
Ilana R. Leppert
G. Bruce ePike
author_sort Jennifer S.W. Campbell
title Beyond crossing fibers: Bootstrap probabilistic tractography using complex subvoxel fiber geometries
title_short Beyond crossing fibers: Bootstrap probabilistic tractography using complex subvoxel fiber geometries
title_full Beyond crossing fibers: Bootstrap probabilistic tractography using complex subvoxel fiber geometries
title_fullStr Beyond crossing fibers: Bootstrap probabilistic tractography using complex subvoxel fiber geometries
title_full_unstemmed Beyond crossing fibers: Bootstrap probabilistic tractography using complex subvoxel fiber geometries
title_sort beyond crossing fibers: bootstrap probabilistic tractography using complex subvoxel fiber geometries
publisher Frontiers Media S.A.
series Frontiers in Neurology
issn 1664-2295
publishDate 2014-10-01
description Diffusion magnetic resonance imaging fiber tractography is a powerful tool for investigating human white matter connectivity in vivo. However, it is prone to false positive and false negative results, making interpretation of the tractography result difficult. Optimal tractography must begin with an accurate description of the subvoxel white matter fiber structure, include quantification of the uncertainty in the fiber directions obtained, and quantify the confidence in each reconstructed fiber tract. This paper presents a novel and comprehensive pipeline for fiber tractography that meets the above requirements. The subvoxel fiber geometry is described in detail using a technique that allows not only for straight, crossing fibers, but for fibers that curve and splay. This technique is repeatedly performed within a residual bootstrap statistical process in order to efficiently quantify the uncertainty in the subvoxel geometries obtained. A robust connectivity index is defined to quantify the confidence in the reconstructed connections. The tractography pipeline is demonstrated in the human brain.
topic diffusion MRI
fiber dispersion
fiber orientation distribution function
high angular resolution diffusion imaging
curve inference
url http://journal.frontiersin.org/Journal/10.3389/fneur.2014.00216/full
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