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A statistical framework for the classification of tensor morphologies in diffusion tensor images.

A statistical framework for the classification of tensor morphologies in diffusion tensor images. Research Abstract Details 

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  • A statistical framework for the classification of tensor morphologies in diffusion tensor images. Abstract Text:

    hongtu zhuHongtu Zhu,dongrong xuDongrong Xu,amir razAmir Raz,xuejun haoXuejun Hao,heping zhangHeping Zhang,alayar kangarluAlayar Kangarlu,ravi bansalRavi Bansal,bradley s petersonBradley S Peterson,hongtu zhuHongtu Zhu,dongrong xuDongrong Xu,amir razAmir Raz,xuejun haoXuejun Hao,heping zhangHeping Zhang,alayar kangarluAlayar Kangarlu,ravi bansalRavi Bansal,bradley s petersonBradley S Peterson,

    Tractography algorithms for diffusion tensor (DT) images consecutively connect directions of maximal diffusion across neighboring DTs in order to reconstruct the 3-dimensional trajectories of white matter tracts in vivo in the human brain. The performance of these algorithms, however, is strongly influenced by the amount of noise in the images and by the presence of degenerate tensors-- i.e., tensors in which the direction of maximal diffusion is poorly defined. We propose a simple procedure for the classification of tensor morphologies that uses test statistics based on invariant measures of DTs, such as fractional anisotropy, while accounting for the effects of noise on tensor estimates. Examining DT images from seven human subjects, we demonstrate that this procedure validly classifies DTs at each voxel into standard types (nondegenerate DTs, as well as degenerate oblate, prolate or isotropic DTs), and we provide preliminary estimates for the prevalence and spatial distribution of degenerate tensors in these brains. We also show that the P values for test statistics are more sensitive tools for classifying tensor morphologies than are invariant measures of anisotropy alone.

    A statistical framework for the classification of tensor morphologies in diffusion tensor images. Publishing Authors By Initials

    h zhuH Zhu,d xuD Xu,a razA Raz,x haoX Hao,h zhangH Zhang,a kangarluA Kangarlu,r bansalR Bansal,bs petersonBS Peterson,h zhuH Zhu,d xuD Xu,a razA Raz,x haoX Hao,h zhangH Zhang,a kangarluA Kangarlu,r bansalR Bansal,bs petersonBS Peterson,

    For similar investigative techniques: epidemiologic methods: statistics as topic: sensitivity and specificity research abstracts see: investigative techniques: epidemiologic methods: statistics as topic: sensitivity and specificity research

    PUBMED ID PMID:

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    A statistical framework for the classification of tensor morphologies in diffusion tensor images. Journal Published:

    PUBLICATION TYPE: Research Support, U.S. Gov't,

    Journal: Magnetic resonance imaging

    VOLUME: 24

    Page Numbers: 569-82

    Journal Abbreviation:

    ISSN: 0730-725X

    DAY: 20

    MONTH: 03

    YEAR: 2006

    A statistical framework for the classification of tensor morphologies in diffusion tensor images. Information

    Number of References:

    LANGUAGE: eng

    NlmUniqueID: 8214883

    A statistical framework for the classification of tensor morphologies in diffusion tensor images. Keywords Mesh Terms:

    KEYWORDS: Sensitivity and Specificity

    MESH TERMS: ultrastructure

    Chemical & Substance for Abstract: A statistical framework for the classification of tensor morphologies in diffusion tensor images. Information

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    Grant and Affiliation Information for A statistical framework for the classification of tensor morphologies in diffusion tensor images.

    AFFILIATION: MRI Unit, Department of Psychiatry, Columbia University Medical Center, USA. hz2114@columbia.edu

    Country: United States

    United States Research PublicationUnited States Research Publication

    AGENCY: United States NIMH

    GRANT: MH068318

    ACRONYM: MH

    MEDLINETA: Magn Reson Imaging

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    ACCESSION NUMBER:

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