Spatial regression analysis of serial DTI for subject-specific longitudinal changes of neurodegenerative disease

Quantitative measurement of localized longitudinal changes in brain abnormalities at an individual level may offer critical information for disease diagnosis and treatment. The voxel-wise permutation-based method SPREAD/iSPREAD, which combines resampling and spatial regression of neighboring voxels,...

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Main Authors: Bilan Liu, Xing Qiu, Tong Zhu, Wei Tian, Rui Hu, Sven Ekholm, Giovanni Schifitto, Jianhui Zhong
Format: Article
Language:English
Published: Elsevier 2016-01-01
Series:NeuroImage: Clinical
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2213158216300316
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spelling doaj-4772ad6ab0e34b23803f32f1efaa85032020-11-24T22:22:19ZengElsevierNeuroImage: Clinical2213-15822016-01-0111C29130110.1016/j.nicl.2016.02.009Spatial regression analysis of serial DTI for subject-specific longitudinal changes of neurodegenerative diseaseBilan Liu0Xing Qiu1Tong Zhu2Wei Tian3Rui Hu4Sven Ekholm5Giovanni Schifitto6Jianhui Zhong7Electrical and Computer Engineering, University of Rochester, Rochester, NY, United StatesBiostatistics and Computational Biology, University of Rochester, Rochester, NY, United StatesRadiation Oncology, University of Michigan, Ann Arbor, MI, United StatesImaging Sciences, University of Rochester, Rochester, NY, United StatesBiostatistics and Computational Biology, University of Rochester, Rochester, NY, United StatesImaging Sciences, University of Rochester, Rochester, NY, United StatesImaging Sciences, University of Rochester, Rochester, NY, United StatesImaging Sciences, University of Rochester, Rochester, NY, United StatesQuantitative measurement of localized longitudinal changes in brain abnormalities at an individual level may offer critical information for disease diagnosis and treatment. The voxel-wise permutation-based method SPREAD/iSPREAD, which combines resampling and spatial regression of neighboring voxels, provides an effective and robust method for detecting subject-specific longitudinal changes within the whole brain, especially for longitudinal studies with a limited number of scans. As an extension of SPREAD/iSPREAD, we present a general method that facilitates analysis of serial Diffusion Tensor Imaging (DTI) measurements (with more than two time points) for testing localized changes in longitudinal studies. Two types of voxel-level test statistics (model-free test statistics, which measure intra-subject variability across time, and test statistics based on general linear model that incorporate specific lesion evolution models) were estimated and tested against the null hypothesis among groups of DTI data across time. The implementation and utility of the proposed statistical method were demonstrated by both Monte Carlo simulations and applications on clinical DTI data from human brain in vivo. By a design of test statistics based on the disease progression model, it was possible to apportion the true significant voxels attributed to the disease progression and those caused by underlying anatomical differences that cannot be explained by the model, which led to improvement in false positive (FP) control in the results. Extension of the proposed method to include other diseases or drug effect models, as well as the feasibility of global statistics, was discussed. The proposed statistical method can be extended to a broad spectrum of longitudinal studies with carefully designed test statistics, which helps to detect localized changes at the individual level.http://www.sciencedirect.com/science/article/pii/S2213158216300316Diffusion Tensor ImagingResamplingGeneral linear modelWhite matterLongitudinal study
collection DOAJ
language English
format Article
sources DOAJ
author Bilan Liu
Xing Qiu
Tong Zhu
Wei Tian
Rui Hu
Sven Ekholm
Giovanni Schifitto
Jianhui Zhong
spellingShingle Bilan Liu
Xing Qiu
Tong Zhu
Wei Tian
Rui Hu
Sven Ekholm
Giovanni Schifitto
Jianhui Zhong
Spatial regression analysis of serial DTI for subject-specific longitudinal changes of neurodegenerative disease
NeuroImage: Clinical
Diffusion Tensor Imaging
Resampling
General linear model
White matter
Longitudinal study
author_facet Bilan Liu
Xing Qiu
Tong Zhu
Wei Tian
Rui Hu
Sven Ekholm
Giovanni Schifitto
Jianhui Zhong
author_sort Bilan Liu
title Spatial regression analysis of serial DTI for subject-specific longitudinal changes of neurodegenerative disease
title_short Spatial regression analysis of serial DTI for subject-specific longitudinal changes of neurodegenerative disease
title_full Spatial regression analysis of serial DTI for subject-specific longitudinal changes of neurodegenerative disease
title_fullStr Spatial regression analysis of serial DTI for subject-specific longitudinal changes of neurodegenerative disease
title_full_unstemmed Spatial regression analysis of serial DTI for subject-specific longitudinal changes of neurodegenerative disease
title_sort spatial regression analysis of serial dti for subject-specific longitudinal changes of neurodegenerative disease
publisher Elsevier
series NeuroImage: Clinical
issn 2213-1582
publishDate 2016-01-01
description Quantitative measurement of localized longitudinal changes in brain abnormalities at an individual level may offer critical information for disease diagnosis and treatment. The voxel-wise permutation-based method SPREAD/iSPREAD, which combines resampling and spatial regression of neighboring voxels, provides an effective and robust method for detecting subject-specific longitudinal changes within the whole brain, especially for longitudinal studies with a limited number of scans. As an extension of SPREAD/iSPREAD, we present a general method that facilitates analysis of serial Diffusion Tensor Imaging (DTI) measurements (with more than two time points) for testing localized changes in longitudinal studies. Two types of voxel-level test statistics (model-free test statistics, which measure intra-subject variability across time, and test statistics based on general linear model that incorporate specific lesion evolution models) were estimated and tested against the null hypothesis among groups of DTI data across time. The implementation and utility of the proposed statistical method were demonstrated by both Monte Carlo simulations and applications on clinical DTI data from human brain in vivo. By a design of test statistics based on the disease progression model, it was possible to apportion the true significant voxels attributed to the disease progression and those caused by underlying anatomical differences that cannot be explained by the model, which led to improvement in false positive (FP) control in the results. Extension of the proposed method to include other diseases or drug effect models, as well as the feasibility of global statistics, was discussed. The proposed statistical method can be extended to a broad spectrum of longitudinal studies with carefully designed test statistics, which helps to detect localized changes at the individual level.
topic Diffusion Tensor Imaging
Resampling
General linear model
White matter
Longitudinal study
url http://www.sciencedirect.com/science/article/pii/S2213158216300316
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