Probing tissue microstructure by diffusion skewness tensor imaging

Abstract Probing the cellular structure of in vivo biological tissue is a fundamental problem in biomedical imaging and medical science. This work introduces an approach for analyzing diffusion magnetic resonance imaging data acquired by the novel tensor-valued encoding technique for characterizing...

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Main Authors: Lipeng Ning, Filip Szczepankiewicz, Markus Nilsson, Yogesh Rathi, Carl-Fredrik Westin
Format: Article
Language:English
Published: Nature Publishing Group 2021-01-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-020-79748-3
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spelling doaj-388cb1de5fce460c9aab873308dc254b2021-01-10T12:46:51ZengNature Publishing GroupScientific Reports2045-23222021-01-0111111010.1038/s41598-020-79748-3Probing tissue microstructure by diffusion skewness tensor imagingLipeng Ning0Filip Szczepankiewicz1Markus Nilsson2Yogesh Rathi3Carl-Fredrik Westin4Brigham and Women’s Hospital, Harvard Medical SchoolBrigham and Women’s Hospital, Harvard Medical SchoolLund UniversityBrigham and Women’s Hospital, Harvard Medical SchoolBrigham and Women’s Hospital, Harvard Medical SchoolAbstract Probing the cellular structure of in vivo biological tissue is a fundamental problem in biomedical imaging and medical science. This work introduces an approach for analyzing diffusion magnetic resonance imaging data acquired by the novel tensor-valued encoding technique for characterizing tissue microstructure. Our approach first uses a signal model to estimate the variance and skewness of the distribution of apparent diffusion tensors modeling the underlying tissue. Then several novel imaging indices, such as weighted microscopic anisotropy and microscopic skewness, are derived to characterize different ensembles of diffusion processes that are indistinguishable by existing techniques. The contributions of this work also include a theoretical proof that shows that, to estimate the skewness of a diffusion tensor distribution, the encoding protocol needs to include full-rank tensor diffusion encoding. This proof provides a guideline for the application of this technique. The properties of the proposed indices are illustrated using both synthetic data and in vivo data acquired from a human brain.https://doi.org/10.1038/s41598-020-79748-3
collection DOAJ
language English
format Article
sources DOAJ
author Lipeng Ning
Filip Szczepankiewicz
Markus Nilsson
Yogesh Rathi
Carl-Fredrik Westin
spellingShingle Lipeng Ning
Filip Szczepankiewicz
Markus Nilsson
Yogesh Rathi
Carl-Fredrik Westin
Probing tissue microstructure by diffusion skewness tensor imaging
Scientific Reports
author_facet Lipeng Ning
Filip Szczepankiewicz
Markus Nilsson
Yogesh Rathi
Carl-Fredrik Westin
author_sort Lipeng Ning
title Probing tissue microstructure by diffusion skewness tensor imaging
title_short Probing tissue microstructure by diffusion skewness tensor imaging
title_full Probing tissue microstructure by diffusion skewness tensor imaging
title_fullStr Probing tissue microstructure by diffusion skewness tensor imaging
title_full_unstemmed Probing tissue microstructure by diffusion skewness tensor imaging
title_sort probing tissue microstructure by diffusion skewness tensor imaging
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-01-01
description Abstract Probing the cellular structure of in vivo biological tissue is a fundamental problem in biomedical imaging and medical science. This work introduces an approach for analyzing diffusion magnetic resonance imaging data acquired by the novel tensor-valued encoding technique for characterizing tissue microstructure. Our approach first uses a signal model to estimate the variance and skewness of the distribution of apparent diffusion tensors modeling the underlying tissue. Then several novel imaging indices, such as weighted microscopic anisotropy and microscopic skewness, are derived to characterize different ensembles of diffusion processes that are indistinguishable by existing techniques. The contributions of this work also include a theoretical proof that shows that, to estimate the skewness of a diffusion tensor distribution, the encoding protocol needs to include full-rank tensor diffusion encoding. This proof provides a guideline for the application of this technique. The properties of the proposed indices are illustrated using both synthetic data and in vivo data acquired from a human brain.
url https://doi.org/10.1038/s41598-020-79748-3
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