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Data-Driven multi-Contrast spectral microstructure imaging with InSpect: INtegrated SPECTral component estimation and mapping

We introduce and demonstrate an unsupervised machine learning technique for spectroscopic analysis of quantitative MRI experiments. Our algorithm supports estimation of one-dimensional spectra from single-contrast data, and multidimensional correlation spectra from simultaneous multi-contrast data....

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Autores principales: Slator, Paddy J., Hutter, Jana, Marinescu, Razvan V., Palombo, Marco, Jackson, Laurence H., Ho, Alison, Chappell, Lucy C., Rutherford, Mary, Hajnal, Joseph V., Alexander, Daniel C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8543043/
https://www.ncbi.nlm.nih.gov/pubmed/33934005
http://dx.doi.org/10.1016/j.media.2021.102045
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author Slator, Paddy J.
Hutter, Jana
Marinescu, Razvan V.
Palombo, Marco
Jackson, Laurence H.
Ho, Alison
Chappell, Lucy C.
Rutherford, Mary
Hajnal, Joseph V.
Alexander, Daniel C.
author_facet Slator, Paddy J.
Hutter, Jana
Marinescu, Razvan V.
Palombo, Marco
Jackson, Laurence H.
Ho, Alison
Chappell, Lucy C.
Rutherford, Mary
Hajnal, Joseph V.
Alexander, Daniel C.
author_sort Slator, Paddy J.
collection PubMed
description We introduce and demonstrate an unsupervised machine learning technique for spectroscopic analysis of quantitative MRI experiments. Our algorithm supports estimation of one-dimensional spectra from single-contrast data, and multidimensional correlation spectra from simultaneous multi-contrast data. These spectrum-based approaches allow model-free investigation of tissue properties, but require regularised inversion of a Laplace transform or Fredholm integral, which is an ill-posed calculation. Here we present a method that addresses this limitation in a data-driven way. The algorithm simultaneously estimates a canonical basis of spectral components and voxelwise maps of their weightings, thereby pooling information across whole images to regularise the ill-posed problem. We show in simulations that our algorithm substantially outperforms current voxelwise spectral approaches. We demonstrate the method on multi-contrast diffusion-relaxometry placental MRI scans, revealing anatomically-relevant sub-structures, and identifying dysfunctional placentas. Our algorithm vastly reduces the data required to reliably estimate spectra, opening up the possibility of quantitative MRI spectroscopy in a wide range of new applications. Our InSpect code is available at github.com/paddyslator/inspect.
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spelling pubmed-85430432021-10-29 Data-Driven multi-Contrast spectral microstructure imaging with InSpect: INtegrated SPECTral component estimation and mapping Slator, Paddy J. Hutter, Jana Marinescu, Razvan V. Palombo, Marco Jackson, Laurence H. Ho, Alison Chappell, Lucy C. Rutherford, Mary Hajnal, Joseph V. Alexander, Daniel C. Med Image Anal Article We introduce and demonstrate an unsupervised machine learning technique for spectroscopic analysis of quantitative MRI experiments. Our algorithm supports estimation of one-dimensional spectra from single-contrast data, and multidimensional correlation spectra from simultaneous multi-contrast data. These spectrum-based approaches allow model-free investigation of tissue properties, but require regularised inversion of a Laplace transform or Fredholm integral, which is an ill-posed calculation. Here we present a method that addresses this limitation in a data-driven way. The algorithm simultaneously estimates a canonical basis of spectral components and voxelwise maps of their weightings, thereby pooling information across whole images to regularise the ill-posed problem. We show in simulations that our algorithm substantially outperforms current voxelwise spectral approaches. We demonstrate the method on multi-contrast diffusion-relaxometry placental MRI scans, revealing anatomically-relevant sub-structures, and identifying dysfunctional placentas. Our algorithm vastly reduces the data required to reliably estimate spectra, opening up the possibility of quantitative MRI spectroscopy in a wide range of new applications. Our InSpect code is available at github.com/paddyslator/inspect. Elsevier 2021-07 /pmc/articles/PMC8543043/ /pubmed/33934005 http://dx.doi.org/10.1016/j.media.2021.102045 Text en © 2021 The Author(s) https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Slator, Paddy J.
Hutter, Jana
Marinescu, Razvan V.
Palombo, Marco
Jackson, Laurence H.
Ho, Alison
Chappell, Lucy C.
Rutherford, Mary
Hajnal, Joseph V.
Alexander, Daniel C.
Data-Driven multi-Contrast spectral microstructure imaging with InSpect: INtegrated SPECTral component estimation and mapping
title Data-Driven multi-Contrast spectral microstructure imaging with InSpect: INtegrated SPECTral component estimation and mapping
title_full Data-Driven multi-Contrast spectral microstructure imaging with InSpect: INtegrated SPECTral component estimation and mapping
title_fullStr Data-Driven multi-Contrast spectral microstructure imaging with InSpect: INtegrated SPECTral component estimation and mapping
title_full_unstemmed Data-Driven multi-Contrast spectral microstructure imaging with InSpect: INtegrated SPECTral component estimation and mapping
title_short Data-Driven multi-Contrast spectral microstructure imaging with InSpect: INtegrated SPECTral component estimation and mapping
title_sort data-driven multi-contrast spectral microstructure imaging with inspect: integrated spectral component estimation and mapping
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8543043/
https://www.ncbi.nlm.nih.gov/pubmed/33934005
http://dx.doi.org/10.1016/j.media.2021.102045
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