Cargando…

Convolutional-recurrent neural networks approximate diffusion tractography from T1-weighted MRI and associated anatomical context

Diffusion MRI (dMRI) streamline tractography is the gold-standard for in vivo estimation of white matter (WM) pathways in the brain. However, the high angular resolution dMRI acquisitions capable of fitting the microstructural models needed for tractography are often time-consuming and not routinely...

Descripción completa

Detalles Bibliográficos
Autores principales: Cai, Leon Y., Lee, Ho Hin, Newlin, Nancy R., Kerley, Cailey I., Kanakaraj, Praitayini, Yang, Qi, Johnson, Graham W., Moyer, Daniel, Schilling, Kurt G., Rheault, Fran cois, Landman, Bennett A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10002661/
https://www.ncbi.nlm.nih.gov/pubmed/36909466
http://dx.doi.org/10.1101/2023.02.25.530046
_version_ 1784904438123593728
author Cai, Leon Y.
Lee, Ho Hin
Newlin, Nancy R.
Kerley, Cailey I.
Kanakaraj, Praitayini
Yang, Qi
Johnson, Graham W.
Moyer, Daniel
Schilling, Kurt G.
Rheault, Fran cois
Landman, Bennett A.
author_facet Cai, Leon Y.
Lee, Ho Hin
Newlin, Nancy R.
Kerley, Cailey I.
Kanakaraj, Praitayini
Yang, Qi
Johnson, Graham W.
Moyer, Daniel
Schilling, Kurt G.
Rheault, Fran cois
Landman, Bennett A.
author_sort Cai, Leon Y.
collection PubMed
description Diffusion MRI (dMRI) streamline tractography is the gold-standard for in vivo estimation of white matter (WM) pathways in the brain. However, the high angular resolution dMRI acquisitions capable of fitting the microstructural models needed for tractography are often time-consuming and not routinely collected clinically, restricting the scope of tractography analyses. To address this limitation, we build on recent advances in deep learning which have demonstrated that streamline propagation can be learned from dMRI directly without traditional model fitting. Specifically, we propose learning the streamline propagator from T1w MRI to facilitate arbitrary tractography analyses when dMRI is unavailable. To do so, we present a novel convolutional-recurrent neural network (CoRNN) trained in a teacher-student framework that leverages T1w MRI, associated anatomical context, and streamline memory from data acquired for the Human Connectome Project. We characterize our approach under two common tractography paradigms, WM bundle analysis and structural connectomics, and find approximately a 5–15% difference between measures computed from streamlines generated with our approach and those generated using traditional dMRI tractography. When placed in the literature, these results suggest that the accuracy of WM measures computed from T1w MRI with our method is on the level of scan-rescan dMRI variability and raise an important question: is tractography truly a microstructural phenomenon, or has dMRI merely facilitated its discovery and implementation?
format Online
Article
Text
id pubmed-10002661
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Cold Spring Harbor Laboratory
record_format MEDLINE/PubMed
spelling pubmed-100026612023-03-11 Convolutional-recurrent neural networks approximate diffusion tractography from T1-weighted MRI and associated anatomical context Cai, Leon Y. Lee, Ho Hin Newlin, Nancy R. Kerley, Cailey I. Kanakaraj, Praitayini Yang, Qi Johnson, Graham W. Moyer, Daniel Schilling, Kurt G. Rheault, Fran cois Landman, Bennett A. bioRxiv Article Diffusion MRI (dMRI) streamline tractography is the gold-standard for in vivo estimation of white matter (WM) pathways in the brain. However, the high angular resolution dMRI acquisitions capable of fitting the microstructural models needed for tractography are often time-consuming and not routinely collected clinically, restricting the scope of tractography analyses. To address this limitation, we build on recent advances in deep learning which have demonstrated that streamline propagation can be learned from dMRI directly without traditional model fitting. Specifically, we propose learning the streamline propagator from T1w MRI to facilitate arbitrary tractography analyses when dMRI is unavailable. To do so, we present a novel convolutional-recurrent neural network (CoRNN) trained in a teacher-student framework that leverages T1w MRI, associated anatomical context, and streamline memory from data acquired for the Human Connectome Project. We characterize our approach under two common tractography paradigms, WM bundle analysis and structural connectomics, and find approximately a 5–15% difference between measures computed from streamlines generated with our approach and those generated using traditional dMRI tractography. When placed in the literature, these results suggest that the accuracy of WM measures computed from T1w MRI with our method is on the level of scan-rescan dMRI variability and raise an important question: is tractography truly a microstructural phenomenon, or has dMRI merely facilitated its discovery and implementation? Cold Spring Harbor Laboratory 2023-03-08 /pmc/articles/PMC10002661/ /pubmed/36909466 http://dx.doi.org/10.1101/2023.02.25.530046 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use.
spellingShingle Article
Cai, Leon Y.
Lee, Ho Hin
Newlin, Nancy R.
Kerley, Cailey I.
Kanakaraj, Praitayini
Yang, Qi
Johnson, Graham W.
Moyer, Daniel
Schilling, Kurt G.
Rheault, Fran cois
Landman, Bennett A.
Convolutional-recurrent neural networks approximate diffusion tractography from T1-weighted MRI and associated anatomical context
title Convolutional-recurrent neural networks approximate diffusion tractography from T1-weighted MRI and associated anatomical context
title_full Convolutional-recurrent neural networks approximate diffusion tractography from T1-weighted MRI and associated anatomical context
title_fullStr Convolutional-recurrent neural networks approximate diffusion tractography from T1-weighted MRI and associated anatomical context
title_full_unstemmed Convolutional-recurrent neural networks approximate diffusion tractography from T1-weighted MRI and associated anatomical context
title_short Convolutional-recurrent neural networks approximate diffusion tractography from T1-weighted MRI and associated anatomical context
title_sort convolutional-recurrent neural networks approximate diffusion tractography from t1-weighted mri and associated anatomical context
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10002661/
https://www.ncbi.nlm.nih.gov/pubmed/36909466
http://dx.doi.org/10.1101/2023.02.25.530046
work_keys_str_mv AT caileony convolutionalrecurrentneuralnetworksapproximatediffusiontractographyfromt1weightedmriandassociatedanatomicalcontext
AT leehohin convolutionalrecurrentneuralnetworksapproximatediffusiontractographyfromt1weightedmriandassociatedanatomicalcontext
AT newlinnancyr convolutionalrecurrentneuralnetworksapproximatediffusiontractographyfromt1weightedmriandassociatedanatomicalcontext
AT kerleycaileyi convolutionalrecurrentneuralnetworksapproximatediffusiontractographyfromt1weightedmriandassociatedanatomicalcontext
AT kanakarajpraitayini convolutionalrecurrentneuralnetworksapproximatediffusiontractographyfromt1weightedmriandassociatedanatomicalcontext
AT yangqi convolutionalrecurrentneuralnetworksapproximatediffusiontractographyfromt1weightedmriandassociatedanatomicalcontext
AT johnsongrahamw convolutionalrecurrentneuralnetworksapproximatediffusiontractographyfromt1weightedmriandassociatedanatomicalcontext
AT moyerdaniel convolutionalrecurrentneuralnetworksapproximatediffusiontractographyfromt1weightedmriandassociatedanatomicalcontext
AT schillingkurtg convolutionalrecurrentneuralnetworksapproximatediffusiontractographyfromt1weightedmriandassociatedanatomicalcontext
AT rheaultfrancois convolutionalrecurrentneuralnetworksapproximatediffusiontractographyfromt1weightedmriandassociatedanatomicalcontext
AT landmanbennetta convolutionalrecurrentneuralnetworksapproximatediffusiontractographyfromt1weightedmriandassociatedanatomicalcontext