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Estimating axon conduction velocity in vivo from microstructural MRI

The conduction velocity (CV) of action potentials along axons is a key neurophysiological property central to neural communication. The ability to estimate CV in humans in vivo from non-invasive MRI methods would therefore represent a significant advance in neuroscience. However, there are two major...

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Autores principales: Drakesmith, Mark, Harms, Robbert, Rudrapatna, Suryanarayana Umesh, Parker, Greg D., Evans, C. John, Jones, Derek K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Academic Press 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6854468/
https://www.ncbi.nlm.nih.gov/pubmed/31542512
http://dx.doi.org/10.1016/j.neuroimage.2019.116186
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author Drakesmith, Mark
Harms, Robbert
Rudrapatna, Suryanarayana Umesh
Parker, Greg D.
Evans, C. John
Jones, Derek K.
author_facet Drakesmith, Mark
Harms, Robbert
Rudrapatna, Suryanarayana Umesh
Parker, Greg D.
Evans, C. John
Jones, Derek K.
author_sort Drakesmith, Mark
collection PubMed
description The conduction velocity (CV) of action potentials along axons is a key neurophysiological property central to neural communication. The ability to estimate CV in humans in vivo from non-invasive MRI methods would therefore represent a significant advance in neuroscience. However, there are two major challenges that this paper aims to address: (1) Much of the complexity of the neurophysiology of action potentials cannot be captured with currently available MRI techniques. Therefore, we seek to establish the variability in CV that can be captured when predicting CV purely from parameters that have been reported to be estimatable from MRI: inner axon diameter (AD) and g-ratio. (2) errors inherent in existing MRI-based biophysical models of tissue will propagate through to estimates of CV, the extent to which is currently unknown. Issue (1) is investigated by performing a sensitivity analysis on a comprehensive model of axon electrophysiology and determining the relative sensitivity to various morphological and electrical parameters. The investigations suggest that 85% of the variance in CV is accounted for by variation in AD and g-ratio. The observed dependency of CV on AD and g-ratio is well characterised by the previously reported model by Rushton. Issue (2) is investigated through simulation of diffusion and relaxometry MRI data for a range of axon morphologies, applying models of restricted diffusion and relaxation processes to derive estimates of axon volume fraction (AVF), AD and g-ratio and estimating CV from the derived parameters. The results show that errors in the AVF have the biggest detrimental impact on estimates of CV, particularly for sparse fibre populations (AVF [Formula: see text]). For our equipment set-up and acquisition protocol, CV estimates are most accurate (below 5% error) where AVF is above 0.3, g-ratio is between 0.6 and 0.85 and AD is high (above [Formula: see text]). CV estimates are robust to errors in g-ratio estimation but are highly sensitive to errors in AD estimation, particularly where ADs are small. We additionally show CV estimates in human corpus callosum in a small number of subjects. In conclusion, we demonstrate accurate CV estimates are possible in regions of the brain where AD is sufficiently large. Problems with estimating ADs for smaller axons presents a problem for estimating CV across the whole CNS and should be the focus of further study.
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spelling pubmed-68544682019-12-01 Estimating axon conduction velocity in vivo from microstructural MRI Drakesmith, Mark Harms, Robbert Rudrapatna, Suryanarayana Umesh Parker, Greg D. Evans, C. John Jones, Derek K. Neuroimage Article The conduction velocity (CV) of action potentials along axons is a key neurophysiological property central to neural communication. The ability to estimate CV in humans in vivo from non-invasive MRI methods would therefore represent a significant advance in neuroscience. However, there are two major challenges that this paper aims to address: (1) Much of the complexity of the neurophysiology of action potentials cannot be captured with currently available MRI techniques. Therefore, we seek to establish the variability in CV that can be captured when predicting CV purely from parameters that have been reported to be estimatable from MRI: inner axon diameter (AD) and g-ratio. (2) errors inherent in existing MRI-based biophysical models of tissue will propagate through to estimates of CV, the extent to which is currently unknown. Issue (1) is investigated by performing a sensitivity analysis on a comprehensive model of axon electrophysiology and determining the relative sensitivity to various morphological and electrical parameters. The investigations suggest that 85% of the variance in CV is accounted for by variation in AD and g-ratio. The observed dependency of CV on AD and g-ratio is well characterised by the previously reported model by Rushton. Issue (2) is investigated through simulation of diffusion and relaxometry MRI data for a range of axon morphologies, applying models of restricted diffusion and relaxation processes to derive estimates of axon volume fraction (AVF), AD and g-ratio and estimating CV from the derived parameters. The results show that errors in the AVF have the biggest detrimental impact on estimates of CV, particularly for sparse fibre populations (AVF [Formula: see text]). For our equipment set-up and acquisition protocol, CV estimates are most accurate (below 5% error) where AVF is above 0.3, g-ratio is between 0.6 and 0.85 and AD is high (above [Formula: see text]). CV estimates are robust to errors in g-ratio estimation but are highly sensitive to errors in AD estimation, particularly where ADs are small. We additionally show CV estimates in human corpus callosum in a small number of subjects. In conclusion, we demonstrate accurate CV estimates are possible in regions of the brain where AD is sufficiently large. Problems with estimating ADs for smaller axons presents a problem for estimating CV across the whole CNS and should be the focus of further study. Academic Press 2019-12 /pmc/articles/PMC6854468/ /pubmed/31542512 http://dx.doi.org/10.1016/j.neuroimage.2019.116186 Text en © 2019 The Authors http://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
Drakesmith, Mark
Harms, Robbert
Rudrapatna, Suryanarayana Umesh
Parker, Greg D.
Evans, C. John
Jones, Derek K.
Estimating axon conduction velocity in vivo from microstructural MRI
title Estimating axon conduction velocity in vivo from microstructural MRI
title_full Estimating axon conduction velocity in vivo from microstructural MRI
title_fullStr Estimating axon conduction velocity in vivo from microstructural MRI
title_full_unstemmed Estimating axon conduction velocity in vivo from microstructural MRI
title_short Estimating axon conduction velocity in vivo from microstructural MRI
title_sort estimating axon conduction velocity in vivo from microstructural mri
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6854468/
https://www.ncbi.nlm.nih.gov/pubmed/31542512
http://dx.doi.org/10.1016/j.neuroimage.2019.116186
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