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Machine Learning-assisted Quantitative Mapping of Intracortical Axonal Plasticity Following a Focal Cortical Stroke in Rodents

Stroke destroys neurons and their connections leading to focal neurological deficits. Although limited, many patients exhibit a certain degree of spontaneous functional recovery. Structural remodeling of the intracortical axonal connections is implicated in the reorganization of cortical motor repre...

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Autores principales: Kim, Hyung Soon, Seo, Hyo Gyeong, Jhee, Jong Ho, Park, Chang Hyun, Lee, Hyang Woon, Park, Bumhee, Kim, Byung Gon
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Korean Society for Brain and Neural Sciences 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10327932/
https://www.ncbi.nlm.nih.gov/pubmed/37403225
http://dx.doi.org/10.5607/en23016
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author Kim, Hyung Soon
Seo, Hyo Gyeong
Jhee, Jong Ho
Park, Chang Hyun
Lee, Hyang Woon
Park, Bumhee
Kim, Byung Gon
author_facet Kim, Hyung Soon
Seo, Hyo Gyeong
Jhee, Jong Ho
Park, Chang Hyun
Lee, Hyang Woon
Park, Bumhee
Kim, Byung Gon
author_sort Kim, Hyung Soon
collection PubMed
description Stroke destroys neurons and their connections leading to focal neurological deficits. Although limited, many patients exhibit a certain degree of spontaneous functional recovery. Structural remodeling of the intracortical axonal connections is implicated in the reorganization of cortical motor representation maps, which is considered to be an underlying mechanism of the improvement in motor function. Therefore, an accurate assessment of intracortical axonal plasticity would be necessary to develop strategies to facilitate functional recovery following a stroke. The present study developed a machine learning-assisted image analysis tool based on multi-voxel pattern analysis in fMRI imaging. Intracortical axons originating from the rostral forelimb area (RFA) were anterogradely traced using biotinylated dextran amine (BDA) following a photothrombotic stroke in the mouse motor cortex. BDA-traced axons were visualized in tangentially sectioned cortical tissues, digitally marked, and converted to pixelated axon density maps. Application of the machine learning algorithm enabled sensitive comparison of the quantitative differences and the precise spatial mapping of the post-stroke axonal reorganization even in the regions with dense axonal projections. Using this method, we observed a substantial extent of the axonal sprouting from the RFA to the premotor cortex and the peri-infarct region caudal to the RFA. Therefore, the machine learning-assisted quantitative axonal mapping developed in this study can be utilized to discover intracortical axonal plasticity that may mediate functional restoration following stroke.
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spelling pubmed-103279322023-07-08 Machine Learning-assisted Quantitative Mapping of Intracortical Axonal Plasticity Following a Focal Cortical Stroke in Rodents Kim, Hyung Soon Seo, Hyo Gyeong Jhee, Jong Ho Park, Chang Hyun Lee, Hyang Woon Park, Bumhee Kim, Byung Gon Exp Neurobiol Original Article Stroke destroys neurons and their connections leading to focal neurological deficits. Although limited, many patients exhibit a certain degree of spontaneous functional recovery. Structural remodeling of the intracortical axonal connections is implicated in the reorganization of cortical motor representation maps, which is considered to be an underlying mechanism of the improvement in motor function. Therefore, an accurate assessment of intracortical axonal plasticity would be necessary to develop strategies to facilitate functional recovery following a stroke. The present study developed a machine learning-assisted image analysis tool based on multi-voxel pattern analysis in fMRI imaging. Intracortical axons originating from the rostral forelimb area (RFA) were anterogradely traced using biotinylated dextran amine (BDA) following a photothrombotic stroke in the mouse motor cortex. BDA-traced axons were visualized in tangentially sectioned cortical tissues, digitally marked, and converted to pixelated axon density maps. Application of the machine learning algorithm enabled sensitive comparison of the quantitative differences and the precise spatial mapping of the post-stroke axonal reorganization even in the regions with dense axonal projections. Using this method, we observed a substantial extent of the axonal sprouting from the RFA to the premotor cortex and the peri-infarct region caudal to the RFA. Therefore, the machine learning-assisted quantitative axonal mapping developed in this study can be utilized to discover intracortical axonal plasticity that may mediate functional restoration following stroke. The Korean Society for Brain and Neural Sciences 2023-06-30 2023-06-30 /pmc/articles/PMC10327932/ /pubmed/37403225 http://dx.doi.org/10.5607/en23016 Text en Copyright © Experimental Neurobiology 2023 https://creativecommons.org/licenses/by-nc/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0 (https://creativecommons.org/licenses/by-nc/4.0/) ) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Article
Kim, Hyung Soon
Seo, Hyo Gyeong
Jhee, Jong Ho
Park, Chang Hyun
Lee, Hyang Woon
Park, Bumhee
Kim, Byung Gon
Machine Learning-assisted Quantitative Mapping of Intracortical Axonal Plasticity Following a Focal Cortical Stroke in Rodents
title Machine Learning-assisted Quantitative Mapping of Intracortical Axonal Plasticity Following a Focal Cortical Stroke in Rodents
title_full Machine Learning-assisted Quantitative Mapping of Intracortical Axonal Plasticity Following a Focal Cortical Stroke in Rodents
title_fullStr Machine Learning-assisted Quantitative Mapping of Intracortical Axonal Plasticity Following a Focal Cortical Stroke in Rodents
title_full_unstemmed Machine Learning-assisted Quantitative Mapping of Intracortical Axonal Plasticity Following a Focal Cortical Stroke in Rodents
title_short Machine Learning-assisted Quantitative Mapping of Intracortical Axonal Plasticity Following a Focal Cortical Stroke in Rodents
title_sort machine learning-assisted quantitative mapping of intracortical axonal plasticity following a focal cortical stroke in rodents
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10327932/
https://www.ncbi.nlm.nih.gov/pubmed/37403225
http://dx.doi.org/10.5607/en23016
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