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Sensory‐motor network topology in multiple sclerosis: Structural connectivity analysis accounting for intrinsic density discrepancy

Graph theory and network modelling have been previously applied to characterize motor network structural topology in multiple sclerosis (MS). However, between‐group differences disclosed by graph analysis might be primarily driven by discrepancy in density, which is likely to be reduced in pathologi...

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Autores principales: Schiavi, Simona, Petracca, Maria, Battocchio, Matteo, El Mendili, Mohamed M., Paduri, Swetha, Fleysher, Lazar, Inglese, Matilde, Daducci, Alessandro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons, Inc. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7336144/
https://www.ncbi.nlm.nih.gov/pubmed/32412678
http://dx.doi.org/10.1002/hbm.24989
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author Schiavi, Simona
Petracca, Maria
Battocchio, Matteo
El Mendili, Mohamed M.
Paduri, Swetha
Fleysher, Lazar
Inglese, Matilde
Daducci, Alessandro
author_facet Schiavi, Simona
Petracca, Maria
Battocchio, Matteo
El Mendili, Mohamed M.
Paduri, Swetha
Fleysher, Lazar
Inglese, Matilde
Daducci, Alessandro
author_sort Schiavi, Simona
collection PubMed
description Graph theory and network modelling have been previously applied to characterize motor network structural topology in multiple sclerosis (MS). However, between‐group differences disclosed by graph analysis might be primarily driven by discrepancy in density, which is likely to be reduced in pathologic conditions as a consequence of macroscopic damage and fibre loss that may result in less streamlines properly traced. In this work, we employed the convex optimization modelling for microstructure informed tractography (COMMIT) framework, which, given a tractogram, estimates the actual contribution (or weight) of each streamline in order to optimally explain the diffusion magnetic resonance imaging signal, filtering out those that are implausible or not necessary. Then, we analysed the topology of this ‘COMMIT‐weighted sensory‐motor network’ in MS accounting for network density. By comparing with standard connectivity analysis, we also tested if abnormalities in network topology are still identifiable when focusing on more ‘quantitative’ network properties. We found that topology differences identified with standard tractography in MS seem to be mainly driven by density, which, in turn, is strongly influenced by the presence of lesions. We were able to identify a significant difference in density but also in network global and local properties when accounting for density discrepancy. Therefore, we believe that COMMIT may help characterize the structural organization in pathological conditions, allowing a fair comparison of connectomes which considers discrepancies in network density. Moreover, discrepancy‐corrected network properties are clinically meaningful and may help guide prognosis assessment and treatment choice.
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spelling pubmed-73361442020-07-08 Sensory‐motor network topology in multiple sclerosis: Structural connectivity analysis accounting for intrinsic density discrepancy Schiavi, Simona Petracca, Maria Battocchio, Matteo El Mendili, Mohamed M. Paduri, Swetha Fleysher, Lazar Inglese, Matilde Daducci, Alessandro Hum Brain Mapp Research Articles Graph theory and network modelling have been previously applied to characterize motor network structural topology in multiple sclerosis (MS). However, between‐group differences disclosed by graph analysis might be primarily driven by discrepancy in density, which is likely to be reduced in pathologic conditions as a consequence of macroscopic damage and fibre loss that may result in less streamlines properly traced. In this work, we employed the convex optimization modelling for microstructure informed tractography (COMMIT) framework, which, given a tractogram, estimates the actual contribution (or weight) of each streamline in order to optimally explain the diffusion magnetic resonance imaging signal, filtering out those that are implausible or not necessary. Then, we analysed the topology of this ‘COMMIT‐weighted sensory‐motor network’ in MS accounting for network density. By comparing with standard connectivity analysis, we also tested if abnormalities in network topology are still identifiable when focusing on more ‘quantitative’ network properties. We found that topology differences identified with standard tractography in MS seem to be mainly driven by density, which, in turn, is strongly influenced by the presence of lesions. We were able to identify a significant difference in density but also in network global and local properties when accounting for density discrepancy. Therefore, we believe that COMMIT may help characterize the structural organization in pathological conditions, allowing a fair comparison of connectomes which considers discrepancies in network density. Moreover, discrepancy‐corrected network properties are clinically meaningful and may help guide prognosis assessment and treatment choice. John Wiley & Sons, Inc. 2020-05-15 /pmc/articles/PMC7336144/ /pubmed/32412678 http://dx.doi.org/10.1002/hbm.24989 Text en © 2020 The Authors. Human Brain Mapping published by Wiley Periodicals, Inc. This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Articles
Schiavi, Simona
Petracca, Maria
Battocchio, Matteo
El Mendili, Mohamed M.
Paduri, Swetha
Fleysher, Lazar
Inglese, Matilde
Daducci, Alessandro
Sensory‐motor network topology in multiple sclerosis: Structural connectivity analysis accounting for intrinsic density discrepancy
title Sensory‐motor network topology in multiple sclerosis: Structural connectivity analysis accounting for intrinsic density discrepancy
title_full Sensory‐motor network topology in multiple sclerosis: Structural connectivity analysis accounting for intrinsic density discrepancy
title_fullStr Sensory‐motor network topology in multiple sclerosis: Structural connectivity analysis accounting for intrinsic density discrepancy
title_full_unstemmed Sensory‐motor network topology in multiple sclerosis: Structural connectivity analysis accounting for intrinsic density discrepancy
title_short Sensory‐motor network topology in multiple sclerosis: Structural connectivity analysis accounting for intrinsic density discrepancy
title_sort sensory‐motor network topology in multiple sclerosis: structural connectivity analysis accounting for intrinsic density discrepancy
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7336144/
https://www.ncbi.nlm.nih.gov/pubmed/32412678
http://dx.doi.org/10.1002/hbm.24989
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