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Neuroimaging-based analysis of DBS outcomes in pediatric dystonia: Insights from the GEPESTIM registry

INTRODUCTION: Deep brain stimulation (DBS) is an established treatment in patients of various ages with pharmaco-resistant neurological disorders. Surgical targeting and postoperative programming of DBS depend on the spatial location of the stimulating electrodes in relation to the surrounding anato...

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Autores principales: Al-Fatly, Bassam, Giesler, Sabina J., Oxenford, Simon, Li, Ningfei, Dembek, Till A., Achtzehn, Johannes, Krause, Patricia, Visser-Vandewalle, Veerle, Krauss, Joachim K., Runge, Joachim, Tadic, Vera, Bäumer, Tobias, Schnitzler, Alfons, Vesper, Jan, Wirths, Jochen, Timmermann, Lars, Kühn, Andrea A., Koy, Anne
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10275720/
https://www.ncbi.nlm.nih.gov/pubmed/37321142
http://dx.doi.org/10.1016/j.nicl.2023.103449
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author Al-Fatly, Bassam
Giesler, Sabina J.
Oxenford, Simon
Li, Ningfei
Dembek, Till A.
Achtzehn, Johannes
Krause, Patricia
Visser-Vandewalle, Veerle
Krauss, Joachim K.
Runge, Joachim
Tadic, Vera
Bäumer, Tobias
Schnitzler, Alfons
Vesper, Jan
Wirths, Jochen
Timmermann, Lars
Kühn, Andrea A.
Koy, Anne
author_facet Al-Fatly, Bassam
Giesler, Sabina J.
Oxenford, Simon
Li, Ningfei
Dembek, Till A.
Achtzehn, Johannes
Krause, Patricia
Visser-Vandewalle, Veerle
Krauss, Joachim K.
Runge, Joachim
Tadic, Vera
Bäumer, Tobias
Schnitzler, Alfons
Vesper, Jan
Wirths, Jochen
Timmermann, Lars
Kühn, Andrea A.
Koy, Anne
author_sort Al-Fatly, Bassam
collection PubMed
description INTRODUCTION: Deep brain stimulation (DBS) is an established treatment in patients of various ages with pharmaco-resistant neurological disorders. Surgical targeting and postoperative programming of DBS depend on the spatial location of the stimulating electrodes in relation to the surrounding anatomical structures, and on electrode connectivity to a specific distribution pattern within brain networks. Such information is usually collected using group-level analysis, which relies on the availability of normative imaging resources (atlases and connectomes). Analysis of DBS data in children with debilitating neurological disorders such as dystonia would benefit from such resources, especially given the developmental differences in neuroimaging data between adults and children. We assembled pediatric normative neuroimaging resources from open-access datasets in order to comply with age-related anatomical and functional differences in pediatric DBS populations. We illustrated their utility in a cohort of children with dystonia treated with pallidal DBS. We aimed to derive a local pallidal sweetspot and explore a connectivity fingerprint associated with pallidal stimulation to exemplify the utility of the assembled imaging resources. METHODS: An average pediatric brain template (the MNI brain template 4.5–18.5 years) was implemented and used to localize the DBS electrodes in 20 patients from the GEPESTIM registry cohort. A pediatric subcortical atlas, analogous to the DISTAL atlas known in DBS research, was also employed to highlight the anatomical structures of interest. A local pallidal sweetspot was modeled, and its degree of overlap with stimulation volumes was calculated as a correlate of individual clinical outcomes. Additionally, a pediatric functional connectome of 100 neurotypical subjects from the Consortium for Reliability and Reproducibility was built to allow network-based analyses and decipher a connectivity fingerprint responsible for the clinical improvements in our cohort. RESULTS: We successfully implemented a pediatric neuroimaging dataset that will be made available for public use as a tool for DBS analyses. Overlap of stimulation volumes with the identified DBS-sweetspot model correlated significantly with improvement on a local spatial level (R = 0.46, permuted p = 0.019). The functional connectivity fingerprint of DBS outcomes was determined to be a network correlate of therapeutic pallidal stimulation in children with dystonia (R = 0.30, permuted p = 0.003). CONCLUSIONS: Local sweetspot and distributed network models provide neuroanatomical substrates for DBS-associated clinical outcomes in dystonia using pediatric neuroimaging surrogate data. Implementation of this pediatric neuroimaging dataset might help to improve the practice and pave the road towards a personalized DBS-neuroimaging analyses in pediatric patients.
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spelling pubmed-102757202023-06-18 Neuroimaging-based analysis of DBS outcomes in pediatric dystonia: Insights from the GEPESTIM registry Al-Fatly, Bassam Giesler, Sabina J. Oxenford, Simon Li, Ningfei Dembek, Till A. Achtzehn, Johannes Krause, Patricia Visser-Vandewalle, Veerle Krauss, Joachim K. Runge, Joachim Tadic, Vera Bäumer, Tobias Schnitzler, Alfons Vesper, Jan Wirths, Jochen Timmermann, Lars Kühn, Andrea A. Koy, Anne Neuroimage Clin Regular Article INTRODUCTION: Deep brain stimulation (DBS) is an established treatment in patients of various ages with pharmaco-resistant neurological disorders. Surgical targeting and postoperative programming of DBS depend on the spatial location of the stimulating electrodes in relation to the surrounding anatomical structures, and on electrode connectivity to a specific distribution pattern within brain networks. Such information is usually collected using group-level analysis, which relies on the availability of normative imaging resources (atlases and connectomes). Analysis of DBS data in children with debilitating neurological disorders such as dystonia would benefit from such resources, especially given the developmental differences in neuroimaging data between adults and children. We assembled pediatric normative neuroimaging resources from open-access datasets in order to comply with age-related anatomical and functional differences in pediatric DBS populations. We illustrated their utility in a cohort of children with dystonia treated with pallidal DBS. We aimed to derive a local pallidal sweetspot and explore a connectivity fingerprint associated with pallidal stimulation to exemplify the utility of the assembled imaging resources. METHODS: An average pediatric brain template (the MNI brain template 4.5–18.5 years) was implemented and used to localize the DBS electrodes in 20 patients from the GEPESTIM registry cohort. A pediatric subcortical atlas, analogous to the DISTAL atlas known in DBS research, was also employed to highlight the anatomical structures of interest. A local pallidal sweetspot was modeled, and its degree of overlap with stimulation volumes was calculated as a correlate of individual clinical outcomes. Additionally, a pediatric functional connectome of 100 neurotypical subjects from the Consortium for Reliability and Reproducibility was built to allow network-based analyses and decipher a connectivity fingerprint responsible for the clinical improvements in our cohort. RESULTS: We successfully implemented a pediatric neuroimaging dataset that will be made available for public use as a tool for DBS analyses. Overlap of stimulation volumes with the identified DBS-sweetspot model correlated significantly with improvement on a local spatial level (R = 0.46, permuted p = 0.019). The functional connectivity fingerprint of DBS outcomes was determined to be a network correlate of therapeutic pallidal stimulation in children with dystonia (R = 0.30, permuted p = 0.003). CONCLUSIONS: Local sweetspot and distributed network models provide neuroanatomical substrates for DBS-associated clinical outcomes in dystonia using pediatric neuroimaging surrogate data. Implementation of this pediatric neuroimaging dataset might help to improve the practice and pave the road towards a personalized DBS-neuroimaging analyses in pediatric patients. Elsevier 2023-06-10 /pmc/articles/PMC10275720/ /pubmed/37321142 http://dx.doi.org/10.1016/j.nicl.2023.103449 Text en © 2023 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 Regular Article
Al-Fatly, Bassam
Giesler, Sabina J.
Oxenford, Simon
Li, Ningfei
Dembek, Till A.
Achtzehn, Johannes
Krause, Patricia
Visser-Vandewalle, Veerle
Krauss, Joachim K.
Runge, Joachim
Tadic, Vera
Bäumer, Tobias
Schnitzler, Alfons
Vesper, Jan
Wirths, Jochen
Timmermann, Lars
Kühn, Andrea A.
Koy, Anne
Neuroimaging-based analysis of DBS outcomes in pediatric dystonia: Insights from the GEPESTIM registry
title Neuroimaging-based analysis of DBS outcomes in pediatric dystonia: Insights from the GEPESTIM registry
title_full Neuroimaging-based analysis of DBS outcomes in pediatric dystonia: Insights from the GEPESTIM registry
title_fullStr Neuroimaging-based analysis of DBS outcomes in pediatric dystonia: Insights from the GEPESTIM registry
title_full_unstemmed Neuroimaging-based analysis of DBS outcomes in pediatric dystonia: Insights from the GEPESTIM registry
title_short Neuroimaging-based analysis of DBS outcomes in pediatric dystonia: Insights from the GEPESTIM registry
title_sort neuroimaging-based analysis of dbs outcomes in pediatric dystonia: insights from the gepestim registry
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10275720/
https://www.ncbi.nlm.nih.gov/pubmed/37321142
http://dx.doi.org/10.1016/j.nicl.2023.103449
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