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Predicting neurosurgical outcomes in focal epilepsy patients using computational modelling

See Eissa and Schevon (doi:10.1093/aww332) for a scientific commentary on this article. Surgery can be a last resort for patients with intractable, medically refractory epilepsy. For many of these patients, however, there is substantial risk that the surgery will be ineffective. The prediction of wh...

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Autores principales: Sinha, Nishant, Dauwels, Justin, Kaiser, Marcus, Cash, Sydney S, Brandon Westover, M, Wang, Yujiang, Taylor, Peter N
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5278304/
https://www.ncbi.nlm.nih.gov/pubmed/28011454
http://dx.doi.org/10.1093/brain/aww299
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author Sinha, Nishant
Dauwels, Justin
Kaiser, Marcus
Cash, Sydney S
Brandon Westover, M
Wang, Yujiang
Taylor, Peter N
author_facet Sinha, Nishant
Dauwels, Justin
Kaiser, Marcus
Cash, Sydney S
Brandon Westover, M
Wang, Yujiang
Taylor, Peter N
author_sort Sinha, Nishant
collection PubMed
description See Eissa and Schevon (doi:10.1093/aww332) for a scientific commentary on this article. Surgery can be a last resort for patients with intractable, medically refractory epilepsy. For many of these patients, however, there is substantial risk that the surgery will be ineffective. The prediction of who is likely to benefit from a surgical approach is crucial for being able to inform patients better, conduct principled prospective clinical trials, and ultimately tailor therapeutic approaches to these patients more effectively. Dynamical computational models, informed with patient data, can be used to make predictions and give mechanistic insight. In this study, we develop patient-specific dynamical network models of epileptogenic cortex. We infer the network connectivity matrix from non-seizure electrographic recordings of patients and use these connectivity matrices as the network structure in our model. The model simulates the dynamics of a bi-stable switch at every node in this network, meaning that every node starts in a background state, but has the ability to transit to a co-existing seizure state. Whether a transition happens in a node is partly determined by the stochastic nature of the input to the node, but also by the input the node receives from other connected nodes in the network. By conducting simulations with such a model, we can detect the average transition time for nodes in a given network, and therefore define nodes with a short transition time as highly epileptogenic. In a retrospective study, we found that in some patients the regions with high epileptogenicity in the model overlap with those identified clinically as the seizure onset zone. Moreover, it was found that the resection of these regions in the model reduces the overall likelihood of a seizure. Following removal of these regions in the model, we predicted surgical outcomes and compared these to actual patient outcomes. Our predictions were found to be 81.3% accurate on a dataset of 16 patients with intractable epilepsy. Intriguingly, in patients with unsuccessful outcomes, the proposed computational approach is able to suggest alternative resection sites. The model presented here gives mechanistic insight as to why surgery may be unsuccessful in some patients. This may aid clinicians in presurgical evaluation by providing a tool to explore various surgical options, offering complementary information to existing clinical techniques.
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spelling pubmed-52783042017-02-02 Predicting neurosurgical outcomes in focal epilepsy patients using computational modelling Sinha, Nishant Dauwels, Justin Kaiser, Marcus Cash, Sydney S Brandon Westover, M Wang, Yujiang Taylor, Peter N Brain Original Articles See Eissa and Schevon (doi:10.1093/aww332) for a scientific commentary on this article. Surgery can be a last resort for patients with intractable, medically refractory epilepsy. For many of these patients, however, there is substantial risk that the surgery will be ineffective. The prediction of who is likely to benefit from a surgical approach is crucial for being able to inform patients better, conduct principled prospective clinical trials, and ultimately tailor therapeutic approaches to these patients more effectively. Dynamical computational models, informed with patient data, can be used to make predictions and give mechanistic insight. In this study, we develop patient-specific dynamical network models of epileptogenic cortex. We infer the network connectivity matrix from non-seizure electrographic recordings of patients and use these connectivity matrices as the network structure in our model. The model simulates the dynamics of a bi-stable switch at every node in this network, meaning that every node starts in a background state, but has the ability to transit to a co-existing seizure state. Whether a transition happens in a node is partly determined by the stochastic nature of the input to the node, but also by the input the node receives from other connected nodes in the network. By conducting simulations with such a model, we can detect the average transition time for nodes in a given network, and therefore define nodes with a short transition time as highly epileptogenic. In a retrospective study, we found that in some patients the regions with high epileptogenicity in the model overlap with those identified clinically as the seizure onset zone. Moreover, it was found that the resection of these regions in the model reduces the overall likelihood of a seizure. Following removal of these regions in the model, we predicted surgical outcomes and compared these to actual patient outcomes. Our predictions were found to be 81.3% accurate on a dataset of 16 patients with intractable epilepsy. Intriguingly, in patients with unsuccessful outcomes, the proposed computational approach is able to suggest alternative resection sites. The model presented here gives mechanistic insight as to why surgery may be unsuccessful in some patients. This may aid clinicians in presurgical evaluation by providing a tool to explore various surgical options, offering complementary information to existing clinical techniques. Oxford University Press 2017-02 2016-12-30 /pmc/articles/PMC5278304/ /pubmed/28011454 http://dx.doi.org/10.1093/brain/aww299 Text en © The Author (2016). Published by Oxford University Press on behalf of the Guarantors of Brain. http://creativecommons.org/licenses/by/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Articles
Sinha, Nishant
Dauwels, Justin
Kaiser, Marcus
Cash, Sydney S
Brandon Westover, M
Wang, Yujiang
Taylor, Peter N
Predicting neurosurgical outcomes in focal epilepsy patients using computational modelling
title Predicting neurosurgical outcomes in focal epilepsy patients using computational modelling
title_full Predicting neurosurgical outcomes in focal epilepsy patients using computational modelling
title_fullStr Predicting neurosurgical outcomes in focal epilepsy patients using computational modelling
title_full_unstemmed Predicting neurosurgical outcomes in focal epilepsy patients using computational modelling
title_short Predicting neurosurgical outcomes in focal epilepsy patients using computational modelling
title_sort predicting neurosurgical outcomes in focal epilepsy patients using computational modelling
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5278304/
https://www.ncbi.nlm.nih.gov/pubmed/28011454
http://dx.doi.org/10.1093/brain/aww299
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