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Doctoral Thesis
DOI
https://doi.org/10.11606/T.18.2022.tde-19122022-123219
Document
Author
Full name
Victor Hugo Batista Tsukahara
Institute/School/College
Knowledge Area
Date of Defense
Published
São Carlos, 2022
Supervisor
Committee
Maciel, Carlos Dias (President)
Achcar, Jorge Alberto
Ruggiero, Rafael Naime
Seixas, Jose Manoel de
Vencio, Ricardo Zorzetto Nicoliello
Title in English
Dynamic evaluation of induced epilepsy in rats: a bayesian network perspective
Keywords in English
Bayesian networks
Complex system
Electroencephalography
Epilepsy
Stochastic volatility
Abstract in English
Epilepsy is one of the most common neurological disorders worldwide. Recent findings on it suggest that the brain is a complex system based on a network of neurons whose interactions result in an epileptic seizure, which is currently considered an emergent property. Based on such a modern view, network physiology has emerged to address how brain areas coordinate, synchronize and integrate their dynamics during sound health and afflicted conditions.The objective of this thesis is to present an application of (Dynamic) Bayesian Networks (DBN) to model Local Field Potentials (LFP) based on recordings of rats induced to epileptic seizures and arcs evaluated using an analytical threshold approach. A dynamic network model was constructed from data using the Bayesian Network method, either by considering the delay of communication among brain areas recorded in this study or not. To such an end, the Multivariate Stochastic Volatility method was employed to identify the lag among Local Field Potentials and K2 Score so as to compare the models. Results also showed that the DBN analysis has captured the dynamic nature of brain connectivity across ictogenesis, and that there is a significant correlation to neurobiology derived from pioneering studies employing techniques of pharmacological manipulation, lesion, and modern optogenetics. The arcs evaluation under the proposed approach was consistent with previous literature. Moreover, it provided exciting novel insights, such as a discontinuity between forelimb clonus and generalized tonic-clonic seizure (GTCS) dynamics. Dynamic Bayesian Network depicted the evolution of rats' brains from resting-state until the generalized tonic-clonic seizure. Multivariate Stochastic Volatility captured the lag among brain areas, and better results were yielded after its application on the DBN model.
Title in Portuguese
Avaliação dinâmica da epilepsia induzida em ratos: uma perspectiva de rede bayesiana
Keywords in Portuguese
Eletroencefalografia
Epilepsia
Redes bayesianas
Sistema complexo
Volatilidade estocástica
Abstract in Portuguese
A epilepsia é uma das doenças neurológicas mais comuns em todo o mundo. Considerando o cérebro um sistema complexo, estudos tem utilizado esta abordagem para realizar análise de conectividade funcional para indivíduos saudáveis, bem como acometidos pela patologia. A tese apresenta a aplicação das Redes Bayesianas (Dinâmicas) (DBN) para modelar os registros dos Potenciais de Campo Locais (LFP) de ratos induzidos a convulsões epilépticas, avaliando a influência da variável tempo para as análises. Os resultados mostraram que a análise DBN captou a natureza dinâmica da conectividade cerebral através da ictogênese com uma correlação significativa com a neurobiologia derivada de estudos pioneiros que empregavam técnicas de manipulação farmacológica, lesão e optogênese moderna. A avaliação dos arcos sob a abordagem proposta foi consistente com a literatura anterior, propôs novos entendimentos, como a descontinuidade entre o mioclonia de membros inferiores e a dinâmica generalizada da convulsão tônico-clônica (GTCS). Após a incorporação de atrasos entre os registros eletroencefalográficos, houve a indicação de melhor aderência do conjunto de sinais ao modelo DBN.
 
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Publishing Date
2022-12-22
 
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