Litcius/Paper detail

Dynamic sensitivity analysis: Defining personalised strategies to drive brain state transitions via whole brain modelling

Jakub Vohryzek, Joana Cabral, Francesca Castaldo, Yonatan Sanz Perl, Louis-David Lord, Henrique M. Fernandes, Vladimir Litvak, Morten L. Kringelbach, Gustavo Deco

2022Computational and Structural Biotechnology Journal42 citationsDOIOpen Access PDF

Abstract

Traditionally, in neuroimaging, model-free analyses are used to find significant differences between brain states via signal detection theory. Depending on the a priori assumptions about the underlying data, different spatio-temporal features can be analysed. Alternatively, model-based techniques infer features from the data and compare significance from model parameters. However, to assess transitions from one brain state to another remains a challenge in current paradigms. Here, we introduce a "Dynamic Sensitivity Analysis" framework that quantifies transitions between brain states in terms of stimulation ability to rebalance spatio-temporal brain activity towards a target state such as healthy brain dynamics. In practice, it means building a whole-brain model fitted to the spatio-temporal description of brain dynamics, and applying systematic stimulations in-silico to assess the optimal strategy to drive brain dynamics towards a target state. Further, we show how Dynamic Sensitivity Analysis extends to various brain stimulation paradigms, ultimately contributing to improving the efficacy of personalised clinical interventions.

Topics & Concepts

Sensitivity (control systems)Computer scienceNeuroscienceBiologyEngineeringElectronic engineeringFunctional Brain Connectivity StudiesNeural dynamics and brain functionAdvanced Neuroimaging Techniques and Applications
Dynamic sensitivity analysis: Defining personalised strategies to drive brain state transitions via whole brain modelling | Litcius