Title :
A Mechanistic neural mean field theory of how anesthesia suppresses consciousness: Synaptic drive dynamics, system stability, bifurcations, and attractors
Author :
Saing Paul Hou;Wassim M. Haddad;Nader Meskin;James M. Bailey
Author_Institution :
Singapore Institute of Manufacturing Technology, A*STAR, Singapore, 638075
Abstract :
With the advances in biochemistry, molecular biology, and neurochemistry there has been impressive progress in understanding the molecular properties of anesthetic agents. However, there has been little focus on how the molecular properties of anesthetic agents lead to the observed macroscopic property that defines the anesthetic state, that is, lack of responsiveness to noxious stimuli. In this paper, we use dynamical system theory to develop a mechanistic mean field model for neural activity to study the anesthetic cascade. The proposed synaptic drive firing rate model predicts the conscious-unconscious transition as the implied anesthetic concentration increases, where excitatory neural activity is characterized by a Poincaré-Andronov-Hopf bifurcation with the awake state transitioning to a stable limit cycle and then subsequently to an asymptotically stable unconscious equilibrium state.
Keywords :
"Neurons","Brain modeling","Sociology","Statistics","Predictive models","Anesthesia","Electric potential"
Conference_Titel :
Decision and Control (CDC), 2015 IEEE 54th Annual Conference on
DOI :
10.1109/CDC.2015.7402600