TY - JOUR
T1 - Understanding the dynamics of biological and neural oscillator networks through exact mean-field reductions
T2 - a review
AU - Bick, Christian
AU - Goodfellow, Marc
AU - Laing, Carlo R.
AU - Martens, Erik A.
PY - 2020/5/27
Y1 - 2020/5/27
N2 - Many biological and neural systems can be seen as networks of interacting periodic processes. Importantly, their functionality, i.e., whether these networks can perform their function or not, depends on the emerging collective dynamics of the network. Synchrony of oscillations is one of the most prominent examples of such collective behavior and has been associated both with function and dysfunction. Understanding how network structure and interactions, as well as the microscopic properties of individual units, shape the emerging collective dynamics is critical to find factors that lead to malfunction. However, many biological systems such as the brain consist of a large number of dynamical units. Hence, their analysis has either relied on simplified heuristic models on a coarse scale, or the analysis comes at a huge computational cost. Here we review recently introduced approaches, known as the Ott–Antonsen and Watanabe–Strogatz reductions, allowing one to simplify the analysis by bridging small and large scales. Thus, reduced model equations are obtained that exactly describe the collective dynamics for each subpopulation in the oscillator network via few collective variables only. The resulting equations are next-generation models: Rather than being heuristic, they exactly link microscopic and macroscopic descriptions and therefore accurately capture microscopic properties of the underlying system. At the same time, they are sufficiently simple to analyze without great computational effort. In the last decade, these reduction methods have become instrumental in understanding how network structure and interactions shape the collective dynamics and the emergence of synchrony. We review this progress based on concrete examples and outline possible limitations. Finally, we discuss how linking the reduced models with experimental data can guide the way towards the development of new treatment approaches, for example, for neurological disease.
AB - Many biological and neural systems can be seen as networks of interacting periodic processes. Importantly, their functionality, i.e., whether these networks can perform their function or not, depends on the emerging collective dynamics of the network. Synchrony of oscillations is one of the most prominent examples of such collective behavior and has been associated both with function and dysfunction. Understanding how network structure and interactions, as well as the microscopic properties of individual units, shape the emerging collective dynamics is critical to find factors that lead to malfunction. However, many biological systems such as the brain consist of a large number of dynamical units. Hence, their analysis has either relied on simplified heuristic models on a coarse scale, or the analysis comes at a huge computational cost. Here we review recently introduced approaches, known as the Ott–Antonsen and Watanabe–Strogatz reductions, allowing one to simplify the analysis by bridging small and large scales. Thus, reduced model equations are obtained that exactly describe the collective dynamics for each subpopulation in the oscillator network via few collective variables only. The resulting equations are next-generation models: Rather than being heuristic, they exactly link microscopic and macroscopic descriptions and therefore accurately capture microscopic properties of the underlying system. At the same time, they are sufficiently simple to analyze without great computational effort. In the last decade, these reduction methods have become instrumental in understanding how network structure and interactions shape the collective dynamics and the emergence of synchrony. We review this progress based on concrete examples and outline possible limitations. Finally, we discuss how linking the reduced models with experimental data can guide the way towards the development of new treatment approaches, for example, for neurological disease.
KW - Coupled oscillators
KW - Kuramoto model
KW - Mean-field reductions
KW - Network dynamics
KW - Neural masses
KW - Neural networks
KW - Ott–Antonsen reduction
KW - Quadratic integrate-and-fire neurons
KW - Structured networks
KW - Theta neuron model
KW - Watanabe–Strogatz reduction
KW - Winfree model
KW - Coupled oscillators
KW - Kuramoto model
KW - Mean-field reductions
KW - Network dynamics
KW - Neural masses
KW - Neural networks
KW - Ott–Antonsen reduction
KW - Quadratic integrate-and-fire neurons
KW - Structured networks
KW - Theta neuron model
KW - Watanabe–Strogatz reduction
KW - Winfree model
U2 - 10.1186/s13408-020-00086-9
DO - 10.1186/s13408-020-00086-9
M3 - Review
AN - SCOPUS:85085510449
SN - 2190-8567
VL - 10
JO - Journal of Mathematical Neuroscience
JF - Journal of Mathematical Neuroscience
M1 - 9
ER -