Dynamic Neural Networking as a Basis for Plasticity in the Control of Heart Rate
Document Type
Article
Publication Date
1-1-2013
Description
A model is proposed in which the relationship between individual neurons within a neural network is dynamically changing to the effect of providing a measure of "plasticity" in the control of heart rate. The neural network on which the model is based consists of three populations of neurons residing in the central nervous system, the intrathoracic extracardiac nervous system, and the intrinsic cardiac nervous system. This hierarchy of neural centers is used to challenge the classical view that the control of heart rate, a key clinical index, resides entirely in central neuronal command (spinal cord, medulla oblongata, and higher centers). Our results indicate that dynamic networking allows for the possibility of an interplay among the three populations of neurons to the effect of altering the order of control of heart rate among them. This interplay among the three levels of control allows for different neural pathways for the control of heart rate to emerge under different blood flow demands or disease conditions and, as such, it has significant clinical implications because current understanding and treatment of heart rate anomalies are based largely on a single level of control and on neurons acting in unison as a single entity rather than individually within a (plastically) interconnected network.
Citation Information
Kember, G.; Armour, J. A.; and Zamir, M.. 2013. Dynamic Neural Networking as a Basis for Plasticity in the Control of Heart Rate. Journal of Theoretical Biology. Vol.317 39-46. https://doi.org/10.1016/j.jtbi.2012.09.024 PMID: 23041448 ISSN: 0022-5193