Abstract

A major goal of neuroscience is understanding how neurons arrange themselves into neural networks that result in behavior. Most theoretical and experimental efforts have focused on a top-down approach which seeks to identify neuronal correlates of behaviors. This has been accomplished by effectively mapping specific behaviors to distinct neural patterns, or by creating computational models that produce a desired behavioral outcome. Nonetheless, these approaches have only implicitly considered the fact that neural tissue, like any other physical system, is subjected to several restrictions and boundaries of operations. Here, we proposed a new, bottom-up conceptual paradigm: The Energy Homeostasis Principle, where the balance between energy income, expenditure, and availability are the key parameters in determining the dynamics of neuronal phenomena found from molecular to behavioral levels. Neurons display high energy consumption relative to other cells, with metabolic consumption of the brain representing 20% of the whole-body oxygen uptake, contrasting with this organ representing only 2% of the body weight. Also, neurons have specialized surrounding tissue providing the necessary energy which, in the case of the brain, is provided by astrocytes. Moreover, and unlike other cell types with high energy demands such as muscle cells, neurons have strict aerobic metabolism. These facts indicate that neurons are highly sensitive to energy limitations, with Gibb's free energy dictating the direction of all cellular metabolic processes. From this activity, the largest energy, by far, is expended by action potentials and post-synaptic potentials; therefore, plasticity can be reinterpreted in terms of their energy context. Consequently, neurons, through their synapses, impose energy demands over post-synaptic neurons in a close loop-manner, modulating the dynamics of local circuits. Subsequently, the energy dynamics end up impacting the homeostatic mechanisms of neuronal networks. Furthermore, local energy management also emerges as a neural population property, where most of the energy expenses are triggered by sensory or other modulatory inputs. Local energy management in neurons may be sufficient to explain the emergence of behavior, enabling the assessment of which properties arise in neural circuits and how. Essentially, the proposal of the Energy Homeostasis Principle is also readily testable for simple neuronal networks.

Highlights

  • Throughout evolution, the development of the nervous system has enabled animals with the capacity to manifest evergrowing complex behavior, which has helped them survive in a changing environment

  • We propose that behavior may raise as an emergent property rooted in energy requirement of neurons, we would like to start from the level of biochemistry and metabolism

  • Glucose uptake and glycolytic rate of astrocytes are further increased in response to the activity of excitatory neurons, potentially as a consequence of the local rise of glutamate, ammonium (NH4), nitric oxide (NO), and importantly, K+ (Magistretti and Allaman, 2018)

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Summary

INTRODUCTION

Throughout evolution, the development of the nervous system has enabled animals with the capacity to manifest evergrowing complex behavior, which has helped them survive in a changing environment. A common and key element of these conceptual approaches has been to find neuronal correlates of behaviors, effectively associating specific behaviors with distinct neural patterns This top-down approach (using behavior as a reference to be mapped into neuronal circuits) has been very successful in providing single-unit or network models that can implement the observed behaviors, yet simultaneously, may make difficult the capture of the emergence of behavior, which is by-large a bottom-up phenomenon. The condition of maintaining neuronal homeostasis triggers synaptic changes in the individual but connected neurons, resulting in the local energy balance scaling up to a network property This conceptual framework supposes that energy management might be critical in determining plasticity, network functional connectivity, and behavior

CELLULAR HOMEOSTASIS AND GIBBS FREE ENERGY
ENERGY MANAGEMENT OF BRAIN NEURONS
What Is ATP Used for in Neurons?
Revisiting Neuronal Plasticity Under the Perspective of Energy Constraints
FROM MOLECULES TO BEHAVIORAL HOMEOSTASIS
From Neurons to a Neural Network
From Neural Networks to Behavior
PERSPECTIVES OF REINTERPRETATION
Modeling Strategies to Implement Energy Homeostasis Principle
The Neuron Doctrine and the Energy Homeostasis Principle
Reinterpreting Evidence Toward New Research Avenues
Findings
AUTHOR CONTRIBUTIONS
Full Text
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