Paprocki Bartosz, Szczepanski Janusz
Institute of Mechanics and Applied Computer Science, Kazimierz Wielki University, Bydgoszcz, Kopernika 1, Poland.
Brain Res. 2013 Nov 6;1536:135-43. doi: 10.1016/j.brainres.2013.07.024. Epub 2013 Jul 23.
Organisms often evolve as compromises, and many of these compromises can be expressed in terms of energy efficiency. Thus, many authors analyze energetic costs processes during information transmission in the brain. In this paper we study information transmission rate per energy used in a class of ring, brain inspired neural networks, which we assume to involve components like excitatory and inhibitory neurons or long-range connections. Choosing model of neuron we followed a probabilistic approach proposed by Levy and Baxter (2002), which contains all essential qualitative mechanisms participating in the transmission process and provides results consistent with physiologically observed values. Our research shows that all network components, in broad range of conditions, significantly improve the information-energetic efficiency. It turned out that inhibitory neurons can improve the information-energetic transmission efficiency by 50%, while long-range connections can improve the efficiency even by 70%. We also found that the most effective is the network with the smallest size: we observed that two times increase of the size can cause even three times decrease of the information-energetic efficiency. This article is part of a Special Issue entitled Neural Coding 2012.
生物体的进化往往是一种折衷,其中许多折衷可以用能量效率来表示。因此,许多作者分析了大脑信息传递过程中的能量消耗过程。在本文中,我们研究了一类受大脑启发的环形神经网络中每单位能量的信息传递速率,我们假设这类网络包含兴奋性和抑制性神经元或长程连接等组件。在选择神经元模型时,我们遵循了Levy和Baxter(2002)提出的概率方法,该方法包含了参与传递过程的所有基本定性机制,并提供了与生理观测值一致的结果。我们的研究表明,在广泛的条件下,所有网络组件都能显著提高信息能量效率。结果表明,抑制性神经元可将信息能量传递效率提高50%,而长程连接甚至可将效率提高70%。我们还发现,最有效的是尺寸最小的网络:我们观察到,尺寸增加两倍甚至会导致信息能量效率降低三倍。本文是名为《神经编码2012》特刊的一部分。