Wang Yihong, Xu Xuying, Wang Rubin
Science School, East China University of Science and Technology, Shanghai, China.
Front Neurosci. 2018 Apr 25;12:264. doi: 10.3389/fnins.2018.00264. eCollection 2018.
Place cells are important elements in the spatial representation system of the brain. A considerable amount of experimental data and classical models are achieved in this area. However, an important question has not been addressed, which is how the three dimensional space is represented by the place cells. This question is preliminarily surveyed by energy coding method in this research. Energy coding method argues that neural information can be expressed by neural energy and it is convenient to model and compute for neural systems due to the global and linearly addable properties of neural energy. Nevertheless, the models of functional neural networks based on energy coding method have not been established. In this work, we construct a place cell network model to represent three dimensional space on an energy level. Then we define the place field and place field center and test the locating performance in three dimensional space. The results imply that the model successfully simulates the basic properties of place cells. The individual place cell obtains unique spatial selectivity. The place fields in three dimensional space vary in size and energy consumption. Furthermore, the locating error is limited to a certain level and the simulated place field agrees to the experimental results. In conclusion, this is an effective model to represent three dimensional space by energy method. The research verifies the energy efficiency principle of the brain during the neural coding for three dimensional spatial information. It is the first step to complete the three dimensional spatial representing system of the brain, and helps us further understand how the energy efficiency principle directs the locating, navigating, and path planning function of the brain.
位置细胞是大脑空间表征系统中的重要元素。在这一领域已经取得了大量的实验数据和经典模型。然而,一个重要的问题尚未得到解决,即位置细胞如何表征三维空间。本研究采用能量编码方法对这个问题进行了初步探讨。能量编码方法认为神经信息可以用神经能量来表达,并且由于神经能量的全局和线性可加特性,它便于对神经系统进行建模和计算。然而,基于能量编码方法的功能性神经网络模型尚未建立。在这项工作中,我们构建了一个位置细胞网络模型,以在能量水平上表征三维空间。然后我们定义了位置野和位置野中心,并测试了在三维空间中的定位性能。结果表明该模型成功地模拟了位置细胞的基本特性。单个位置细胞获得了独特的空间选择性。三维空间中的位置野在大小和能量消耗上各不相同。此外,定位误差被限制在一定水平,并且模拟的位置野与实验结果相符。总之,这是一个用能量方法表征三维空间的有效模型。该研究验证了大脑在对三维空间信息进行神经编码过程中的能量效率原则。这是完成大脑三维空间表征系统的第一步,并有助于我们进一步理解能量效率原则如何指导大脑的定位、导航和路径规划功能。