Anderson R W, Das S, Keller E L
Smith-Kettlewell Eye Research Institute, San Francisco, CA 94115, USA.
J Comput Neurosci. 1998 Dec;5(4):421-41. doi: 10.1023/a:1008841412857.
We report a method using radial basis function (RBF) networks to estimate the time evolution of population activity in topologically organized neural structures from single-neuron recordings. This is an important problem in neuroscience research, as such estimates may provide insights into systems-level function of these structures. Since single-unit neural data tends to be unevenly sampled and highly variable under similar behavioral conditions, obtaining such estimates is a difficult task. In particular, a class of cells in the superior colliculus called buildup neurons can have very narrow regions of saccade vectors for which they discharge at high rates but very large surround regions over which they discharge at low, but not zero, levels. Estimating the dynamic movement fields for these cells for two spatial dimensions at closely spaced timed intervals is a difficult problem, and no general method has been described that can be applied to all buildup cells. Estimation of individual collicular cells' spatiotemporal movement fields is a prerequisite for obtaining reliable two-dimensional estimates of the population activity on the collicular motor map during saccades. Therefore, we have developed several computational-geometry-based algorithms that regularize the data before computing a surface estimation using RBF networks. The method is then expanded to the problem of estimating simultaneous spatiotemporal activity occurring across the superior colliculus during a single movement (the inverse problem). In principle, this methodology could be applied to any neural structure with a regular, two-dimensional organization, provided a sufficient spatial distribution of sampled neurons is available.
我们报告了一种使用径向基函数(RBF)网络从单神经元记录估计拓扑组织神经结构中群体活动时间演变的方法。这是神经科学研究中的一个重要问题,因为此类估计可能为这些结构的系统级功能提供见解。由于单单元神经数据在相似行为条件下往往采样不均匀且高度可变,获得此类估计是一项艰巨任务。特别是,上丘中一类称为增强神经元的细胞,其扫视向量的区域非常狭窄,在该区域它们以高速率放电,但周围有非常大的区域,在这些区域它们以低但不为零的水平放电。在紧密间隔的时间间隔内估计这些细胞在两个空间维度上的动态运动场是一个难题,并且尚未描述可应用于所有增强细胞的通用方法。估计单个丘细胞的时空运动场是在扫视期间获得丘运动图谱上群体活动可靠二维估计的先决条件。因此,我们开发了几种基于计算几何的算法,在使用RBF网络计算表面估计之前对数据进行正则化。然后将该方法扩展到估计单个运动期间上丘同时发生的时空活动的问题(逆问题)。原则上,只要有足够的采样神经元空间分布,这种方法可应用于任何具有规则二维组织的神经结构。