Smith V Anne, Yu Jing, Smulders Tom V, Hartemink Alexander J, Jarvis Erich D
Department of Neurobiology, Duke University Medical Center, Durham, North Carolina, United States of America.
PLoS Comput Biol. 2006 Nov 24;2(11):e161. doi: 10.1371/journal.pcbi.0020161. Epub 2006 Oct 12.
Determining how information flows along anatomical brain pathways is a fundamental requirement for understanding how animals perceive their environments, learn, and behave. Attempts to reveal such neural information flow have been made using linear computational methods, but neural interactions are known to be nonlinear. Here, we demonstrate that a dynamic Bayesian network (DBN) inference algorithm we originally developed to infer nonlinear transcriptional regulatory networks from gene expression data collected with microarrays is also successful at inferring nonlinear neural information flow networks from electrophysiology data collected with microelectrode arrays. The inferred networks we recover from the songbird auditory pathway are correctly restricted to a subset of known anatomical paths, are consistent with timing of the system, and reveal both the importance of reciprocal feedback in auditory processing and greater information flow to higher-order auditory areas when birds hear natural as opposed to synthetic sounds. A linear method applied to the same data incorrectly produces networks with information flow to non-neural tissue and over paths known not to exist. To our knowledge, this study represents the first biologically validated demonstration of an algorithm to successfully infer neural information flow networks.
确定信息如何沿着大脑的解剖学通路流动,是理解动物如何感知其环境、学习和行为的一项基本要求。人们曾尝试使用线性计算方法来揭示这种神经信息流,但已知神经相互作用是非线性的。在此,我们证明,我们最初开发的一种动态贝叶斯网络(DBN)推理算法,原本用于从通过微阵列收集的基因表达数据推断非线性转录调控网络,现在也成功地从通过微电极阵列收集的电生理数据推断出非线性神经信息流网络。我们从鸣禽听觉通路中恢复的推断网络被正确地限制在已知解剖学路径的一个子集中,与系统的时间安排一致,并且揭示了在听觉处理中相互反馈的重要性,以及当鸟类听到自然声音而非合成声音时,向高阶听觉区域的信息流更大。应用于相同数据的线性方法错误地产生了具有流向非神经组织的信息流且跨越已知不存在路径的网络。据我们所知,这项研究代表了首次通过生物学验证成功推断神经信息流网络的算法演示。