Karbasi Amin, Salavati Amir Hesam, Vetterli Martin
Inference, Information and Decision Systems Group, Yale Institute for Network Science, Yale University, New Haven, CT, 06520, USA.
Laboratory of Audiovisual Communications (LCAV), School of Computer and Communication Sciences, Ecole Polytechnique Federale de Lausanne (EPFL), Lausanne, Switzerland.
J Comput Neurosci. 2018 Apr;44(2):253-272. doi: 10.1007/s10827-018-0678-8. Epub 2018 Feb 20.
The connectivity of a neuronal network has a major effect on its functionality and role. It is generally believed that the complex network structure of the brain provides a physiological basis for information processing. Therefore, identifying the network's topology has received a lot of attentions in neuroscience and has been the center of many research initiatives such as Human Connectome Project. Nevertheless, direct and invasive approaches that slice and observe the neural tissue have proven to be time consuming, complex and costly. As a result, the inverse methods that utilize firing activity of neurons in order to identify the (functional) connections have gained momentum recently, especially in light of rapid advances in recording technologies; It will soon be possible to simultaneously monitor the activities of tens of thousands of neurons in real time. While there are a number of excellent approaches that aim to identify the functional connections from firing activities, the scalability of the proposed techniques plays a major challenge in applying them on large-scale datasets of recorded firing activities. In exceptional cases where scalability has not been an issue, the theoretical performance guarantees are usually limited to a specific family of neurons or the type of firing activities. In this paper, we formulate the neural network reconstruction as an instance of a graph learning problem, where we observe the behavior of nodes/neurons (i.e., firing activities) and aim to find the links/connections. We develop a scalable learning mechanism and derive the conditions under which the estimated graph for a network of Leaky Integrate and Fire (LIf) neurons matches the true underlying synaptic connections. We then validate the performance of the algorithm using artificially generated data (for benchmarking) and real data recorded from multiple hippocampal areas in rats.
神经网络的连通性对其功能和作用有重大影响。人们普遍认为,大脑复杂的网络结构为信息处理提供了生理基础。因此,识别网络拓扑结构在神经科学领域受到了广泛关注,并成为许多研究计划(如人类连接组计划)的核心。然而,直接和侵入性的方法,即切片并观察神经组织,已被证明既耗时、复杂又昂贵。因此,利用神经元放电活动来识别(功能)连接的逆方法最近得到了发展,特别是鉴于记录技术的快速进步;很快就有可能同时实时监测数万个神经元的活动。虽然有许多优秀的方法旨在从放电活动中识别功能连接,但所提出技术的可扩展性在将它们应用于记录放电活动的大规模数据集时构成了重大挑战。在可扩展性不是问题的特殊情况下,理论性能保证通常仅限于特定的神经元家族或放电活动类型。在本文中,我们将神经网络重建表述为一个图学习问题的实例,其中我们观察节点/神经元的行为(即放电活动)并旨在找到链接/连接。我们开发了一种可扩展的学习机制,并推导了泄漏积分发放(LIF)神经元网络的估计图与真实潜在突触连接相匹配的条件。然后,我们使用人工生成的数据(用于基准测试)和从大鼠多个海马区域记录的真实数据来验证算法的性能。