Blevins Ann S, Bassett Dani S, Scott Ethan K, Vanwalleghem Gilles C
Department of Bioengineering, School of Engineering and Applied Science, University of Pennsylvania, Philadelphia, PA, USA.
Department of Psychiatry, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA.
Netw Neurosci. 2022 Oct 1;6(4):1125-1147. doi: 10.1162/netn_a_00262. eCollection 2022.
Systems neuroscience is facing an ever-growing mountain of data. Recent advances in protein engineering and microscopy have together led to a paradigm shift in neuroscience; using fluorescence, we can now image the activity of every neuron through the whole brain of behaving animals. Even in larger organisms, the number of neurons that we can record simultaneously is increasing exponentially with time. This increase in the dimensionality of the data is being met with an explosion of computational and mathematical methods, each using disparate terminology, distinct approaches, and diverse mathematical concepts. Here we collect, organize, and explain multiple data analysis techniques that have been, or could be, applied to whole-brain imaging, using larval zebrafish as an example model. We begin with methods such as linear regression that are designed to detect relations between two variables. Next, we progress through network science and applied topological methods, which focus on the patterns of relations among many variables. Finally, we highlight the potential of generative models that could provide testable hypotheses on wiring rules and network progression through time, or disease progression. While we use examples of imaging from larval zebrafish, these approaches are suitable for any population-scale neural network modeling, and indeed, to applications beyond systems neuroscience. Computational approaches from network science and applied topology are not limited to larval zebrafish, or even to systems neuroscience, and we therefore conclude with a discussion of how such methods can be applied to diverse problems across the biological sciences.
系统神经科学正面临着堆积如山且不断增长的数据。蛋白质工程和显微镜技术的最新进展共同引发了神经科学的范式转变;利用荧光,我们现在能够在行为动物的整个大脑中对每个神经元的活动进行成像。即使在较大的生物体中,我们能够同时记录的神经元数量也在随时间呈指数增长。数据维度的这种增加伴随着计算和数学方法的激增,每种方法都使用不同的术语、独特的方法和多样的数学概念。在此,我们以斑马鱼幼体作为示例模型,收集、整理并解释多种已经或可能应用于全脑成像的数据分析技术。我们首先介绍诸如线性回归等旨在检测两个变量之间关系的方法。接下来,我们深入探讨网络科学和应用拓扑方法,这些方法关注多个变量之间的关系模式。最后,我们强调生成模型的潜力,它可以为布线规则、网络随时间的发展或疾病进展提供可检验的假设。虽然我们使用了斑马鱼幼体成像的例子,但这些方法适用于任何群体规模的神经网络建模,实际上,也适用于系统神经科学之外的应用。来自网络科学和应用拓扑学的计算方法并不局限于斑马鱼幼体,甚至也不局限于系统神经科学,因此我们在结尾讨论了这些方法如何应用于生物科学领域的各种问题。