Pospisil Dean A, Aragon Max J, Dorkenwald Sven, Matsliah Arie, Sterling Amy R, Schlegel Philipp, Yu Szi-Chieh, McKellar Claire E, Costa Marta, Eichler Katharina, Jefferis Gregory S X E, Murthy Mala, Pillow Jonathan W
Princeton Neuroscience Institute, Princeton University, Princeton, NJ, USA.
Computer Science Department, Princeton University, Princeton, NJ, USA.
bioRxiv. 2024 Feb 9:2023.10.31.564922. doi: 10.1101/2023.10.31.564922.
A long-standing goal of neuroscience is to obtain a causal model of the nervous system. This would allow neuroscientists to explain animal behavior in terms of the dynamic interactions between neurons. The recently reported whole-brain fly connectome [1-7] specifies the synaptic paths by which neurons can affect each other but not whether, or how, they do affect each other in vivo. To overcome this limitation, we introduce a novel combined experimental and statistical strategy for efficiently learning a causal model of the fly brain, which we refer to as the "effectome". Specifically, we propose an estimator for a dynamical systems model of the fly brain that uses stochastic optogenetic perturbation data to accurately estimate causal effects and the connectome as a prior to drastically improve estimation efficiency. We then analyze the connectome to propose circuits that have the greatest total effect on the dynamics of the fly nervous system. We discover that, fortunately, the dominant circuits significantly involve only relatively small populations of neurons-thus imaging, stimulation, and neuronal identification are feasible. Intriguingly, we find that this approach also re-discovers known circuits and generates testable hypotheses about their dynamics. Overall, our analyses of the connectome provide evidence that global dynamics of the fly brain are generated by a large collection of small and often anatomically localized circuits operating, largely, independently of each other. This in turn implies that a causal model of a brain, a principal goal of systems neuroscience, can be feasibly obtained in the fly.
神经科学的一个长期目标是获得神经系统的因果模型。这将使神经科学家能够根据神经元之间的动态相互作用来解释动物行为。最近报道的全脑果蝇连接组[1-7]确定了神经元之间相互影响的突触路径,但没有说明它们在体内是否以及如何相互影响。为了克服这一局限性,我们引入了一种新颖的结合实验和统计的策略,用于高效地学习果蝇大脑的因果模型,我们将其称为“效应组”。具体而言,我们提出了一种用于果蝇大脑动态系统模型的估计器,该估计器使用随机光遗传学扰动数据来准确估计因果效应,并将连接组作为先验信息以大幅提高估计效率。然后,我们分析连接组以提出对果蝇神经系统动态具有最大总体影响的回路。我们发现,幸运的是,主要回路仅显著涉及相对较少的神经元群体——因此成像、刺激和神经元识别是可行的。有趣的是,我们发现这种方法还重新发现了已知回路,并生成了关于其动态的可测试假设。总体而言,我们对连接组的分析提供了证据,表明果蝇大脑的全局动态是由大量小的且通常在解剖学上局部化的回路产生的,这些回路在很大程度上彼此独立运作。这反过来意味着,系统神经科学的一个主要目标——大脑的因果模型,在果蝇中是可以切实获得的。