Jang Eric V, Ramirez-Vizcarrondo Carolina, Aizenman Carlos D, Khakhalin Arseny S
Department of Neuroscience, Brown University Providence, RI, USA.
Biology Program, Bard College Annandale-on-Hudson, NY, USA.
Front Neural Circuits. 2016 Nov 24;10:95. doi: 10.3389/fncir.2016.00095. eCollection 2016.
The neural circuits in the optic tectum of Xenopus tadpoles are selectively responsive to looming visual stimuli that resemble objects approaching the animal at a collision trajectory. This selectivity is required for adaptive collision avoidance behavior in this species, but its underlying mechanisms are not known. In particular, it is still unclear how the balance between the recurrent spontaneous network activity and the newly arriving sensory flow is set in this structure, and to what degree this balance is important for collision detection. Also, despite the clear indication for the presence of strong recurrent excitation and spontaneous activity, the exact topology of recurrent feedback circuits in the tectum remains elusive. In this study we take advantage of recently published detailed cell-level data from tadpole tectum to build an informed computational model of it, and investigate whether dynamic activation in excitatory recurrent retinotopic networks may on its own underlie collision detection. We consider several possible recurrent connectivity configurations and compare their performance for collision detection under different levels of spontaneous neural activity. We show that even in the absence of inhibition, a retinotopic network of quickly inactivating spiking neurons is naturally selective for looming stimuli, but this selectivity is not robust to neuronal noise, and is sensitive to the balance between direct and recurrent inputs. We also describe how homeostatic modulation of intrinsic properties of individual tectal cells can change selectivity thresholds in this network, and qualitatively verify our predictions in a behavioral experiment in freely swimming tadpoles.
非洲爪蟾蝌蚪视顶盖中的神经回路对类似物体以碰撞轨迹靠近动物的逼近视觉刺激具有选择性反应。这种选择性是该物种适应性避撞行为所必需的,但其潜在机制尚不清楚。特别是,目前仍不清楚在这种结构中,反复出现的自发网络活动与新传入的感觉信息流之间的平衡是如何设定的,以及这种平衡对碰撞检测有多重要。此外,尽管有明确迹象表明存在强烈的反复兴奋和自发活动,但视顶盖中反复反馈回路的确切拓扑结构仍然难以捉摸。在本研究中,我们利用最近发表的来自蝌蚪视顶盖的详细细胞水平数据,构建了一个信息丰富的计算模型,并研究兴奋性反复视网膜拓扑网络中的动态激活是否本身就构成碰撞检测的基础。我们考虑了几种可能的反复连接配置,并比较了它们在不同水平的自发神经活动下进行碰撞检测的性能。我们表明,即使在没有抑制的情况下,快速失活的发放神经元的视网膜拓扑网络对逼近刺激自然具有选择性,但这种选择性对神经元噪声不稳健,并且对直接输入和反复输入之间的平衡敏感。我们还描述了单个视顶盖细胞内在特性的稳态调节如何改变该网络中的选择性阈值,并在自由游动的蝌蚪的行为实验中定性验证了我们的预测。