IEEE Trans Vis Comput Graph. 2024 Jul;30(7):3945-3958. doi: 10.1109/TVCG.2023.3243668. Epub 2024 Jun 27.
One of the fundamental problems in neurobiological research is to understand how neural circuits generate behaviors in response to sensory stimuli. Elucidating such neural circuits requires anatomical and functional information about the neurons that are active during the processing of the sensory information and generation of the respective response, as well as an identification of the connections between these neurons. With modern imaging techniques, both morphological properties of individual neurons as well as functional information related to sensory processing, information integration and behavior can be obtained. Given the resulting information, neurobiologists are faced with the task of identifying the anatomical structures down to individual neurons that are linked to the studied behavior and the processing of the respective sensory stimuli. Here, we present a novel interactive tool that assists neurobiologists in the aforementioned tasks by allowing them to extract hypothetical neural circuits constrained by anatomical and functional data. Our approach is based on two types of structural data: brain regions that are anatomically or functionally defined, and morphologies of individual neurons. Both types of structural data are interlinked and augmented with additional information. The presented tool allows the expert user to identify neurons using Boolean queries. The interactive formulation of these queries is supported by linked views, using, among other things, two novel 2D abstractions of neural circuits. The approach was validated in two case studies investigating the neural basis of vision-based behavioral responses in zebrafish larvae. Despite this particular application, we believe that the presented tool will be of general interest for exploring hypotheses about neural circuits in other species, genera and taxa.
神经生物学研究的一个基本问题是理解神经回路如何响应感觉刺激产生行为。阐明这些神经回路需要关于在处理感觉信息和产生相应反应过程中活跃的神经元的解剖学和功能信息,以及这些神经元之间连接的识别。利用现代成像技术,可以获得单个神经元的形态特性以及与感觉处理、信息整合和行为相关的功能信息。鉴于所得到的信息,神经生物学家面临着一项任务,即识别与所研究的行为和相应感觉刺激处理相关的解剖结构,具体到单个神经元。在这里,我们提出了一种新颖的交互式工具,通过允许神经生物学家提取受解剖学和功能数据约束的假设性神经回路,来帮助他们完成上述任务。我们的方法基于两种类型的结构数据:在解剖学上或功能上定义的脑区,以及单个神经元的形态。这两种类型的结构数据相互关联,并附有其他信息。所提出的工具允许专家用户使用布尔查询来识别神经元。这些查询的交互式表述得到了链接视图的支持,其中使用了两种新颖的 2D 神经回路抽象。该方法在两项案例研究中得到了验证,这些研究调查了斑马鱼幼虫基于视觉的行为反应的神经基础。尽管有这个特殊的应用,但我们相信,所提出的工具将对探索其他物种、属和类群的神经回路假设具有普遍的兴趣。