Moy Kyle, Li Weiyu, Tran Huu Phuoc, Simonis Valerie, Story Evan, Brandon Christopher, Furst Jacob, Raicu Daniela, Kim Hongkyun
School of Computing, College of Computing and Digital Media, DePaul University, Chicago, Illinois, United States of America.
Department of Cell Biology and Anatomy, Chicago Medical School, Rosalind Franklin University, North Chicago, Illinois, United States of America.
PLoS One. 2015 Dec 29;10(12):e0145870. doi: 10.1371/journal.pone.0145870. eCollection 2015.
The nematode Caenorhabditis elegans provides a unique opportunity to interrogate the neural basis of behavior at single neuron resolution. In C. elegans, neural circuits that control behaviors can be formulated based on its complete neural connection map, and easily assessed by applying advanced genetic tools that allow for modulation in the activity of specific neurons. Importantly, C. elegans exhibits several elaborate behaviors that can be empirically quantified and analyzed, thus providing a means to assess the contribution of specific neural circuits to behavioral output. Particularly, locomotory behavior can be recorded and analyzed with computational and mathematical tools. Here, we describe a robust single worm-tracking system, which is based on the open-source Python programming language, and an analysis system, which implements path-related algorithms. Our tracking system was designed to accommodate worms that explore a large area with frequent turns and reversals at high speeds. As a proof of principle, we used our tracker to record the movements of wild-type animals that were freshly removed from abundant bacterial food, and determined how wild-type animals change locomotory behavior over a long period of time. Consistent with previous findings, we observed that wild-type animals show a transition from area-restricted local search to global search over time. Intriguingly, we found that wild-type animals initially exhibit short, random movements interrupted by infrequent long trajectories. This movement pattern often coincides with local/global search behavior, and visually resembles Lévy flight search, a search behavior conserved across species. Our mathematical analysis showed that while most of the animals exhibited Brownian walks, approximately 20% of the animals exhibited Lévy flights, indicating that C. elegans can use Lévy flights for efficient food search. In summary, our tracker and analysis software will help analyze the neural basis of the alteration and transition of C. elegans locomotory behavior in a food-deprived condition.
线虫秀丽隐杆线虫提供了一个独特的机会,可在单个神经元分辨率下探究行为的神经基础。在秀丽隐杆线虫中,可根据其完整的神经连接图谱构建控制行为的神经回路,并通过应用先进的遗传工具轻松评估,这些工具可调节特定神经元的活性。重要的是,秀丽隐杆线虫表现出几种复杂的行为,这些行为可以通过实验进行量化和分析,从而提供了一种评估特定神经回路对行为输出贡献的方法。特别是,运动行为可以用计算和数学工具进行记录和分析。在这里,我们描述了一个强大的单线虫追踪系统,它基于开源的Python编程语言,以及一个实现路径相关算法的分析系统。我们的追踪系统旨在适应那些在高速频繁转弯和反转的情况下探索大面积区域的线虫。作为原理验证,我们使用我们的追踪器记录刚从丰富细菌食物中取出的野生型动物的运动,并确定野生型动物在很长一段时间内如何改变运动行为。与之前的发现一致,我们观察到野生型动物随着时间的推移从区域受限的局部搜索转变为全局搜索。有趣的是,我们发现野生型动物最初表现出短而随机的运动,偶尔会被不频繁的长轨迹打断。这种运动模式通常与局部/全局搜索行为一致,并且在视觉上类似于 Lévy 飞行搜索,这是一种跨物种保守的搜索行为。我们的数学分析表明,虽然大多数动物表现出布朗运动,但约20%的动物表现出 Lévy 飞行,这表明秀丽隐杆线虫可以使用 Lévy 飞行进行高效的食物搜索。总之,我们的追踪器和分析软件将有助于分析食物匮乏条件下秀丽隐杆线虫运动行为改变和转变的神经基础。