Olfactory learning alters navigation strategies and behavioral variability in C. elegans

Chen, Kevin S., Pillow, Jonathan W., Leifer, Andrew M.
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Abstract

Animals adjust their behavioral response to sensory input adaptively depending on past experiences. The flexible brain computation is crucial for survival and is of great interest in neuroscience. The nematode C. elegans modulates its navigation behavior depending on the association of odor butanone with food (appetitive training) or starvation (aversive training), and will then climb up the butanone gradient or ignore it, respectively. However, the exact change in navigation strategy in response to learning is still unknown. Here we study the learned odor navigation in worms by combining precise experimental measurement and a novel descriptive model of navigation. Our model consists of two known navigation strategies in worms: biased random walk and weathervaning. We infer weights on these strategies by applying the model to worm navigation trajectories and the exact odor concentration it experiences. Compared to naive worms, appetitive trained worms up-regulate the biased random walk strategy, and aversive trained worms down-regulate the weathervaning strategy. The statistical model provides prediction with $>90 \%$ accuracy of the past training condition given navigation data, which outperforms the classical chemotaxis metric. We find that the behavioral variability is altered by learning, such that worms are less variable after training compared to naive ones. The model further predicts the learning-dependent response and variability under optogenetic perturbation of the olfactory neuron AWC$^\mathrm{ON}$. Lastly, we investigate neural circuits downstream from AWC$^\mathrm{ON}$ that are differentially recruited for learned odor-guided navigation. Together, we provide a new paradigm to quantify flexible navigation algorithms and pinpoint the underlying neural substrates.
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嗅觉学习改变秀丽隐杆线虫的导航策略和行为变异
动物根据过去的经验,适应性地调整对感官输入的行为反应。灵活的大脑计算是人类生存的关键,也是神经科学研究的热点。线虫根据气味丁酮与食物(食欲训练)或饥饿(厌恶训练)的关联调节其导航行为,然后分别爬上丁酮梯度或忽略丁酮梯度。然而,导航策略在学习过程中的确切变化仍是未知的。本文采用精确的实验测量和一种新的描述导航模型相结合的方法研究了蠕虫的习得性气味导航。我们的模型由两种已知的蠕虫导航策略组成:有偏随机漫步和风向标。我们通过将模型应用于蠕虫导航轨迹和它所经历的确切气味浓度来推断这些策略的权重。与幼稚蠕虫相比,食欲训练的蠕虫上调了偏倚随机漫步策略,厌恶训练的蠕虫下调了风向策略。在给定导航数据的过去训练条件下,该统计模型提供的预测精度为90 %,优于经典的化学趋向性度量。我们发现,行为的可变性是通过学习而改变的,因此,与幼稚的蠕虫相比,经过训练的蠕虫变化较少。该模型进一步预测了光遗传扰动下嗅觉神经元AWC$^\ mathm {ON}$的学习依赖反应和变异性。最后,我们研究了AWC$^\ mathm {ON}$下游的神经回路,这些神经回路在学习气味引导导航中被不同地招募。总之,我们提供了一个新的范例来量化灵活的导航算法和确定潜在的神经基质。
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