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Automated predictive and interpretable inference of Caenorhabditis elegans escape dynamics

机译:秀丽隐杆线虫逃逸动态的自动预测性和可解释性推断。

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摘要

The roundworm Caenorhabditis elegans exhibits robust escape behavior in response to rapidly rising temperature. The behavior lasts for a few seconds, shows history dependence, involves both sensory and motor systems, and is too complicated to model mechanistically using currently available knowledge. Instead we model the process phenomenologically, and we use the Sir Isaac dynamical inference platform to infer the model in a fully automated fashion directly from experimental data. The inferred model requires incorporation of an unobserved dynamical variable and is biologically interpretable. The model makes accurate predictions about the dynamics of the worm behavior, and it can be used to characterize the functional logic of the dynamical system underlying the escape response. This work illustrates the power of modern artificial intelligence to aid in discovery of accurate and interpretable models of complex natural systems.
机译:round虫秀丽隐杆线虫表现出强大的逃逸行为,以响应快速升高的温度。该行为持续几秒钟,显示出历史依赖关系,涉及感觉和运动系统,并且过于复杂,无法使用当前可用的知识进行机械建模。取而代之的是,我们从现象学角度对过程进行建模,并使用艾萨克爵士(Ir Isaac)动态推理平台直接从实验数据中以全自动方式来推理模型。推断的模型需要纳入一个未观察到的动力学变量,并且具有生物学可解释性。该模型对蠕虫行为的动力学做出了准确的预测,并且可以用来表征逃逸响应背后的动力学系统的功能逻辑。这项工作说明了现代人工智能的力量,可以帮助发现复杂的自然系统的准确且可解释的模型。

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