Modeling zebrafish geotaxis as a feedback control process.

Daniel A Burbano-L, Maurizio Porfiri
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引用次数: 3

Abstract

Developing mathematical models of the feedback control process underlying animal behavior is of critical importance to understand their interactions with the environment and emotional responses. For instance, fish geotaxis (the tendency to swim at the bottom of the tank) is known to be a highly sensitive measure of anxiety, but how and why animals tend to display such a complex response is yet to be fully clarified. Leveraging the theory of stochastic differential equations, we develop a data-driven model of geotaxis in the form of a feedback control loop where fish use information about the hydrostatic pressure to dive towards the bottom of the tank. The proposed framework extends open-loop models by incorporating a simple, yet effective, control mechanism to explain geotaxis. We focus on the zebrafish animal model, which is a species of choice in the study of anxiety disorders. We calibrate the model using available experimental data on acute ethanol treatment of adult zebrafish, and demonstrate its effectiveness across a wide range of comparisons between theoretical predictions and empirical observations.

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作为反馈控制过程的斑马鱼地向性建模。
建立动物行为背后的反馈控制过程的数学模型对于理解它们与环境和情绪反应的相互作用至关重要。例如,众所周知,鱼类的地向性(在鱼缸底部游动的倾向)是一种高度敏感的焦虑指标,但动物倾向于表现出这种复杂反应的方式和原因尚不完全清楚。利用随机微分方程理论,我们以反馈控制回路的形式开发了一个数据驱动的地向性模型,其中鱼类利用有关静水压力的信息向水箱底部潜水。提出的框架扩展了开环模型,结合了一个简单而有效的控制机制来解释地质趋向性。我们专注于斑马鱼动物模型,这是研究焦虑症的一种选择。我们使用成年斑马鱼急性乙醇治疗的现有实验数据来校准模型,并通过理论预测和经验观察之间的广泛比较来证明其有效性。
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