Elements of a stochastic 3D prediction engine in larval zebrafish prey capture

Elife. 2019 Nov 26:8:e51975. doi: 10.7554/eLife.51975.

Abstract

The computational principles underlying predictive capabilities in animals are poorly understood. Here, we wondered whether predictive models mediating prey capture could be reduced to a simple set of sensorimotor rules performed by a primitive organism. For this task, we chose the larval zebrafish, a tractable vertebrate that pursues and captures swimming microbes. Using a novel naturalistic 3D setup, we show that the zebrafish combines position and velocity perception to construct a future positional estimate of its prey, indicating an ability to project trajectories forward in time. Importantly, the stochasticity in the fish's sensorimotor transformations provides a considerable advantage over equivalent noise-free strategies. This surprising result coalesces with recent findings that illustrate the benefits of biological stochasticity to adaptive behavior. In sum, our study reveals that zebrafish are equipped with a recursive prey capture algorithm, built up from simple stochastic rules, that embodies an implicit predictive model of the world.

Keywords: animal cognition; biological stochasticity; computation; neuroscience; physical models; physics of living systems; prediction; prey capture; zebrafish.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Animals
  • Larva / physiology
  • Models, Neurological*
  • Predatory Behavior*
  • Sensorimotor Cortex / physiology
  • Visual Perception
  • Zebrafish / physiology*