Department of Computer Science and Engineering, University of Notre Dame, Notre Dame, IN, 46556, USA.
Department of Biological Sciences, University of Notre Dame, Notre Dame, IN, 46556, USA.
Sci Rep. 2021 Jan 13;11(1):1002. doi: 10.1038/s41598-020-79772-3.
The analysis of fish behavior in response to odor stimulation is a crucial component of the general study of cross-modal sensory integration in vertebrates. In zebrafish, the centrifugal pathway runs between the olfactory bulb and the neural retina, originating at the terminalis neuron in the olfactory bulb. Any changes in the ambient odor of a fish's environment warrant a change in visual sensitivity and can trigger mating-like behavior in males due to increased GnRH signaling in the terminalis neuron. Behavioral experiments to study this phenomenon are commonly conducted in a controlled environment where a video of the fish is recorded over time before and after the application of chemicals to the water. Given the subtleties of behavioral change, trained biologists are currently required to annotate such videos as part of a study. This process of manually analyzing the videos is time-consuming, requires multiple experts to avoid human error/bias and cannot be easily crowdsourced on the Internet. Machine learning algorithms from computer vision, on the other hand, have proven to be effective for video annotation tasks because they are fast, accurate, and, if designed properly, can be less biased than humans. In this work, we propose to automate the entire process of analyzing videos of behavior changes in zebrafish by using tools from computer vision, relying on minimal expert supervision. The overall objective of this work is to create a generalized tool to predict animal behaviors from videos using state-of-the-art deep learning models, with the dual goal of advancing understanding in biology and engineering a more robust and powerful artificial information processing system for biologists.
鱼类对气味刺激的行为分析是脊椎动物跨模态感觉综合研究的重要组成部分。在斑马鱼中,离心途径在嗅球和神经视网膜之间运行,起源于嗅球中的终极管神经元。鱼类环境中周围气味的任何变化都需要改变视觉灵敏度,并由于终极管神经元中 GnRH 信号的增加而引发雄性的交配行为。研究这种现象的行为实验通常在受控环境中进行,在向水中施加化学物质前后,会随时间记录鱼类的视频。鉴于行为变化的微妙性,目前需要经过训练的生物学家来注释此类视频,作为研究的一部分。手动分析视频的过程既耗时又耗力,需要多位专家来避免人为错误/偏见,并且不能在互联网上轻松进行众包。另一方面,计算机视觉领域的机器学习算法已被证明对视频注释任务非常有效,因为它们速度快、准确,如果设计得当,它们的偏见可能比人类更小。在这项工作中,我们提议通过使用计算机视觉工具,在最小的专家监督下,自动化斑马鱼行为变化视频的整个分析过程。这项工作的总体目标是创建一个通用工具,使用最先进的深度学习模型从视频中预测动物行为,双重目标是推进生物学和工程学领域的理解,为生物学家设计一个更强大的人工信息处理系统。