Princeton Neuroscience Institute, Princeton University, Princeton, NJ, USA.
Department of Physics, Princeton University, Princeton, NJ, USA.
Nat Neurosci. 2020 Dec;23(12):1537-1549. doi: 10.1038/s41593-020-00734-z. Epub 2020 Nov 9.
Over the past years, numerous methods have emerged to automate the quantification of animal behavior at a resolution not previously imaginable. This has opened up a new field of computational ethology and will, in the near future, make it possible to quantify in near completeness what an animal is doing as it navigates its environment. The importance of improving the techniques with which we characterize behavior is reflected in the emerging recognition that understanding behavior is an essential (or even prerequisite) step to pursuing neuroscience questions. The use of these methods, however, is not limited to studying behavior in the wild or in strictly ethological settings. Modern tools for behavioral quantification can be applied to the full gamut of approaches that have historically been used to link brain to behavior, from psychophysics to cognitive tasks, augmenting those measurements with rich descriptions of how animals navigate those tasks. Here we review recent technical advances in quantifying behavior, particularly in methods for tracking animal motion and characterizing the structure of those dynamics. We discuss open challenges that remain for behavioral quantification and highlight promising future directions, with a strong emphasis on emerging approaches in deep learning, the core technology that has enabled the markedly rapid pace of progress of this field. We then discuss how quantitative descriptions of behavior can be leveraged to connect brain activity with animal movements, with the ultimate goal of resolving the relationship between neural circuits, cognitive processes and behavior.
在过去的几年中,已经出现了许多方法来自动量化动物行为,其分辨率是以前无法想象的。这开辟了计算动物行为学的新领域,并将在不久的将来使我们能够近乎完整地量化动物在环境中导航时的行为。提高我们描述行为的技术的重要性反映在一个新兴的认识中,即理解行为是追求神经科学问题的必要(甚至是前提)步骤。然而,这些方法的使用不仅限于研究野外或严格的动物行为学环境中的行为。现代行为量化工具可以应用于从心理物理学到认知任务的所有历史上用于将大脑与行为联系起来的方法,通过对动物如何完成这些任务的丰富描述来增强这些测量。在这里,我们回顾了最近在量化行为方面的技术进步,特别是在跟踪动物运动和描述这些动态结构的方法方面。我们讨论了行为量化仍然存在的开放性挑战,并强调了有前途的未来方向,重点是深度学习等新兴方法,这是推动该领域显著快速发展的核心技术。然后,我们讨论了如何利用行为的定量描述将大脑活动与动物运动联系起来,最终目标是解决神经回路、认知过程和行为之间的关系。