Quantifying Planarian Behavior as an Introduction to Object Tracking and Signal Processing

N. Stowell, Tapan Goel, Vir Shetty, Jocelyne Noveral, Eva-Maria S. Collins
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引用次数: 2

Abstract

Answers to mechanistic questions about biological phenomena require fluency in a variety of molecular biology techniques and physical concepts. Here, we present an interdisciplinary approach to introducing undergraduate students to an important problem in the areas of animal behavior and neuroscience—the neuronal control of animal behavior. In this lab module, students explore planarian behavior by quantitative image and data analysis with freely available software and low-cost resources. Planarians are ∼1–2-cm-long aquatic free-living flatworms famous for their regeneration abilities. They are inexpensive and easy to maintain, handle, and perturb, and their fairly large size allows for image acquisition with a webcam, which makes this lab module accessible and scalable. Our lab module integrates basic physical concepts such as center of mass, velocity and speed, periodic signals, and time series analysis in the context of a biological system. The module is designed to attract students with diverse disciplinary backgrounds. It challenges the students to form hypotheses about behavior and equips them with a basic but broadly applicable toolkit to achieve this quantitatively. We give a detailed description of the necessary resources and show how to implement the module. We also provide suggestions for advanced exercises and possible extensions. Finally, we provide student feedback from a pilot implementation.
量化Planarian行为作为目标跟踪和信号处理的引子
要回答有关生物现象的机械问题,需要熟练掌握各种分子生物学技术和物理概念。在这里,我们提出了一种跨学科的方法,向本科生介绍动物行为和神经科学领域的一个重要问题——动物行为的神经元控制。在本实验模块中,学生将使用免费软件和低成本资源,通过定量图像和数据分析来探索涡虫的行为。涡虫是一种长约1 - 2厘米的水生自由生活扁虫,以其再生能力而闻名。它们价格低廉,易于维护,处理和扰动,并且它们相当大的尺寸允许使用网络摄像头进行图像采集,这使得该实验室模块易于访问和扩展。我们的实验模块集成了基本的物理概念,如质心,速度和速度,周期信号和时间序列分析在生物系统的背景下。该模块旨在吸引具有不同学科背景的学生。它挑战学生形成对行为的假设,并装备他们一个基本的,但广泛适用的工具包来实现这一定量。我们给出了必要资源的详细描述,并展示了如何实现该模块。我们还为高级练习和可能的扩展提供建议。最后,我们从试点实施中提供学生反馈。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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