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DeepBehavior: A Deep Learning Toolbox for Automated Analysis of Animal and Human Behavior Imaging Data

机译:DeepBehavior:用于自动分析动物和人类行为成像数据的深度学习工具箱

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摘要

Detailed behavioral analysis is key to understanding the brain-behavior relationship. Here, we present deep learning-based methods for analysis of behavior imaging data in mice and humans. Specifically, we use three different convolutional neural network architectures and five different behavior tasks in mice and humans and provide detailed instructions for rapid implementation of these methods for the neuroscience community. We provide examples of three dimensional (3D) kinematic analysis in the food pellet reaching task in mice, three-chamber test in mice, social interaction test in freely moving mice with simultaneous miniscope calcium imaging, and 3D kinematic analysis of two upper extremity movements in humans (reaching and alternating pronation/supination). We demonstrate that the transfer learning approach accelerates the training of the network when using images from these types of behavior video recordings. We also provide code for post-processing of the data after initial analysis with deep learning. Our methods expand the repertoire of available tools using deep learning for behavior analysis by providing detailed instructions on implementation, applications in several behavior tests, and post-processing methods and annotated code for detailed behavior analysis. Moreover, our methods in human motor behavior can be used in the clinic to assess motor function during recovery after an injury such as stroke.
机译:详细的行为分析是理解脑与行为关系的关键。在这里,我们提出了基于深度学习的方法来分析小鼠和人类的行为成像数据。具体来说,我们在小鼠和人类中使用三种不同的卷积神经网络体系结构和五种不同的行为任务,并为神经科学界快速实施这些方法提供了详细说明。我们提供了在食物颗粒到达小鼠中时进行三维(3D)运动分析,在小鼠中进行三腔测试,在同时进行微型钙成像的同时对自由移动的小鼠进行社交互动测试以及对两个上肢运动进行3D运动分析的示例。人类(到达和交替内旋/旋前)。我们证明,使用这些类型的行为视频录像中的图像时,转移学习方法可加快网络的培训。我们还提供了用于在经过深度学习的初步分析之后对数据进行后处理的代码。我们的方法通过提供有关实施的详细说明,几种行为测试中的应用程序以及用于进行详细行为分析的后处理方法和带注释的代码,从而通过深度学习来进行行为分析,从而扩展了可用工具的种类。此外,我们在人类运动行为方面的方法可在临床中用于评估受伤(例如中风)恢复期间的运动功能。

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