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PyRhO: A Multiscale Optogenetics Simulation Platform

机译:Pyrho:多尺度Optimetics仿真平台

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Optogenetics has become a key tool for understanding the function of neural circuits and controlling their behavior. An array of directly light driven opsins have been genetically isolated from several families of organisms, with a wide range of temporal and spectral properties. In order to characterize, understand and apply these opsins, we present an integrated suite of open-source, multi-scale computational tools called PyRhO. The purpose of developing PyRhO is three-fold: (i) to characterize new (and existing) opsins by automatically fitting a minimal set of experimental data to three-, four-, or six-state kinetic models, (ii) to simulate these models at the channel, neuron and network levels, and (iii) provide functional insights through model selection and virtual experiments in silico . The module is written in Python with an additional IPython/Jupyter notebook based GUI, allowing models to be fit, simulations to be run and results to be shared through simply interacting with a webpage. The seamless integration of model fitting algorithms with simulation environments (including NEURON and Brian2) for these virtual opsins will enable neuroscientists to gain a comprehensive understanding of their behavior and rapidly identify the most suitable variant for application in a particular biological system. This process may thereby guide not only experimental design and opsin choice but also alterations of the opsin genetic code in a neuro-engineering feed-back loop. In this way, we expect PyRhO will help to significantly advance optogenetics as a tool for transforming biological sciences.
机译:Optimetics已成为理解神经电路功能和控制其行为的关键工具。一系列直接光驱动的OPSINS已经从几个生物体遗传上分离出来,具有广泛的时间和光谱性能。为了表征,理解和应用这些OPSINS,我们展示了一个名为Pyrho的综合开源,多尺度计算工具套件。开发Pyrho的目的是三倍:(i)通过自动将最小的实验数据组合到三个,四个或六个状态动力学模型(ii)来表征新的(和现有的)Opsins以模拟这些通道,神经元和网络级别的模型,(iii)通过硅中的模型选择和虚拟实验提供功能洞察。该模块是用额外的IPython / Jupyter Notebook的GUI用Python编写,允许模型适合,要运行模拟,并通过简单地与网页交互共享。模型拟合算法与模拟环境(包括Neuron和Brian2)的无缝集成这些虚拟OPSINS将使神经科学家能够全面了解其行为,并迅速识别在特定生物系统中应用最合适的变体。因此,该过程不仅引导了实验设计和OPSIN选择,而且还可以在神经工程反馈环中改变OPSIN遗传密码。通过这种方式,我们预计Pyrho将有助于将Optimetics显着推进作为改变生物科学的工具。

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