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Data management routines for reproducible research using the G-Node Python Client library

机译:使用G-Node Python客户端库进行可重复研究的数据管理例程

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摘要

Structured, efficient, and secure storage of experimental data and associated meta-information constitutes one of the most pressing technical challenges in modern neuroscience, and does so particularly in electrophysiology. The German INCF Node aims to provide open-source solutions for this domain that support the scientific data management and analysis workflow, and thus facilitate future data access and reproducible research. G-Node provides a data management system, accessible through an application interface, that is based on a combination of standardized data representation and flexible data annotation to account for the variety of experimental paradigms in electrophysiology. The G-Node Python Library exposes these services to the Python environment, enabling researchers to organize and access their experimental data using their familiar tools while gaining the advantages that a centralized storage entails. The library provides powerful query features, including data slicing and selection by metadata, as well as fine-grained permission control for collaboration and data sharing. Here we demonstrate key actions in working with experimental neuroscience data, such as building a metadata structure, organizing recorded data in datasets, annotating data, or selecting data regions of interest, that can be automated to large degree using the library. Compliant with existing de-facto standards, the G-Node Python Library is compatible with many Python tools in the field of neurophysiology and thus enables seamless integration of data organization into the scientific data workflow.
机译:实验数据和相关元信息的结构化,高效且安全的存储构成了现代神经科学中最紧迫的技术挑战之一,尤其是在电生理学中。德国INCF节点旨在为该领域提供开源解决方案,以支持科学数据管理和分析工作流程,从而促进将来的数据访问和可重复的研究。 G-Node提供了一个数据管理系统,可通过应用程序界面访问该系统,该系统基于标准化数据表示和灵活的数据注释的组合,以说明电生理学中各种实验范式。 G节点Python库将这些服务提供给Python环境,使研究人员可以使用熟悉的工具来组织和访问实验数据,同时获得集中存储所带来的优势。该库提供了强大的查询功能,包括按元数据对数据进行切片和选择,以及用于协作和数据共享的细粒度权限控制。在这里,我们演示了使用实验神经科学数据的关键操作,例如构建元数据结构,在数据集中组织记录的数据,注释数据或选择感兴趣的数据区域,这些可以使用库在很大程度上实现自动化。符合现有的事实上的标准,G节点Python库与神经生理学领域的许多Python工具兼容,因此可以将数据组织无缝集成到科学数据工作流程中。

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