首页> 外文期刊>Frontiers in Neuroinformatics >Handling Metadata in a Neurophysiology Laboratory
【24h】

Handling Metadata in a Neurophysiology Laboratory

机译:在神经生理学实验室中处理元数据

获取原文
           

摘要

To date, non-reproducibility of neurophysiological research is a matter of intense discussion in the scientific community. A crucial component to enhance reproducibility is to comprehensively collect and store metadata, that is, all information about the experiment, the data, and the applied preprocessing steps on the data, such that they can be accessed and shared in a consistent and simple manner. However, the complexity of experiments, the highly specialized analysis workflows and a lack of knowledge on how to make use of supporting software tools often overburden researchers to perform such a detailed documentation. For this reason, the collected metadata are often incomplete, incomprehensible for outsiders or ambiguous. Based on our research experience in dealing with diverse datasets, we here provide conceptual and technical guidance to overcome the challenges associated with the collection, organization, and storage of metadata in a neurophysiology laboratory. Through the concrete example of managing the metadata of a complex experiment that yields multi-channel recordings from monkeys performing a behavioral motor task, we practically demonstrate the implementation of these approaches and solutions with the intention that they may be generalized to other projects. Moreover, we detail five use cases that demonstrate the resulting benefits of constructing a well-organized metadata collection when processing or analyzing the recorded data, in particular when these are shared between laboratories in a modern scientific collaboration. Finally, we suggest an adaptable workflow to accumulate, structure and store metadata from different sources using, by way of example, the odML metadata framework.
机译:迄今为止,神经生理学研究的不可再现性在科学界引起了广泛的讨论。增强可重复性的关键组件是全面收集和存储元数据,即有关实验,数据和数据上应用的预处理步骤的所有信息,以便可以以一致且简单的方式访问和共享它们。但是,实验的复杂性,高度专业化的分析工作流程以及缺乏有关如何使用支持软件工具的知识,常常使研究人员难以进行如此详尽的文档编制。因此,收集的元数据通常不完整,局外人难以理解或含糊不清。基于我们在处理各种数据集方面的研究经验,我们在此提供概念和技术指导,以克服与神经生理学实验室中元数据的收集,组织和存储相关的挑战。通过管理一个复杂实验的元数据的具体示例,该实验从执行行为运动任务的猴子获得多通道记录,我们实际演示了这些方法和解决方案的实现,目的是将它们推广到其他项目。此外,我们详细介绍了五个用例,这些用例说明了在处理或分析记录的数据时,特别是当实验室之间在现代科学合作中共享这些数据时,构建组织良好的元数据集合所带来的好处。最后,我们建议使用odML元数据框架,以适应性的工作流来积累,构造和存储来自不同来源的元数据。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号