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Neural Systems Language: A Formal Modeling Language for the Systematic Description Unambiguous Communication and Automated Digital Curation of Neural Connectivity

机译:神经系统语言:用于系统描述明确通信和神经连接自动数字化的形式化建模语言

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摘要

Systematic description and the unambiguous communication of findings and models remain among the unresolved fundamental challenges in systems neuroscience. No common descriptive frameworks exist to describe systematically the connective architecture of the nervous system, even at the grossest level of observation. Furthermore, the accelerating volume of novel data generated on neural connectivity outpaces the rate at which this data is curated into neuroinformatics databases to synthesize digitally systems-level insights from disjointed reports and observations. To help address these challenges, we propose the Neural Systems Language (NSyL). NSyL is a modeling language to be used by investigators to encode and communicate systematically reports of neural connectivity from neuroanatomy and brain imaging. NSyL engenders systematic description and communication of connectivity irrespective of the animal taxon described, experimental or observational technique implemented, or nomenclature referenced. As a language, NSyL is internally consistent, concise, and comprehensible to both humans and computers. NSyL is a promising development for systematizing the representation of neural architecture, effectively managing the increasing volume of data on neural connectivity and streamlining systems neuroscience research. Here we present similar precedent systems, how NSyL extends existing frameworks, and the reasoning behind NSyL’s development. We explore NSyL’s potential for balancing robustness and consistency in representation by encoding previously reported assertions of connectivity from the literature as examples. Finally, we propose and discuss the implications of a framework for how NSyL will be digitally implemented in the future to streamline curation of experimental results and bridge the gaps among anatomists, imagers, and neuroinformatics databases.
机译:系统描述和发现与模型的明确沟通仍然是系统神经科学中尚未解决的基本挑战。没有通用的描述性框架可以系统地描述神经系统的结缔结构,即使是在最粗略的观察水平下也是如此。此外,在神经连通性上生成的新颖数据的数量不断增长,其速度超过了将这些数据整理到神经信息学数据库中以从脱节的报告和观察中综合数字化系统级见解的速度。为了帮助应对这些挑战,我们提出了神经系统语言(NSyL)。 NSyL是一种建模语言,研究人员可以使用它来编码和系统交流来自神经解剖学和大脑成像的神经连接性报告。无论描述的动物类群,已实施的实验或观察技术,还是所引用的术语,NSyL都可以对连接性进行系统的描述和通信。作为一种语言,NSyL在内部对于人类和计算机都是一致的,简洁的和易于理解的。 NSyL是将神经体系结构的表示系统化,有效管理不断增长的神经连接数据量和简化神经科学研究系统的有前途的发展。在这里,我们介绍了类似的先例系统,NSyL如何扩展现有框架以及NSyL开发背后的原因。我们以文献中以前报道的关于连接性的断言为例,来探索NSyL在平衡表示的鲁棒性和一致性方面的潜力。最后,我们提出并讨论了一个框架的含义,该框架对于将来如何以数字方式实现NSyL,以简化实验结果的管理并弥合解剖学家,成像者和神经信息学数据库之间的差距。

著录项

  • 期刊名称 other
  • 作者单位
  • 年(卷),期 -1(521),13
  • 年度 -1
  • 页码 2889–2906
  • 总页数 18
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

  • 入库时间 2022-08-21 11:21:07

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