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Knowledge Representation and Data Mining of Neuronal Morphologies Using Neuroinformatics Tools and Formal Ontologies

机译:使用神经信息学工具和形式本体的神经形态学知识表示和数据挖掘

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摘要

Neuroscience can greatly benefit from using novel methods in computer science and informatics, which enable knowledge discovery in unexpected ways. Currently one of the biggest challenges in Neuroscience is to map the functional circuitry of the brain. The applications of this goal range from understanding structural reorganization of neurons to applying them for smart brain-inspired technology. Mining and comprehending information from micro and/or macro level data generated at various spatial and temporal resolutions is crucial to these goals. This research proposes analytical and search tools that contribute towards a more complete understanding of functional circuitry by transforming complex biological information into useful applied knowledge. As more and more data is being generated informatics tools becomes indispensable. The first aim of my research introduces a Neuroinformatic tool called L-Measure (LM) for quantifying large-scale neuroanatomical data, which is not only particularly applicable to neuronal morphological reconstructions, but also to any other generic tree shaped 3D structural data (e.g., angiography, glial processes). One of the main functions of L-Measure is comparative geometrical and topological analyses of groups of neurons. Community-contributed digitally reconstructed neurons available at NeuroMorpho.Org constitute a "big data" research opportunity for neuroscience discovery beyond the approaches typically pursued in single laboratories. L-Measure is expanded and scaled for a database-wide statistical analysis for investigating robust morphological patterns among heterogeneous neuronal reconstructions. In addition, its development, maintenance and routine usage for wide range of data stands as an exemplar for providing a sustainable software resource to the field. The second aim of this research focuses on enabling knowledge discovery through smart context-based searches as opposed to string-based searches on the shared experimental metadata. Neuroanatomical data that is annotated based on inconsistent terminologies in the literature has limited means for re-use or integration. To solve this problem, a novel approach of representing metadata as machine-readable hierarchies is proposed. The hierarchies represented as formal ontologies constitute the knowledge-base for ontology-based search engine OntoSearch for mining thousands of reconstructions in NeuroMorpho.Org. Applying hierarchical search logic and semantic web technologies, OntoSearch provides direct and fuzzy matches to the primary metadata terminologies. Facilitated by a simple auto-complete enabled search bar, OntoSearch enhances data visibility by at least three times compared to the traditional relational database driven querying.
机译:神经科学可以从在计算机科学和信息学中使用新颖的方法中受益匪浅,从而可以以意想不到的方式发现知识。当前,神经科学领域的最大挑战之一是绘制大脑的功能电路图。该目标的应用范围从理解神经元的结构重组到将其应用于智能脑启发技术。从以各种空间和时间分辨率生成的微观和/或宏观数据中挖掘和理解信息对于这些目标至关重要。这项研究提出了分析和搜索工具,通过将复杂的生物信息转化为有用的应用知识,有助于更全面地了解功能电路。随着越来越多的数据生成,信息学工具变得不可缺少。我研究的第一个目标是引入一种称为L-Measure(LM)的神经信息学工具,用于量化大规模神经解剖学数据,该工具不仅特别适用于神经元形态重建,而且还适用于任何其他通用树形3D结构数据(例如,血管造影,神经胶质过程)。 L-Measure的主要功能之一是对神经元组进行几何和拓扑比较分析。 NeuroMorpho.Org提供的由社区贡献的数字重建神经元构成了神经科学发现的“大数据”研究机会,超越了单个实验室通常采用的方法。 L-Measure进行了扩展和缩放,以进行数据库范围的统计分析,以研究异构神经元重建之间的稳健形态学模式。此外,它的开发,维护和对广泛数据的常规使用是为该领域提供可持续软件资源的典范。这项研究的第二个目标侧重于通过基于智能上下文的搜索实现知识发现,而不是基于共享实验元数据上的基于字符串的搜索。在文献中基于不一致的术语进行注释的神经解剖学数据具有有限的重复使用或整合手段。为了解决这个问题,提出了一种将元数据表示为机器可读层次结构的新颖方法。表示为正式本体的层次结构构成了基于本体的搜索引擎OntoSearch的知识库,该引擎用于挖掘NeuroMorpho.Org中的数千个重构。应用分层搜索逻辑和语义Web技术,OntoSearch为主要的元数据术语提供了直接和模糊的匹配。与启用了简单的自动完成功能的搜索栏相比,OntoSearch与传统的关系数据库驱动的查询相比,其数据可见性至少提高了三倍。

著录项

  • 作者

    Polavaram, Sridevi.;

  • 作者单位

    George Mason University.;

  • 授予单位 George Mason University.;
  • 学科 Neurosciences.;Information science.;Computer science.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 203 p.
  • 总页数 203
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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