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首页> 外文期刊>In silico biology: An international on computational biology >MOVE: A Multi-Level Ontology-Based Visualization and Exploration Framework for Genomic Networks
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MOVE: A Multi-Level Ontology-Based Visualization and Exploration Framework for Genomic Networks

机译:MOVE:基因组网络的基于本体的多层次可视化和探索框架

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摘要

Among the various research areas that comprise bioinformatics, systems biology is gaining increasing attention. An important goal of systems biology is the unraveling of dynamic interactions between components of living cells (e.g., proteins, genes). These interactions exist among others on genomic, transcriptomic, proteomic and metabolomic levels. The levels themselves are heavily interconnected, resulting in complex networks of different interacting biological entities. Currently, various bioinformatics tools exist which are able to perform a particular analysis on a particular type of network. Unfortunately, each tool has its own disadvantages hampering it to be used consistently for different types of networks or analytical methods. This paper describes the conceptual development of an open source extensible software framework that supports visualization and exploration of highly complex genomic networks, like metabolic or gene regulatory networks. The focus is on the conceptual foundations, starting from requirements, a description of the state of the art of network visualization systems, and an analysis of their shortcomings. We describe the implementation of some initial modules of the framework and apply them to a biological test case in bacterial regulation, which shows the relevance and feasibility of the proposed approach.
机译:在组成生物信息学的各个研究领域中,系统生物学越来越受到关注。系统生物学的重要目标是揭示活细胞各组成部分(例如蛋白质,基因)之间的动态相互作用。这些相互作用在基因组,转录组学,蛋白质组学和代谢组学水平上都存在。这些级别本身是高度相互联系的,从而形成了具有不同相互作用生物实体的复杂网络。当前,存在各种能够在特定类型的网络上执行特定分析的生物信息学工具。不幸的是,每种工具都有其自身的缺点,妨碍了将其始终用于不同类型的网络或分析方法。本文描述了开源可扩展软件框架的概念开发,该软件框架支持可视化和探索高度复杂的基因组网络,例如代谢或基因调控网络。重点是概念基础,从需求开始,描述网络可视化系统的最新技术,并分析其缺点。我们描述了框架的一些初始模块的实现,并将其应用于细菌调控的生物测试案例,这表明了所提出方法的相关性和可行性。

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