首页> 外文会议>Engineering in Medicine and Biology Society, 2004. IEMBS '04. 26th Annual International Conference of the IEEE >Bioinformatics and computational systems biology: at the cross roads of biology, engineering and computation
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Bioinformatics and computational systems biology: at the cross roads of biology, engineering and computation

机译:生物信息学和计算系统生物学:处于生物学,工程学和计算的交叉路口

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Summary form only given. We are witnessing the emergence of the "data rich" era in biology. The myriad data in biology ranging from sequence strings to complex phenotypic and disease-relevant data pose a huge challenge to modern biology. The standard paradigm in biology that deals with hypothesis to experimentation (low throughput data) to models is being gradually replaced by data to hypothesis to models and experimentation to more data and models. And unlike data in physical sciences, that in biological sciences is almost guaranteed to be highly heterogeneous and incomplete. In order to make significant advances in this data rich era, it is essential that there be robust data repositories that allow interoperable navigation, query and analysis across diverse data, and a plug-and-play tools environment that will facilitate seamless interplay of tools and data. Further, the integrated data will enable the reconstruction and modeling of biological systems. This talk with address several of the challenges posed by enormous need for scientific data integration and modeling in biology with specific exemplars and possible strategies. The issues addressed will include: architecture of data and knowledge repositories; flat, relational and object-oriented databases ; ontologies in biology; reduction and analysis of data; legacy knowledge integration with data and systems level modeling in biology.
机译:仅提供摘要表格。我们正在目睹生物学中“数据丰富”时代的出现。从序列字符串到复杂的表型和与疾病相关的数据,生物学中的大量数据给现代生物学带来了巨大的挑战。生物学中用于对实验假设(低通量数据)进行处理的标准范式正逐渐被对模型进行假设的数据对更多数据和模型进行的实验所取代。与物理科学中的数据不同,生物科学中的数据几乎可以保证是高度异构且不完整的。为了在这个数据丰富的时代取得重大进展,至关重要的是,要有健壮的数据存储库,以允许对各种数据进行互操作的导航,查询和分析,以及即插即用的工具环境,以促进工具和工具之间的无缝交互。数据。此外,综合数据将使生物系统的重建和建模成为可能。这次演讲解决了生物学中对科学数据集成和建模的巨大需求所带来的一些挑战,这些挑战具有特定的范例和可能的策略。解决的问题将包括:数据和知识库的体系结构;平面,关系和面向对象的数据库;生物学本体;减少和分析数据;遗留知识与生物学中的数据和系统级建模集成。

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