首页> 外文会议>International conference on neural information processing;ICONIP 2011 >Dynamic Bayesian Network Modeling of Cyanobacterial Biological Processes via Gene Clustering
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Dynamic Bayesian Network Modeling of Cyanobacterial Biological Processes via Gene Clustering

机译:基于基因聚类的蓝细菌生物学过程的动态贝叶斯网络建模

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Cyanobacteria are photosynthetic organisms that are credited with both the creation and replenishment of the oxygen-rich atmosphere, and are also responsible for more than half of the primary production on earth. Despite their crucial evolutionary and environmental roles, the study of these organisms has lagged behind other model organisms. This paper presents preliminary results on our ongoing research to unravel the biological interactions occurring within cyanobacteria. We develop an analysis framework that leverages recently developed bioin-formatics and machine learning tools, such as genome-wide sequence matching based annotation, gene ontology analysis, cluster analysis and dynamic Bayesian network. Together, these tools allow us to overcome the lack of knowledge of less well-studied organisms, and reveal interesting relationships among their biological processes. Experiments on the Cyanothece bacterium demonstrate the practicability and usefulness of our approach.
机译:蓝细菌是光合生物,可以创造和补充富氧大气,并且也占地球初级生产的一半以上。尽管它们在进化和环境中起着至关重要的作用,但对这些生物的研究却落后于其他模型生物。本文介绍了我们正在进行的研究的初步结果,以阐明蓝细菌内部发生的生物相互作用。我们开发了一个分析框架,该框架利用了最近开发的生物信息学和机器学习工具,例如基于全基因组序列匹配的注释,基因本体分析,聚类分析和动态贝叶斯网络。这些工具一起使我们能够克服对研究不足的生物缺乏了解,并揭示其生物学过程之间的有趣关系。蓝藻细菌的实验证明了我们方法的实用性和实用性。

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