首页> 外文会议>Pacific symposium on biocomputing >INFERENCE OF FUNCTIONAL NETWORKS OF CONDITION-SPECIFIC RESPONSE - A CASE STUDY OF QUIESCENCE IN YEAST
【24h】

INFERENCE OF FUNCTIONAL NETWORKS OF CONDITION-SPECIFIC RESPONSE - A CASE STUDY OF QUIESCENCE IN YEAST

机译:特定条件响应功能网络的推断 - 酵母静态的案例研究

获取原文

摘要

Analysis of condition-specific behavior under stressful environmental conditions can provide insight into mechanisms causing different healthy and diseased cellular states. Functional networks (edges representing statistical dependencies) inferred from condition-specific expression data can provide fine-grained, network level information about conserved and specific behavior across different conditions. In this paper, we examine novel microarray compendia measuring gene expression from two unique stationary phase yeast cell populations, quiescent and non-quiescent. We make the following contributions: (a) develop a new algorithm to infer functional networks modeled as undirected probabilistic graphical models, Markov random fields, (b) infer functional networks for quiescent, non-quiescent cells and exponential cells, and (c) compare the inferred networks to identify processes common and different across these cells. We found that both non-quiescent and exponential cells have more gene ontology enrichment than quiescent cells. The exponential cells share more processes with non-quiescent than with quiescent, highlighting the novel and relatively under-studied characteristics of quiescent cells. Analysis of inferred subgraphs identified processes enriched in both quiescent and non-quiescent cells as well processes specific to each cell type. Finally, SNF1, which is crucial for quiescence, occurs exclusively among quiescent network hubs, while non-quiescent network hubs are enriched in human disease causing homologs.
机译:在压力环境条件下的病情特异性行为分析可以洞察导致不同健康和患病细胞状态的机制。从条件特定的表达数据推断出的功能网络(表示统计依赖性的边缘)可以提供关于跨不同条件的保守和特定行为的细粒度,网络级别信息。在本文中,我们研究了来自两个独特的固定相酵母细胞群,静焦和非静态的新型微阵列Comendia测量基因表达。我们提出以下贡献:(a)开发一种新的算法来推断为无向概率图形模型,Markov随机字段,(b)推断出静态,非静态单元和指数单元格的推断功能网络,以及(c)比较推断网络识别这些细胞常见和不同的过程。我们发现两种非静态和指数细胞具有比静静脉细胞更多的基因本体学富集。指数电池与静态的非静态分享更多的过程,突出显示静态细胞的新颖和相对较低的特征。对静态和非静静脉细胞的推断子图的分析,以及每个细胞类型的过程。最后,对于静态网络集线器来说,SNF1至关重要,其在静止网络集线器中发生,而非静态网络中心富集在人类疾病中导致同源物。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号