首页> 外文期刊>BMC Systems Biology >Quantitative maps of genetic interactions in yeast - Comparative evaluation and integrative analysis
【24h】

Quantitative maps of genetic interactions in yeast - Comparative evaluation and integrative analysis

机译:酵母中遗传相互作用的定量图-比较评价和综合分析。

获取原文
           

摘要

Background High-throughput genetic screening approaches have enabled systematic means to study how interactions among gene mutations contribute to quantitative fitness phenotypes, with the aim of providing insights into the functional wiring diagrams of genetic interaction networks on a global scale. However, it is poorly known how well these quantitative interaction measurements agree across the screening approaches, which hinders their integrated use toward improving the coverage and quality of the genetic interaction maps in yeast and other organisms. Results Using large-scale data matrices from epistatic miniarray profiling (E-MAP), genetic interaction mapping (GIM), and synthetic genetic array (SGA) approaches, we carried out here a systematic comparative evaluation among these quantitative maps of genetic interactions in yeast. The relatively low association between the original interaction measurements or their customized scores could be improved using a matrix-based modelling framework, which enables the use of single- and double-mutant fitness estimates and measurements, respectively, when scoring genetic interactions. Toward an integrative analysis, we show how the detections from the different screening approaches can be combined to suggest novel positive and negative interactions which are complementary to those obtained using any single screening approach alone. The matrix approximation procedure has been made available to support the design and analysis of the future screening studies. Conclusions We have shown here that even if the correlation between the currently available quantitative genetic interaction maps in yeast is relatively low, their comparability can be improved by means of our computational matrix approximation procedure, which will enable integrative analysis and detection of a wider spectrum of genetic interactions using data from the complementary screening approaches.
机译:背景技术高通量的遗传筛选方法已使系统化的方法能够研究基因突变之间的相互作用如何促进定量适应性表型的产生,目的是在全球范围内深入了解遗传相互作用网络的功能接线图。然而,鲜为人知的是,这些定量相互作用测量结果在筛选方法中的一致性如何,阻碍了它们在提高酵母和其他生物体中遗传相互作用图谱的覆盖范围和质量方面的综合应用。结果使用来自上位微阵列分析(E-MAP),遗传相互作用图谱(GIM)和合成遗传阵列(SGA)方法的大规模数据矩阵,我们在此处对酵母遗传相互作用的这些定量图进行了系统的比较评估。可以使用基于矩阵的建模框架来改善原始交互度量或它们的自定义分数之间的相对较低的关联,当对遗传交互进行评分时,它可以分别使用单突变和双突变适应性估计和度量。进行综合分析时,我们显示了如何将来自不同筛选方法的检测结果结合起来,以提出新颖的正向和负向相互作用,这些相互作用与单独使用任何单一筛选方法所获得的相互作用是互补的。可以使用矩阵近似程序来支持未来筛选研究的设计和分析。结论我们在这里表明,即使目前酵母中可用的定量遗传相互作用图谱之间的相关性相对较低,也可以通过我们的计算矩阵逼近程序来改善它们的可比性,这将能够进行综合分析和检测更广泛的使用互补筛选方法的数据进行遗传相互作用。

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