首页> 外文期刊>Molecular BioSystems >Inferring Boolean networks with perturbation from sparse gene expression data: a general model applied to the interferon regulatory network
【24h】

Inferring Boolean networks with perturbation from sparse gene expression data: a general model applied to the interferon regulatory network

机译:从稀疏基因表达数据中推断具有干扰的布尔网络:应用于干扰素调节网络的通用模型

获取原文
获取原文并翻译 | 示例
           

摘要

Due to the large number of variables required and the limited number of independent experiments, the inference of genetic regulatory networks from gene expression data is a challenge of long standing within the microarray field. This report investigates the inference of Boolean networks with perturbation (BNp) from simulated data and observed microarray data. We interpret the discrete expression levels as attractor states of the underlying network and use the sequence of attractor states to determine the model. We consider the case where a complete sequence of attractors is known and the case where the known attractor states are arrived at by sampling from an underlying sequence of attractors. In the former case, a BNp can be inferred trivially, for an arbitrary number of genes and attractors. In the latter case, we use the constraints posed by the distribution of attractor states and the need to conserve probability to arrive at one of three possible solutions: an unique, exact network; several exact networks or a 'most-likely' network. In the case of several exact networks we use a robustness requirement to select a preferred network. In the case that an exact option is not found, we select the network that best fits the observed attractor distribution. We apply the resulting algorithm to the interferon regulatory network using expression data taken from murine bone-derived macrophage cells infected with cytomegalovirus.
机译:由于需要大量的变量和有限的独立实验,从基因表达数据推断遗传调控网络是长期存在于微阵列领域的挑战。本报告研究了从模拟数据和观察到的微阵列数据中推断出布尔网络的摄动(BNp)。我们将离散表达水平解释为基础网络的吸引子状态,并使用吸引子状态的顺序来确定模型。我们考虑了一个完整的吸引子序列的情况,以及已知的吸引子状态是通过从潜在的吸引子序列中采样得出的情况。在前一种情况下,对于任意数量的基因和吸引子,可以简单地推断出BNp。在后一种情况下,我们使用吸引子状态的分布所带来的约束,并且需要保留概率以得出以下三种可能的解决方案之一:唯一,精确的网络;几个确切的网络或“最有可能”的网络。在几个精确网络的情况下,我们使用鲁棒性要求来选择首选网络。如果找不到确切的选项,我们选择最适合观察到的吸引子分布的网络。我们使用从巨细胞病毒感染的鼠骨衍生巨噬细胞中获得的表达数据,将所得算法应用于干扰素调节网络。

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