Sun Jingjun, Tuncay Kagan, Haidar Alaa Abi, Ensman Lisa, Stanley Frank, Trelinski Michael, Ortoleva Peter
Center for Cell and Virus Theory, Chemistry Building, Indiana University, Bloomington, IN 47405, USA.
Algorithms Mol Biol. 2007 Mar 30;2:2. doi: 10.1186/1748-7188-2-2.
Transcriptional regulatory network (TRN) discovery from one method (e.g. microarray analysis, gene ontology, phylogenic similarity) does not seem feasible due to lack of sufficient information, resulting in the construction of spurious or incomplete TRNs. We develop a methodology, TRND, that integrates a preliminary TRN, microarray data, gene ontology and phylogenic similarity to accurately discover TRNs and apply the method to E. coli K12. The approach can easily be extended to include other methodologies. Although gene ontology and phylogenic similarity have been used in the context of gene-gene networks, we show that more information can be extracted when gene-gene scores are transformed to gene-transcription factor (TF) scores using a preliminary TRN. This seems to be preferable over the construction of gene-gene interaction networks in light of the observed fact that gene expression and activity of a TF made of a component encoded by that gene is often out of phase. TRND multi-method integration is found to be facilitated by the use of a Bayesian framework for each method derived from its individual scoring measure and a training set of gene/TF regulatory interactions. The TRNs we construct are in better agreement with microarray data. The number of gene/TF interactions we discover is actually double that of existing networks.
由于缺乏足够的信息,仅从一种方法(如微阵列分析、基因本体论、系统发育相似性)来发现转录调控网络(TRN)似乎并不可行,这会导致构建虚假或不完整的TRN。我们开发了一种方法TRND,它整合了初步的TRN、微阵列数据、基因本体论和系统发育相似性,以准确发现TRN,并将该方法应用于大肠杆菌K12。该方法可以很容易地扩展以纳入其他方法。尽管基因本体论和系统发育相似性已在基因-基因网络的背景下使用,但我们表明,当使用初步的TRN将基因-基因得分转换为基因-转录因子(TF)得分时,可以提取更多信息。鉴于观察到的事实,即由该基因编码的组件组成的TF的基因表达和活性往往不同步,这似乎比构建基因-基因相互作用网络更可取。发现通过使用基于其各自评分度量和基因/TF调控相互作用训练集的贝叶斯框架,便于TRND进行多方法整合。我们构建的TRN与微阵列数据的一致性更好。我们发现的基因/TF相互作用的数量实际上是现有网络的两倍。