The Telethon Institute of Genetics and Medicine TIGEM.
Bioinformatics. 2013 Jul 15;29(14):1776-85. doi: 10.1093/bioinformatics/btt290. Epub 2013 Jun 6.
Identification of differential expressed genes has led to countless new discoveries. However, differentially expressed genes are only a proxy for finding dysregulated pathways. The problem is to identify how the network of regulatory and physical interactions rewires in different conditions or in disease.
We developed a procedure named DINA (DIfferential Network Analysis), which is able to identify set of genes, whose co-regulation is condition-specific, starting from a collection of condition-specific gene expression profiles. DINA is also able to predict which transcription factors (TFs) may be responsible for the pathway condition-specific co-regulation. We derived 30 tissue-specific gene networks in human and identified several metabolic pathways as the most differentially regulated across the tissues. We correctly identified TFs such as Nuclear Receptors as their main regulators and demonstrated that a gene with unknown function (YEATS2) acts as a negative regulator of hepatocyte metabolism. Finally, we showed that DINA can be used to make hypotheses on dysregulated pathways during disease progression. By analyzing gene expression profiles across primary and transformed hepatocytes, DINA identified hepatocarcinoma-specific metabolic and transcriptional pathway dysregulation.
We implemented an on-line web-tool http://dina.tigem.it enabling the user to apply DINA to identify tissue-specific pathways or gene signatures.
Supplementary data are available at Bioinformatics online.
差异表达基因的鉴定导致了无数的新发现。然而,差异表达的基因只是发现失调途径的一个指标。问题是要确定在不同条件下或疾病中,调节和物理相互作用的网络是如何重新布线的。
我们开发了一种名为 DINA(差异网络分析)的程序,它能够从一组特定条件的基因表达谱中,识别出一组其共调控是特定于条件的基因。DINA 还能够预测哪些转录因子(TFs)可能是特定于条件的通路共调控的原因。我们在人类中推导了 30 个组织特异性基因网络,并确定了几个代谢途径是组织间差异调节最明显的。我们正确地鉴定了核受体等 TF 作为其主要调节因子,并证明了一个具有未知功能的基因(YEATS2)作为肝细胞代谢的负调节剂。最后,我们表明 DINA 可用于在疾病进展过程中对失调途径做出假设。通过分析原发性和转化性肝细胞的基因表达谱,DINA 鉴定出肝癌特异性代谢和转录途径失调。
我们实现了一个在线网络工具 http://dina.tigem.it,使用户能够应用 DINA 来识别组织特异性途径或基因特征。
补充数据可在 Bioinformatics 在线获取。