Department of Animal and Poultry Science,College of Aburaihan,University of Tehran,33916-53775, Tehran,Iran.
Animal. 2018 Jun;12(6):1196-1207. doi: 10.1017/S1751731117003524. Epub 2017 Dec 28.
Negative energy balance (NEB) is an altered metabolic state in modern high-yielding dairy cows. This metabolic state occurs in the early postpartum period when energy demands for milk production and maintenance exceed that of energy intake. Negative energy balance or poor adaptation to this metabolic state has important effects on the liver and can lead to metabolic disorders and reduced fertility. The roles of regulatory factors, including transcription factors (TFs) and micro RNAs (miRNAs) have often been separately studied for evaluating of NEB. However, adaptive response to NEB is controlled by complex gene networks and still not fully understood. In this study, we aimed to discover the integrated gene regulatory networks involved in NEB development in liver tissue. We downloaded data sets including mRNA and miRNA expression profiles related to three and four cows with severe and moderate NEB, respectively. Our method integrated two independent types of information: module inference network by TFs, miRNAs and mRNA expression profiles (RNA-seq data) and computational target predictions. In total, 176 modules were predicted by using gene expression data and 64 miRNAs and 63 TFs were assigned to these modules. By using our integrated computational approach, we identified 13 TF-module and 19 miRNA-module interactions. Most of these modules were associated with liver metabolic processes as well as immune and stress responses, which might play crucial roles in NEB development. Literature survey results also showed that several regulators and gene targets have already been characterized as important factors in liver metabolic processes. These results provided novel insights into regulatory mechanisms at the TF and miRNA levels during NEB. In addition, the method described in this study seems to be applicable to construct integrated regulatory networks for different diseases or disorders.
负能平衡(NEB)是现代高产奶牛的一种代谢改变状态。这种代谢状态发生在产后早期,此时产奶和维持所需的能量超过了能量摄入。负能平衡或对这种代谢状态的适应不良对肝脏有重要影响,并可能导致代谢紊乱和生育力降低。调节因子的作用,包括转录因子(TFs)和 microRNAs(miRNAs),经常分别进行研究,以评估 NEB。然而,对 NEB 的适应性反应是由复杂的基因网络控制的,目前还不完全清楚。在这项研究中,我们旨在发现涉及肝脏组织中 NEB 发展的综合基因调控网络。我们下载了包括与严重和中度 NEB 的三头和四头奶牛相关的 mRNA 和 miRNA 表达谱的数据组。我们的方法整合了两种独立的信息类型:由 TF、miRNA 和 mRNA 表达谱(RNA-seq 数据)推断的模块网络和计算靶标预测。总共使用基因表达数据预测了 176 个模块,并将 64 个 miRNA 和 63 个 TF 分配给这些模块。通过使用我们的综合计算方法,我们确定了 13 个 TF 模块和 19 个 miRNA 模块相互作用。这些模块中的大多数与肝脏代谢过程以及免疫和应激反应有关,这可能在 NEB 发展中起着关键作用。文献调查结果还表明,几个调节剂和基因靶标已经被表征为肝脏代谢过程中的重要因素。这些结果为 NEB 期间 TF 和 miRNA 水平的调控机制提供了新的见解。此外,本研究中描述的方法似乎适用于构建不同疾病或紊乱的综合调控网络。