首页> 外文期刊>PLoS Computational Biology >Insight into glucocorticoid receptor signalling through interactome model analysis
【24h】

Insight into glucocorticoid receptor signalling through interactome model analysis

机译:通过相互作用组模型分析洞察糖皮质激素受体信号传导

获取原文
获取外文期刊封面目录资料

摘要

Glucocorticoid hormones (GCs) are used to treat a variety of diseases because of their potent anti-inflammatory effect and their ability to induce apoptosis in lymphoid malignancies through the glucocorticoid receptor (GR). Despite ongoing research, high glucocorticoid efficacy and widespread usage in medicine, resistance, disease relapse and toxicity remain factors that need addressing. Understanding the mechanisms of glucocorticoid signalling and how resistance may arise is highly important towards improving therapy. To gain insight into this we undertook a systems biology approach, aiming to generate a Boolean model of the glucocorticoid receptor protein interaction network that encapsulates functional relationships between the GR, its target genes or genes that target GR, and the interactions between the genes that interact with the GR. This model named GEB052 consists of 52 nodes representing genes or proteins, the model input (GC) and model outputs (cell death and inflammation), connected by 241 logical interactions of activation or inhibition. 323 changes in the relationships between model constituents following in silico knockouts were uncovered, and steady-state analysis followed by cell-based microarray genome-wide model validation led to an average of 57% correct predictions, which was taken further by assessment of model predictions against patient microarray data. Lastly, semi-quantitative model analysis via microarray data superimposed onto the model with a score flow algorithm has also been performed, which demonstrated significantly higher correct prediction ratios (average of 80%), and the model has been assessed as a predictive clinical tool using published patient microarray data. In summary we present an in silico simulation of the glucocorticoid receptor interaction network, linked to downstream biological processes that can be analysed to uncover relationships between GR and its interactants. Ultimately the model provides a platform for future development both by directing laboratory research and allowing for incorporation of further components, encapsulating more interactions/genes involved in glucocorticoid receptor signalling.
机译:糖皮质激素(GCs)由于其有效的抗炎作用以及通过糖皮质激素受体(GR)诱导淋巴恶性肿瘤凋亡的能力而被用于治疗多种疾病。尽管正在进行研究,但是高糖皮质激素的功效和在医学中的广泛使用,耐药性,疾病复发和毒性仍然是需要解决的因素。了解糖皮质激素信号传导的机制以及耐药性如何产生对改善治疗至关重要。为了了解这一点,我们采取了系统生物学的方法,旨在生成糖皮质激素受体蛋白相互作用网络的布尔模型,该模型封装了GR,其靶基因或靶向GR的基因之间的功能关系,以及相互作用的基因之间的相互作用与GR。名为GEB052的模型由代表基因或蛋白质的52个节点,模型输入(GC)和模型输出(细胞死亡和炎症)组成,通过241个激活或抑制的逻辑相互作用进行连接。在计算机敲除后发现了323个模型成分之间的关​​系变化,并且稳态分析随后进行了基于细胞的微阵列全基因组模型验证,平均得出了57%的正确预测值,进一步通过评估模型预测值来进行评估针对患者微阵列数据。最后,还使用分数流算法通过微阵列数据叠加到模型上进行了半定量模型分析,结果表明正确预测率要高得多(平均为80%),并且该模型已被评估为可预测的临床工具已发布的患者微阵列数据。总之,我们提出了糖皮质激素受体相互作用网络的计算机模拟,该网络与下游的生物过程相关,可以对其进行分析以揭示GR及其相互作用物之间的关系。最终,该模型通过指导实验室研究并允许并入其他组分,封装了更多糖皮质激素受体信号传导相关的相互作用/基因,为未来的开发提供了平台。

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