首页> 外文会议>International Conference on Bioinformatics Models, Methods and Algorithms >Identifying Aging Genes in the Aging Mouse Hypothalamus Using Gateway Node Analysis of Correlation Networks
【24h】

Identifying Aging Genes in the Aging Mouse Hypothalamus Using Gateway Node Analysis of Correlation Networks

机译:使用相关网络的网关节点分析鉴定老化小鼠下丘脑中的老化基因

获取原文

摘要

High-throughput studies continue to produce volumes of data, providing a wealth of information that can be used to better guide biological research. However, models that can readily identify true biological signals from this data have not been developed at the same rate, due in part to a lack of well-developed algorithms that can handle the magnitude, variability and veracity of the data. One promising and effective solution to this complex issue is network modeling, due to its capabilities for representing biological elements and relationships en masse. In this research, we use correlation networks for analysis where genes are represented as nodes and indirect relationships (derived from expression patterns) are represented as edges. Here, we define "gateway" nodes as elements representing genes that change in co-expression and possibly co-regulation between states. We use the gateway node approach to identify critical genes in the aging mouse brain and perform a cursory investigation of the robustness of these gateway nodes according to network structure. Our results highlight the power of the gateway nodes approach and show how it can be used to limit search space and determine candidate genes for targeted studies. The novelty of this approach lies in application of the gateway node approach on novel mouse datasets, and the investigation into robustness of network structures.
机译:高吞吐量研究继续产生数据卷,提供了丰富的信息,可用于更好地指导生物学研究。然而,可以轻松地识别来自该数据的真实生物信号的模型并未以相同的速率开发,部分原因是缺乏能够处理数据的幅度,可变性和真实性的缺乏发达的算法。由于其代表生物元素和关系en Masse的能力,对这一复杂问题的一个有希望和有效的解决方案是网络建模。在该研究中,我们使用相关网络进行分析,其中基因表示为节点和间接关系(从表达式模式导出)被表示为边缘。在这里,我们将“网关”节点定义为代表在联合表达中改变的基因的元素,并且可能在状态之间共调节。我们使用网关节点方法识别老化鼠标大脑中的关键基因,并根据网络结构对这些网关节点的鲁棒性进行粗略调查。我们的结果突出了网关节点的力量方法,并展示如何用于限制搜索空间并确定候选基因进行有针对性研究。这种方法的新颖性在于在新颖的鼠标数据集中应用网关节点方法,以及对网络结构的鲁棒性的调查。

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