Identifying aging-related genes in mouse hippocampus using gateway nodes

Research output: Contribution to journalArticle

10 Citations (Scopus)

Abstract

Background: High-throughput studies continue to produce volumes of metadata representing valuable sources of information to better guide biological research. With a stronger focus on data generation, analysis models that can readily identify actual signals have not received the same level of attention. This is due in part to high levels of noise and data heterogeneity, along with a lack of sophisticated algorithms for mining useful information. Networks have emerged as a powerful tool for modeling high-throughput data because they are capable of representing not only individual biological elements but also different types of relationships en masse. Moreover, well-established graph theoretic methodology can be applied to network models to increase efficiency and speed of analysis. In this project, we propose a network model that examines temporal data from mouse hippocampus at the transcriptional level via correlation of gene expression. Using this model, we formally define the concept of " gateway" nodes, loosely defined as nodes representing genes co-expressed in multiple states. We show that the proposed network model allows us to identify target genes implicated in hippocampal aging-related processes.Results: By mining gateway genes related to hippocampal aging from networks made from gene expression in young and middle-aged mice, we provide a proof-of-concept of existence and importance of gateway nodes. Additionally, these results highlight how network analysis can act as a supplement to traditional statistical analysis of differentially expressed genes. Finally, we use the gateway nodes identified by our method as well as functional databases and literature to propose new targets for study of aging in the mouse hippocampus.Conclusions: This research highlights the need for methods of temporal comparison using network models and provides a systems biology approach to extract information from correlation networks of gene expression. Our results identify a number of genes previously implicated in the aging mouse hippocampus related to synaptic plasticity and apoptosis. Additionally, this model identifies a novel set of aging genes previously uncharacterized in the hippocampus. This research can be viewed as a first-step for identifying the processes behind comparative experiments in aging that is applicable to any type of temporal multi-state network.

Original languageEnglish (US)
Article number62
JournalBMC systems biology
Volume8
Issue number1
DOIs
StatePublished - May 27 2014

Fingerprint

Hippocampus
Gateway
Mouse
Genes
Aging of materials
Gene
Network Model
Vertex of a graph
Gene Expression
Gene expression
High Throughput
Mining
Research
Throughput
Neuronal Plasticity
Apoptosis
Target
Systems Biology
Multi-state
Information Services

Keywords

  • Aging-related genes
  • Correlation networks
  • Gateway node
  • Hippocampus
  • Klotho

ASJC Scopus subject areas

  • Structural Biology
  • Modeling and Simulation
  • Molecular Biology
  • Computer Science Applications
  • Applied Mathematics

Cite this

Identifying aging-related genes in mouse hippocampus using gateway nodes. / Cooper, Kathryn M; Ali, Hesham H.

In: BMC systems biology, Vol. 8, No. 1, 62, 27.05.2014.

Research output: Contribution to journalArticle

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