| Literature DB >> 25750554 |
Ki-Jo Kim1, Saseong Lee2, Wan-Uk Kim3.
Abstract
The complex interaction of molecules within a biological system constitutes a functional module. These modules are then acted upon by both internal and external factors, such as genetic and environmental stresses, which under certain conditions can manifest as complex disease phenotypes. Recent advances in high-throughput biological analyses, in combination with improved computational methods for data enrichment, functional annotation, and network visualization, have enabled a much deeper understanding of the mechanisms underlying important biological processes by identifying functional modules that are temporally and spatially perturbed in the context of disease development. Systems biology approaches such as these have produced compelling observations that would be impossible to replicate using classical methodologies, with greater insights expected as both the technology and methods improve in the coming years. Here, we examine the use of systems biology and network analysis in the study of a wide range of rheumatic diseases to better understand the underlying molecular and clinical features.Entities:
Keywords: Network analysis; Rheumatic diseases; Systems biology
Mesh:
Substances:
Year: 2015 PMID: 25750554 PMCID: PMC4351319 DOI: 10.3904/kjim.2015.30.2.148
Source DB: PubMed Journal: Korean J Intern Med ISSN: 1226-3303 Impact factor: 2.884
Figure 1Work flow of systems approach and network analysis, and their application to clinical practice.
Figure 2A rheumatoid arthritis (RA)-perturbed network in the RA synovium and enriched modules in the RA-fibroblast-like synoviocytes (FLS) and synovial macrophages (SM). (A) An RA-perturbed network describing RA-associated cellular processes, involving 242 upregulated RA-associated genes (RAGs), and their interactions. The network nodes are arranged into 16 modules based on their associated GOBP (Gene Ontology Biological Processes) and KEGG (Kyoto Encyclopedia of Genes and Genomes) pathways. The nodes with the red boundary represent differentially expressed genes (DEGs) in RA-FLS. (B) Three-dimensional conic graphs showing module enrichment scores (MES) representing the contribution of RA-FLS and SM to the individual modules. The three sets of MES were computed from the comparisons of RA-FLS and osteoarthritis (OA)-FLS (left), RA-FLS + interleukin 1β (IL1β) and unstimulated OA-FLS (middle), and RA-SM and control macrophages (right). The height of the circular cones indicates the magnitude of the MES in the corresponding module. Purple cones indicate MES p values < 0.01, whereas gray cones indicate MES p values > 0.01. Adapted from You et al. [14] and You et al. [15].
Figure 3Network construction and identification of key regulators in rheumatoid arthritis (RA). (A) Gene regulatory networks activated in RA. Target enrichment scores representing the significance of overlaps between the targets of each transcription factor (TF) and the RA-associated genes belonging to the network modules. Gene regulatory networks describing the TF-target relationships for three processes: T-cell activation including Runt-related transcription factor 1 (RUNX1) and forkhead box P3 (FOXP3), matrix remodeling including activator protein 1 (AP-1) (JUN and FOS) and nuclear factor NF-kappa-B p105 subunit (NFKB1), and cell proliferation and survival including NFAT5, E2F3, and tumor protein p53 (TP53). (B) Selection of potential regulators for fibroblast-like synoviocytes (FLS) invasion. A network model describing the regulatory interrelationships of periostin (POSTN), twist family bHLH transcription factor 1 (TWIST1), mothers against decapentaplegic homolog 7 (SMAD7), Transforming growth factor beta-1-induced transcript 1 protein (TGFB1I1) and their associated processes. The arrows denote regulator-target gene relationships. NF-κB, nuclear factor-κB; IL-6, interleukin 6. Adapted from You et al. [14] and You et al. [15].