TY - JOUR
T1 - Molecular interaction networks for the analysis of human disease
T2 - Utility, limitations, and considerations
AU - Schramm, Sarah Jane
AU - Jayaswal, Vivek
AU - Goel, Apurv
AU - Li, Simone S.
AU - Yang, Yee Hwa
AU - Mann, Graham J.
AU - Wilkins, Marc R.
PY - 2013/12
Y1 - 2013/12
N2 - High-throughput '-omics' data can be combined with large-scale molecular interaction networks, for example, protein-protein interaction networks, to provide a unique framework for the investigation of human molecular biology. Interest in these integrative '-omics' methods is growing rapidly because of their potential to understand complexity and association with disease; such approaches have a focus on associations between phenotype and "network-type." The potential of this research is enticing, yet there remain a series of important considerations. Here, we discuss interaction data selection, data quality, the relative merits of using data from large high-throughput studies versus a meta-database of smaller literature-curated studies, and possible issues of sociological or inspection bias in interaction data. Other work underway, especially international consortia to establish data formats, quality standards and address data redundancy, and the improvements these efforts are making to the field, is also evaluated. We present options for researchers intending to use large-scale molecular interaction networks as a functional context for protein or gene expression data, including microRNAs, especially in the context of human disease.
AB - High-throughput '-omics' data can be combined with large-scale molecular interaction networks, for example, protein-protein interaction networks, to provide a unique framework for the investigation of human molecular biology. Interest in these integrative '-omics' methods is growing rapidly because of their potential to understand complexity and association with disease; such approaches have a focus on associations between phenotype and "network-type." The potential of this research is enticing, yet there remain a series of important considerations. Here, we discuss interaction data selection, data quality, the relative merits of using data from large high-throughput studies versus a meta-database of smaller literature-curated studies, and possible issues of sociological or inspection bias in interaction data. Other work underway, especially international consortia to establish data formats, quality standards and address data redundancy, and the improvements these efforts are making to the field, is also evaluated. We present options for researchers intending to use large-scale molecular interaction networks as a functional context for protein or gene expression data, including microRNAs, especially in the context of human disease.
KW - Integrative omics
KW - Interactome
KW - Network
KW - Protein-protein interaction
KW - Systems biology
UR - http://www.scopus.com/inward/record.url?scp=84889638007&partnerID=8YFLogxK
U2 - 10.1002/pmic.201200570
DO - 10.1002/pmic.201200570
M3 - Review Article
C2 - 24166987
AN - SCOPUS:84889638007
SN - 1615-9853
VL - 13
SP - 3393
EP - 3405
JO - Proteomics
JF - Proteomics
IS - 23-24
ER -