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Leveraging Experimental Details for an Improved Understanding of Host-Pathogen Interactome. | LitMetric

Leveraging Experimental Details for an Improved Understanding of Host-Pathogen Interactome.

Curr Protoc Bioinformatics

Institute for Genomics, Biocomputing and Biotechnology, Mississippi State University, Mississippi State, Mississippi.

Published: March 2018

An increasing proportion of curated host-pathogen interaction (HPI) information is becoming available in interaction databases. These data represent detailed, experimentally-verified, molecular interaction data, which may be used to better understand infectious diseases. By their very nature, HPIs are context dependent, where the outcome of two proteins as interacting or not depends on the precise biological conditions studied and approaches used for identifying these interactions. The associated biology and the technical details of the experiments identifying interacting protein molecules are increasing being curated using defined curation standards but are overlooked in current HPI network modeling. Given the increase in data size and complexity, awareness of the process and variables included in HPI identification and curation, and their effect on data analysis and interpretation is crucial in understanding pathogenesis. We describe the use of HPI data for network modeling, aspects of curation that can help researchers to more accurately model specific infection conditions, and provide examples to illustrate these principles. © 2018 by John Wiley & Sons, Inc.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6060636PMC
http://dx.doi.org/10.1002/cpbi.44DOI Listing

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