Mining large-scale response networks reveals ‘topmost activities’ in Mycobacterium tuberculosis infection

Sambarey, Awanti ; Prashanthi, Karyala ; Chandra, Nagasuma (2013) Mining large-scale response networks reveals ‘topmost activities’ in Mycobacterium tuberculosis infection Scientific Reports, 3 . Article ID 2302. ISSN 2045-2322

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Official URL: https://www.nature.com/articles/srep02302

Related URL: http://dx.doi.org/10.1038/srep02302

Abstract

Mycobacterium tuberculosis owes its high pathogenic potential to its ability to evade host immune responses and thrive inside the macrophage. The outcome of infection is largely determined by the cellular response comprising a multitude of molecular events. The complexity and inter-relatedness in the processes makes it essential to adopt systems approaches to study them. In this work, we construct a comprehensive network of infection-related processes in a human macrophage comprising 1888 proteins and 14,016 interactions. We then compute response networks based on available gene expression profiles corresponding to states of health, disease and drug treatment. We use a novel formulation for mining response networks that has led to identifying highest activities in the cell. Highest activity paths provide mechanistic insights into pathogenesis and response to treatment. The approach used here serves as a generic framework for mining dynamic changes in genome-scale protein interaction networks.

Item Type:Article
Source:Copyright of this article belongs to Nature Publishing Group.
ID Code:112733
Deposited On:19 Apr 2018 06:37
Last Modified:19 Apr 2018 06:37

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