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10.1371/journal.pcbi.1005579

http://scihub22266oqcxt.onion/10.1371/journal.pcbi.1005579
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C5638203!5638203!29023448
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suck abstract from ncbi

pmid29023448      PLoS+Comput+Biol 2017 ; 13 (10): ä
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  • Structural host-microbiota interaction networks #MMPMID29023448
  • Guven-Maiorov E; Tsai CJ; Nussinov R
  • PLoS Comput Biol 2017[Oct]; 13 (10): ä PMID29023448show ga
  • Hundreds of different species colonize multicellular organisms making them ?metaorganisms?. A growing body of data supports the role of microbiota in health and in disease. Grasping the principles of host-microbiota interactions (HMIs) at the molecular level is important since it may provide insights into the mechanisms of infections. The crosstalk between the host and the microbiota may help resolve puzzling questions such as how a microorganism can contribute to both health and disease. Integrated superorganism networks that consider host and microbiota as a whole?may uncover their code, clarifying perhaps the most fundamental question: how they modulate immune surveillance. Within this framework, structural HMI networks can uniquely identify potential microbial effectors that target distinct host nodes or interfere with endogenous host interactions, as well as how mutations on either host or microbial proteins affect the interaction. Furthermore, structural HMIs can help identify master host cell regulator nodes and modules whose tweaking by the microbes promote aberrant activity. Collectively, these data can delineate pathogenic mechanisms and thereby help maximize beneficial therapeutics. To date, challenges in experimental techniques limit large-scale characterization of HMIs. Here we highlight an area in its infancy which we believe will increasingly engage the computational community: predicting interactions across kingdoms, and mapping these on the host cellular networks to figure out how commensal and pathogenic microbiota modulate the host signaling and broadly cross-species consequences.
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