| Literature DB >> 30287886 |
Bhusan K Kuntal1,2, Pranjal Chandrakar1,3, Sudipta Sadhu1, Sharmila S Mande4.
Abstract
The combined effect of mutual association within the co-inhabiting microbes in human body is known to play a major role in determining health status of individuals. The differential taxonomic abundance between healthy and disease are often used to identify microbial markers. However, in order to make a microbial community based inference, it is important not only to consider microbial abundances, but also to quantify the changes observed among inter microbial associations. In the present study, we introduce a method called 'NetShift' to quantify rewiring and community changes in microbial association networks between healthy and disease. Additionally, we devise a score to identify important microbial taxa which serve as 'drivers' from the healthy to disease. We demonstrate the validity of our score on a number of scenarios and apply our methodology on two real world metagenomic datasets. The 'NetShift' methodology is also implemented as a web-based application available at https://web.rniapps.net/netshift.Entities:
Mesh:
Year: 2018 PMID: 30287886 PMCID: PMC6331612 DOI: 10.1038/s41396-018-0291-x
Source DB: PubMed Journal: ISME J ISSN: 1751-7362 Impact factor: 10.302