Literature DB >> 31596250

Insular Microbiogeography: Three Pathogens as Exemplars.

James H Kaufman1, Christopher A Elkins2, Matthew Davis1, Allison M Weis3, Bihua C Huang3, Mark K Mammel2, Isha R Patel2, Kristen L Beck1, Stefan Edlund1, David Chambliss1, Judith Douglas1, Simone Bianco1, Mark Kunitomi1, Bart C Weimer3.   

Abstract

Traditional taxonomy in biology assumes that life is organized in a simple tree. Attempts to classify microorganisms in this way in the genomics era led microbiologists to look for finite sets of 'core' genes that uniquely group taxa as clades in the tree. However, the diversity revealed by large-scale whole genome sequencing is calling into question the long-held model of a hierarchical tree of life, which leads to questioning of the definition of a species. Large-scale studies of microbial genome diversity reveal that the cumulative number of new genes discovered increases with the number of genomes studied as a power law and subsequently leads to the lack of evidence for a unique core genome within closely related organisms. Sampling 'enough' new genomes leads to the discovery of a replacement or alternative to any gene. This power law behaviour points to an underlying self-organizing critical process that may be guided by mutation and niche selection. Microbes in any particular niche exist within a local web of organism interdependence known as the microbiome. The same mechanism that underpins the macro-ecological scaling first observed by MacArthur and Wilson also applies to microbial communities. Recent metagenomic studies of a food microbiome demonstrate the diverse distribution of community members, but also genotypes for a single species within a more complex community. Collectively, these results suggest that traditional taxonomic classification of bacteria could be replaced with a quasispecies model. This model is commonly accepted in virology and better describes the diversity and dynamic exchange of genes that also hold true for bacteria. This model will enable microbiologists to conduct population-scale studies to describe microbial behaviour, as opposed to a single isolate as a representative.

Entities:  

Mesh:

Year:  2019        PMID: 31596250     DOI: 10.21775/cimb.036.089

Source DB:  PubMed          Journal:  Curr Issues Mol Biol        ISSN: 1467-3037            Impact factor:   2.081


  3 in total

1.  Monitoring the microbiome for food safety and quality using deep shotgun sequencing.

Authors:  Kristen L Beck; Niina Haiminen; David Chambliss; Stefan Edlund; Mark Kunitomi; B Carol Huang; Nguyet Kong; Balasubramanian Ganesan; Robert Baker; Peter Markwell; Ban Kawas; Matthew Davis; Robert J Prill; Harsha Krishnareddy; Ed Seabolt; Carl H Marlowe; Sophie Pierre; André Quintanar; Laxmi Parida; Geraud Dubois; James Kaufman; Bart C Weimer
Journal:  NPJ Sci Food       Date:  2021-02-08

2.  Functional profiling of COVID-19 respiratory tract microbiomes.

Authors:  Niina Haiminen; Filippo Utro; Ed Seabolt; Laxmi Parida
Journal:  Sci Rep       Date:  2021-03-19       Impact factor: 4.379

3.  Biological Machine Learning Combined with Campylobacter Population Genomics Reveals Virulence Gene Allelic Variants Cause Disease.

Authors:  Dj Darwin R Bandoy; Bart C Weimer
Journal:  Microorganisms       Date:  2020-04-10
  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.