| Literature DB >> 30455975 |
Angela Zou1,2, Shayan Sharif3, John Parkinson1,2,4.
Abstract
The poultry industry has traditionally relied on the use of antibiotic growth promoters (AGPs) to improve production efficiency and minimize infection. With the recent drive to eliminate the use of AGPs, novel alternatives are urgently required. Recently attention has turned to the use of synthetic communities that may be used to 'seed' the developing microbiome. The current challenge is identifying keystone taxa whose influences in the gut can be leveraged for probiotic development. To help define such taxa we present a meta-analysis of 16S rRNA surveys of 1572 cecal microbiomes generated from 19 studies. Accounting for experimental biases, consistent with previous studies, we find that AGP exposure can result in reduced microbiome diversity. Network community analysis defines groups of taxa that form stable clusters and further reveals Lactobacillus to elicit a polarizing effect on the cecal microbiome, exhibiting relatively equal numbers of positive and negative interactions with other taxa. Our identification of stable taxonomic associations provides a valuable framework for developing effective microbial consortia as alternatives to AGPs.Entities:
Year: 2018 PMID: 30455975 PMCID: PMC6226495 DOI: 10.1038/s41522-018-0070-5
Source DB: PubMed Journal: NPJ Biofilms Microbiomes ISSN: 2055-5008 Impact factor: 7.290
Fig. 1Microbial diversity of 1572 cecal samples from chicken. a Relative abundance of the most abundant genera by chicken breeds. Number on top of bars represent the number of sequencing samples for each breed, note that certain samples are pooled from multiple chicken cecal samples (see supplementary table 1). Only taxa present at greater than 1% were included. b Principal-coordinate analysis plot of unweighted UniFrac distances coloured according to hypervariable region. Numbers in brackets are the number of samples sequenced using each hypervariable region
Fig. 2Co-occurrence network and analysis of OTUs chicken cecal samples. a Co-occurrence network built with SparCC with nodes representing taxa (as defined by OTUs—see Methods) and edges representing positive (green) or negative (red) associations of co-occurrence across samples. Thickness and opacity of the edges represent the strength of the correlation and node sizes represent the number of samples that contain those taxa. Taxa are grouped by family, with major families labelled. Correlations with an absolute value smaller than 0.3 are not shown. Colour of nodes indicate taxon (see legend), taxa that could not be resolved at the level of genus are noted with preceding order or family. b Clustered co-occurrence network with only the interactions between clusters shown. Nodes, representing taxa, are organized into a circular layout according to cluster membership. Each cluster is assigned a number for reference. c Number of taxa shared across clusters. Here each cluster is depicted as a pie chart with sectors indicating proportion of each taxon. Cluster numbering is consistent with (b). Edges between clusters indicate that there are taxa shared between clusters, thicker and darker edges represent more shared taxa. d Scatter plot of ratio of negative to positive interactions against degree for every taxon. Taxonomic labels down to the species level were obtained from sequence similarity searches against partitions of the NCBI’s non-redundant nucleotide database (see Supplemental Information)