Genetic and environmental control of host-gut microbiota interactions
- Elin Org1,
- Brian W W Parks1,
- Jong Wha J Joo1,
- Benjamin Emert1,
- William Schwartzman1,
- Eun Yong Kang1,
- Margarete Mehrabian1,
- Calvin Pan1,
- Rob Knight2,
- Robert Gunsalus1,
- Thomas A Drake1,
- Eleazar Eskin1 and
- Aldons J. Lusis1,3
- ↵* Corresponding author; email: jlusis{at}mednet.ucla.edu
Abstract
Genetics provides a potentially powerful approach to dissect host-gut microbiota interactions. Toward this end, we profiled gut microbiota using 16s rRNA gene sequencing in a panel of 110 diverse inbred strains of mice. This panel has previously been studied for a wide range of metabolic traits and can be used for high resolution association mapping. Using a SNP-based approach with a linear mixed model we estimated the heritability of microbiota composition. We conclude that in a controlled environment the genetic background accounts for a substantial fraction of abundance of most common microbiota. The mice were previously studied for response to a high fat, high sucrose diet, and we hypothesized that the dietary response was determined in part by gut microbiota composition. We tested this using a cross-fostering strategy in which a strain showing a modest response, SWR, was seeded with microbiota from a strain showing a strong response, AxB19. Consistent with a role of microbiota in dietary response, the cross-fostered SWR pups exhibited a significantly increased response in weight gain. To examine specific microbiota contributing to the response, we identified various genera whose abundance correlated with dietary response. Among these, we chose Akkermansia muciniphila, a common anaerobe previously associated with metabolic effects. When administered to strain AxB19 by gavage, the dietary response was significantly blunted for obesity, plasma lipids, and insulin resistance. In an effort to further understand host-microbiota interactions, we mapped loci controlling microbiota composition and prioritized candidate genes. Our publically available data provide a resource for future studies.
- Received May 8, 2015.
- Accepted August 7, 2015.
- Published by Cold Spring Harbor Laboratory Press
This manuscript is Open Access.
This article, published in Genome Research, is available under a Creative Commons License (Attribution 4.0 International license), as described at http://creativecommons.org/licenses/by/4.0/.











