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Dietary and management factors influence the equine gastric microbiome

Linda J. PaulLouisiana State University, Veterinary Clinical Sciences, Equine Health Studies Program, Baton Rouge, LA

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Aaron C. EricssonUniversity of Missouri, Metagenomics Center, Equine Gut Group, Columbia, MO

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Frank M. AndrewsLouisiana State University, Veterinary Clinical Sciences, Equine Health Studies Program, Baton Rouge, LA

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Zachary McAdamsUniversity of Missouri, Metagenomics Center, Equine Gut Group, Columbia, MO

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Michael L. KeowenLouisiana State University, Veterinary Clinical Sciences, Equine Health Studies Program, Baton Rouge, LA

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Michael P. St BlancLouisiana State University, Veterinary Clinical Sciences, Equine Health Studies Program, Baton Rouge, LA

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Heidi E. BanseLouisiana State University, Veterinary Clinical Sciences, Equine Health Studies Program, Baton Rouge, LA

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Abstract

OBJECTIVE

The purpose of this study was to characterize the relationship of diet and management factors with the glandular gastric mucosal microbiome. We hypothesize that the gastric mucosal microbial community is influenced by diet and management factors. Our specific objective is to characterize the gastric mucosal microbiome in relation to these factors.

ANIMALS

57 client-owned horses in the southern Louisiana region with and without equine glandular gastric disease.

PROCEDURES

Diet and management data were collected via a questionnaire. Gastroscopy was used for evaluation of equine gastric ulcer syndrome and collection of glandular mucosal pinch biopsies. 16S rRNA amplicon sequencing was used for microbiome analysis. Similarity and diversity indices and sequence read counts of individual taxa were compared between diet and management factors.

RESULTS

Differences were detected in association with offering hay, type of hay, sweet feed, turnout, and stalling. Offering hay and stalling showed differences in similarity indices, whereas hay type, sweet feed, and turnout showed differences in similarity and diversity indices. Offering hay, hay type, and sweet feed were also associated with differences in individual sequence read counts.

CLINICAL RELEVANCE

This study provides preliminary characterization of the complex relationship between the glandular gastric microbiome and diet/management factors. The ideal microbiome to promote a healthy glandular gastric environment remains unknown.

Abstract

OBJECTIVE

The purpose of this study was to characterize the relationship of diet and management factors with the glandular gastric mucosal microbiome. We hypothesize that the gastric mucosal microbial community is influenced by diet and management factors. Our specific objective is to characterize the gastric mucosal microbiome in relation to these factors.

ANIMALS

57 client-owned horses in the southern Louisiana region with and without equine glandular gastric disease.

PROCEDURES

Diet and management data were collected via a questionnaire. Gastroscopy was used for evaluation of equine gastric ulcer syndrome and collection of glandular mucosal pinch biopsies. 16S rRNA amplicon sequencing was used for microbiome analysis. Similarity and diversity indices and sequence read counts of individual taxa were compared between diet and management factors.

RESULTS

Differences were detected in association with offering hay, type of hay, sweet feed, turnout, and stalling. Offering hay and stalling showed differences in similarity indices, whereas hay type, sweet feed, and turnout showed differences in similarity and diversity indices. Offering hay, hay type, and sweet feed were also associated with differences in individual sequence read counts.

CLINICAL RELEVANCE

This study provides preliminary characterization of the complex relationship between the glandular gastric microbiome and diet/management factors. The ideal microbiome to promote a healthy glandular gastric environment remains unknown.

Supplementary Materials

    • Supplementary Table S1 (PDF 122 KB)

Contributor Notes

Corresponding author: Dr. Paul (lindapaul@lsu.edu)