| Literature DB >> 32098988 |
Joanna-Lynn C Borgogna1, Michelle D Shardell2,3, Carl J Yeoman1,4, Khalil G Ghanem5, Herlin Kadriu1, Alexander V Ulanov6, Charlotte A Gaydos5, Justin Hardick5, Courtney K Robinson3, Patrik M Bavoil7, Jacques Ravel3,8, Rebecca M Brotman2,3, Susan Tuddenham9.
Abstract
Chlamydia trachomatis (CT) and Mycoplasma genitalium (MG) are two highly prevalent bacterial sexually transmitted infections (STIs) with a significant rate of co-infection in some populations. Vaginal metabolites are influenced by resident vaginal microbiota, affect susceptibility to sexually transmitted infections (STIs), and may impact local inflammation and patient symptoms. Examining the vaginal metabolome in the context of CT mono (CT+) and CT/MG co-infection (CT+/MG+) may identify biomarkers for infection or provide new insights into disease etiology and pathogenesis. Yet, the vaginal metabolome in the setting of CT infection is understudied and the composition of the vaginal metabolome in CT/MG co-infected women is unknown. Therefore, in this analysis, we used an untargeted metabolomic approach combined with 16S rRNA gene amplicon sequencing to characterize the vaginal microbiota and metabolomes of CT+, CT+/MG+, and uninfected women. We found that CT+ and CT+/MG+ women had distinct vaginal metabolomic profiles as compared to uninfected women both before and after adjustment for the vaginal microbiota. This study provides important foundational data documenting differences in the vaginal metabolome between CT+, CT+/MG+ and uninfected women. These data may guide future mechanistic studies that seek to provide insight into the pathogenesis of CT and CT/MG infections.Entities:
Mesh:
Year: 2020 PMID: 32098988 PMCID: PMC7042340 DOI: 10.1038/s41598-020-60179-z
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1The vaginal metabolome clusters by infection status and by CST. Two-dimensional principal component analysis (PCA) score plots demonstrate statistical clustering of metabolites by (A) infection status and (B) by CST.
Figure 2Discriminatory metabolites associated with infection status. CT+ and uninfected women are compared in the first column (A,B), CT+/MG+ and uninfected women are compared in second column (C,D) and CT+/MG+ women compared to CT+ women are compared in the last row (E,F). (A,C,E) Show discrimination of groups using partial least squares discriminant analysis. (B,D,F) show the metabolites most strongly influencing discrimination by the PLS-DA. The variable importance in projection (VIP) score is the weighted sum of squares for the PLS-DA loading with the amount of variation explained by each component taken into account. Asterisks indicate metabolites which are also significant via regression analyses.
Figure 3Discriminatory metabolites associated with infection status stratified by CST. Women within CST-III are compared in the first column (A,B) and women within CST-IV are compared in the second column (C,D). (A,C) Show discrimination of groups using partial least squares discriminant analysis. (B,D) Show the metabolites most strongly influencing discrimination by the PLS-DA. Asterisks indicate metabolites which are also significant via regression analyses.