| Literature DB >> 33789573 |
M Singer1,2, R Koedooder3, M P Bos4, L Poort4, S Schoenmakers5, P H M Savelkoul6,7, J S E Laven8, J D de Jonge9, S A Morré1,10, A E Budding4.
Abstract
BACKGROUND: 16S rRNA gene sequencing is currently the most common way of determining the composition of microbiota. This technique has enabled many new discoveries to be made regarding the relevance of microbiota to the health and disease of the host. However, compared to other diagnostic techniques, 16S rRNA gene sequencing is fairly costly and labor intensive, leaving room for other techniques to improve on these aspects.Entities:
Keywords: 16S rRNA gene sequencing; IS-pro; Vaginal microbiota
Mesh:
Substances:
Year: 2021 PMID: 33789573 PMCID: PMC8015044 DOI: 10.1186/s12866-021-02149-7
Source DB: PubMed Journal: BMC Microbiol ISSN: 1471-2180 Impact factor: 3.605
Fig. 1a A representation of the circular chromosome of bacteria. The 16S and 23S ribosomal RNA genes are highlighted together with the intergenic space (IS) region. b IS profile of vaginal swab. Peak length, expressed in nucleotides, corresponds to IS-fragment length. Peak height, expressed in relative fluorescence units (RFU), reflects quantity of fragments. Red peaks represent Bacteroidetes, yellow peaks represent Proteobacteria, blue peaks represent FAFV
Fig. 2Heatmap of relative microbiome abundance found in vaginal samples obtained from 294 women through 16S rRNA gene sequencing. Column correlation clustering was performed with the UPGMA method to cluster microbiome profiles according to similarity based on cosine correlation. Row hierarchy clustering was performed calculating the Euclidean distance based on hierarchical analysis to identify and order the most prominent taxa related to the microbiome profiles. Shown in the figure are the 20 most abundant taxa found in this correlation. The alpha diversity is shown in the bar graph using the Shannon diversity index in a sample order correlating with the above heatmap profiles
Distribution of vaginal sample cluster profiles between 16S rRNA gene sequencing results and IS-pro results, respectively. Only samples successfully analyzed by both techniques are shown. It is expressed in percentage how many profiles with IS-pro matched the profile analyzed with 16S sequencing
| 16S rRNA gene sequencing vaginal profiles ( | |||||||
|---|---|---|---|---|---|---|---|
| Cluster | Diverse | Other | |||||
Diverse | 6 (15.8%) | 2 | 2 | ||||
| 4 | 113 (85.6%) | 3 | 6 | 3 | 3 | ||
| 4 | 1 | 8 (47.1%) | 1 | ||||
| 21 | 16 | 4 | 68 (91.9%) | 13 | 7 | ||
| 1 | 6 (27.3%) | ||||||
Other | 2 | ||||||
Fig. 3Heatmap of relative microbiome abundance found in vaginal samples obtained from 297 women with IS-pro. Column correlation clustering was performed with the UPGMA method to cluster microbiome profiles according to similarity based on cosine correlation. Row hierarchy clustering was performed calculating the Euclidean distance based on hierarchical analysis to identify and order the most prominent taxa related to the microbiome profiles. Shown in the figure are the 19 most abundant taxa found in this correlation. The alpha diversity is shown in the bar graph using the Shannon diversity index in a sample order correlating with the above heatmap profiles
Fig. 4Bland Altman plot of the Shannon indices derived from the microbiota profiles gathered through both the 16S rRNA gene sequencing and IS-pro analyses. In it the average Shannon index between 16S rRNA gene sequencing and IS-pro analyses outcomes of matched samples is plotted against the difference between these outcomes. Red lines indicate the 95% Confidence Interval of the Limits of Agreement. The boxplot indicates the median and interquartile ranges of the number of datapoints in the Bland Altman plot
Fig. 5Outcomes of Pearson’s correlation (expressed as R2) where blue bars represent outcomes from analyses based on paired samples from the same patient, and green bars represent the same analyses where samples were not paired per patient. a & b Boxplot featuring R squared values of IS-pro vaginal sample outcomes correlated to those of 16S rRNA gene sequencing vaginal sample outcomes when samples are paired per patient (a) vs no pairing (b). (Q1 = 1st quartile, Q3 = 3rd quartile)
Fig. 6Graph showing the relative abundances in the microbiota profiles gathered through IS-pro (Left) and 16S rRNA gene sequencing (Right) analyses. Every line represents a single sample. Empty lines indicate failed analyses by one of the analysis techniques