| Literature DB >> 32503418 |
Hua Zha1,2,3, Dai-Qiong Fang1, Aimee van der Reis3, Kevin Chang4, Li-Ya Yang1, Jiao-Jiao Xie1, Ding Shi1, Qiao-Mai Xu1, Ya-Ting Li1, Lan-Juan Li5.
Abstract
BACKGROUND: Probiotics are effective to rectify the imbalanced gut microbiota in the diseased cohorts. Two Bifidobacterium strains (LI09 and LI10) were found to alleviate D-galactosamine-induced liver damage (LD) in rats in our previous work. A series of bioinformatic and statistical analyses were performed to determine the vital bacteria in the gut microbiotas altered by the LI09 or LI10 in rats.Entities:
Keywords: Gut microbiota; Illumina sequencing; Liver injury; Microbial dysbiosis status; Probiotic bacteria; Protective effect
Mesh:
Substances:
Year: 2020 PMID: 32503418 PMCID: PMC7275491 DOI: 10.1186/s12866-020-01827-2
Source DB: PubMed Journal: BMC Microbiol ISSN: 1471-2180 Impact factor: 3.605
Fig. 1Representative OTUs belonging to each of seven groups identified by Linear Discriminant Analysis Effect Size (LEfSe)
Fig. 2Top five functional metabolites associated with each of the seven groups determined by LEfSe
Fig. 3The OTUs associated with (a) negative control (NC) or (b) positive control (PC) with significant different abundances between LI09 and PC groups, or between LI10 and PC groups
Fig. 4The gut microbiotas in LI09, LI10 and PC groups were clustered into three clusters by Partition around medoids (PAM) analysis
The comparisons of liver function variables in the three clustered cohorts in LI09, LI10 and PC groups
| Variable | Cluster_1 | Cluster_2 | Cluster_3 |
|---|---|---|---|
| ALB (g/L) | 36 ± 1 a | 39 ± 1 a | 35 ± 2 a |
| ALT (U/L) | 5628 ± 610 a | 80.0 ± 1.0 b | 10,393 ± 876 c |
| AST (U/L) | 7670 ± 854 a | 230 ± 25 b | 12,367 ± 932 c |
| TBA (μmol/L) | 351 ± 27 a | 63 ± 17 b | 448 ± 26 a |
| TB (μmol/L) | 33 ± 13 a | 2 ± 0.4 b | 53 ± 30 a |
| GGT (U/L) | 17 ± 2 a | 0.5 ± 0.3 b | 21 ± 4 a |
| GPDA (U/L) | 331 ± 26 a | 66 ± 4 b | 427 ± 24 a |
Note: Cluster_1 to 3 represented the three clusters of cohorts in LI09, LI10 and PC groups identified by partitioning around medoids clustering algorithm based on their intestinal bacterial compositions (see Fig. 4), e.g., Cluster_1 - a mix of rats from all the three groups, Cluster_2 - a mix of rats from LI09 and LI10 groups, Cluster_3 - a mix of remaining rats from LI10 and PC groups. Results were represented in Mean ± S.E., and the groups with different alphabets represented significant difference between the clustered cohorts determined by t-tests
The comparisons of cytokines in the three clustered cohorts in LI09, LI10 and PC groups
| Cytokines | Cluster_1 | Cluster_2 | Cluster_3 |
|---|---|---|---|
| M-CSF (pg/ml) | 496 ± 31 a | 301 ± 37 b | 604 ± 40 a |
| TNF-α (pg/ml) | 122 ± 10 a | 52 ± 9 a | 111 ± 16 a |
| IL-5 (pg/ml) | 556 ± 54 a | 277 ± 27 b | 569 ± 76 a |
| IL-10 (pg/ml) | 432 ± 32 a | 195 ± 38 b | 653 ± 124 a |
| MIP-1α (pg/ml) | 99 ± 13 a | 19 ± 1 b | 199 ± 35 c |
| MIP-3α (pg/ml) | 208 ± 22 a | 78 ± 9 b | 416 ± 81 c |
| MCP-1 (pg/ml) | 8792 ± 2169 a | 1054 ± 89 b | 10,522 ± 1660 a |
| IL-1β (pg/ml) | 122 ± 28 a | 31 ± 5 b | 82 ± 6 a |
| IL-6 (pg/ml) | 131 ± 16 a | 83 ± 38 a | 683 ± 350 b |
Note: Cluster_1 to 3 represented the three clusters of cohorts in LI09, LI10 and PC groups identified by partitioning around medoids clustering algorithm based on their intestinal bacterial communities (see Fig. 4). Results were represented in Mean ± S.E., and the groups with different alphabets represented significant difference between the clustered cohorts determined by t-tests
Fig. 5Representative OTUs belonging to each of the three clustered microbiotas of LI09, LI10 and positive control groups identified by LEfSe
Fig. 6Associations of representative OTUs in the three clustered microbiotas, with liver function variables and plasma cytokines, i.e., (a) Cluster_1, (b) Cluster_2 and (c) Cluster_3. Note: green labelled lines represented positive correlation, and red labelled lines represented negative correlation