| Literature DB >> 26277095 |
Eduardo Castro-Nallar1,2, Ying Shen3, Robert J Freishtat4, Marcos Pérez-Losada5,6,7, Solaiappan Manimaran8, Gang Liu9, W Evan Johnson10, Keith A Crandall11.
Abstract
BACKGROUND: The relationships between infections in early life and asthma are not completely understood. Likewise, the clinical relevance of microbial communities present in the respiratory tract is only partially known. A number of microbiome studies analyzing respiratory tract samples have found increased proportions of gamma-Proteobacteria including Haemophilus influenzae, Moraxella catarrhalis, and Firmicutes such as Streptococcus pneumoniae. The aim of this study was to present a new approach that combines RNA microbial identification with host gene expression to characterize and validate metagenomic taxonomic profiling in individuals with asthma.Entities:
Mesh:
Year: 2015 PMID: 26277095 PMCID: PMC4537781 DOI: 10.1186/s12920-015-0121-1
Source DB: PubMed Journal: BMC Med Genomics ISSN: 1755-8794 Impact factor: 3.063
Demographic data from asthma and control subjects
| Variable | Asthma (n = 8) | Control (n = 6) |
|---|---|---|
| Mean (95 % CI) | Mean (95 % CI) | |
| Gender, % male | 75 | 83 |
| Age, years, median (range) | 11 (6, 17) | 15 (10, 20) |
| FEV1 (% change with bronchodilator), median (range) | 3.5 (−13, 10) | N/A |
| Post-bronchodilator FEV1 (% predicted), median (range) | 97 (62, 107) | N/A |
| FEF25–75 (% predicted), median (range) | 83 (28, 112) | N/A |
| Post-bronchodilator FEF25–75 (% predicted), median (range) | 93 (37, 110) | N/A |
| Serum IgE, IU/mL, median (range) | 247 (60, 1706) | N/A |
| Blood eosinophils, %, median (range) | 6 (2, 14) | N/A |
| ACT score, median (range) | 23 (17, 23) | N/A |
FEV Forced Expiration Volume, FEF Forced Expiratory Flow, ACT Asthma Control Test. N/A = information not available
Fig. 1Alpha and beta diversity for asthma and control samples as estimated by different distance metrics. a Alpha diversity measures show controls are more diverse than asthma individuals in metrics that account for evenness, however in asthma individuals we observed more species. Observed = observed diversity; Chao1 = Chao estimator; Shannon = Shannon diversity index; Simpson = Simpson diversity index. b Multidimensional scaling using principal coordinate analysis (PCoA). Coordinates 1 and 2 explain 95 % of the observed variance
Fig. 2Microbial composition of asthma and control samples. Stacked bar chart shows different composition among groups with Moraxella catarrhalis dominating 5 out of 8 asthma samples. Since samples are RNA, the proportion of mapped reads represents the confounded variable of microbe presence and microbial gene expression
Fig. 4a Heatmap of Moraxella catarrhalis signature genes distinguishes the asthma samples from the controls. The color scale goes from blue (low expression) to red (high expression). b, c The Moraxella catarrhalis signature strengths are highly concordant with the PathoScope read proportions in control and asthma samples with the exception of sample P003
Fig. 3Effect size for asthma samples over controls (y axis) as a function of species (x axis), colored by phylum. a Effect size was computed by normalizing read counts and comparing asthma and control samples using a Wald test at α = 0.05. b On average Moraxella catarrhalis asthma samples exhibit more reads than the other species identified (y-axis is Log10). The number on top of bars represent the coefficient of variation (standard deviation/mean)