| Literature DB >> 29515974 |
Victoria C Ewan1,2, William D K Reid3, Mark Shirley4, A John Simpson2, Steven P Rushton4, William G Wade5.
Abstract
Respiratory tract infections are the commonest nosocomial infections, and occur predominantly in frailer, older patients with multiple comorbidities. The oropharyngeal microbiota is the major reservoir of infection. This study explored the relative contributions of time in hospital and patient demographics to the community structure of the oropharyngeal microbiota in older patients with lower limb fracture. We collected 167 throat swabs from 53 patients (mean age 83) over 14 days after hospitalization, and analyzed these using 16S rRNA gene sequencing. We calculated frailty/comorbidity indices, undertook dental examinations and collected data on respiratory tract infections. We analyzed microbial community composition using correspondence (CA) and canonical correspondence analysis. Ten patients were treated for respiratory tract infection. Microbial community structure was related to frailty, number of teeth and comorbidity on admission, with comorbidity exerting the largest effect. Time in hospital neither significantly changed alpha (t = -0.910, p = 0.365) nor beta diversity (CA1 t = 0.022, p = 0.982; CA2 t = -0.513, p = 0.609) of microbial communities in patient samples. Incidence of respiratory pathogens were not associated with time in hospital (t = -0.207, p = 0.837), nor with alpha diversity of the oral microbiota (t = -1.599, p = 0.113). Patient characteristics at admission, rather than time in hospital, influenced the community structure of the oral microbiota.Entities:
Keywords: aged; comorbidity; cross infection; frail elderly; microbiota; oropharynx; respiratory tract infections
Mesh:
Year: 2018 PMID: 29515974 PMCID: PMC5826060 DOI: 10.3389/fcimb.2018.00042
Source DB: PubMed Journal: Front Cell Infect Microbiol ISSN: 2235-2988 Impact factor: 5.293
Demographics of study cohort.
| Age | 82.9 (6.4) | 83.5 (8.5) | 82.8, (5.9) | 83.2 (5.9) |
| Female | 32 (59.3%) | 5 (50%) | 14 (52%) | 13 (81%) |
| Clinical frailty score (1–9, high score = more frail) | 5 (1–9) | 5 (3–7) | 5 (5–9) | 3.5 (1–4) |
| Barthel index (0–20, high score = more independent) | 20 (4–20) | 19 (4–20) | 19 (4–20) | 20 (12–20) |
| HABAM score (0–67, mobility-high score = more mobile) | 51 (18–65) | 50 (18–61) | 50 (29–55) | 53 (20–65) |
| Charlson index (high score = more comorbidities) | 5 (2–11) | 6 (4–11) | 5 (2–11) | 5 (3–10) |
| Number of teeth | 6 (0–28) | 7 (0–27) | 0 (0–26) | 6.5 (0–28) |
| Denture wearing | 38 (72%) | 8 (80%) | 21 (78%) | 9 (56%) |
| Number of medications at admission | 6 (0–19) | 5.5 (0–11) | 7 (0–19) | 3.5 (0–12) |
| Proton pump inhibitor | 15 (28%) | 5 (29%) | 6 (22%) | 4 (25%) |
| Inhaled corticosteroids | 4 (8%) | 1 (6%) | 2 (7%) | 2 (13%) |
| Dementia | 6 (11%) | 2 (20%) | 4 (15%) | 0 (0%) |
| Community dwelling prior to fracture | 42 (78%) | 6 (60%) | 20 (74%) | 16 (100%) |
| Door to scalpel (hours) | 21 (3–744) | 22 (7–744) | 20 (6–72) | 24 (3–120) |
| Length of stay (days) | 27 (5–265) | 46 (13–140) | 27 (5–265) | 23.5 (11–65) |
| Died up to 90 days post discharge | 14 (26%) | 8 (80%) | 6 (22%) | 0 (0%) |
RTI, Respiratory tract infection; IMD, Index of multiple deprivation score. Median (range) presented if distribution skewed. *n = 52.
Figure 1Unweighted hierarchical clustering analysis, using UPGMA algorithm (unweighted pair group method with arithmetic mean), of 167 oropharyngeal samples from 53 patients admitted to hospital with lower limb fracture. Adjacent to the branch ends, samples from patients who subsequently developed respiratory tract infection are highlighted in green, and those who did not were highlighted by the black bar. Stacked bar charts show the relative abundance of the 43 highest ranked OTUs (85% of the data) and the summed relative abundances of residual OTUs. Patient ID numbers are highlighted adjacent to dendrogram branch ends, and demonstrate similarity between samples from individuals.
Figure 2Canonical correspondence analysis showing the relationships between the microbial communities in hip fracture patients' mouths and Charlson score, Age, Clinical Frailty Score (CFS), Barthel score and whether teeth are present or absent.
Figure 3Hypothetical path diagram for a structural equation model analyzing the impacts of age, patient health status, and duration of time in hospital on the beta diversity of the oral microbiome as measured in terms of a correspondence analysis of OTUs collected from patients from admission to discharge or death (whichever occurred first).
Figure 4Path diagram for best fit structural equation model. The model demonstrates that the major trend in beta diversity is related to the extent of frailty and comorbidities, which are both related to age; the second trend is related to the number of teeth. There was no impact of time since admission on the trends in beta diversity.