| Literature DB >> 25717374 |
Sylvia Omulo1, Samuel M Thumbi1, M Kariuki Njenga2, Douglas R Call1.
Abstract
The emergence and persistence of antimicrobial resistance is driven by varied factors including the indiscriminate use of antibiotics and variable drug efficacy and presents a major threat to the control of infectious diseases. Despite the high burden of disease in sub-Saharan Africa and the potential health and economic consequences, the level of research on antimicrobial resistance in the region remains unknown. Little data exists to quantify the contribution of different factors to the current levels of antimicrobial resistance. To identify the factors that contribute most to the emergence, amplification, persistence and dissemination of antimicrobial resistance in humans and animals, we used the PRISMA 2009 guidelines to conduct a systematic review of studies on antibiotic-resistant enteric bacteria in Eastern Africa. We searched PubMed and Google Scholar databases and identified 2,155 probable articles, of which 89 studies on humans and 28 on animals remained after full-text review. These were articles from Kenya, Tanzania, Uganda, Ethiopia, Rwanda and Burundi, published between 1974 and 2013, that reported resistance in Salmonella, Shigella, Escherichia coli and Vibrio sp. The majority (98%) of human studies were based on hospital- (rather than community-wide) sampling and although they report high levels of antimicrobial resistance in the region, study design and methodological differences preclude conclusions about the magnitude and trends of antimicrobial resistance. To remedy this, we discuss and propose minimum reporting guidelines for the level of detail that should be explicitly provided for antimicrobial resistance study designs, testing of samples and reporting of results that would permit comparative inferences and enable meta-analyses. Further, we advocate for increased focus on community- rather than hospital-based sampling to provide a better indication of population-wide trends in antimicrobial resistance. This approach, together with the establishment of a robust regional surveillance network, should over time build a pool of evidence-based data useful for policy decisions and interventions aimed at controlling antimicrobial resistance.Entities:
Keywords: Antimicrobial resistance; Eastern Africa; Minimum reporting guidelines
Year: 2015 PMID: 25717374 PMCID: PMC4339253 DOI: 10.1186/s13756-014-0041-4
Source DB: PubMed Journal: Antimicrob Resist Infect Control ISSN: 2047-2994 Impact factor: 4.887
Key search terms used in PubMed and Google scholar
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| “Antibiotic resistan*” | “east* Africa*” |
| “Antimicrobial* resistan*” | “east* Africa*countr*” |
| “Drug* resistan*” | “Kenya*” |
| “Multi-drug resistan*” | “Uganda*” |
| “Multidrug resistan*” | “Tanzania*” |
| “Multiple-drug resistan*” | “Ethiopia*” |
| “Multiple drug* resistan*” | “Rwanda*” |
| “Antibiotic* susceptib*” | “Burundi” |
| “Antimicrobial* susceptib*” | “enterobacteria*” |
| “Drug* susceptib*” | “enter* pathogen*” |
| “Multi-drug susceptib*” | “diarrh* pathogen*” |
| “Multidrug susceptib*” | “ |
| “Multiple-drug susceptib*” | “ |
| “Multiple drug* susceptib*” | “ |
| “ |
Initial search terms included words used to filter out publications that did not address antimicrobial resistance. Refining terms were then applied to select only articles from the study region and on the pathogens of interest. Truncation marks (*) indicate that different extensions of the main stem of words were used.
Figure 1Flow diagram summarizing the selection of publications for review. Two exclusion steps were applied. Total articles excluded (underlined) and reasons for exclusion are shown. CV: Curriculum vitae.
Figure 2Distribution of reviewed publications from 1974 to 2013. Trend (based on year of publication) shown for human (blue full dots) and animal (red circles) studies from the six countries studied. Regression lines show an increasing trend in the number of publications from the mid-1970s to date.
Distribution of publications from the six countries studied shown by age of study subjects and by pathogen tested
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| Adults | - | - | 1 | - | - | - | 1 | [ |
| Children | - | - | 5 | - | - | 1 | 6 | [ | |
| All ages | - | 1 | 2 | - | - | 1 | 4 | [ | |
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| Adults | - | 4 | 5 | - | - | - | 9 | [ |
| Children | - | 2 | 5 | - | 1 | 1 | 9 | [ | |
| All ages | - | 4 | 10 | 1 | 1 | 16 | [ | ||
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| Adults | - | 2 | - | - | - | - | 2 | [ |
| Children | - | 2 | - | - | 1 | - | 3 | [ | |
| All ages | 4 | 9 | 6 | 8 | 1 | 1 | 29 | [ | |
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| All ages | 1 | 1 | - | 4 | 3 | 1 | 10 | [ |
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| - | 1 | 11 | - | - | - | 12 | [ | |
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| - | 14 | 1 | - | 1 | - | 16 | [ | |
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(n) is the total number of studies on a particular pathogen from each country; N is the cumulative number of human and animal studies from each country. Last column shows citations.
Factors that explain the prevailing state of AMR in eastern Africa
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| • Ease of access (cheap, widely available) to antibiotics | Kenya [ |
| • Antibiotic use practices, including self-medication, high frequency of antibiotic use, sub-therapeutic use or indiscriminate use | Kenya [ |
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| • Over-prescription at health facilities due to limited diagnostics resources | Ethiopia [ |
| • Severe infections requiring different antibiotics | Rwanda [ |
| • Human importation of antibiotic resistant bacteria | Burundi [ |
| • Nosocomial or community transmission of resistant bacteria | Kenya [ |
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| • Resistant bacteria imported via contaminated food | Kenya [ |
| • Antibiotic use in humans | Kenya [ |
| • Animal-animal contact | Ethiopia [ |
| • Animal-human close co-existence increasing contact | Kenya [ |
| • High antibiotic use in animals in small production systems, poor farm management practices disseminating resistant bacteria | Kenya [ |
| • Housing contamination | Ethiopia [ |
| • Contamination during handling animal products. | Kenya [ |
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| • High cost of antibiotic | Kenya [ |
| • Limiting antibiotic availability | Uganda [ |
| • Periodic withdrawal of antibiotics from public use | Kenya [ |
| • Parenteral administration of antibiotics | Ethiopia [ |
| • Infrequent or prudent use of antibiotics | Kenya [ |
List of risk factors that are thought to contribute to the state of antimicrobial resistance in Eastern Africa as suggested both by studies on AMR in humans and animals. Country and relevant citation shown in the column on the right. ƗAnimal studies.
Figure 3Hypothetical cases of diarrhea in a district hospital in 2013. Graph illustrating sources of potential differences in reported AMR prevalence arising from monthly variations in disease incidence reported in a hospital. A, B and C represent different sampling periods.