Literature DB >> 30955124

The prevalence of methicillin-resistant Staphylococcus aureus among diabetic patients: a meta-analysis.

Helen J Stacey1, Caitlin S Clements2, Susan C Welburn2,3, Joshua D Jones4,5.   

Abstract

AIMS: Diabetic patients have multiple risk factors for colonisation with methicillin-resistant Staphylococcus aureus (MRSA), a nosocomial pathogen associated with significant morbidity and mortality. This meta-analysis was conducted to estimate the prevalence of MRSA among diabetic patients.
METHODS: The MEDLINE, Embase, BIOSIS, and Web of Science databases were searched for studies published up to May 2018 that reported primary data on the prevalence of MRSA in 10 or more diabetic patients. Two authors independently assessed study eligibility and extracted the data. The main outcomes were the pooled prevalence rates of MRSA colonisation and infection among diabetic populations.
RESULTS: Eligible data sets were divided into three groups containing data about the prevalence of MRSA colonisation or in diabetic foot or other infections. From 23 data sets, the prevalence of MRSA colonisation among 11577 diabetics was 9.20% (95% CI, 6.26-12.63%). Comparison of data from 14 studies that examined diabetic and non-diabetic patients found that diabetics had a 4.75% greater colonisation rate (P < 0.0001). From 41 data sets, the prevalence of MRSA in 10994 diabetic foot infection patients was 16.78% (95% CI, 13.21-20.68%). Among 2147 non-foot skin and soft-tissue infections, the MRSA prevalence rate was 18.03% (95% CI, 6.64-33.41).
CONCLUSIONS: The prevalence of MRSA colonisation among diabetic patients is often higher than among non-diabetics; this may make targeted screening attractive. In the UK, many diabetic patients may already be covered by the current screening policies. The prevalence and impact of MRSA among diabetic healthcare workers requires further research. The high prevalence of MRSA among diabetic foot infections may have implications for antimicrobial resistance, and should encourage strategies aimed at infection prevention or alternative therapies.

Entities:  

Keywords:  Diabetes; Diabetic patients; MRSA; Meta-analysis; Methicillin-resistant Staphylococcus aureus; Prevalence; Resistance

Mesh:

Year:  2019        PMID: 30955124      PMCID: PMC6597605          DOI: 10.1007/s00592-019-01301-0

Source DB:  PubMed          Journal:  Acta Diabetol        ISSN: 0940-5429            Impact factor:   4.280


Introduction

Staphylococcus aureus infections can be classified as methicillin-resistant Staphylococcus aureus (MRSA) or methicillin-sensitive Staphylococcus aureus (MSSA). Individuals colonised with MRSA are typically asymptomatic; however, if the bacterium breaches the patient’s physical defences, infection can occur. The economic and clinical burden of MRSA is significant, with high rates of morbidity and mortality and increased hospital costs associated with MRSA compared to MSSA [1, 2]. Risk factors which increase susceptibility to MRSA colonisation include recent exposure to antimicrobial agents, sustained hyperglycaemia associated with diabetes mellitus (diabetes), hospitalisation within the past year, skin or soft-tissue infection (SSTI) on admission, and human immunodeficiency virus type one (HIV) infection [3]. Independently, MRSA colonisation has been associated with an increased risk of MRSA infection [4]. Certain patient groups, therefore, have multiple risk factors and a significantly increased susceptibility to MRSA colonisation and infection. These include, but are not limited to, patients with diabetes mellitus (diabetics), HIV-positive individuals, and haemodialysis patients [5, 6]. Diabetes is the most common metabolic disease in the world, and the global number of diabetics is predicted to rise from 382 million in 2013 to 592 million in 2035 [7]. Diabetes may be complicated by foot disease. In Scotland, 4.7% of diabetics are recorded as having had a foot ulcer and 0.7% as having had a lower limb amputation [8]. It has been estimated that, in England, approximately £1 of every £140 spent by the NHS goes towards the cost of caring for ulceration or amputation, and that the cost of treating diabetic foot is greater than that for any of the four most common cancers in the UK [9]. Gram-positive organisms are commonly identified from diabetic foot infections (DFIs), with S. aureus among those most commonly isolated. A 2010 systematic review of the prevalence of MRSA in diabetic foot infections estimated the prevalence to be 15–30% [10]. The rising prevalence of diabetes, predominantly in low- and middle-income countries, is occurring against the backdrop of globally increasing rates of antimicrobial resistance. Knowledge of the prevalence of colonisation or infection of diabetic patients by resistant pathogens, including MRSA, will therefore be important in assessing the extent to which interventions targeted towards diabetic patients may mitigate the spread of resistant pathogens. Several meta-analyses have examined the prevalence of MRSA in high-risk populations, such as haemodialysis patients, HIV-positive patients and general, neonatal or paediatric intensive-care patients [5, 6, 11, 12]. However, to date, no meta-analysis has examined the prevalence of MRSA in diabetic patients. Therefore, the aim of this meta-analysis was to use studies of any design which reported data for 10 or more patients to estimate the prevalence of MRSA in diabetic patients.

Methods

Search strategy

Four electronic databases were searched for articles published up to 16 May 2018: EMBASE (1980–2018), Ovid MEDLINE® Epub Ahead of Print, In-Process & Other Non-Indexed Citations, Ovid MEDLINE® Daily, Ovid MEDLINE and Versions® (1946–2018), Web of Science and the BIOSIS Citation Index (1926–2018). The Web of Science Core Collection Citation Indexes searched were: Science Citation Index Expanded (1900–2018), Conference Proceedings Citation Index- Science (1990–2018), Book Citation Index– Science (2005–2018) and the Emerging Sources Citation Index (2015–2018). The search was performed using the following terms: (“me??icillin-resistant Staphylococcus aureus” OR “MRSA” OR “?A-MRSA”) AND (“diabetes” OR “DFI” OR “diabetic foot” OR “diabetes mellitus type” OR “non?insulin dependent diabetes” OR “insulin?dependent diabetes” OR “?IDDM”) AND (“prevalence” OR “incidence” OR “epidemiology” OR “frequency” OR “occurrence” OR “rate” OR “predict*”). In Ovid, these terms were followed by the suffix ‘.mp.’ and they were searched as topics in Web of Science. Further articles were obtained using reference lists from a review article [10] and manual searching [13, 14]. A study protocol was not published prior to this study.

Study selection criteria

All studies underwent title and abstract screening, eligible studies met the following criteria: (1) the patients had been diagnosed with diabetes mellitus and were colonised or infected with MRSA; (2) the study reported primary patient data on the prevalence of MRSA in 10 or more patients; (3) the study was published in the English language. There were no limitations on study date or type. Eligible studies were accessed in full-text to ensure that they fulfilled the inclusion criteria and provided sufficient data for the meta-analysis. Studies which could not be accessed in full-text, including presentation abstracts, were excluded; their authors were not contacted. MRSA prevalence data can be reported in terms of positive isolates or ulcers (potentially multiple per patient) and/or patients. For clarity, only studies which reported the prevalence of MRSA in terms of patient numbers were included. Title and abstract and full-text screening were performed independently by two authors (HJS and JDJ), with discrepancies resolved by consensus. Deduplication was performed using Endnote (version X8.0.1) and Zotero (version 5.0.47). This review was conducted in accordance with the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guidelines [15], and a PRISMA checklist completed (see additional file one).

Data extraction and critical appraisal

The following information was extracted from each study: author(s), year of publication, country, study design, study setting, study population size, and number of MRSA-positive patients, whether the study reported on MRSA colonisation or infection and the type of infection. All eligible studies were critically assessed using a modified Joanna Briggs Institute checklist for prevalence studies [16]. Publication bias was assessed using funnel plots. Funnel plots of sub-group analyses were not used to assess for publication bias, as funnel plot reliability decreases with fewer studies, particularly below ten [17].

Statistical analysis

Random-effects meta-analyses were used throughout to calculate the pooled prevalence of MRSA in a given population with 95% confidence intervals (95% CIs). Study heterogeneity was assessed by the I2 statistic, reported with 95% CIs, and interpreted as low (≤ 25%), moderate (25–75%), or high (≥ 75%) [18]. All meta-analyses were carried out using MedCalc statistical software, version 18.0 (MedCalc Software, Ostend, Belgium). The significance of proportions was compared using the MedCalc N-1 Chi-squared calculator [19].

Results

After deduplication, systematic searching yielded 1056 articles published between March 1985 and May 2018. An additional 14 manuscripts were identified from a review article (n = 12) and manual searching [10, 13, 14]. Title and abstract screening identified 216 eligible articles, 148 of which were subsequently excluded after full-text screening. Articles were excluded, because they did not contain appropriate data (n = 66), were only available as an abstract (e.g. poster, presentation; n = 24), could not be accessed in full (n = 24), were not primary literature (n = 11), were not available in English (n = 11), had insufficient clarity for data extraction (n = 10), or duplicated analysis of another data set (n = 2). The study selection process is shown in Fig. 1.
Fig. 1

Flow diagram of study selection

Flow diagram of study selection A total of 68 studies were eligible for inclusion. Six studies contained two prevalence data sets; four contained data regarding the prevalence of MRSA in the nares and ulcers of diabetic foot infection (DFI) patients, another contained MRSA prevalence data for DFI and other SSTI patients, and another data regarding nasal colonisation or unspecified infection with MRSA among diabetic patients. There was, therefore, a total of 74 eligible data sets (Table 1). The data sets were categorised for subsequent meta-analysis: those with data about the prevalence of MRSA among DFIs (41/74), necrotizing fasciitis (NF) and other skin and soft-tissue infections (7/74), infections of unspecified source (3/74), and those with colonisation prevalence data (23/74). While critical appraisal of eligible studies highlighted shortcomings in reporting, it did not reveal further grounds to exclude any studies (see additional file two).
Table 1

Eligible data sets

StudyStudy designStudy date(s)CountrySettingMean age% MaleStudy populationMRSA +%95% CIsCol/Inf
Goldstein et al. 1996 [55]P cohort1993–1994USAIpatNR6825520.06.83–40.70DFI
Tentolouris et al. 1999 [57]RetroNRUKOpat61.5NR751216.08.55–26.28DFI
El-Tahawy 2000 [51]Retro1997–1999Saudi ArabiaIpatNR5711198.123.78–14.83DFI
Saxena et al. 2002 [32]P cohort1996–1999Saudi ArabiaIpat (HD)47.5*45.7*581220.6911.17–33.35Col (N)
Ge et al. 2002 [54]RCTNRUSAOpatNRNR812374.563.23–6.23DFI
Von Baum et al. 2002 [36]P cohort1999–2002GermanyCom (NH)81.2*29.5*32851.520.50–3.52Col (N)
Dang et al. 2003 [49]Retro2000–2001UKOpatNRNR631930.1619.23–43.03DFI
Hartemann-Heurtier et al. 2004 [56]P cohortNRFranceIpat65751802916.1111.06–22.31DFI
Lipsky et al. 2005 [59]P cohort1999–2001IntIpat61.55410354.851.60–10.97DFI
Shankar et al. 2005 [66]P cohort2003–2004IndiaIpat6359.777810.394.59–19.45DFI
Daeschlein et al. 2006 [22]P cohort2003GermanyCom (NH)77.6*16.2*17500.000.00–2.09Col (N)
Gadepalli et al. 2006 [52]P cohortNRIndiaIpat53.985801417.509.91–27.62DFI
Sharma et al. 2006 [67]Retro2004–2005NepalIpat6155.84300.00.00–8.22DFI
Citron et al. 2007 [47]Retro2001–2004USAIpatNRNR4334811.098.29–14.43DFI
Stanaway et al. 2007 [41]P cohortNRUKOpat6161651218.469.92–30.03DFI
Stanaway et al. 2007 continued1116.928.76–28.27Col (N)
Gorwitz et al. 2008 [21]P cohort2003–2004USAComNR491125181.600.95–2.52Col (N)
Nather et al. 2008 [62]P cohort2005–2006SingaporeIpat605012275.742.34–11.47DFI
Richard et al. 2008 [78]P cohort2003–2004FranceIpat6869.71883719.6814.25–26.09DFI
Aragon-Sanchez et al. 2008 [44]Retro2002–2007SpainI, O64.762.71853519.8914.26–26.56DFI
Maghsoudi et al. 2008 [84]P cohort2000–2006IranIpat53.440.49400.000.00–3.85Inf (Burns)
Sotto et al. 2008 [76]P cohort2004–2007FranceIpat6861513489.366.98–12.21DFI
Garazi et al. 2009 [38]Cross-sectionalNRUSACom (NH)83.4*26.7*511835.2922.43–49.93Col (N)
Galkowska et al. 2009 [53]P cohort2006–2007PolandI, O5875.75501326.0014.63–40.35DFI
Lipsky et al. 2010 [60]Retro2003–2007USAIpat60 (med)6422201657.436.38–8.60DFI
Lipsky et al. 2010 continued61 (med)54.6810789.637.69–11.87nfSSTI
Raju et al. 2010 [83]P cohort2004IndiaI, ONRNR1101412.737.14–20.43Inf (NS)
Wang et al. 2010 [72]Retro2004–2006ChinaIpat60.857.61182117.8011.37–25.91DFI
Changchien et al. 2011 [79]Retro2004–2008TaiwanIpat57.9641553522.5816.26–29.98NF
Lipsky et al. 2011 [81]RetroMixedIntIpatNRNR868349$40.2136.93–43.56nfSSTI
Lu et al. 2011 [3]P cohort2009TaiwanEDNR53.4*12497.263.37–13.33Col (N)
Schechter-Perkins et al. 2011 [33]P cohort2009–2010USAED41*47*51611.774.44–23.87Col (N, Ph, H, G, P, W, C)
Tascini et al. 2011 [69]P cohort2006–2008ItalyOpatNRNR1295765.874.65–7.29DFI
Kutlu et al. 2012 [29]P cohort2006–2009TurkeyOpat56.2846.4304309.876.76–13.79Col (N)
Mendes et al. 2012 [61]P cohort2010PortugalI, O62.742.9492551.0236.34–65.58DFI
Acharya et al. 2013 [42]Retro2003–2008UKOpat66.266.91302015.399.66–22.76DFI
Djahmi et al. 2013 [50]P cohort2011–2012AlgeriaIpat64*62.3*1287357.0347.99–65.74DFI
Fowler and Ilyas 2013 [80]Retro2005–2010USAIpatNRNR823239.0228.44–50.43nfSSTI
Gupta et al. 2013 [24]Retro2008–2010USAIpatNR95.7*5019554*11.0410.18–11.94Col (N)
Haleem et al. 2013 [25]Cross-sectionalNRUSAI, O55647978.863.64–17.41Col (N)
Haleem et al. 2013 continued78.863.64–17.41DFI
Parriott and Arah 2013 [82]RetroNRUSAIpatNR028,949170.060.03–0.09Inf (NS)
Torres and Sampathkumar 2013 [34]Mixed2008USAIpatNrNR336339.826.86–13.52Col (N)
Ahmed et al. 2014 [43]P cohort2007–2010EgyptIpat44.4*N/A52917.318.23–30.33DFI
Hennessey et al. 2014 [85]P cohort2000–2011USAIpat55* (med)50.5*541527.7816.46–41.64Inf (Abdo)
Lavery et al. 2014 [58]RetroNRUSAIpat59.55NR571729.8318.43–43.40DFI
Yeoh et al. 2014 [35]Retro2010–2011SingaporeIpat (HD)59.1*54.51392517.9911.99–25.40Col (N, A, G)
Cervantes-Garcia et al. 2015 [46]P cohort2012–2013MexicoI, O52.5551003434.0024.82–44.15DFI
Cheng et al. 2015 [14]Retro1997–2013TaiwanIpat58.8*67*8467.142.67–14.90NF
Commons et al. 2015 [48]P cohort2012–2013AustraliaIpat54.4601777743.5036.08–51.15DFI
Daeschlein et al. 2015 [23]Retro2006–2010GermanyIpat59*NR1138302.641.79–3.74Col (N)
Hart et al. 2015 [26]P cohort2008–2011AustraliaCom65.153.166081.210.53–2.37Col (N, A)
Jayarani and Sundarji 2015 [27]Retro2014–2015Sri LankaIpatNR701004040.0030.33–50.28Col (N)
Kao et al. 2015 [37]P cohort2008–2010TaiwanIpat69.4*62.7*3767820.7516.76–25.20Inf (NS)
Kao et al. 2015 continued6617.5513.84–21.78Col (N)
Karadag-Oncel et al. 2015 [28]P cohort2005 and 2013TurkeyOpat12.161.523520.850.10–3.04Col (N)
Lipsky et al. 2015 [77]Retro2011–2013IntI, O61.757.22018341.2934.41–48.44DFI
Saltoglu et al. 2015 [64]Retro2011–2013TurkeyI, O61 (med)6845571.540.62–3.14DFI
Bravo-Molina et al. 2016 [45]P cohort2009–2013SpainIpat66801312015.279.58–22.59DFI
Gleeson et al. 2016 [13]P cohortNRIrelandIpat69*55*451022.2211.21–37.09Col (N, P, W, C)
Reveles et al. 2016 [63]Retro2010–2014USAIpat52 (med)693184714.7811.07–19.17DFI
Shettigar et al. 2016 [68]P cohort2011–2012IndiaIpat60.572.52005226.0020.07–32.66DFI
Ashong et al. 2017 [74]Retro2011–2015USAIpat65 (med)NR1583119.6213.74–26.68DFI
Dunyach-Remy et al. 2017 [40]P cohort2010–2012FranceIpat68.572.5276176.163.63–9.68DFI
Dunyach-Remy et al. 2017 continued186.523.91–10.11Col (N)
Lin et al. 2017 [39]Cross-sectional2014–15ChinaCom66.1330.43529224.162.62–6.23Col (N)
Shah et al. 2017 [65]Cross-sectional2014–15PakistanIpat42.251.41403323.5716.82–31.48DFI
Wu et al. 2017 [73]P cohort2009–14ChinaIpatNRNR312216.734.21–10.11DFI
Legese et al. 2018 [20]P cohort2016EthiopiaHCW31.78*41.3*10330.006.67–65.25Col (N)
Henig et al. 2018 [75]Retro2012–15USAIpat58.464.364822434.5730.91–38.37DFI
Lin et al. 2018 [39]P cohort2015TaiwanI, ONRNR354102.831.36–5.13Col (N)
Lin et al. 2018 continuedIpatNRNR1122724.1116.53–33.10DFI
van Asten et al. 2018 [70]Retro2010–14USAIpat53.876.9143117.693.90-13.35DFI
Viquez-Molina et al. 2018 [71]P cohort2014–16Costa RicaIpatNRNR379359.246.52–10.81DFI

med median value, Abdo abdominal, CIs 95% confidence intervals, Col (N, A, G, W, C, Ph, H) colonisation (nasal, axilla, groin, surface wound, catheter, pharynx, hand), Col colonisation. Com (NH) community (nursing home), DFI diabetic foot infection, I, O, mixed in- and out- patient population, Inf infection, Int international, Ipat (HD) inpatient (haemodialysis), NF necrotizing fasciitis, nfSSTI non-foot skin and soft tissue infection, NR not reported, NS not specified. Opat outpatient, P cohort prospective cohort, RCT randomized controlled trial, Retro retrospective analysis

*Age or gender data were not available for the diabetic portion of the study population and are instead representative of a larger portion of or the whole study population

$combined data from three clinical trials. CIs, 95% confidence intervals

Eligible data sets med median value, Abdo abdominal, CIs 95% confidence intervals, Col (N, A, G, W, C, Ph, H) colonisation (nasal, axilla, groin, surface wound, catheter, pharynx, hand), Col colonisation. Com (NH) community (nursing home), DFI diabetic foot infection, I, O, mixed in- and out- patient population, Inf infection, Int international, Ipat (HD) inpatient (haemodialysis), NF necrotizing fasciitis, nfSSTI non-foot skin and soft tissue infection, NR not reported, NS not specified. Opat outpatient, P cohort prospective cohort, RCT randomized controlled trial, Retro retrospective analysis *Age or gender data were not available for the diabetic portion of the study population and are instead representative of a larger portion of or the whole study population $combined data from three clinical trials. CIs, 95% confidence intervals

The prevalence of MRSA colonisation among diabetic patients

Twenty-three data sets investigated the prevalence of MRSA colonisation among diabetic patients, published from 2002 to 2018 [13, 20–41]. The majority (19/23) examined MRSA carriage in the nares, one study examined the nares and axilla, another supplemented this with groin swabs, another with perineum and sites of wounds or catheters and another used multiple sites. Together, the 23 data sets represented a pooled population of 11577 diabetic patients with an MRSA colonisation rate of 9.20% (95% CI, 6.26–12.63%; Fig. 2a); heterogeneity among the studies was high (I2 = 96.38% [95% CI, 95.45–97.12%]). All forest plots are presented in the same way, the boxes show effect estimates for each study, weighted according to a random-effects model; the horizontal lines indicate 95% CIs; the centre of the diamond shows the pooled proportion and the horizontal tips represent 95% CIs. A funnel plot—on which the vertical line represents the summary estimate derived by meta-analysis and the diagonals represent 95% CIs around the summary effect—did not indicate publication bias (Fig. 2b). Inspection of the colonisation rates across the available 16 years did not reveal any correlation (R2 = 0.0052).
Fig. 2

The prevalence of MRSA colonisation amongst diabetic patients. a Forest plot of the proportion of diabetic patients colonised with MRSA (n = 11577). b Funnel plot

The prevalence of MRSA colonisation amongst diabetic patients. a Forest plot of the proportion of diabetic patients colonised with MRSA (n = 11577). b Funnel plot Sub-analyses of the data were conducted by patient setting and region or, where possible, nation (Table 2). Among the patient settings for which meta-analysis was possible, haemodialysis (HD) patients were found to have the highest colonisation rate (19.08%), followed by in-patients (13.46%), out- or emergency patients (8.33%), diabetics in nursing homes (6.61%), and diabetics in the community (2.19%). Only one study of 10 patients examined the prevalence of MRSA among diabetic healthcare workers (HCWs), of which 3/10 were MRSA-positive [20]. There were enough data to conduct regional and national analyses, including all patient settings, for East Asia, the Middle East, Germany, Taiwan, and the USA. The greatest colonisation prevalence was found in East Asia (12.85%) and the lowest in Germany (1.38%).
Table 2

Sub-group analyses of the prevalence of MRSA colonisation among diabetic patients

Nation (s)No. of data setsNo. of patientsPooled prevalence of MRSA %95% CII2 (%)95% CI
Diabetic patients23115779.206.26–12.6396.3895.45–97.12
Healthcare workers11030bN/AN/AN/A
Haemodialysis patients219719.0813.93–24.810.000.00–0.00
In-patientsa7729013.467.94–20.1697.0195.48–98.02
Out- or emergency patients57798.333.10–15.7789.4878.25–94.91
Nursing homes only35546.610.01–23.9996.6298.36
Community (excl. nursing homes)323142.190.94–3.9583.4049.74–94.52
East AsiaChina, Taiwan, Singapore, Sri Lanka6162212.855.34–23.0096.4094.21–97.77
Middle EastSaudi Arabia, Turkey35978.431.05–21.8694.8888.39–97.75
USA6666111.085.14–18.9297.3395.88–98.27
Taiwan38548.481.44–20.5696.0091.42–98.14
Germany316411.380.27–3.3380.2337.66–93.73

aIn-patients exclude haemodialysis patients, which were analysed separately

bOnly one data set available

CI confidence interval

Sub-group analyses of the prevalence of MRSA colonisation among diabetic patients aIn-patients exclude haemodialysis patients, which were analysed separately bOnly one data set available CI confidence interval Many of the studies which contained colonisation data did so for diabetic patients as a sub-group of a wider cohort. Next, we, therefore, selected the 14 studies that contained colonisation data for diabetic and non-diabetic patients for comparison. Meta-analyses revealed that, among a pooled population of diabetic patients (n = 8975), there was an MRSA colonisation rate of 10.27% (95% CI, 6.27–15.12%; I2 = 96.80% [95.74–97.60%]). Among the comparative non-diabetic population (n = 38976), the colonisation rate was 5.52% (95% CI, 2.93–8.88%; I2 = 99.18% [99.01–99.32%]). The 4.75% difference between these colonisation rates was significant (P < 0.0001). There were sufficient data among the 14 studies to perform sub-analyses for American (5/14), German (3/14), and East Asian (3/14) diabetics, as well as for nursing home residents (3/14) and in-patients (5/14). Across five studies, American diabetics (n = 6582) had a pooled MRSA carriage rate of 11.46% (95% CI, 4.84–20.42%; I2 = 97.87% [95% CI, 96.65–98.64%]) compared to 8.08% (95% CI, 2.82–15.72%; I2 = 99.66% [95% CI, 99.56–99.73%]) among 31005 non-diabetic Americans (P < 0.0001). Analysis of the three German studies revealed that 1641 diabetics had an MRSA carriage rate of 1.38% (95% CI, 0.27–3.33%; I2 = 80.23% [95% CI, 37.66–93.73%]), this was greater than the comparative rate of 0.84% (95% CI, 0.40–1.45%; I2 = 73.57% [95% CI, 11.49–92.11%]) for 5883 non-diabetics in these studies (P = 0.047). Comparison across the three East Asian studies revealed that 639 diabetics had a carriage rate of 14.34% (95% CI, 8.46–21.46%; I2 = 79.70% [95% CI, 35.60–93.60%]), compared to 7.65% (95% CI, 0.84–20.40%; I2 = 96.74% [95% CI, 93.33–98.41%]) in the comparative population of 1296 non-diabetics (P < 0.0001). Among the five studies that contained data on 6914 in-patient diabetics (excluding HD patients), there was a colonisation rate of 11.17% (95% CI, 5.78–18.04%; I2 = 97.18% [95% CI, 95.39–98.28%]), compared to 7.43% (95% CI, 3.02–13.59%; I2 = 99.08% [95% CI, 98.70-99.34%]) among 17072 non-diabetic in-patients (P < 0.0001). Three studies contained data regarding 554 nursing home residents, with a pooled MRSA prevalence rate of 6.61% (95% CI, 0.01–23.99%; I2 = 96.62% [95% CI, 93.01–98.36%]). This was similar to the 6.62% (95% CI, 0.23–20.71%; I2 = 97.93% [95% CI, 96.15–98.89%]) carriage rate among the comparative population of 3298 non-diabetic residents examined by these studies (P = 0.993).

The prevalence of MRSA among patients with DFI

Data about the prevalence of MRSA among DFI patients were contained in 41 data sets [42-50,40,51-68,41,69-75,39,76,77,25,78], representing 10994 patients, with an MRSA prevalence rate of 16.78% (95% CI, 13.21–20.68%; Fig. 3a). Inter-study variability was high (I2 = 96.16% [95% CI, 95.43–96.77%]). A funnel plot of these studies was weakly asymmetrical (Fig. 3b). Analysis of the prevalence by publication year did not reveal any trend (R2 = 0.0487).
Fig. 3

The prevalence of MRSA amongst DFI patients. a Forest plot of the proportion of MRSA-positive DFI patients (n = 10994). b Funnel plot

The prevalence of MRSA amongst DFI patients. a Forest plot of the proportion of MRSA-positive DFI patients (n = 10994). b Funnel plot Sub-analyses by patient setting, region or nation were conducted (Table 3). These revealed that the 2.82% difference in the proportion of DFI out- and in-patients that were MRSA-positive was significant (P = 0.0008). There were sufficient data to perform sub-analyses of all patient settings for five broad regions, of which Central America had the highest (20.07%) and East Asia the lowest (12.73%) prevalence of MRSA. Among the five nations for which there were sufficient data to perform national sub-analyses, the UK had the highest prevalence (19.59%), while China had the lowest (11.65%).
Table 3

Sub-group analyses of the prevalence of MRSA amongst DFI patients

Nation(s)No. of data setsNo. of patientsPooled prevalence %95% CII2 (%)95% CI
DFI patients411099416.7813.21–20.6896.1695.43–96.77
Out-patients6244013.167.88–19.5591.9985.34–95.63
In-patients28744415.9811.99–20.4295.5994.51–96.47
Central AmericaCosta Rica, Mexico247920.072.45–48.6496.8191.55–98.80
North Africa & The Middle EastAlgeria, Egypt, Saudi Arabia, Turkey474617.250.63–49.1698.6297.83–99.12
Western EuropeFrance, Italy, Portugal, Spain7229516.969.77–25.6394.9691.83–96.89
Indian SubcontinentIndia, Nepal, Pakistan554014.406.43–24.8789.1177.32–94.77
East AsiaChina, Singapore, Taiwan466412.735.64–22.1589.8876.99–95.55
UK433319.5913.88–26.0149.560.00-83.31
India335718.3410.06–28.4478.9132.51–93.41
USA10489314.708.54–22.1897.2996.25–98.05
France4115712.287.18–18.5188.0471.78–94.93
China243011.653.14–24.5690.4065.19–97.35

CI confidence interval

Sub-group analyses of the prevalence of MRSA amongst DFI patients CI confidence interval

The prevalence of MRSA among patients with NF or SSTIs and unspecified infections

Seven data sets examined the prevalence of MRSA in NF (n = 2), burns (n = 1), and non-foot SSTI (n = 4), and three further studies did not specify the type of infection in question [14, 37, 60, 79–85]. The NF and non-foot SSTI studies were grouped together for analysis and represented a population of 2147 patients with an MRSA prevalence rate of 18.03% (95% CI, 6.64–33.41%; I2 = 98.20% [95% CI, 97.44–98.73%]). The three studies that did not specify the nature of the MRSA infection studied represented 29435 patients with a prevalence rate of 8.08% (95% CI, 0.30–34.80%; I2 = 99.43% [95% CI, 99.14–99.62%]).

Discussion

Diabetes mellitus is the most prevalent metabolic disease worldwide and has been reported to be a risk factor for MRSA colonisation at the time of admission to hospital [86]. The MRSA colonisation rates of diabetic in- and out-patients in this study were 13.46% and 8.33%, respectively. These are higher than many national estimations; for example, the nasal MRSA colonisation rate has been estimated to be 2.6% in Japan [87], 3.9% among healthy Chinese children [88] and up to 2.1% across nine European countries [89]. In Scotland, a colonisation rate of 3.8% on admission has been observed, rising to 20% among patients admitted to nephrology, care of the elderly, dermatology, and vascular surgery—specialties likely to see high numbers of diabetic patients [90]. The MRSA colonisation rate among diabetics in the community identified by this study was therefore generally comparable with values for broader populations (2.19%). National sub-analyses showed that, in America, diabetics had a carriage rate 7.4 times higher than the previously estimated national prevalence rate of 1.5% [21]. While, in Germany, diabetics had an MRSA colonisation rate 1.5 times higher than has recently been estimated for the wider German population [91], although more studies of MRSA carriage among German diabetics are needed to confirm this as only three were available. The levels of MRSA colonisation among diabetics in nursing homes or the wider community, in-patients and out-patients suggest MRSA carriage reflects the extent of interaction with the healthcare system. It is difficult to compare the values obtained here for in- and out-patients to data regarding the prevalence of MRSA colonisation among general hospital populations as such studies offer a variety of results that typically reflect different patient populations and contexts [92-95]. However, this study compared the MRSA colonisation rates for diabetic and non-diabetic patients across the 14 studies that contained data for both. This showed that diabetics had a significantly higher colonisation rate than non-diabetics, a finding which held for sub-analysis of in-patient, American, German, or East Asian populations. Notably, the rates of MRSA carriage among diabetic and non-diabetic nursing home residents were very similar, supporting the above suggestion that MRSA carriage rates reflect the extent of interaction with a healthcare environment. Further sub-analyses showed that diabetic HD patients had the greatest colonisation rate (19.08%; n = 197). The colonisation rate of non-diabetic HD patients has been previously estimated by meta-analysis to be 6.2% (n = 5596; [11]). The higher finding here likely reflects the synergy of two high-risk states and differences in study population size. However, the MRSA colonisation rate among diabetic patients in this study (9.20%) exceeded the previous meta-analytic estimates of the colonisation rate among the other high-risk groups, e.g. 6.9% among 6,558 HIV-1 patients and 7% and 1.9% among 63740 general and 19722 neonatal or paediatric intensive-care patients, respectively [6, 11, 12]. Only one study investigated the MRSA colonisation rate among diabetic HCWs, showing that it exceeded that of non-diabetic HCWs (30% [n = 10] vs. 5.8% [n = 242]; [20]. A previous meta-analysis of MRSA colonisation among HCW in Europe and the USA has estimated carriage at 1.8–4.4%, with nurses reported have a carriage rate of 6.9% with an odds ratio of 2.58 compared to other HCWs [96]. The increased carriage risk for nurses has been recorded elsewhere, and intensive patient contact is thought to be a risk factor [97, 98]. The significance of potentially greater rates of MRSA colonisation of diabetic HCWs requires further investigation, especially given the high prevalence of obesity among some sectors of the healthcare workforce [99]. Diabetic foot infections can be mono- or poly-microbial, and may be caused by a wide range of pathogens, including MRSA. This study found that the prevalence of MRSA among 10994 DFI patients was 16.78%. This is comparable to the prevalence estimated by a 2010 systematic review [10]. A higher prevalence was identified for in-patients compared to out-patients, likely reflecting the difference in extent of interaction with the healthcare system. From the UK, one eligible study reported MRSA colonisation data among diabetics at a value lower than the proportion of MRSA-positive UK DFI patients (16.9% vs. 19.59%). Further work is therefore needed in the UK to clarify the extent to which diabetic patients are colonised with MRSA. This study was limited by the small number of eligible studies, such that only sub-analyses based on patient setting or geographic region could be conducted. Much of the often high level of heterogeneity observed in individual sub-analyses therefore likely reflects variation in other factors not simultaneously subject to sub-analysis. Sub-analyses by geographic region, although useful for appraising broad trends, are low resolution given the complexity of factors that underlie MRSA prevalence. While there were enough studies to conduct some national sub-analyses, many included low numbers of studies and were also subject to influence by local inter-study variation. More studies, in particular of the prevalence of MRSA colonisation among diabetic patients, are needed to provide a greater evidence base and permit finer stratification of data in future analyses. The variety of detection techniques used by eligible studies may have led to a slight underestimation, with PCR and chromogenic culture media being more sensitive than nonchromogenic media [100]. Meta-analyses are designed to be reproducible and identify as many eligible manuscripts as possible. However, this may be limited by the omission of some relevant manuscripts, because they do not contain the appropriate terms in the fields searched or were incorrectly indexed [101]. During this study, we became aware of two manuscripts that contained pertinent data, but were not detected by our systematic search as they lacked terms related to diabetes [13] or MRSA [14] in the searched fields. Given the topic of this study, it was not feasible to amend the search strategy to omit either terms related to diabetes or MRSA. Therefore, although we were unable to identify these two studies systematically or through review articles, we recognised that they contained relevant data and included them as ‘manual’ search results. This transparent approach enhances the reproducibility of this study, while acknowledging some of the inherent limitations of systematic approaches. This study may also be limited by not being pre-registered. Registration of reviews is a non-essential recommendation designed to encourage transparency, improve quality and reduce duplication. Pre-registration of reviews that are never completed is not recommended [102]. This study was conceived as a student project, many of which are not published, and the authors therefore decided it was inappropriate to register retrospectively. However, the authors are not aware of any similar studies underway and complied with the PRISMA statement throughout. Taken together, the results of this study suggest that diabetics interacting with the healthcare system are likely to have a higher rate of MRSA colonisation than non-diabetics, raising the question of whether diabetic staff and patients should be subject to targeted screening. Targeted screening of high-risk patients has been shown to offer a cost-effective, efficacious, alternative to universal screening [103-105]. In the UK, patients admitted to high-risk specialties or with previous MRSA colonisation or infection are targeted for screening [106]. Given the rates of colonisation and infection recorded in this analysis, many diabetic patients may, therefore, be eligible for screening under the current policy. However, research is warranted to evaluate the potential benefits of amending current guidelines to specifically and proactively target colonisation among high-risk patient groups, such as diabetics. While screening of staff is not current policy, more work is required to evaluate the potential benefits of screening diabetic HCWs in reducing the spread of MSRA. However, any screening of specific patient or staff groups must avoid stigmatisation. Finally, the high prevalence of MRSA among DFI patients and consequent long-term antibiotic administration has wider implications for antimicrobial resistance. While the prevention of such infections should remain the goal, with increasing levels of antimicrobial resistance, it is also important that alternative therapies are investigated [107]. Below is the link to the electronic supplementary material. Supplementary material 1 (DOCX 28 KB) Supplementary material 2 (DOCX 36 KB)
  95 in total

1.  Microbiology at first visit of moderate-to-severe diabetic foot infection with antimicrobial activity and a survey of quinolone monotherapy.

Authors:  Carlo Tascini; Alberto Piaggesi; Enrico Tagliaferri; Elisabetta Iacopi; Serena Fondelli; Anna Tedeschi; Loredana Rizzo; Alessandro Leonildi; Francesco Menichetti
Journal:  Diabetes Res Clin Pract       Date:  2011-08-06       Impact factor: 5.602

2.  Predictors for limb loss among patient with diabetic foot infections: an observational retrospective multicentric study in Turkey.

Authors:  N Saltoglu; M Yemisen; O Ergonul; A Kadanali; G Karagoz; A Batirel; O Ak; H Eraksoy; A Cagatay; A Vatan; G Sengoz; F Pehlivanoglu; T Aslan; Y Akkoyunlu; D Engin; N Ceran; B Erturk; L Mulazimoglu; O Oncul; H Ay; F Sargin; N Ozgunes; F Simsek; T Yildirmak; N Tuna; O Karabay; K Yasar; N Uzun; Y Kucukardali; M Sonmezoglu; F Yilmaz; U Tozalgan; S Ozer; M Ozyazar
Journal:  Clin Microbiol Infect       Date:  2015-04-08       Impact factor: 8.067

3.  Bacterial etiology of diabetic foot infections in South India.

Authors:  E M Shankar; V Mohan; G Premalatha; R S Srinivasan; A R Usha
Journal:  Eur J Intern Med       Date:  2005-12       Impact factor: 4.487

4.  Methicillin-resistant Staphylococcus aureus: an increasing problem in a diabetic foot clinic.

Authors:  N Tentolouris; E B Jude; I Smirnof; E A Knowles; A J Boulton
Journal:  Diabet Med       Date:  1999-09       Impact factor: 4.359

5.  Prevalence of methicillin resistant Staphylococcus aureus among Egyptian patients after surgical interventions.

Authors:  Eman F Ahmed; Gamal F M Gad; Ahlam M Abdalla; Ayman M Hasaneen; Sayed F Abdelwahab
Journal:  Surg Infect (Larchmt)       Date:  2014-05-09       Impact factor: 2.150

6.  Diabetic foot ulcer and multidrug-resistant organisms: risk factors and impact.

Authors:  A Hartemann-Heurtier; J Robert; S Jacqueminet; G Ha Van; J L Golmard; V Jarlier; A Grimaldi
Journal:  Diabet Med       Date:  2004-07       Impact factor: 4.359

7.  Comparison of mortality associated with methicillin-resistant and methicillin-susceptible Staphylococcus aureus bacteremia: a meta-analysis.

Authors:  Sara E Cosgrove; George Sakoulas; Eli N Perencevich; Mitchell J Schwaber; Adolf W Karchmer; Yehuda Carmeli
Journal:  Clin Infect Dis       Date:  2002-12-13       Impact factor: 9.079

8.  The prevalence and significance of methicillin-resistant Staphylococcus aureus colonization at admission in the general ICU Setting: a meta-analysis of published studies.

Authors:  Panayiotis D Ziakas; Theodora Anagnostou; Eleftherios Mylonakis
Journal:  Crit Care Med       Date:  2014-02       Impact factor: 7.598

Review 9.  MRSA carriage among healthcare workers in non-outbreak settings in Europe and the United States: a systematic review.

Authors:  Madeleine Dulon; Claudia Peters; Anja Schablon; Albert Nienhaus
Journal:  BMC Infect Dis       Date:  2014-07-03       Impact factor: 3.090

10.  Prevalence and characteristics of methicillin-resistant Staphylococcus aureus in community residents of Japan.

Authors:  Fumi Yamasaki; Seisho Takeuchi; Yoshio Uehara; Masahide Matsushita; Kazumi Arise; Norihito Morimoto; Hiromi Seo
Journal:  J Gen Fam Med       Date:  2018-03-09
View more
  16 in total

1.  Methicillin and Vancomycin Resistant Staphylococcus aureus and Associated Factors from Surgical Ward Inpatients at Debre Markos Referral Hospital, Northwest Ethiopia.

Authors:  Samrawit Tefera; Tewachew Awoke; Daniel Mekonnen
Journal:  Infect Drug Resist       Date:  2021-08-10       Impact factor: 4.003

2.  Study on the association between the polymorphism of MCP-1 rs1024611 and the genetic susceptibility of type 2 diabetes with sepsis.

Authors:  Yan Li; Junbing He; Yi-Ming Shao; Lanchun Chen; Ming Li; Donghui Tang; Zhizhou Shi; Qinghui Liao; Zhongqiu Guo; Juan Wang; Qiaoan Zheng; Yanni Zhao; Yuhua Chen
Journal:  Medicine (Baltimore)       Date:  2022-08-12       Impact factor: 1.817

3.  A retrospective analysis of the microbiology of diabetic foot infections at a Scottish tertiary hospital.

Authors:  Katherine E Macdonald; Crispin Y Jordan; Emma Crichton; Judith E Barnes; Gillian E Harkin; Lesley M L Hall; Joshua D Jones
Journal:  BMC Infect Dis       Date:  2020-03-12       Impact factor: 3.090

4.  Patient perceptions of phage therapy for diabetic foot infection.

Authors:  Katherine E Macdonald; Helen J Stacey; Gillian Harkin; Lesley M L Hall; Matthew J Young; Joshua D Jones
Journal:  PLoS One       Date:  2020-12-14       Impact factor: 3.240

Review 5.  Type 2 diabetes mellitus and sepsis: state of the art, certainties and missing evidence.

Authors:  Elisa Costantini; Massimiliano Carlin; Massimo Porta; Maria Felice Brizzi
Journal:  Acta Diabetol       Date:  2021-05-10       Impact factor: 4.280

Review 6.  Pathophysiology and Molecular Imaging of Diabetic Foot Infections.

Authors:  Katie Rubitschung; Amber Sherwood; Andrew P Crisologo; Kavita Bhavan; Robert W Haley; Dane K Wukich; Laila Castellino; Helena Hwang; Javier La Fontaine; Avneesh Chhabra; Lawrence Lavery; Orhan K Öz
Journal:  Int J Mol Sci       Date:  2021-10-26       Impact factor: 5.923

Review 7.  The Influence of Multidrug-Resistant Bacteria on Clinical Outcomes of Diabetic Foot Ulcers: A Systematic Review.

Authors:  Gianmarco Matta-Gutiérrez; Esther García-Morales; Yolanda García-Álvarez; Francisco Javier Álvaro-Afonso; Raúl Juan Molines-Barroso; José Luis Lázaro-Martínez
Journal:  J Clin Med       Date:  2021-05-01       Impact factor: 4.241

Review 8.  A Bittersweet Response to Infection in Diabetes; Targeting Neutrophils to Modify Inflammation and Improve Host Immunity.

Authors:  Rebecca Dowey; Ahmed Iqbal; Simon R Heller; Ian Sabroe; Lynne R Prince
Journal:  Front Immunol       Date:  2021-06-03       Impact factor: 7.561

Review 9.  Molecular Imaging of Diabetic Foot Infections: New Tools for Old Questions.

Authors:  Camilo A Ruiz-Bedoya; Oren Gordon; Filipa Mota; Sudhanshu Abhishek; Elizabeth W Tucker; Alvaro A Ordonez; Sanjay K Jain
Journal:  Int J Mol Sci       Date:  2019-11-28       Impact factor: 5.923

10.  Type 2 diabetes mellitus and antibiotic-resistant infections: a systematic review and meta-analysis.

Authors:  Rodrigo M Carrillo-Larco; Cecilia Anza-Ramírez; Giancarlo Saal-Zapata; David Villarreal-Zegarra; Jessica Hanae Zafra-Tanaka; Cesar Ugarte-Gil; Antonio Bernabé-Ortiz
Journal:  J Epidemiol Community Health       Date:  2021-07-29       Impact factor: 3.710

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.