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01.12.2017 | Research article | Ausgabe 1/2017 Open Access

BMC Medicine 1/2017

RETRACTED ARTICLE:The impact of repeated vaccination on influenza vaccine effectiveness: a systematic review and meta-analysis

Zeitschrift:
BMC Medicine > Ausgabe 1/2017
Autoren:
Lauren C. Ramsay, Sarah A. Buchan, Robert G. Stirling, Benjamin J. Cowling, Shuo Feng, Jeffrey C. Kwong, Bryna F. Warshawsky
Wichtige Hinweise

Electronic supplementary material

The online version of this article (doi:10.​1186/​s12916-017-0919-0) contains supplementary material, which is available to authorized users.
Lauren C Ramsay and Sarah A Buchan are joint first authors.
Jeffrey C Kwong and Bryna F Warshawsky are joint senior authors.
The authors have retracted this article. Upon reviewing the published work, the authors determined that there were a few erroneous inclusions and an omission of estimates which impacted the conclusion for the influenza A(H3N2) and influenza B analyses comparing vaccination in both years to the current year only. All authors agree to this retraction, and they have been given the opportunity to submit a revised version in the journal.
An erratum to this article is available online at https://​doi.​org/​10.​1186/​s12916-018-1137-0.
Abbreviations
NOS
Newcastle–Ottawa Scale
VE
vaccine effectiveness
ΔVE
absolute difference in vaccine effectiveness

Background

Seasonal influenza vaccination is the predominant strategy for preventing influenza-related morbidity and mortality. Annual vaccination is recommended because of waning immunity and because influenza strains undergo antigenic drift, necessitating reviewing and, in most seasons, changing of the vaccine to better match the upcoming season’s strains [1]. Because of the frequently changing vaccine, influenza vaccine effectiveness (VE) is assessed annually.
With increasing numbers of people being immunized against influenza annually, the impact of repeated vaccination has gained significant interest. Of particular concern are older adults (65 years and above), who tend to have more comorbidities as they age, as both age and co-morbidities increase their risk of influenza-associated complications [2]. If repeated vaccination negatively impacts current VE, then having been repeatedly vaccinated in earlier years may be detrimental to the protection of older adults when they need it most. Studies from the 1970s and 1980s found inconsistent results regarding the impact of repeated vaccination [3, 4]. In 1999, a systematic review and meta-analysis of field studies, trials, and serologic studies found no evidence of negative impacts of repeated vaccination [5]. More recently, some studies have found VE to be reduced in those who received repeated prior influenza vaccinations [68].
Since most VE studies now report estimates taking into account vaccination status for both current and prior seasons, we sought to evaluate the impact of repeated vaccination on VE through a systematic review and meta-analysis. We aimed to assess the impact of repeated vaccination to provide evidence to support patient and clinician decision-making about receiving the current season’s influenza vaccine. We considered two patient-relevant scenarios, (1) for those who received last season’s vaccine, should they also receive this season’s vaccine? (vaccination in both seasons versus prior season only) and (2) for those who did not receive last season’s vaccine, should they receive this season’s vaccine? (vaccination in current season only versus neither season). We also considered a policy-relevant scenario, comparing VE for vaccination in both seasons versus the current season only. This latter scenario is not relevant to patients because they cannot alter their vaccination history; however, the findings may influence policy decisions regarding whether or not to offer annual vaccination to the entire population if there was evidence suggesting that repeated vaccination could negatively impact future VE.

Methods

Search strategy and selection criteria

We searched MEDLINE, Embase, PubMed, and Cumulative Index to Nursing and Allied Health Literature (CINAHL) databases from inception to August 17, 2016. We developed a unique search strategy for each database with the assistance of a scientific librarian; across all databases, the search terms included “influenza”, “immunization”, “vaccine”, and “effectiveness”, and articles were restricted to those published in English (Additional file 1). Two reviewers (SB, LR) independently screened titles and abstracts, and hand-searched the references of the included articles.
Eligible studies used observational study designs (e.g., prospective cohort, test-negative case-control) and reported VE against medically attended, laboratory-confirmed influenza for four mutually exclusive vaccination groups, namely current season only, prior season only, both current and prior seasons, and neither season (reference group). Prior season vaccination referred primarily to vaccination status in the year immediately prior to the season being examined. Studies with other definitions of prior season (e.g., any dose in the prior two seasons) were excluded from the meta-analysis, but were described in a qualitative synthesis. We excluded interim VE reports that were superseded by end-of-season reports, and conference abstracts and proceedings. We followed the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines for reporting results [9].

Risk of bias assessment

We used the Newcastle–Ottawa scale (NOS) to assess the risk of bias of included case-control and cohort studies [10]. Two reviewers (SB, LR) independently evaluated the quality of each study based on the domains of selection, comparability, and either exposure (for case-control studies) or outcome (for cohort studies). For studies using the test-negative design, we determined whether calendar time had been included in the adjusted analyses [11]. Studies were categorized as being at low, moderate, or high risk of bias if they were missing one or less items, two to three items, or more than three items on the NOS, respectively [12]. Any disagreements between the two reviewers were resolved by consensus.

Data analysis

Two reviewers (SB, LR) abstracted the data using a structured electronic data extraction form, extracting study characteristics (e.g., study design, recruitment setting, case definition) and VE estimates for the four vaccination groups, with discrepancies adjudicated by consensus. Whenever possible, we extracted VE reports by influenza type/subtype and age group and only included the most specific results reported (e.g., by age group or influenza type/subtype) in the meta-analysis. Because specific lineage information for influenza B was often unavailable, we used overall estimates for influenza B.
For each study included in the meta-analysis, VE estimates for current season only, prior season only, and both current and prior seasons were assessed against the reference group who were not vaccinated in either season. In the present study, VE estimates from each study were compared for those vaccinated in both the current and prior seasons to those vaccinated in the prior season only and to those vaccinated in the current season only by subtracting the VE estimates. The absolute differences in VE (ΔVE) were stratified by influenza type/subtype and season and calculated as (1) vaccinated in both seasons compared to the prior season only (ΔVE = VEboth – VEprior only), and (2) vaccinated in both seasons compared to the current season only (ΔVE = VEboth – VEcurrent only). In both of the above scenarios, a ΔVE greater than zero implies a higher VE estimate when vaccinated in both seasons than in either the current or the prior season only. We also assessed the VE of those vaccinated in the current season only compared to those vaccinated in neither season (pooled VEcurrent only).
We calculated confidence intervals for ΔVE by bootstrapping using 1000 samples [13]. Similar to previous work [14], we took 1000 samples from VEcurrent only, VEprior only, and VEboth. We then estimated 1000 measures of ΔVE for both ΔVE = VEboth – VEcurrent only and ΔVE = VEboth – VEprior only; the 2.5% and 97.5% percentiles for ΔVE were computed as the confidence intervals. We used a random effects model to pool ΔVE estimates to compare the overall difference between vaccination in both seasons with vaccination in either the prior season only or the current season only. To compare VE for those vaccinated in the current season versus those vaccinated in neither season, we used a random effects model to pool the log odds ratio of the current season only VE estimates and converted the final pooled estimate back to a measure of VE. Statistical heterogeneity was assessed using the I2 statistic and Cochran’s Q test. Meta-analyses were performed in MetaXL (Version 2.2, EpiGear International Ltd., Queensland, Australia) with bootstrapping procedures and figures produced in R (Version 3.3.1, R Foundation for Statistical Computing, Vienna, Austria).

Results

We identified 3435 unique articles from the database searches (Fig. 1). After screening titles and abstracts, we selected 634 articles for full-text review. Of these, 27 studies met the inclusion criteria for the qualitative synthesis, and 20 were included in the meta-analysis [68, 1538]. We observed excellent agreement between reviewers for the title and abstract screen (kappa, κ = 0.94) and for the full-text review (κ = 0.98). No additional studies were identified from hand-searching references. One study was excluded from the qualitative synthesis and meta-analysis because, while it included persons with laboratory-confirmed influenza in the vaccination groups of interest, the study provided VE estimates only for severe or fatal influenza outcomes rather than for any laboratory-confirmed influenza [39]. We excluded seven studies from the meta-analysis but included them in the qualitative synthesis – four studies because they only provided VE estimates for any influenza rather than by influenza type/subtype [15, 23, 32, 33], one because ‘prior season vaccination’ was not restricted to the immediate year prior to the study season [18], and two for both reasons [16, 27].
The 27 included studies captured influenza seasons between 2004–2005 and 2014–2015, with most reporting estimates for the 2010–2011 to 2014–2015 seasons (Table 1). One study was from the southern hemisphere [33], one was restricted to pregnant women [36], and two were in pediatric populations [17, 35]. Most studies featured outpatient data, but two used inpatient data only [25, 38] and two used data from both settings [15, 16]. All studies used reverse-transcriptase polymerase chain reaction testing to confirm influenza infection.
Table 1
Study characteristics of articles included in the meta-analysis and/or qualitative synthesis
Author, year, reference
Country
Study design
Current season
Prior season
Influenza type
Age group
Jimenez-Jorge et al., 2012 [19]
Spain
Test-negative case-control
2010–2011
2009–2010
H1N1
All ages
Martinez-Baz et al., 2013 [20]
Spain
Test-negative case-control
2010–2011
2009–2010
H1N1
All ages
Savulescu et al., 2011 [26]
Spain
Test-negative case-control
2010–2011
2009–2010
H1N1
All ages
Skowronski et al., 2012 [29]
Canada
Test-negative case-control
2010–2011
2009–2010
H1N1
All ages
Syrjanen et al., 2014 [34]
Finland
Cohort
2010–2011
2009–2010
H1N1
18–75 years
Fu et al., 2015 [17]
China
Case-control
2012–2013
2011–2012
H1N1
a) 20–35 months, 1 current dose; b) 20–35 months, 2 current doses; c) 3–6 years
Gaglani et al., 2016a [18]
United States
Test-negative case-control
2013–2014
2009–2010 to 2012–2013
H1N1
≥9 years
Ohmit et al., 2016 [22]
United States
Prospective cohort study
2013–2014
2012–2013
H1N1
a) 9 and older; b) under 9 years
Thompson et al., 2014b [36]
United States
Case-control
2010–2011 and 2012–2013
2009–2010 and 2010–2011
H1N1, H3N2, B
Mean age 30 years
Skowronski et al., 2014 [30]
Canada
Test-negative case-control
2011–2012
2010–2011
H1N1, H3N2, B
≥2 years
Rondy et al., 2015 [25]
France, Italy, Lithuania, Spain
Test-negative case-control
2012–2013
2011–2012
H1N1, H3N2, B
≥18 years
Skowronski et al., 2014 [28]
Canada
Test-negative case-control
2012–2013
2011–2012
H1N1, H3N2, B
≥2 years
Valenciano et al., 2016 [37]
Germany, Hungary, Ireland, Italy, Poland, Portugal, Romania, Spain
Test-negative case-control
2014–2015
2013–2014
H1N1, H3N2, B
All ages
Pebody et al., 2013 [24]
United Kingdom
Test-negative case-control
2010–2011
2009–2010
H1N1, B
All ages
Skowronski et al., 2015 [31]
Canada
Test-negative case-control
2013–2014
2012–2013
H1N1, B
≥2 years
McLean et al., 2014 [6]
United States
Test-negative case-control
2004–2005 to 2012–2013
Variable
H3N2, B
a) 9–49; b) 50 and older
McLean et al., 2015 [21]
United States
Test-negative case-control
2012–2013
2011–2012
H3N2, B
a) 9–17; b) 18–49; c) 50–64; d) 65 and older
Thompson et al., 2016 [35]
United States
Test-negative case-control
2012–2013
2011–2012
H3N2, B
a) 2–8 years, 1 dose prior season; b) 2–8 years, 2 doses prior season
Skowronski et al., 2016 [7]
Canada
Test-negative case-control
2014–2015
2013–2014
H3N2, B
≥2 years
Simpson et al., 2015a [27]
Scotland
Test-negative case-control
2008–2009
9 prior seasons
All influenza
All ages
Castilla et al., 2011a [15]
Spain
Nested test-negative case- control
2010–2011
2009–2010
All influenza
All ages
Ohmit et al., 2014 [8]
United States
Test-negative case-control
2011–2012
2010–2011
H3N2
≥9 years
Ohmit et al., 2015a [23]
United States
Prospective cohort study
2012–2013
2011–2012
All influenza
All ages
Smithgall et al., 2016a [32]
United States
Surveillance
2013–2014
2012–2013
All influenza
All ages
Castilla et al., 2016a [16]
Spain
Test-negative case-control
2014–2015
2013–2014 and 2012–2013
All influenza
All ages
Sullivan & Kelly, 2013a [33]
Australia
Re-analysis
a) Southern hemisphere 2011; b) Southern hemisphere 2012
Southern hemisphere 2010 and 2011
All influenza
All ages
Petrie et al., 2016 [38]
United States
Test-negative case-control
2014–2015
2013–2014
H3N2
≥18 years
aStudy not included in meta-analysis
bStudy population included pregnant women only
For 25 of the 27 studies, we extracted the variables included in the multivariable regression models used to obtain VE estimates (Additional file 2: Table S1); the remaining two studies did not clearly report these variables. All 25 studies with available information adjusted for age, and the majority adjusted for presence of high-risk conditions or comorbidities (n = 17; 68%) and calendar time (n = 16; 64%). Many studies also adjusted for time between illness onset and sample collection (n = 12; 48%) and sex (n = 10; 40%).
All except one [26] of our included test-negative design studies were deemed to be at low risk of bias, and all included calendar time in their adjusted models [68, 15, 16, 1821, 24, 25, 2731, 33, 35, 37, 38]. The remaining case-control studies were also categorized as being at low risk of bias [17, 36], as were all the included cohort studies [22, 23, 32, 34]. Details of the evaluation of the included studies are provided in Additional file 3: Figure S1.
Among the 20 articles included in the meta-analysis, there were 16 analyses for influenza H1N1, 17 for H3N2, and 14 for B that compared VE among those vaccinated in both seasons to those vaccinated in the prior season only. When compared to vaccination in the prior season only, VE was higher for vaccination in both seasons for influenza H1N1 (∆VE = 26%; 95% CI, 15% to 36%; I2 = 0%) and B (∆VE = 24%; 95% CI, 7% to 42%; I2 = 44%), but not H3N2 (∆VE = 10%; 95% CI, –6% to 25%; I2 = 33%) (Table 2, Figs. 2, 3, and 4). When stratified by influenza season, the results for all seasons were consistent with the overall results (Additional file 2: Table S2).
Table 2
Comparison of vaccine effectiveness (VE) by vaccination group and influenza type/subtype
VE comparison
Relevance of results
H1N1
H3N2
B
Vaccinated both seasons versus vaccinated prior season only
ΔVEa (95% CI)
ΔVE = VEboth – VEprior only
Patient and policy perspectives
26% (15% to 36%)
10% (–6% to 25%)
24% (7% to 42%)
Vaccinated current season only versus vaccinated neither season (reference group)
Pooled VEcurrent only
Patient and policy perspectives
61% (50% to 70%)
41% (33% to 48%)
62% (54% to 68%)
Vaccinated both seasons versus vaccinated current season only
ΔVEa (95% CI)
ΔVE = VEboth – VEcurrent only
Policy perspective
4% (–7% to 15%)
–12% (–27% to 4%)
–8% (–17% to 1%)
Bold type-face indicates significant results
aΔVE > 0 implies higher vaccine effectiveness estimate when vaccinated in both seasons
Sixteen analyses for influenza H1N1, 17 for H3N2, and 15 for B compared VE among those vaccinated in the current season only to those vaccinated in neither season. VE was higher for vaccination in the current season compared to neither season for influenza H1N1 (∆VE = 61%; 95% CI, 50% to 70%; I2 = 28%), H3N2 (∆VE = 41%; 95% CI, 33% to 48%; I2 = 0%), and B (∆VE = 62%; 95% CI, 54% to 68%; I2 = 0%) (Table 2, Figs. 5, 6, and 7). The results for individual seasons were consistent with the overall results (Additional file 2: Table S2).
Overall, among the 20 included articles, 16 analyses for influenza H1N1, 17 for H3N2, and 15 for B compared VE in those vaccinated in both seasons to those vaccinated in the current season only. We observed no statistically significant VE differences between vaccination in both seasons and vaccination in the current season only for influenza H1N1 (∆VE = 4%; 95% CI, –7% to 15%; I2 = 0%), H3N2 (∆VE = –12%; 95% CI, –27% to 4%; I2 = 52%), or B (∆VE = –8%; 95% CI, –17% to 1%; I2 = 0%) (Table 2, Figs. 8, 9, and 10). The results for individual seasons were consistent with the overall result except for the 2014–2015 season. For that season alone, VE was lower in those vaccinated in both the current and prior seasons compared to those vaccinated only in the current (2014–2015) season (three studies, ∆VE = –54%; 95% CI, –88% to –20%) (Additional file 2: Table S2).
Among the studies included in the qualitative synthesis but not the meta-analysis, three presented results using a definition of ‘prior season vaccination’ that included multiple prior seasons and therefore did not meet the inclusion criteria for the meta-analysis [16, 18, 27]. One of these studies considered vaccination history over two consecutive seasons using data from nine influenza seasons (2000–2001 to 2008–2009); those vaccinated in the current season only had the highest VE [27]. A study of VE against influenza H1N1 during 2013–2014 assessed the impact of any prior vaccination since 2009, and the results varied by age group, tending to slightly favor either those vaccinated in the current season only or those vaccinated in both seasons [18]. Finally, a study from Spain that assessed vaccination over the current and two prior seasons showed a range of results [16]. Residual VE without current vaccination was noted if vaccinated in both the prior two seasons. For both influenza H3N2 and B, vaccination in the current season and one prior season resulted in considerably lower VE, whereas vaccination in the current and both prior seasons resulted in higher VE. VE against influenza B was highest among those vaccinated in the current season only compared to the other vaccination groups, whereas this group had the lowest VE against H3N2 [16].
Six studies [15, 16, 23, 27, 32, 33] presented results for any influenza rather than by influenza type/subtype, two of which were summarized above because they also used multiple prior seasons [16, 27]. There were five estimates from the four remaining studies not summarized above. Of these, three favored vaccination in the current season only, and two favored vaccination in both seasons. None of the estimates favored vaccination in the prior season only. In the one study that presented two VE estimates, seasonal differences were apparent. In the southern hemisphere 2011 season, the highest VE was observed among those who had been vaccinated in both current and prior seasons, but in the southern hemisphere 2010 season, the highest VE was observed among those who had received the current season vaccine only [33].

Discussion

We found that, irrespective of a patient’s vaccination status for the prior season, current season vaccination is associated with greater protection against laboratory-confirmed infection by influenza H1N1 and B. This was evident comparing vaccination in both seasons to vaccination in the prior season only. Furthermore, compared to no vaccination for either season, individuals who received the current season’s vaccine had greater protection against all three influenza types/subtypes. Therefore, vaccination in the current season is generally the best option for the patient. Recent studies have raised questions about the impact of repeated vaccination [68], which is of concern to policymakers with regard to annual influenza vaccination recommendations. Of relevance to the policymaker (but not the patient, who cannot alter their vaccination history), we observed no differences in VE between vaccination in both seasons and vaccination in the current season only for any influenza type/subtype, providing no overall evidence of harm from repeated vaccination. The 2014–2015 influenza season was an exception, where pooled VE across three studies was lower for those vaccinated in both the current and prior season compared to those vaccinated in the current season alone. Based on the NOS, we assessed that the studies included in this review had a low risk of bias. However, the theoretical underpinnings of the test-negative design are still in the process of explication [4042], and there has not yet been a theoretical assessment of the potential biases in evaluation of repeated vaccine effects using the test-negative design.
The results of this review are similar to those found by Beyer et al. in 1999 [5]; their meta-analysis of seven field studies and 12 serologic studies found no significant difference between the single and multiple vaccination groups. However, our study represents an advance by including studies that feature contemporary laboratory testing methods and study designs with consistent vaccination comparison groups. A recently published meta-analysis reported pooled VE estimates for the same vaccination status groups as our study (prior only, current only, both seasons) [43]. Similar to the present results, that study found VE to be consistently lowest among those vaccinated during the prior season only. Additionally, for the 2014–2015 season, VE against H3N2 was found to be higher for those vaccinated in the current season only compared to those vaccinated during both seasons. However, that study did not examine the differences in VE as presented in this study.
In our review, the comparison groups used in the meta-analysis provided a more refined calculation of VE that accounted for recent vaccination history. Standard VE calculations (those that do not account for prior vaccination history of the vaccinated group) compare those vaccinated in the study season (a mixture of subjects vaccinated in the current season only and those with current and prior vaccination) to a reference group of those not vaccinated in the study season (which includes both those vaccinated in neither season and those vaccinated in the prior season only). Our study allowed for these vaccination groups to be analyzed separately to understand the impact of prior season vaccination on current season VE.
Our study was further strengthened by aligning the VE comparisons with patient and policy perspectives in order to aid decision-making by patients, practitioners, and policymakers. Additionally, by calculating the differences in VE between the various vaccination groups within each study, we controlled for any methodological biases unique to a particular study, since these biases would apply equally to each vaccination group. Thus, rather than first pooling the VE estimates from each vaccination group across studies and subsequently taking the difference, we pooled the differences obtained from VE estimates within each study. Finally, because VE can vary by age group and influenza type/subtype, this study was strengthened by the detailed stratification of results by type/subtype, as well as by using VE estimates for the most specific patient groups (e.g., age-stratified groups rather than ‘all ages’).
This study also has some limitations. First, the analysis accounts only for vaccination status in one prior season. Results might differ when considering a patient’s vaccination history over a greater number of seasons, which is particularly significant when considering the importance of influenza VE in older adults who have potentially received many years of consecutive vaccinations. McLean et al. [6] found no difference when exploring VE over two consecutive seasons, but when they used a reference group with no vaccination over six seasons, those vaccinated in the current season only and not in the previous five seasons had the highest VE against influenza H3N2 and B, with progressively lower VE with increasing vaccines received over the previous five seasons. Few studies reported on vaccination history beyond prior and current seasons, and they did not group history consistently; therefore, further analysis incorporating the effects of serial vaccination from these studies was not possible, but is an important analysis to conduct in the future when more data are available. Second, our study did not account for past influenza infection, which may have provided some protective effect against laboratory-confirmed influenza in subsequent seasons [44]. A patient’s first exposure to influenza vaccination or infection can impact subsequent responses to vaccination or infection (referred to as original antigenic sin or back-boosting), which was not accounted for in this study [45]. Third, this study did not differentiate between the types of influenza vaccines used (e.g., live attenuated or inactivated; quadrivalent or trivalent; adjuvanted or unadjuvanted; high dose or standard dose). Given the differing types of immune response induced by these various products, different impacts of prior vaccination on current season VE may ensue. Fourth, we evaluated the absolute difference in VE instead of assessing a ratio; the latter could be considered more appropriate given the scale on which VE is calculated. However, the reporting of ratios introduces other challenges such as accommodating negative values and estimating confidence intervals. Since deriving practical conclusions for annual vaccine decision-making was the goal, we reported more intuitive differences in VE, as others have done previously [14, 46]. Finally, based on the limited available information in each study, we could not adjust for the match between the current season’s vaccine and the circulating strains, the prior season’s vaccine and the current season’s circulating strains, nor changes in vaccine strains from one season to another, all of which may affect VE from one year to the next, as noted by Smith et al.’s [47] antigenic distance hypothesis. Skowronski et al. [48] recently examined VE for influenza H3N2 in Canada using this framework, and concluded that the effects of repeated vaccination were consistent with the antigenic distance hypothesis. We attempted to assess VE based on antigenic distance in the included articles by considering the vaccine strain and circulating strain match where possible, but not all studies provided detailed strain information. In the articles with sufficient information, the variation of vaccine and circulating strain matches were too few and were grouped by season, and as seasonal analysis was already included in our meta-analysis, no further information was gained. However, consistent with Skowronski et al.’s findings [48], we observed a significant negative interference in the 2014–2015 influenza season, supporting the antigenic distance hypothesis which predicts that this would occur when vaccine strains are homologous from one year to the next but the prior season’s vaccine does not match the current circulating strain. Future VE studies should continue to incorporate vaccination status in prior seasons and provide as much detail as possible to allow assessment of the match between vaccine and circulating strains and the changes in vaccine strains over time. Future studies should also assess the impact of vaccination over multiple past seasons.

Conclusions

In conclusion, from the patient’s perspective, vaccination in the current season is generally the best option regardless of prior season vaccination. From a policy perspective, our study found no overall evidence that repeated vaccination over two seasons has a negative impact on current season VE.

Acknowledgements

We acknowledge the Public Health Ontario scientific librarians for their assistance in developing the database search strategies, and Dr. Lennon Li for his guidance in statistical analysis. Additionally, we would like to acknowledge the authors of all of the studies included in this review.

Funding

There was no funding source for this study.

Availability of data and materials

The datasets used and/or analyzed during the current study are available from the corresponding author on reasonable request.

Ethics approval and consent to participate

Not applicable.

Consent for publication

Not applicable.

Competing interests

The authors declare that they have no competing interests.
Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://​creativecommons.​org/​licenses/​by/​4.​0/​), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://​creativecommons.​org/​publicdomain/​zero/​1.​0/​) applies to the data made available in this article, unless otherwise stated.
Zusatzmaterial
Additional file 1: Database search strategy. (DOCX 18 kb)
12916_2017_919_MOESM1_ESM.docx
Additional file 2: Table S1. Study characteristics of articles included in the meta-analysis and/or qualitative synthesis. Table S2. Meta-analysis pooled results by influenza season and influenza type/subtype. (DOCX 40 kb)
12916_2017_919_MOESM2_ESM.docx
Additional file 3: Figure S1. Results of the risk of bias assessment by category using the Newcastle–Ottawa Scale. (PDF 54 kb)
12916_2017_919_MOESM3_ESM.pdf
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