Literature DB >> 27011229

Global Role and Burden of Influenza in Pediatric Respiratory Hospitalizations, 1982-2012: A Systematic Analysis.

Kathryn E Lafond1,2, Harish Nair3,4, Mohammad Hafiz Rasooly5, Fátima Valente6, Robert Booy7, Mahmudur Rahman8, Paul Kitsutani1, Hongjie Yu9, Guiselle Guzman10, Daouda Coulibaly11, Julio Armero12, Daddi Jima13, Stephen R C Howie14,15,16, William Ampofo17, Ricardo Mena18, Mandeep Chadha19, Ondri Dwi Sampurno20, Gideon O Emukule21, Zuridin Nurmatov22, Andrew Corwin1, Jean Michel Heraud23, Daniel E Noyola24, Radu Cojocaru25, Pagbajabyn Nymadawa26, Amal Barakat27, Adebayo Adedeji28, Marta von Horoch29, Remigio Olveda30, Thierry Nyatanyi31, Marietjie Venter32,33,34, Vida Mmbaga35, Malinee Chittaganpitch36, Tran Hien Nguyen37, Andros Theo38, Melissa Whaley1, Eduardo Azziz-Baumgartner1, Joseph Bresee1, Harry Campbell3, Marc-Alain Widdowson1.   

Abstract

BACKGROUND: The global burden of pediatric severe respiratory illness is substantial, and influenza viruses contribute to this burden. Systematic surveillance and testing for influenza among hospitalized children has expanded globally over the past decade. However, only a fraction of the data has been used to estimate influenza burden. In this analysis, we use surveillance data to provide an estimate of influenza-associated hospitalizations among children worldwide. METHODS AND
FINDINGS: We aggregated data from a systematic review (n = 108) and surveillance platforms (n = 37) to calculate a pooled estimate of the proportion of samples collected from children hospitalized with respiratory illnesses and positive for influenza by age group (<6 mo, <1 y, <2 y, <5 y, 5-17 y, and <18 y). We applied this proportion to global estimates of acute lower respiratory infection hospitalizations among children aged <1 y and <5 y, to obtain the number and per capita rate of influenza-associated hospitalizations by geographic region and socio-economic status. Influenza was associated with 10% (95% CI 8%-11%) of respiratory hospitalizations in children <18 y worldwide, ranging from 5% (95% CI 3%-7%) among children <6 mo to 16% (95% CI 14%-20%) among children 5-17 y. On average, we estimated that influenza results in approximately 374,000 (95% CI 264,000 to 539,000) hospitalizations in children <1 y-of which 228,000 (95% CI 150,000 to 344,000) occur in children <6 mo-and 870,000 (95% CI 610,000 to 1,237,000) hospitalizations in children <5 y annually. Influenza-associated hospitalization rates were more than three times higher in developing countries than in industrialized countries (150/100,000 children/year versus 48/100,000). However, differences in hospitalization practices between settings are an important limitation in interpreting these findings.
CONCLUSIONS: Influenza is an important contributor to respiratory hospitalizations among young children worldwide. Increasing influenza vaccination coverage among young children and pregnant women could reduce this burden and protect infants <6 mo.

Entities:  

Mesh:

Year:  2016        PMID: 27011229      PMCID: PMC4807087          DOI: 10.1371/journal.pmed.1001977

Source DB:  PubMed          Journal:  PLoS Med        ISSN: 1549-1277            Impact factor:   11.069


Introduction

Influenza virus infections are a substantial contributor to respiratory morbidity and mortality, with the highest burden of severe disease experienced by those aged <5 y and ≥65 y [1-3]. Until recently, however, estimates of influenza burden have been largely obtained from resource-rich settings with temperate climates with clearly defined influenza seasonality, with few estimates available from lower-income countries [4-6]. This lack of information on influenza burden in resource-limited settings has hampered informed consideration of implementation of preventive measures such as vaccination. In the last 10 y, however, the global expansion of influenza surveillance and laboratory capacity for influenza testing by reverse transcription PCR has led to dramatic increases in testing in settings with previously sparse data. Many countries worldwide now perform hospital-based influenza surveillance among patients hospitalized with severe acute respiratory illness (SARI) [7-9]. These systems have proven useful in tracking influenza activity among hospitalized patients, but only a fraction of the collected data has been used to estimate the burden of influenza-associated hospitalizations. A 2011 meta-analysis using data from 16 population-based research sites and published literature estimated that there were 1 million cases of influenza-associated SARI episodes globally in children aged <5 y old in 2008. In this study, the per capita rate of severe influenza illness in developing countries was at least double that of industrialized countries [6]. This rate-based approach was mainly derived from sites with a limited population at risk under surveillance, and therefore represented only a small fraction of hospitals conducting surveillance for severe influenza disease globally. We aimed to update the previous influenza burden estimates in young children, making full use of updated and expanded surveillance data from the past decade (2003–2012), both before and after the 2009 pandemic influenza emergence. We further aimed to extend previous studies by providing global estimates of the prevalence of influenza among acute lower respiratory infection (ALRI) hospitalizations among both younger (<5 y) and older (5–17 y) children.

Methods

We aggregated data from all eligible published etiologic studies of influenza-associated respiratory illness among hospitalized children, which we supplemented with data from a working group of inpatient surveillance systems worldwide. We then calculated a final pooled estimate of the proportion of tested samples that were positive for influenza by reverse transcription PCR among children aged <18 y (referred to as proportion or percent positive), using age-group-specific random-effects log-binomial regression models. Finally, we applied the aggregate pooled proportion positive among children <1 and <5 y to age-specific denominators of global hospitalizations for ALRI among these two age groups [10] to obtain the number and rate (per 100,000 children per year) of pediatric influenza-associated hospitalizations, by World Health Organization (WHO) region and United Nations (UN) country development status.

Systematic Review of the Literature

We searched nine online databases (PubMed, Embase, Web of Science, CINAHL [Cumulative Index to Nursing and Allied Health Literature], IndMed, LILACS [Literatura Latino-Americana e do Caribe em Ciências da Saúde], WHOLIS [WHO Library Database], CNKI [China National Knowledge Infrastructure], and the Global Health Database) to identify articles published from 1 January 1996 to 1 June 2012. The search was conducted with no language restrictions, and full search terms are provided in S1 Table. Briefly, keywords included “influenza” or “viral etiology” and other designators of respiratory illness such as “acute respiratory infection” and “influenza-like illness”. Searches via the CNKI Chinese-language database were conducted by native Mandarin speakers. Identified articles were screened by two independent reviewers (two from K. E. L., M. W., E. A.-B., M.-A. W., P. Glew, S. Mei, Z. Suizan) for inclusion in the analysis, and duplicates were removed. The inclusion criteria were as follows: (1) original study with human participants, (2) laboratory testing for influenza, with description of the type of diagnostic method used, (3) minimum of 12 mo of continuous surveillance, (4) specified case definition (such as ALRI, SARI, or acute respiratory illness) or other clear criteria for specimen collection and testing, (5) hospitalized patients (excluding nosocomial infections), (6) number of enrolled cases from whom clinical specimens were collected and found positive was provided, and (7) minimum of 50 children (<18 y or “pediatric” as defined by authors) tested for influenza, in order to screen out small, potentially unreliable studies from the study dataset. For title and abstracts that met these criteria, full-text articles were obtained and re-screened. Full-text articles written in languages other than English were screened twice by co-investigators who could read the relevant language. Any discrepancies were discussed and resolved by reviewers. Independent screening was concordant for 92% of full-text articles, with 100% concordance after joint discussion of discrepancies. Key data from each eligible article were abstracted by two independent reviewers. Data abstracted included the total number of inpatients tested and total positive for influenza by age group and year, case definition and diagnostic test, WHO region, World Bank income level (low, lower-middle, upper-middle, or high income) [11], and UN country development status (industrialized or developing) [12].

Quality Assessment

Data quality for each eligible article was scored using a modified Newcastle–Ottawa checklist for bias assessment [13], with a score of zero or one for each of the following sources of bias: sampling process (explicit description of the sampling process for enrollment), case definition (specificity of enrollment criteria), and outcome (clarity of reported results). We explored the association between quality score and the percent positive using rank-sum non-parametric tests among all eligible articles included in the pooled analysis.

Surveillance Data

To supplement data from published studies, we compiled data from surveillance platforms that conducted hospital-based influenza surveillance. We established a working group, the Global Respiratory Hospitalizations–Influenza Proportion Positive (GRIPP) Working Group. To be eligible, surveillance platforms needed to conduct systematic year-round inpatient enrollment, with testing for at least 12 mo and >50 pediatric patients. Forty-eight partners were contacted, of which 37 had eligible data and agreed to participate. Data were collected using a standard format. Variables included the number of persons tested and positive for influenza by calendar year and age group, as well as surveillance system information such as the total number of inpatient sites and case definition used. If surveillance data were also represented in a report identified through the systematic review, the more detailed working group dataset was used, and the published article was excluded as a duplicate source.

Statistical Analysis

We first described the median proportion positive by age group, study duration, calendar year, number tested, diagnostic method, case definition, study population, WHO region, and country income level among all eligible datasets. We found substantial variation by age, diagnostic test, and calendar year. To reduce the influence of data from less reliable diagnostic methods (such as immunofluorescence [low sensitivity] and single serological samples [higher likelihood of false-positive findings]), we restricted the data for the meta-analysis to sites that utilized PCR for diagnosis, which is the accepted diagnostic gold standard. Further, to ensure that pooled estimates reflected seasonal rather than pandemic years, we excluded data from 2009. Pooled estimates of the proportion of respiratory hospitalizations due to influenza were calculated by mixed regression model for each of the following age groups: <6 mo, <1 y, <2 y, <5 y, 5–17 y, and <18 y. If a dataset used age ranges that did not line up with our definitions, it was included in the smallest range that contained both bounds (e.g., a dataset from children 0–36 mo was included in the <5 y analysis). The same datasets could provide estimates for multiple age groups if they provided number tested and positive for influenza for each age group. The mixed regression model in SAS version 9.3 (SAS Institute) used a log-linked binomial distribution of input values, and included the number tested and positive for influenza by dataset and calendar year for each age group. If a single dataset provided data by year, then each year was treated as a single observation in the model, and the dataset was defined as a cluster. Random effects were accounted for at the dataset level, irrespective of the number of observations within the dataset. We then applied our pooled proportion positive for influenza viruses to global estimates of the total annual number of hospitalizations for ALRI among children <5 y and <1 y from Nair et al. [10] and adjusted for 2012 population to calculate the total number of influenza-associated hospitalizations in these two age groups (for which denominators were available). For children <5 y, we also applied stratified pooled estimates (by WHO region and UN country development status) to the appropriate ALRI hospitalization denominators. We then divided these total numbers of influenza-associated hospitalizations by total age-specific population (at global and regional levels, and separately for developing and industrialized countries) to estimate annual per capita influenza-associated hospitalization episodes [14]. No estimates of the frequency of ALRI among children under 6 mo existed to which we could apply the proportion positive for influenza viruses. Therefore, we calculated an incidence rate ratio of influenza-associated ALRI between children aged 0–5 mo and 6–11 mo, collected as part of a separate study [6] (S2 Appendix). We applied this ratio to our estimate of the number of influenza-associated ALRI hospitalizations in children under 1 y, assuming uniform distribution of the population under 1 y, to estimate the number of influenza-associated hospitalizations among children aged 0–5 mo.

Results

The systematic literature search identified 38,006 unique records from the nine scientific literature databases, of which 957 full-text articles were reviewed, and 108 included in the descriptive analysis (Fig 1) (full list of included articles provided in S1 Appendix). In addition, 37 surveillance datasets for periods ranging from 1 to 7 y, each with data from 1–49 inpatient facilities, were provided by the GRIPP Working Group. Combined, the literature search and working group resulted in a total of 145 unique data sources from 350 sites in 60 countries across all WHO regions, including southern and northern hemisphere temperate climates as well as tropical and arid regions of Asia and Africa. The two data sources combined covered a 31-y period from 1982 to 2012. More than half (55/108, 51%) of the published studies had a 3/3 quality score. Compared to published articles, surveillance datasets were more recently collected (median start year 2009 versus 2002), of longer duration (median duration 3 y versus 2 y), more likely to be PCR-based (41% versus 28%), and more likely to use the SARI case definition (84% versus 0%). Additionally, surveillance datasets were also more commonly from low-income countries compared to published articles (41% versus 6%, respectively; Table 1).
Fig 1

Flow diagram for systematic review process.

Table 1

Characteristics of published studies and surveillance data sources about influenza-associated respiratory illness among hospitalized children, 1982–2012.

CharacteristicNumber (Percent) of Published Studies, n = 108, 1982–2010Number (Percent) of Surveillance Datasets, n = 37, 2003–2012
Age group *
<6 mo13 (12)12 (32)
<1 y20 (19)23 (62)
<2 y19 (18)14 (38)
<5 y45 (42)35 (95)
5–17 y9 (8)28 (76)
<18 y63 (58)33 (89)
Study duration in years
1–278 (72)16 (43)
3–419 (18)13 (35)
5+11 (10)8 (22)
Timeframe for outcome data **
Before 200993 (86)12 (32)
During 2009 (“pandemic”)1 (1)18 (49)
After 20091 (1)33 (89)
Total cases tested
50–9910 (9)1 (3)
100–49946 (43)9 (24)
500–99921 (19)5 (14)
1,000+31 (29)22 (59)
Diagnostic test
PCR only30 (28)15 (41)
Immunofluorescence only32 (30)0 (0)
Culture only3 (3)0 (0)
Multiple diagnostic tests, including PCR14 (13)22 (59)
Multiple diagnostic tests, excluding PCR25 (23)0 (0)
Other 4 (4)0 (0)
Case definition
Acute respiratory infection35 (32)1 (3)
ALRI36 (33)2 (5)
Pneumonia18 (17)1 (3)
SARI0 (0)31 (84)
Bronchiolitis5 (5)0 (0)
Other § 14 (13)2 (5)
Special population ǁ
Yes7 (6)0 (0)
No101 (94)37 (100)
WHO region
Africa10 (9)13 (35)
Americas18 (17)6 (16)
Eastern Mediterranean2 (2)2 (5)
Europe30 (28)2 (5)
Southeast Asia11 (10)6 (16)
Western Pacific37 (34)8 (22)
World Bank income level
Low7 (6)15 (41)
Lower-middle36 (33)15 (41)
Upper-middle20 (19)6 (16)
High47 (44)1 (3)
Quality score (published studies only)
05 (5)
120 (19)
228 (26)
355 (51)

*If a dataset used age ranges that did not line up with our definitions, it was included in the smallest range that contained both bounds (e.g., a dataset from children 0–36 mo was included in the <5 y analysis).

**Pandemic defined as calendar year 2009; 13 published articles provided only combined pre-pandemic/pandemic estimates.

†Includes serological ELISA of single or paired sera (n = 1) and other serological testing (n = 2).

‡Case definitions as defined per individual study criteria.

§Includes acute respiratory infection and/or fever (n = 3), acute wheezing (n = 2), and other criteria (n = 8).

ǁDefined as study being designed specifically to target a high-risk population; includes recurrent wheezing/asthma (n = 3), intensive care unit (n = 2), cancer (n = 1), and HIV infection (n = 1).

*If a dataset used age ranges that did not line up with our definitions, it was included in the smallest range that contained both bounds (e.g., a dataset from children 0–36 mo was included in the <5 y analysis). **Pandemic defined as calendar year 2009; 13 published articles provided only combined pre-pandemic/pandemic estimates. †Includes serological ELISA of single or paired sera (n = 1) and other serological testing (n = 2). ‡Case definitions as defined per individual study criteria. §Includes acute respiratory infection and/or fever (n = 3), acute wheezing (n = 2), and other criteria (n = 8). ǁDefined as study being designed specifically to target a high-risk population; includes recurrent wheezing/asthma (n = 3), intensive care unit (n = 2), cancer (n = 1), and HIV infection (n = 1). The crude median percent of respiratory samples that were influenza positive among patients aged 5–17 y was more than double that among those <5 y (15%, interquartile range [IQR] 10%–22%, versus 6%, IQR 3%–9%, p < 0.001) and was also significantly higher in surveillance data than in published articles (9%, IQR 6%–12%, versus 5%, IQR 3%–9%, p < 0.01) (Table 2). The median percent positive was also significantly higher in 2009, when pandemic influenza A(H1N1)pdm09 virus emerged, and in following years, compared to before 2009 (13% in 2009, IQR 6%–20%, versus 9% after 2009, IQR 5%–11%, and 5% before 2009, IQR 3%–9%, p < 0.001). The majority of the datasets (57%) comprised results from PCR diagnosis. Influenza positivity was significantly lower among the datasets that used immunofluorescence alone, as compared to the datasets that used other methods such as PCR, culture, or a combination of diagnostic tests (3% versus 7%, p < 0.01). The frequency of influenza detection by any assay was not significantly associated with case definition used, income level, or WHO region. To account for the possibility that differences in influenza positivity by age group were due to confounding factors such as differences in PCR use or case definition applied, we analyzed these factors by age group and found no association. The studies that did not use PCR were similar to those that did use PCR by age group and timeframe of data reported. However, studies from the Americas and the Western Pacific (particularly South America and China) were less likely to use PCR, with immunofluorescence as a more common diagnostic methodology. Among published articles, there was also no difference in influenza positivity by quality score.
Table 2

Crude proportion of respiratory samples from hospitalized children testing positive for influenza by age group, study design, and population.

CharacteristicNumber of Studies (n = 141)Median Number (IQR)Median Percent Positive (IQR) p-Value*
Tested Positive
Age group ** <0.001
<6 mo25386 (148–1,129)17 (3–32)4 (1–5)
<1 y42536 (282–1,812)34 (11–58)4 (2–7)
<2 y31506 (145–1,322)21 (4–77)5 (2–8)
<5 y80766 (321–1,444)42 (18–86)6 (3–9)
5–17 y36243 (90–507)27 (14–87)15 (10–22)
<18 y92817 (239–1,524)53 (15–110)7 (5–12)
Data source 0.001
Surveillance371,159 (469–2,185)98 (38–249)9 (6–12)
Published104435 (162–1,063)29 (8–66)5 (3–9)
Timeframe for outcome data <0.001
Before 2009102454 (170–1,086)29 (8–70)5 (3–9)
During 2009 (“pandemic”)19610 (100–1,353)56 (8–205)13 (6–20)
After 200934707 (291–1,289)64 (20–118)9 (5–11)
Diagnostic test 0.001
PCR only44701 (270–983)40 (25–67)7 (5–10)
Immunofluorescence only32486 (185–1,654)17 (8–78)3 (2–6)
Culture only3302 (68–838)39 (5–204)13 (7–24)
Multiple diagnostic tests, including PCR36497 (185–1,167)39 (18–88)9 (8–10)
Multiple diagnostic tests, excluding PCR221,047 (224–2,073)64 (15–170)8 (5–12)
Other4211 (143–1,389)31 (7–75)6 (4–13)
Case definition 0.14
Acute respiratory infection33958 (415–1,429)51 (18–88)5 (3–10)
ALRI37516 (186–1,234)32 (17–77)6 (3–9)
Pneumonia19136 (99–627)12 (5–32)7 (5–9)
SARI311,159 (469–1,960)91 (38–249)8 (5–12)
Bronchiolitis5142 (118–170)8 (3–8)6 (3–16)
Other16278 (158–851)29 (8–60)7 (5–12)
Special population 0.98
No134701 (196–1,369)39 (14–84)6 (4–10)
Yes7132 (119–293)9 (7–20)8 (2–9)
World Bank income level 0.08
Low22806 (387–1,256)51 (34–108)7 (4–9)
Lower-middle49808 (263–1,960)52 (29–117)8 (4–13)
Upper-middle25455 (184–1,429)18 (9–70)5 (2–9)
High45415 (143–1,031)18 (7–66)5 (5–7)
WHO region 0.55
Africa23817 (202–1,159)45 (16–91)7 (4–9)
Americas24299 (132–1,521)17 (8–51)5 (3–9)
Eastern Mediterranean41,223 (534–1,621)40 (21–141)8 (3–14)
Europe31415 (142–916)14 (7–66)5 (3–7)
Southeast Asia17263 (186–627)29 (7–62)9 (5–14)
Western Pacific421,051 (412–2,077)67 (39–98)7 (4–11) 

Four eligible articles provided data for influenza A only and were excluded from the overall positive analyses.

*Non-parametric comparisons conducted by Kruskal–Wallis/Wilcoxon rank-sum test. Age-based comparison conducted only between the <5 y and 5–17 y age groups.

**Age groups include datasets that include a subset within the given range, but are non-duplicative, e.g., “<5 y” includes datasets of children 0–36 mo as well as datasets of children 0–59 mo, but does not include datasets of children <1 y or <2 y.

†Pandemic defined as calendar year 2009.

‡Defined as study being designed specifically to target a high-risk population; includes recurrent wheezing/asthma (n = 3), intensive care unit (n = 2), cancer (n = 1), HIV infection (n = 1).

Four eligible articles provided data for influenza A only and were excluded from the overall positive analyses. *Non-parametric comparisons conducted by Kruskal–Wallis/Wilcoxon rank-sum test. Age-based comparison conducted only between the <5 y and 5–17 y age groups. **Age groups include datasets that include a subset within the given range, but are non-duplicative, e.g., “<5 y” includes datasets of children 0–36 mo as well as datasets of children 0–59 mo, but does not include datasets of children <1 y or <2 y. †Pandemic defined as calendar year 2009. ‡Defined as study being designed specifically to target a high-risk population; includes recurrent wheezing/asthma (n = 3), intensive care unit (n = 2), cancer (n = 1), HIV infection (n = 1). Due to steady increases in year-round hospital-based influenza surveillance over the past decade, the number of available datasets substantially increased from 2006 (n = 2) to 2011 (n = 22). The overall median influenza percent positive increased sharply from 5% in 2008 to 13% in 2009, largely driven by pandemic H1N1, the predominant subtype that year. The median total percent positive (for any influenza type/subtype) dropped substantially in 2010 to 9% and remained at 8% in 2011, as influenza A(H1N1)pdm09 circulated at lower levels and influenza A(H3N2) and B predominated (Fig 2).
Fig 2

Boxplot of the proportion of pediatric (0–17 y of age) respiratory samples testing positive for influenza virus among GRIPP datasets by year and virus type/subtype.

Data are for years with more than one dataset providing testing results by virus subtype. Unsubtyped influenza A viruses are included in influenza A totals, but not shown separately. Boxplot excludes outside values.

Boxplot of the proportion of pediatric (0–17 y of age) respiratory samples testing positive for influenza virus among GRIPP datasets by year and virus type/subtype.

Data are for years with more than one dataset providing testing results by virus subtype. Unsubtyped influenza A viruses are included in influenza A totals, but not shown separately. Boxplot excludes outside values. The pooled meta-analyses with only PCR-confirmed data included 63 datasets, each with 1 to 6 y of data, from 41 countries. The pooled percent positive for influenza among children hospitalized with respiratory illness varied from 4.8% (95% CI 3.3%–6.9%) among those <6 mo to 16.4% (95% CI 13.6%–19.8%) among those 5–17 y, and was 9.5% (95% CI 8.1%–11.0%) overall among children <18 y. Among children <5 y, the pooled estimate was 7.4% (95% CI 6.2%–8.8%). For this age group, we also stratified the pooled estimate by region and country development status. We found the highest percent positive in Southeast Asia (8.5%, 95% CI 6.7%–10.8%) and the lowest in the Americas (4.6%, 95% CI 2.8%–7.4%), and the percent positive was lower in industrialized countries (5.9%, 95% CI 4.6%–7.5%) than in developing countries (7.7%, 95% CI 6.4%–9.3%), although these differences were not statistically significant. There were no significant differences by country income status. Post hoc sensitivity analysis of the effect of outliers (>95th percentile values) on the global estimates showed no difference. Finally, by applying the age-specific pooled proportion to a denominator of global hospitalized ALRI episodes, we estimated the absolute number of influenza-associated hospitalizations among children <5 y to be 870,000 (95% CI 610,000 to 1,237,000), for a per capita rate of 135/100,000 children/year (95% CI 95–193) (Table 3). The influenza-associated hospitalization rate in developing countries was 3-fold that in industrialized countries, and ranged from 174/100,000 children/year in Africa to 71/100,000 children/year in the Americas. Among children <1 y, we estimated 374,000 (95% CI 264,000 to 539,000) influenza-associated hospitalizations per year worldwide.
Table 3

Pooled estimates of global pediatric influenza-associated hospitalizations per year, by age group, development status, and WHO region, among studies using PCR diagnostic testing.

 Characteristic N (Number of Countries)Pooled Percent Positive (95% CI)Hospitalized ALRI Episodes (Thousands)* Global Influenza-Associated Hospitalizations (Thousands)** Influenza-Associated Hospitalizations per 100,000 Children
Age group
<6 mo15 (14)4.8 (3.3–6.9)
<1 y26 (21)6.1 (5.1–7.4)6,136 (5,168–7,287)374 (264–539)284 (200–409)
<2 y23 (18)7.1 (6.1–8.4)
<5 y48 (35)7.4 (6.2–8.8)11,751 (9,837–12,054)870 (610–1,237)135 (95–193)
5–17 y27 (22)16.4 (13.6–19.8)
<18 y42 (32)9.5 (8.1–11.0)
Age <5 y by development status
Industrialized7 (4)5.9 (4.6–7.5)551 (408–745)33 (19–56)48 (28–81)
Developing41 (31)7.7 (6.4–9.3)11,200 (9,429–13,309)862 (603–1,238)150 (105–216)
Age <5 y by WHO region
Africa16 (13)8.2 (6.4–10.6)3,084 (1,985–4,791)253 (127–508)174 (87–349)
Americas7 (5)4.6 (2.8–7.4)1,333 (920–1,934)61 (26–143)79 (33–185)
Eastern Mediterranean1 (1)7.4 (NA)889 (628–1,258)66 (46–93) 95 (67–135)
Europe5 (4)7.1 (1.5–32.7)402 (252–642)29 (4–210)53 (7–387)
Southeast Asia7 (4)8.5 (6.7–10.8)3,274 (2,008–5,341)278 (135–577)157 (76–326)
Western Pacific12 (8)8.5 (6.8–10.6)2,143 (1,660–2,764)182 (113–293)153 (95–246)

*Determined as described by Nair et al. [10] and adjusted for 2012 population.

**Point estimates and confidence intervals were calculated as products of point estimates, lower bounds, and upper bounds (respectively) of pooled percent influenza positive and total hospitalized ALRI episodes.

†Since 95% CI was not calculable on the percentage influenza positive in the Eastern Mediterranean region, variance in this region’s disease burden estimates was derived only from the 95% CI of hospitalized ALRI episodes.

NA, not applicable.

*Determined as described by Nair et al. [10] and adjusted for 2012 population. **Point estimates and confidence intervals were calculated as products of point estimates, lower bounds, and upper bounds (respectively) of pooled percent influenza positive and total hospitalized ALRI episodes. †Since 95% CI was not calculable on the percentage influenza positive in the Eastern Mediterranean region, variance in this region’s disease burden estimates was derived only from the 95% CI of hospitalized ALRI episodes. NA, not applicable. The incidence of influenza-associated ALRI among children 0–5 mo was approximately 1.6 times higher than that of children 6–11 mo. Applying this rate ratio to the total influenza-associated hospitalizations for children <1 y, we estimate 228,000 (95% CI 150,000 to 344,000) influenza-associated hospitalizations per year among children aged less than 6 mo.

Discussion

We used influenza surveillance data from 350 sites in 60 countries to estimate that 10% of global respiratory hospitalizations in children under 18 y worldwide were associated with influenza. This proportion increased by age, with the highest percentage found among school-aged children (5–17 y). We further estimated that influenza causes approximately 374,000 respiratory hospitalizations per year in children <1 y of age (including 270,000 among those less than 6 mo) and 870,000 respiratory hospitalizations per year in children <5 y of age, with the greatest impact in developing countries. Although we did not identify any significant trends in the overall proportion positive by WHO region in the crude analysis, the final pooled estimates among children <5 y from the Americas differed from the global estimates (4.6%, 95% CI 2.8%–7.4%, versus 7.4%, 95% CI 6.2%–8.8%). This lower percentage positive for influenza may be related to the use of influenza vaccine in the region, which has been on the rise since 2004 [15]. However, vaccine coverage data among children in the region are limited, and these trends may also be a chance finding due to the small number of study sites in this region reporting results of year-round influenza testing. Our findings on influenza burden among children <5 y are consistent with a previously published estimate using fewer datasets and a different methodological approach [6] (870,000 annual influenza-associated hospitalizations worldwide in our analysis versus 911,000 estimated by Nair et al., with overlapping confidence intervals) and demonstrate the value of using non-population-based sentinel surveillance data for disease burden estimation. Our analysis also found a substantially higher proportion of influenza-associated hospitalizations among school-aged children (5–17 y), who are an important group for transmission of influenza virus [7,16,17] and who were not included in previous global analyses. While the prevalence of influenza as a proportion of respiratory hospitalizations is lower among younger children (<5 y and particularly <1 y) than among older children, this is largely due to a high frequency of other serious respiratory pathogens such as respiratory syncytial virus (RSV) [18]. These young children experience the highest rate of total respiratory and influenza-associated hospitalizations [2,19]. Global pediatric mortality estimates suggest that the proportion of deaths caused by influenza is highest among those aged 1–12 mo (2.8% of all deaths in this age group, worldwide) [20]. Further, severe influenza infection with non-respiratory clinical presentation is not captured in our analysis, so our calculation of the total burden of influenza-associated hospitalization among the youngest children (<1 y) is likely an underestimate, as non-standard presentations (such as fever without classic respiratory signs) are known to occur in this age group [21]. Other pathogens, particularly Streptococcus pneumoniae and RSV, are also important causes of respiratory hospitalizations in those <5 y. Globally, it is estimated that RSV is associated with 25% of all ALRI in children <5 y, and, like influenza, RSV prevalence can vary substantially by season and across geographic locations [18]. S. pneumoniae and Haemophilus influenzae type B were associated with 18.3% and 4.1% of severe ALRI episodes globally among children <5 y in 2010, respectively [22], although their relative contributions to pediatric respiratory hospitalizations may vary depending on their inclusion in pediatric vaccine programs. However, a single ALRI episode may be caused by multiple pathogens, as well. For example, severe bacterial pneumonia can be a sequela of influenza infection [23]; pediatric hospitalizations for invasive pneumococcal disease in the US have been shown to increase during the 2-wk window following peak circulation of influenza, as well as other respiratory viruses [24]. Our finding of an increased impact among children of pandemic influenza compared to seasonal influenza (median estimate percent positive of 13% among children of all age groups in 2009 compared to 5% before 2009 and 9% after 2009) confirms previous findings of the effect of the pandemic on ALRI hospitalizations worldwide. In the United States, a 5-fold rise was reported in the rate of laboratory-confirmed influenza hospitalizations among children 5–17 y of age during the 2009–2010 influenza pandemic compared to non-pandemic influenza seasons [25]. Similar trends have been seen in India, where hospitalization rates due to pandemic influenza infection were particularly high among those 5–29 y, compared to other age groups [26]. Global mortality data from the 2009 pandemic suggest that the actual number of deaths was 15 times greater than laboratory-confirmed estimates, with 80% occurring in those younger than 65 y and 22% occurring in children 0–17 y [27]. Several important limitations should be considered when interpreting our findings. Differences in hospitalization practices, applications of case definitions, influenza testing practices (including sampling method), and factors such as time from symptom onset to specimen collection could make detection of influenza more or less likely and therefore bias the percent positive outcome. Our estimate of the burden of severe respiratory illness due to influenza is an underestimate of total burden for several reasons. First, our approach does not allow estimation of severe respiratory illness in individuals who did not present to hospital, which is particularly a problem in resource-limited settings with poor health care access, where hospitalization rates may be driven by proximity to a health care facility, limiting the generalizability of hospital-based burden estimates. Second, individuals with influenza virus may have stopped shedding by the time they presented to hospital and were tested, resulting in an underestimation of the true percent positive. Lastly, we assumed that influenza virus detected in individuals hospitalized for respiratory disease was causal for the hospitalization episode. While influenza is rarely found in well individuals [28], co-infections of influenza with bacteria and other viruses may result in a more severe illness, which is not explored in our analysis. Additionally, year-by-year variability of influenza percent positive and external factors, such as co-infections and vaccination coverage, may affect influenza positivity. This year-by-year variability is better captured in the GRIPP data than in the published data, which was often not analyzable by both year and age group. Data from 2010 onward also include influenza A(H1N1)pdm09, which may have had a greater impact on immunologically naïve children, compared to other influenza viruses, during this period, resulting in an overestimate of annual influenza burden. This may be particularly the case during 2010, when WHO officially transitioned from pandemic to post-pandemic phase, especially in settings such as West Africa, where influenza A(H1N1)pdm09 only began circulating in 2010 [29]. However, no significant difference was seen in the overall pooled estimate when 2010 data were excluded, indicating that influenza A(H1N1)pdm09 activity in 2010 is not likely to impact our overall findings on proportion positive for seasonal influenza. Our findings expand knowledge of the impact of severe influenza among children <1 and <5 y, and create an evidence base for both younger (<6 mo) and older (5–17 y) children, for whom, to our knowledge, no global estimates of influenza disease burden have been published to date. Countries considering possible influenza vaccination programs for children and/or pregnant women can use our estimates as inputs for vaccine impact and cost–benefit models. Our data may also stimulate further research into the development of effective influenza vaccines for young children. Several recent changes have made influenza vaccination a more realistic goal in settings that have not previously considered influenza vaccination programs, including 2012 WHO recommendations identifying pregnant women as the most important target group for influenza vaccination [30], as well as recent expansions in vaccine manufacturing and increasing investment into public health among middle-income countries [31]. As demand and supply grow, vaccines may drop in cost, and targeting of pediatric populations through childhood immunization programs such as the WHO Expanded Programme on Immunization could further reduce the cost of implementation of an influenza vaccine program. Maternal immunization is another strategy that would help reduce influenza burden in children less than 6 mo [32]. The development of improved influenza vaccines is needed, including products that require only one dose in young children or provide longer-term protection against a broader array of influenza viruses, such as live-attenuated and adjuvanted vaccines, as well as universal influenza vaccines that protect against multiple influenza strains. Further research is also needed to better define the burden of influenza in young children, especially those presenting with non-respiratory symptoms, possibly via approaches such as vaccine probe studies [33].

Summary of published articles included in the analyses, with reference list.

(DOCX) Click here for additional data file.

Summary of influenza-associated ALRI and total number of influenza-associated hospitalizations in children 0–5 mo and 6–11 mo, with reference list.

(DOCX) Click here for additional data file.

Analysis dataset.

(CSV) Click here for additional data file.

Forest plot of data sources with PCR testing for pooled estimate, children <6 mo.

(TIFF) Click here for additional data file.

Forest plot of data sources with PCR testing for pooled estimate, children <1 y.

(TIFF) Click here for additional data file.

Forest plot of data sources with PCR testing for pooled estimate, children <2 y.

(TIFF) Click here for additional data file.

Forest plot of data sources with PCR testing for pooled estimate, children <5 y.

(TIFF) Click here for additional data file.

Forest plot of data sources with PCR testing for pooled estimate, children <18 y.

(TIFF) Click here for additional data file.

Forest plot of data sources with PCR testing for pooled estimate, children 5–17 y.

(TIFF) Click here for additional data file. (DOC) Click here for additional data file.

Literature search methodology and results, by database.

(DOCX) Click here for additional data file.
  28 in total

Review 1.  Global burden of respiratory infections due to seasonal influenza in young children: a systematic review and meta-analysis.

Authors:  Harish Nair; W Abdullah Brooks; Mark Katz; Anna Roca; James A Berkley; Shabir A Madhi; James Mark Simmerman; Aubree Gordon; Masatoki Sato; Stephen Howie; Anand Krishnan; Maurice Ope; Kim A Lindblade; Phyllis Carosone-Link; Marilla Lucero; Walter Ochieng; Laurie Kamimoto; Erica Dueger; Niranjan Bhat; Sirenda Vong; Evropi Theodoratou; Malinee Chittaganpitch; Osaretin Chimah; Angel Balmaseda; Philippe Buchy; Eva Harris; Valerie Evans; Masahiko Katayose; Bharti Gaur; Cristina O'Callaghan-Gordo; Doli Goswami; Wences Arvelo; Marietjie Venter; Thomas Briese; Rafal Tokarz; Marc-Alain Widdowson; Anthony W Mounts; Robert F Breiman; Daniel R Feikin; Keith P Klugman; Sonja J Olsen; Bradford D Gessner; Peter F Wright; Igor Rudan; Shobha Broor; Eric A F Simões; Harry Campbell
Journal:  Lancet       Date:  2011-11-10       Impact factor: 79.321

2.  Meeting of the Strategic Advisory Group of Experts on immunization, April 2012--conclusions and recommendations.

Authors: 
Journal:  Wkly Epidemiol Rec       Date:  2012-05-25

3.  Estimating household and community transmission parameters for influenza.

Authors:  I M Longini; J S Koopman; A S Monto; J P Fox
Journal:  Am J Epidemiol       Date:  1982-05       Impact factor: 4.897

4.  Influenza surveillance in 15 countries in Africa, 2006-2010.

Authors:  Jennifer Michalove Radin; Mark A Katz; Stefano Tempia; Ndahwouh Talla Nzussouo; Richard Davis; Jazmin Duque; Adebayo Adedeji; Michael Jeroen Adjabeng; William Kwabena Ampofo; Workenesh Ayele; Barnabas Bakamutumaho; Amal Barakat; Adam L Cohen; Cheryl Cohen; Ibrahim T Dalhatu; Coulibaly Daouda; Erica Dueger; Moisés Francisco; Jean-Michel Heraud; Daddi Jima; Alice Kabanda; Hervé Kadjo; Amr Kandeel; Stomy Karhemere Bi Shamamba; Francis Kasolo; Karl C Kronmann; Mazyanga L Mazaba Liwewe; Julius Julian Lutwama; Miriam Matonya; Vida Mmbaga; Joshua A Mott; Marie Aimee Muhimpundu; Phillip Muthoka; Henry Njuguna; Laurence Randrianasolo; Samir Refaey; Charlene Sanders; Maha Talaat; Andros Theo; Fátima Valente; Marietjie Venter; Celia Woodfill; Joseph Bresee; Ann Moen; Marc-Alain Widdowson
Journal:  J Infect Dis       Date:  2012-12-15       Impact factor: 5.226

Review 5.  United States of America Department of Health and Human Services support for advancing influenza vaccine manufacturing in the developing world.

Authors:  Michael L Perdue; Rick A Bright
Journal:  Vaccine       Date:  2011-07-01       Impact factor: 3.641

Review 6.  Seasonal influenza epidemiology in sub-Saharan Africa: a systematic review.

Authors:  Bradford D Gessner; Nahoko Shindo; Sylvie Briand
Journal:  Lancet Infect Dis       Date:  2011-03       Impact factor: 25.071

7.  Seasonal invasive pneumococcal disease in children: role of preceding respiratory viral infection.

Authors:  Krow Ampofo; Jeffrey Bender; Xiaoming Sheng; Kent Korgenski; Judy Daly; Andrew T Pavia; Carrie L Byington
Journal:  Pediatrics       Date:  2008-08       Impact factor: 7.124

8.  Influenza-associated hospitalizations in the United States.

Authors:  William W Thompson; David K Shay; Eric Weintraub; Lynnette Brammer; Carolyn B Bridges; Nancy J Cox; Keiji Fukuda
Journal:  JAMA       Date:  2004-09-15       Impact factor: 56.272

9.  Epidemiology and etiology of childhood pneumonia in 2010: estimates of incidence, severe morbidity, mortality, underlying risk factors and causative pathogens for 192 countries.

Authors:  Igor Rudan; Katherine L O'Brien; Harish Nair; Li Liu; Evropi Theodoratou; Shamim Qazi; Ivana Lukšić; Christa L Fischer Walker; Robert E Black; Harry Campbell
Journal:  J Glob Health       Date:  2013-06       Impact factor: 4.413

10.  Expansion of seasonal influenza vaccination in the Americas.

Authors:  Alba María Ropero-Alvarez; Hannah J Kurtis; M Carolina Danovaro-Holliday; Cuauhtémoc Ruiz-Matus; Jon K Andrus
Journal:  BMC Public Health       Date:  2009-09-24       Impact factor: 3.295

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  136 in total

1.  Oseltamivir Treatment of Influenza in Children.

Authors:  Timothy M Uyeki
Journal:  Clin Infect Dis       Date:  2018-05-02       Impact factor: 9.079

2.  Influenza vaccination during pregnancy for prevention of influenza confirmed illness in the infants: A systematic review and meta-analysis.

Authors:  Marta C Nunes; Shabir A Madhi
Journal:  Hum Vaccin Immunother       Date:  2017-10-18       Impact factor: 3.452

3.  [The universal influenza vaccination in children with Vaxigrip Tetra® in Italy: an evaluation of Health Technology Assessment].

Authors:  Sara Boccalini; Angela Bechini; Maddalena Innocenti; Gino Sartor; Federico Manzi; Paolo Bonanni; Donatella Panatto; Piero Luigi Lai; Francesca Zangrillo; Emanuela Rizzitelli; Mariasilvia Iovine; Daniela Amicizia; Chiara Bini; Andrea Marcellusi; Francesco Saverio Mennini; Alessandro Rinaldi; Francesca Trippi; Anna Maria Ferriero; Giovanni Checcucci Lisi
Journal:  J Prev Med Hyg       Date:  2018-05-30

4.  Prevention and treatment of respiratory viral infections: Presentations on antivirals, traditional therapies and host-directed interventions at the 5th ISIRV Antiviral Group conference.

Authors:  Jennifer L McKimm-Breschkin; Shibo Jiang; David S Hui; John H Beigel; Elena A Govorkova; Nelson Lee
Journal:  Antiviral Res       Date:  2017-11-21       Impact factor: 5.970

5.  Parental Hesitancy About Routine Childhood and Influenza Vaccinations: A National Survey.

Authors:  Allison Kempe; Alison W Saville; Christina Albertin; Gregory Zimet; Abigail Breck; Laura Helmkamp; Sitaram Vangala; L Miriam Dickinson; Cindy Rand; Sharon Humiston; Peter G Szilagyi
Journal:  Pediatrics       Date:  2020-06-15       Impact factor: 7.124

6.  Influenza disease burden among potential target risk groups for immunization in South Africa, 2013-2015.

Authors:  Stefano Tempia; Sibongile Walaza; Jocelyn Moyes; Meredith L McMorrow; Adam L Cohen; Ijeoma Edoka; Heather Fraser; Florette K Treurnicht; Orienka Hellferscee; Nicole Wolter; Anne von Gottberg; Johanna M McAnerney; Halima Dawood; Ebrahim Variava; Cheryl Cohen
Journal:  Vaccine       Date:  2020-05-07       Impact factor: 3.641

Review 7.  Adjuvanted influenza vaccines.

Authors:  John S Tregoning; Ryan F Russell; Ekaterina Kinnear
Journal:  Hum Vaccin Immunother       Date:  2018-01-25       Impact factor: 3.452

8.  Evaluation of a New Clinical Endpoint for Moderate to Severe Influenza Disease in Children: A Prospective Cohort Study.

Authors:  Suchitra Rao; Emad Yanni; Angela Moss; Molly M Lamb; Anne Schuind; Rafik Bekkat-Berkani; Bruce L Innis; Jillian Cotter; Rakesh D Mistry; Edwin J Asturias
Journal:  J Pediatric Infect Dis Soc       Date:  2020-09-17       Impact factor: 3.164

9.  Inflammatory responses to influenza vaccination at the extremes of age.

Authors:  Jacqueline U McDonald; Ziyun Zhong; Helen T Groves; John S Tregoning
Journal:  Immunology       Date:  2017-05-16       Impact factor: 7.397

10.  Incidence of Influenza Among Childhood Cancer Survivors in South Korea: A Population-based Retrospective Analysis.

Authors:  Jaesung Heo; Hyun Joo Jung; O Kyu Noh; Logyoung Kim; Jun Eun Park
Journal:  In Vivo       Date:  2020 Mar-Apr       Impact factor: 2.155

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