Hostname: page-component-7c8c6479df-27gpq Total loading time: 0 Render date: 2024-03-28T23:53:53.241Z Has data issue: false hasContentIssue false

Analysis of potential changes in seriousness of influenza A and B viruses in Hong Kong from 2001 to 2011

Published online by Cambridge University Press:  17 June 2014

J. Y. WONG
Affiliation:
Division of Epidemiology and Biostatistics, School of Public Health, The University of Hong Kong, Hong Kong Special Administrative Region, China
P. WU*
Affiliation:
Division of Epidemiology and Biostatistics, School of Public Health, The University of Hong Kong, Hong Kong Special Administrative Region, China
E. GOLDSTEIN
Affiliation:
Center for Communicable Disease Dynamics, Department of Epidemiology, Harvard School of Public Health, Boston, MA, USA
E. H. Y. LAU
Affiliation:
Division of Epidemiology and Biostatistics, School of Public Health, The University of Hong Kong, Hong Kong Special Administrative Region, China
D. K. M. IP
Affiliation:
Division of Epidemiology and Biostatistics, School of Public Health, The University of Hong Kong, Hong Kong Special Administrative Region, China
J. T. WU
Affiliation:
Division of Epidemiology and Biostatistics, School of Public Health, The University of Hong Kong, Hong Kong Special Administrative Region, China
B. J. COWLING
Affiliation:
Division of Epidemiology and Biostatistics, School of Public Health, The University of Hong Kong, Hong Kong Special Administrative Region, China
*
*Author for correspondence: Dr P. Wu, Division of Epidemiology and Biostatistics, School of Public Health, The University of Hong Kong, 21 Sassoon Road, Pokfulam, Hong Kong. (Email: pengwu@hku.hk)
Rights & Permissions [Opens in a new window]

Summary

Continued monitoring of the seriousness of influenza viruses is a public health priority. We applied time-series regression models to data on cardio-respiratory mortality rates in Hong Kong from 2001 to 2011. We used surveillance data on outpatient consultations for influenza-like illness, and laboratory detections of influenza types/subtypes to construct proxy measures of influenza activity. In the model we allowed the regression coefficients for influenza to drift over time, and adjusted for temperature and humidity. The regression coefficient for influenza A(H3N2) increased significantly in 2005. The regression coefficients for influenza A(H1N1) and B were relatively stable over the period. Our model suggested an increase in seriousness of A(H3N2) in 2005, the year after the appearance of the A/Fujian/411/2002(H3N2)-like virus when the drifted A/California/7/2004(H3N2)-like virus appeared. Ongoing monitoring of mortality and influenza activity could permit identification of future changes in seriousness of influenza virus infections.

Type
Original Papers
Copyright
Copyright © Cambridge University Press 2014 

INTRODUCTION

When a new strain of influenza virus emerges, one of the public health priorities is to assess the risk posed by the new strain which is commonly measured by the impact and seriousness of infection associated with the virus. The impact of infection is often quantified as the cumulative incidence of infection or excess disease burden. It is determined by the transmissibility of the new strain, the seriousness of individual infections, and the degree to which any control measures are effective. The seriousness of infection, i.e. measuring the potential of a virus to cause severe disease is measured in various ways, and one measure of seriousness is the infection fatality risk, which is defined as the probability of death among people infected by the virus [Reference Wong1]. In non-temperate regions, the recommended approach to estimate excess influenza mortality is via regression modelling [Reference Wu2, Reference Thompson3].

In the linear regression model for mortality rates, a proxy measure of incidence of infection is derived from surveillance data and therefore the regression coefficient for this proxy measure of influenza activity (i.e. the increase in the expected mortality rates per unit increase in influenza activity) is, in theory, directly proportional to the infection fatality risk [Reference Goldstein4]. In a previous study, we examined the average associations between influenza subtypes and age-specific excess mortality over a 10-year period [Reference Wu2]. In this study, we investigated drift over time in the regression coefficients for influenza activity to assess potential changes in the association between mortality rates and influenza activity.

METHODS

Sources of data

Cardio-respiratory deaths (ICD-10: I00-J99) and the annual mid-year populations from 2001 to 2011 were obtained from the Hong Kong Government Census and Statistics Department [5]. Surveillance data on influenza-like illness from around 50 sentinel general practitioners were available as the weekly proportion of outpatients reporting a fever ⩾37·8°C plus a cough or sore throat, along with local laboratory data on the weekly proportion of specimens from sentinel outpatient clinics and local hospitals that tested positive for influenza [6]. Data on temperature and humidity were obtained from the Hong Kong Observatory [7].

Statistical analysis

Time-series regression models were used to model influenza-associated excess deaths based on a proxy measure of local influenza activity [Reference Wong1, Reference Wu2, Reference Goldstein4]. Weekly type-/subtype-specific influenza activity was estimated by the product of the weekly proportion of outpatients reporting influenza-like illness and the weekly proportion of laboratory specimens that tested positive for a particular influenza type/subtype. We applied the regression model to the time series of weekly cardio-respiratory mortality rates from 2001 to 2011, excluding January–September 2003 which was affected by the severe acute respiratory syndrome (SARS) epidemic. In the regression model we included each measure of influenza type/subtype activity as a covariate, lagged by 1 week to allow for a delay between infection and death, and also adjusted for other covariates including respiratory syncytial virus activity, mean temperature and absolute humidity (see Supplementary material). As pandemic A(H1N1) virus replaced seasonal A(H1N1) virus after mid-2009, we combined seasonal A(H1N1) detections and pandemic A(H1N1) detections into a single A(H1N1) variable in the analysis. Trigonometric components were included to allow for cyclic annual seasonality of mortality rates.

In the model, we allowed two types of temporal changes in the regression coefficients for influenza type-/subtype-specific activity. First, the influenza type-/subtype-specific regression coefficients in the model were allowed to change slightly each week (i.e. drift) to reflect possible gradual changes in the association between cardio-respiratory mortality rates and influenza activity. Second, we considered the possibility of substantial and sudden changes in regression coefficients (i.e. jumps), and accordingly we pre-selected potential change points in influenza A that occurred before and after at least three influenza seasons in our study period, namely A(H3N2) in 2005 and 2007, and A(H1N1) in 2008, and used differences in the Akaike Information Criteria (AIC) as a measure of goodness-of-fit between models with different combinations of change points (Supplementary material). We did not include potential change points at the very beginning or very end of our study period due to the limited information at each boundary.

The influenza-associated excess mortality rates were calculated by subtracting the predicted mortality rate estimated from a fitted regression model setting influenza activity as zero from the predicted mortality rate from the same model based on the observed weekly influenza activity [Reference Wu2]. The influenza seasons were defined as time periods of at least two consecutive weeks when the proxy measure of influenza activity (including different types/subtypes) exceeded 0·005 [Reference Wu2]. The predominant strain in a given season was defined as any specific influenza type/subtype that comprised more than 30% of all laboratory detections of influenza in at least four consecutive weeks during an influenza season. Further details of the statistical methods are described in the Supplementary material. All analyses were conducted in R version 3.0.1 (R Foundation for Statistical Computing, Austria).

RESULTS

There were 14 influenza seasons in Hong Kong from 2001 to 2011 (excluding 2003) (Fig. 1 a). A single influenza season was observed in 6 of the 10 years, while two seasons were observed in the remaining 4 years. The first epidemic wave of the 2009 pandemic influenza A(H1N1) [A(H1N1)pdm09] virus peaked in September–October 2009 and perturbed the usual winter-plus-summer biannual seasonality of influenza locally, with no substantial winter season in 2010 and no summer season in 2011 (Fig. 1). Seasonal A(H3N2) virus predominated in 8/14 of the seasons. Seasonal A(H1N1) was displaced in Hong Kong as elsewhere by A(H1N1)pdm09 and in Hong Kong this occurred in mid-2009.

Fig. 1. Influenza activity and influenza-associated regression coefficients in Hong Kong, 2001–2011. (a) Weekly influenza activity for seasonal influenza A(H1N1) (yellow areas), A(H3N2) (dark blue areas), B (green areas), A(H1N1)pdm09 (red areas) and 14 influenza seasons (light blue areas). (b) Weekly regression coefficients (solid line) for influenza A(H1N1) with 95% confidence intervals (dashed lines). Purple area indicates the effect of an increase in laboratory capacity during A(H1N1)pdm09. (c) Weekly regression coefficients (solid line) for influenza A(H3N2) with 95% confidence intervals (dashed lines). (d) Weekly regression coefficients (solid line) for influenza B with 95% confidence intervals (dashed lines) (see Supplementary material for further details about the notation). sH1N1, Seasonal influenza A(H1N1); sH3N2, seasonal influenza A(H3N2); pH1N1, influenza A(H1N1)pdm09.

We fitted a range of models and examined changes in the regression coefficients for influenza A(H1N1), A(H3N2) and B viruses. We investigated three specific change points based on well-known antigenic changes in the circulating viruses [8] (B. Cowling, unpublished data, 2014), and found the model including a step change in coefficient for A(H3N2) in 2005 had the lowest AIC (Supplementary Table S2). This model was selected as our final model. We did not investigate the presence of step changes in the coefficient for A(H1N1) in 2009 or 2011 because these epidemics were too close to the end of the study period. In the final model, the regression coefficients for A(H1N1) remained fairly stable from 2001 to 2011, while there was a suggestion of an increase in the coefficient at the end of the period during the second epidemic wave of A(H1N1)pdm09 (Fig. 1 b). The estimated regression coefficients for A(H3N2) remained constant in 2001–2004, there was a substantial step increase at the beginning of 2005 and the coefficient remained fairly stable thereafter (Fig. 1 c). The A/Fujian/411/2002(H3N2)-like virus caused a major epidemic in Hong Kong in 2004, while the winter 2005 epidemic was dominated by the drifted A/California/7/2004(H3N2)-like virus. The regression coefficient for influenza virus B was relatively stable over time (Fig. 1 d).

In sensitivity analyses, we found very similar results when fitting the model to the elderly (⩾65 years) instead of overall cardio-respiratory death rates, and all-cause mortality rates instead of cardio-respiratory mortality rates (Supplementary material). However, we did not observe a step increase in the regression coefficient for H3N2 in 2005 when fitting the model to the data for adults aged < 65 years.

DISCUSSION

We fitted a linear regression model to infer the association between influenza activity and cardio-respiratory mortality rates, and allowed the values of the regression coefficients to drift over calendar time to reflect possible changes in the association between mortality rates and influenza activity indicating potential changes in seriousness. Assuming that the influenza activity proxy is a reasonable correlate of the incidence rates of infection in the community, and assuming that infection fatality risks remain fairly constant through the course of a single epidemic, changes in the regression coefficient could be because of a change in the seriousness of the virus, or because of changes in the prevalence of risk factors for mortality. An example of the latter would be reductions in the prevalence of Streptococcus pneumoniae carriage following increases in pneumococcal vaccine coverage [Reference Stegemann9]. Alternatively, changes in the apparent infection fatality risk at the population level could be artefacts of changes in the age distribution of infections, since the seriousness of influenza virus infections tends to increase with age [Reference Chowell10]. In addition, drift in the regression coefficient could occur in the absence of changes in the infection fatality risk, if for example the properties of the influenza activity metric changed due to changes in the surveillance system.

Apparent changes in the seriousness of influenza viruses from this type of analysis must therefore be interpreted with caution. Nevertheless, there are a number of reports of the increased impact of the A/Fujian/411/2002(H3N2)-like viruses that emerged globally in 2003–2004 [Reference Galiano11], and its antigenic variant A/California/7/2004(H3N2)-like virus was responsible for a large epidemic in Hong Kong in 2005 (Fig. 1) [Reference Chiu12]. Our results are consistent with an increased impact of this virus compared to the preceding A(H3N2) viruses including the A/Fujian/411/2002 virus, perhaps because of increased seriousness of infections, or alternatively because of an age shift in infections leading to an artefactual increase in overall severity. It is less likely that this increase could be explained by pneumococcal vaccine because coverage was around 40% in children in 2005–2009 and only increased to higher levels after the vaccine was included in the Childhood Immunization Programme in 2009. Similarly, the vaccine coverage in the elderly was low before 2009 [Reference Ho13]. A separate study of hospitalizations in children identified similarly high rates associated with A/Fujian/411/2002(H3N2)-like viruses and A/California/7/2004(H3N2)-like viruses in 2004 and 2005, respectively [Reference Chiu12]. In contrast, Goldstein et al. reported a decline in the regression coefficient for H3N2 after 2003, which could be due to the lower impact of influenza on mortality after the introduction of pneumococcal vaccine in the USA [Reference Goldstein4, Reference Simonsen14].

Regarding artefactual changes in the regression coefficient, the A(H1N1)pdm09 virus was associated with a much higher cumulative incidence of infection in children than seasonal viruses, and consequently a lower overall infection fatality risk [Reference Wong1, Reference Cowling15, Reference Cowling16]. The second epidemic wave of A(H1N1)pdm09 in early 2011 had a similar or higher cumulative incidence of infection in adults and therefore an apparent increase in the regression coefficient (Fig. 1 b) may be an artefact of an age shift in the second epidemic wave rather than a change in seriousness of infection per se. It remains unclear whether the pandemic virus had different age-specific infection fatality risk than preceding seasonal A(H1N1) viruses [Reference Wong1].

There are some limitations to our work. First, given that there was insufficient length of time series for patterns to emerge near the boundaries of our study period, the changes in regression coefficient of A(H1N1) in 2006 and 2009, and A(H3N2) in 2004 were excluded in the present analysis. Second, potential changes in seriousness of influenza viruses are not the only factors associated with change in regression coefficients, and as explained above caution must exercised when interpreting the results of ecological analyses. Age-specific surveillance data were not available on patterns in influenza-like illnesses or laboratory detections and therefore we were unable to use an age-specific proxy. We therefore used the all-age proxy to represent the incidence of influenza A(H1N1) virus infection for different age groups during 2009 since we showed that age-specific temporal distributions of incidence were similar in each age group [Reference Wong1]. Using an AIC difference of 2 as a model selection criterion, all three models have included a change point in 2005 (Supplementary material) although we could not exclude the possibility that there was no significant change in the regression coefficient in 2005. Meanwhile, the higher R 2 statistics estimated from models with a change point in 2005 compared to the others (Supplementary material) implied changed seriousness of A(H3N2) in Hong Kong before and after 2005. Given the relatively small differences detected between different models, it may be easier to identify changes in seriousness in larger populations in which greater numbers of deaths occur. Nevertheless, our approach provides a framework for retrospective analysis of potential changes in seriousness of influenza virus infections, and further work could examine the extension of this approach to real-time prospective assessment of seriousness.

SUPPLEMENTARY MATERIAL

For supplementary material accompanying this paper visit http://dx.doi.org/10.1017/S0950268814001472.

ACKNOWLEDGEMENTS

We thank Vicky Fang for technical support. We thank the staff of the Surveillance and Epidemiology Branch and Virology Division, Public Health Laboratory Services Branch of the Centre for Health Protection of Hong Kong Department of Health for research support. This project was supported by the Harvard Center for Communicable Disease Dynamics from the National Institute of General Medical Sciences (grant no. U54 GM088558), and the Area of Excellence Scheme of the University Grants Committee of Hong Kong (grant no. AoE/M-12/06). The funding bodies had no role in study design, data collection and analysis, preparation of the manuscript, or the decision to publish.

DECLARATION OF INTEREST

D.K.M.I. has received research funding from Hoffmann-La Roche. B.J.C. has received research funding from MedImmune Inc. and Sanofi Pasteur, and consults for Crucell NV.

References

REFERENCES

1. Wong, JY, et al. Infection fatality risk of the pandemic A(H1N1) 2009 virus in Hong Kong. American Journal of Epidemiology 2013; 177: 834840.Google Scholar
2. Wu, P, et al. Excess mortality associated with influenza A and B virus in Hong Kong, 1998–2009. Journal of Infectious Diseases 2012; 206: 18621871.Google Scholar
3. Thompson, WW, et al. Mortality associated with influenza and respiratory syncytial virus in the United States. Journal of the American Medical Association 2003; 289: 179186.Google Scholar
4. Goldstein, E, et al. Improving the estimation of influenza-related mortality over a seasonal baseline. Epidemiology 2012; 23: 829838.Google Scholar
5. Census and Statistics Department. Population and vital events. Hong Kong Special Administrative Region, China: Census and Statistics Department (http://www.censtatd.gov.hk/hkstat/sub/gender/demographic/index.jsp). Accessed 20 February 2013.Google Scholar
6. Centre for Health Protection. Sentinel surveillance. Hong Kong Special Administrative Region, China: Centre for Health Protection (http://www.chp.gov.hk/en/dns_submenu/10/26/44.html). Accessed 20 February 2013.Google Scholar
7. Hong Kong Observatory. Climatological information services. Hong Kong Special Administrative Region, China: Hong Kong Observatory. (http://www.hko.gov.hk/wxinfo/pastwx/extract.htm). Accessed 20 February 2013.Google Scholar
8. World Health Organization. WHO recommendations on the composition of influenza virus vaccines. Geneva, Switerland: World Health Organization (http://www.chp.gov.hk/en/vital/10/27.html). Accessed 18 January 2014.Google Scholar
9. Stegemann, S, et al. Increased susceptibility for superinfection with Streptococcus pneumoniae during influenza virus infection is not caused by TLR7-mediated lymphopenia. PLoS One 2009; 4: e4840.CrossRefGoogle Scholar
10. Chowell, G, et al. Recrudescent wave of pandemic A/H1N1 influenza in Mexico, winter 2011–2012: age shift and severity. PLoS Current 2012; 4: RRN1306.Google Scholar
11. Galiano, M, et al. Fatal cases of influenza A(H3N2) in children: insights from whole genome sequence analysis. PLoS One 2012; 7: e33166.Google Scholar
12. Chiu, SS, et al. Virologically confirmed population-based burden of hospitalization caused by influenza A and B among children in Hong Kong. Clinical Infectious Diseases 2009; 49: 10161021.Google Scholar
13. Ho, PL, et al. Serotypes and antimicrobial susceptibilities of invasive Streptococcus pneumoniae before and after introduction of 7-valent pneumococcal conjugate vaccine, Hong Kong, 1995–2009. Vaccine 2011; 29: 32703275.Google Scholar
14. Simonsen, L, et al. Impact of pneumococcal conjugate vaccination of infants on pneumonia and influenza hospitalization and mortality in all age groups in the United States. American Society for Microbiology 2011; 2: e00309–00310.Google Scholar
15. Cowling, BJ, et al. Protective efficacy of seasonal influenza vaccination against seasonal and pandemic influenza virus infection during 2009 in Hong Kong. Clinical Infectious Diseases 2010; 51: 13701379.Google Scholar
16. Cowling, BJ, et al. Protective efficacy against pandemic influenza of seasonal influenza vaccination in children in Hong Kong: a randomized controlled trial. Clinical Infectious Diseases 2012; 55: 695702.Google Scholar
Figure 0

Fig. 1. Influenza activity and influenza-associated regression coefficients in Hong Kong, 2001–2011. (a) Weekly influenza activity for seasonal influenza A(H1N1) (yellow areas), A(H3N2) (dark blue areas), B (green areas), A(H1N1)pdm09 (red areas) and 14 influenza seasons (light blue areas). (b) Weekly regression coefficients (solid line) for influenza A(H1N1) with 95% confidence intervals (dashed lines). Purple area indicates the effect of an increase in laboratory capacity during A(H1N1)pdm09. (c) Weekly regression coefficients (solid line) for influenza A(H3N2) with 95% confidence intervals (dashed lines). (d) Weekly regression coefficients (solid line) for influenza B with 95% confidence intervals (dashed lines) (see Supplementary material for further details about the notation). sH1N1, Seasonal influenza A(H1N1); sH3N2, seasonal influenza A(H3N2); pH1N1, influenza A(H1N1)pdm09.

Supplementary material: Image

Wong Supplementary Material

Figure S1

Download Wong Supplementary Material(Image)
Image 1.7 MB
Supplementary material: Image

Wong Supplementary Material

Figure S2

Download Wong Supplementary Material(Image)
Image 1.7 MB
Supplementary material: Image

Wong Supplementary Material

Figure S3

Download Wong Supplementary Material(Image)
Image 2.9 MB
Supplementary material: Image

Wong Supplementary Material

Figure S4

Download Wong Supplementary Material(Image)
Image 2.9 MB
Supplementary material: Image

Wong Supplementary Material

Figure S5

Download Wong Supplementary Material(Image)
Image 2.8 MB
Supplementary material: Image

Wong Supplementary Material

Figure S6

Download Wong Supplementary Material(Image)
Image 2.8 MB
Supplementary material: Image

Wong Supplementary Material

Figure S7

Download Wong Supplementary Material(Image)
Image 2.8 MB
Supplementary material: File

Wong Supplementary Material

Supplementary Material

Download Wong Supplementary Material(File)
File 961 KB