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Ontario

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Title: Ontario


1
Ontarios Experience with a Universal Influenza
Immunization Program (UIIP)
  • Doug Manuel, MD MSc FRCPC
  • Scientist
  • Jeff Kwong, MD MSc CCFP
  • Research Fellow
  • October 25, 2005

2
Outline
  • Background
  • Effect of UIIP on vaccination rates
  • Effect of UIIP on hospitalizations
  • Discussion conclusions

3
A brief geography lesson
4
Population by province/territory as of July 1,
2004
30K
40K
30K
0.5M
7M
3M
12M
1M
0.1M
4M
1M
1M
0.7M
5
Influenza vaccination in Canada
  • All health care services are publicly funded and
    delivered, but programs vary by province
  • Ontario, pre-2000
  • 1988 Targeted program initiated to provide
    influenza vaccination free for those at high risk
    of complications from influenza (elderly 65,
    those with chronic medical conditions)
  • 1993 Program expanded to cover patient-care
    staff of long term care facilities (LTCF)
  • 1999 Program expanded to cover ALL health care
    workers

6
Ontario launches UIIP in 2000
  • First large-scale program to provide free
    influenza vaccination to entire population aged 6
    months or older
  • Stated goals to decrease influenza-related
    morbidity and mortality, and to decrease ER
    overcrowding
  • All other provinces chose to maintain their
    targeted vaccination programs

7
Some details about the UIIP
  • Vaccines (trivalent inactivated vaccine)
    purchased centrally by Ministry of Health and
    Long-Term Care from 2 manufacturers
    Sanofi-Pasteur and Shire Biologics
  • Vaccines delivered at MD offices, LTC facilities,
    hospitals, public health units, workplace
    clinics, pharmacies, schools, community centers,
    shopping malls, etc.

8
Locations where people were vaccinated in
Ontario, 2000-01
9
More details about the UIIP
  • Extensive communications campaign by provincial
    government and local public health units to
    promote UIIP, including TV/radio/print
    advertising, newsletters, mailings, billboards,
    web sites, etc.
  • Response has been generally favorable by the
    public and those involved in delivery of vaccines

10
Estimated costs of the UIIP
  • Total program cost 42M CDN (2003-04)
  • Vaccine purchase (54)
  • Vaccine delivery administration (34)
  • Communications (12)
  • 1CDN 0.85US as of Oct 17, 2005

11
Effect of Ontarios UIIP on vaccination rates
12
Research Questions
  • Did introduction of Ontarios UIIP in 2000 lead
    to an increase in vaccination rates, compared to
    the 9 provinces that maintained targeted
    immunization programs?
  • If so, which population subgroups benefited the
    most?

13
Data sources
  • National Population Health Survey (NPHS)
  • Canadian Community Health Survey (CCHS)
  • Both conducted by Statistics Canada
  • Cover the household population
  • Exclude members of the Canadian Forces, native
    reserves, and some remote areas, those living in
    institutions (e.g., nursing homes, prisons)

14
Population health surveys
NPHS 1996/97 CCHS 1.1 2000/01 CCHS 2.1 2003
Data collection Jun 1996 to Aug 1997 Jun to Aug 2001 (Q4) Jan to Dec 2003
Response rate 83 85 81
Sample 73,402 35,187 133,026
Weighted population 24.6 million 25.9 million 26.5 million
15
Unpublished results to be presented
16
Summary of findings
  • Influenza vaccination rates increased across
    Canada between 1996 2003
  • Introduction of UIIP in Ontario associated with a
    significant increase in coverage rate of overall
    population aged 12 years compared to other
    provinces, with the increase accounted for by
    those aged 12-64 years

17
Median coverage rates in LTC facility residents
staff, hospital staff
  • Since 1999, coverage rates as of Nov 15 provided
    annually by facilities to public health officials

1999-00 2000-01 2001-02 2002-03 2003-04
Residents 93 95 96 95 95
LTC Staff 86 90 86 82 84
Hosp Staff N/A 63 51 44 55
Includes those vaccinated in Dec and Jan
18
Effect of Ontarios UIIP on hospitalizations
19
Research Questions
  • Did introduction of Ontarios UIIP in 2000 lead
    to a reduction in influenza-related
    hospitalizations, compared to the 9 provinces
    that maintained targeted immunization programs?
  • If so, which population subgroups benefited the
    most?

20
Methods
  • Study design Interrupted time series with
    concurrent controls
  • Study population and setting All residents of
    10 Canadian provinces, September 1993 to March
    2004

21
Hospitalization data
  • Obtained from Hospital Morbidity Database
  • Included admissions with the following conditions
    listed as 1 of the first 5 diagnoses

Diagnoses (Dx) ICD-9 Codes ICD-10 Codes
Pneumonia Influenza (PI) 480-487 J10-18
Acute Respiratory Diseases (ARD) 460-466 J00-06, J20-22
Chronic Obstructive Pulmonary Disease (COPD) 490-492, 496 J40-44
22
Definition of influenza season
  • From October to May, starting when each week
    accounted for 5 of the seasons total number
    of influenza virus isolates for 2 weeks and
    ending when the influenza isolates accounted for
    lt 5 for 2 weeks

Adapted from Izurieta HS, et al. NEJM 2000
342(4)232-9
23
Viral surveillance data
  • Respiratory virus detections
  • Weekly percentage of tests positive for influenza
    A, influenza B, RSV
  • Predominant influenza subtypes
  • Subtype considered predominant if detections
    accounted for 20 of the seasons isolates
  • Vaccine antigenic match
  • Compared mismatch between circulating strains and
    vaccine strains
  • Good match lt 20 circulating strains mismatched
  • Fair match 20-50 circulating strains mismatched
  • Poor match gt 50 circulating strains mismatched

24
Statistical analysis
  • Poisson regression models
  • Run separately for each condition and province,
    for 7 age groups 0-4, 5-19, 20-49, 50-64, 65-74,
    75-84, 85
  • Accounted for numerous covariates
  • Used generalized estimating equations to control
    for autocorrelation AR(1)

Adapted from Thompson, et al. JAMA 2004
292(11)1333-40
25
Poisson regression model
  • Y a exp (ß0 ß1UIIP_flu ß2sexagegrp
  • ß3FluA ß4FluB ß5RSV
  • ß6A(H1N1) ß7A(H3N2) ß8B
  • ß9match ß10ICD-10
  • ß11t ß12t2 ß13t3
  • ß14-16sin(2tkp/52) ß17-19cos(2tkp/52)
  • where k1, 2, 3 e)

26
Poisson model terms
  • Y weekly number of condition-specific
    hospitalizations for a given province-, sex-, and
    age group-stratum
  • a log of province-, sex- and age group-specific
    annual population size
  • UIIP_flu RR of hospitalizations during
    influenza seasons after 2000 vs. before
  • sexagegrp sex age group interaction
  • FluA/FluB/RSV weekly of regional tests
    positive for influenza A/B, RSV
  • A(H1N1)/A(H3N2)/B predominant influenza
    subtype(s) for a season 1/0
  • match vaccine antigenic match G/F/P
  • ICD-10 introduction of ICD-10
  • t, t2, t3 time trend terms tweek number
    divided by 52
  • sin/cos seasonal trend terms

27
Statistical analysis contd
  • Compared RR estimates of change in influenza
    season-associated hospitalizations over time for
    Ontario with pooled estimates for other provinces
    combined
  • Pooled RR estimates for separate age groups to
    estimate effect on overall pop.
  • Pooled RR estimates for separate conditions to
    estimate combined effect on the 3
    influenza-related conditions

28
Unpublished results to be presented
29
Discussion Conclusions
30
Limitations
  • Data quality concerns with health administrative
    data (coding validity/reliability)
  • No vaccine coverage data on children lt 12 years
    or institutionalized elderly (outside ON)
  • Provincial-level analysis may have blurred
    regional variations in timing and severity of
    influenza epidemics and hospitalization rates
  • Ecological study design susceptible to
    ecological fallacy
  • Unmeasured confounders

31
Lessons learned
  • Implementation of a universal influenza
    vaccination program is feasible
  • Clear increases in vaccination rates observed in
    younger age groups, and increases generally
    sustained
  • Modest reductions in influenza-related
    hospitalizations observed in groups with larger
    increases in coverage rates
  • Suggests direct benefit of influenza vaccination
  • Uncertain about indirect benefits (herd immunity)

32
Critical information gaps
  • Suboptimal data on individual-level vaccination
    status (no immunization registry)
  • Effect of UIIP on other outcomes (outpatient MD
    visits, ER services, mortality) to be examined by
    early 2006
  • Effect of UIIP on school and workplace
    absenteeism should also be assessed
  • No data on vaccination rates in those lt 12 yrs
  • Economic evaluation based on empirical outcome
    data needed

33
Future studies
  • Examine other outcomes
  • Repeat time series analyses with additional data
    (i.e., more influenza seasons)
  • Cross-sectional study to examine the relationship
    between regional variations in vaccination rates
    and outcome rates in post-UIIP Ontario (to look
    for a dose-response relationship)

34
Acknowledgements
  • ICES
  • Therese Stukel, Jenny Lim, Laura Fazio
  • Statistics Canada
  • Helen Johansen, Christie Sambell
  • Public Health Agency of Canada
  • Peter Zabchuk
  • CDC
  • Bill Thompson, David Shay
  • Others
  • Ross Upshur, Allison McGeer, Susan Tamblyn, Irfan
    Dhalla

35
Financial support
  • This research was supported by a grant from the
    Public Health Agency of Canada
  • Doug Manuel is supported by a Career Scientist
    award from Ontarios Ministry of Health and
    Long-Term Care
  • Jeff Kwong is supported by a CIHR Fellowship
    award from the Canadian Institutes of Health
    Research

36
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