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Understanding the Report on HIV/AIDS in Ontario. Greta Bauer, PhD, MPH Epidemiology & Biostatistics The University of Western Ontario. John Maxwell Director of Policy and Communications AIDS Committee of Toronto. Report on HIV/AIDS in Ontario. Annual report produced since 1998
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Understanding the Report on HIV/AIDS in Ontario Greta Bauer, PhD, MPH Epidemiology & Biostatistics The University of Western Ontario John Maxwell Director of Policy and Communications AIDS Committee of Toronto
Report on HIV/AIDS in Ontario • Annual report produced since 1998 • Funded by the AIDS Bureau • Produced by the Ontario HIV Epidemiologic Monitoring Unit at the University of Toronto • Authors (2008): Robert Remis, Carol Swantee, Lorraine Schiedel, Juan Liu • Tracks the HIV epidemic in Ontario • Available at: www.phs.utoronto.ca/ohemu
HIV/AIDS Epidemiology • Not perfect • Not meaningless
What is needed to have perfect versions of current statistics? • Know HIV status of everyone • Identify new infections when acquired • Be able to determine exactly how each transmission occurred • Have accurate AIDS diagnoses for everyone • Know perfectly whether HIV/AIDS was a cause for each death • Know exact population sizes for exposure categories (e.g. MSM, IDU, people from endemic countries, high-risk heterosexual…)
Understanding Exposure Categories • Exposure categories (vs. transmissions) • Men who have sex with men (MSM) • MSM-IDU • Injection drug use (IDU) • Mother-to-child transmission (MTC) • Blood product recipient (pre Nov 1985) • Transfusion recipient (pre Nov 1985) • Origin/residence in HIV endemic countries • High-risk heterosexual • Low-risk heterosexual • No identified risk (NIR)
Some assumptions… Continued…
Proportion of New HIV Diagnoses, Including Unknown Exposure Group
Raw vs. Modelled Statistics • Modelling • Adjust for duplicate HIV tests • Estimate proportion undiagnosed • Assume those with unknown exposure group distributed in accordance with known exposure groups • Estimate distribution by sex and geographic area • Adjust for different rates of testing • Estimate HIV infection numbers • Estimate AIDS cases, adjusting for reporting delays • Adjust estimates of HIV-related mortality for under ascertainment • Estimate population sizes
Some Statistics in the Report • HIV Diagnoses (case counts) • Proportion of HIV Diagnoses by Exposure Category • HIV Prevalence • HIV Cumulative Incidence • HIV Incidence / Incidence Density • AIDS Diagnoses (case counts) • Proportions of AIDS Cases by Exposure Category • AIDS Cumulative Incidence • HIV-related Mortality
PREVALENCE vs INCIDENCE • Prevalence – How common is it for people to be living with HIV? • Incidence – At what rate do new infections occur amongst those at risk?
HIV PREVALENCE # People Living with HIV = x 100 # in Population presented as a percentage
Modelled MSM number and HIV prevalence by health region, Ontario, 2006 R. Remis, 2008
What influences changes in HIV prevalence statistics over time? • Changes in number of new cases of HIV • Changes in duration of illness • Longer survival = higher prevalence of HIV • Changes in HIV testing • Overall changes in rates of testing • Different rates of testing between groups (adjusted statistically) • Policies (immigration testing, prenatal testing) • Improvements in HIV testing • Changes in estimates of (sub)population size
What influences changes in proportion of prevalent cases over time? • Changes in prevalence for the group you’re interested in • Changes in prevalence for all other groups
PREVALENCE vs INCIDENCE • Prevalence – How common is it for people to be living with HIV? • Incidence – At what rate do new infections occur amongst those at risk?
HIV CUMULATIVE INCIDENCE # cumulative HIV diagnoses = 1996 population (midpoint)
HIV INCIDENCE DENSITY # new HIV diagnoses = x 100 Person-years at risk presented per 100 person-years
Example: 1 per 50 person-years
Modelled MSM number, HIV prevalence andincidence by health region, Ontario, 2006 R. Remis, 2008
What influences changes in HIV incidence statistics over time? • Changes in number of new cases of HIV • Changes in estimates of prevalence • Changes in HIV testing • Overall changes in rates • Different rates of testing between groups (adjusted statistically) • Policies (immigration testing, prenatal testing) • Improvements in HIV testing • Changes in estimates of (sub)population size
AIDS Diagnoses and Cumulative Incidence • HIV vs. AIDS
What influences changes in AIDS statistics over time? • Changes in treatment and duration of illness • Healthier survival = lower prevalence of AIDS • Different rates of AIDS diagnosis between groups • Changes in definition of AIDS • Changes in estimates of (sub)population size
HIV-RELATED MORTALITY # HIV-related deaths = x 100,000 Population presented per 100,000 population
What influences changes in HIV-related mortality statistics over time? • Changes in incidence of HIV • Changes in treatment and duration of illness • Healthier survival = lower mortality • Changes in HIV testing – number of people who are known to have HIV • Overall changes in rates • Different rates of testing between groups • Policies (immigration testing, prenatal testing) • Changes in ICD codes
Major changes to be aware of • 1985 – Testing of the blood supply • 1993 – Change in AIDS definition • Increased classification of women with AIDS • 1996 – Introduction of protease inhibitors • Decreased AIDS cases, increased survival (and prevalence) • 2000 – Change in ICD definitions from ICD-9 to ICD-10 • 10% increase in HIV-related deaths • 2002 – Required testing of all immigrants • Ontario tests for visa purposes: 1294 in 2001, 28,712 in 2006 • 54% increase in testing for the HIV-endemic exposure classification • Prenatal HIV testing • 41% in 1999, 89% in 2006 • 62% increase in testing and 41% increase in new diagnoses in the low-risk heterosexual exposure classification from 2001 to 2006
Thank you! Contact: gbauer@uwo.ca