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Estimation of the Prevalence of Problem Drug Use in Lithuania Dr Gordon Hay Centre for Drug Misuse Research University of Glasgow, United Kingdom
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Introduction Background Definition Methods to Estimate Prevalence –Mortality Multiplier –Capture-recapture Methods –truncated Poisson method Prevalence Estimates –Vilnius, Klaipeda & Lithuania Discussion
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Background UNODC project –Project “HIV/AIDS prevention and care among injecting drug users and in prison settings in Estonia, Latvia and Lithuania” Objectives –To obtain estimates of Problem Drug Use (PDU) and Injecting Drug Use (IDU) prevalence 5 days fieldwork (September 2007) Workshop on prevalence estimation
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My experience United Kingdom Government –Estimating the prevalence of problem drug use Dundee (1994) Lanarkshire (2007), Aberdeen (1998) Scotland (2000, 2003, 2006) England (2004, 2005, 2006) Northern Ireland (2005) –Other studies Cohort study of drug users in treatment Children / young people
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My Experience European Monitoring Centre for Drugs and Drug Addiction (EMCDDA) –All member states required to provide information on the prevalence of problem drug use Seven Cities Study (1997) –Dublin, Helsinki, Rome, Rotterdam, Setubal Toulouse & Vienna Methodological Studies UK Scientific Expert (problem drug use)
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My Experience Synergy project –USAID / Family Health International projects –Prevalence estimation in Estonia, Latvia and Lithuania Fieldwork in Klaipeda, Riga, Tallinn & Vilnius –Prevalence estimate for Riga –Recommendations –Involved in prevalence estimation study in Tallinn
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Definitions EMCDDA defines problem drug use as: –injecting drug use or long-duration / regular use of opiates, cocaine and / or amphetamines In this study / estimation we define problem drug use as: –Opiate use (mostly opiate injecting) –We do not include stimulant or marijuana use
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Methods to Estimate Prevalence Indirect methods –Mortality Multiplier Method –Capture-recapture Method –truncated Poisson Method –Multiple Indicator Method Estimate the size of hidden populations
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General Idea There are some problem drug users that are ‘visible’ or ‘identifiable’ or ‘known’ –Treatment –Police –Mortality A proportion of problem drug users are visible –In United Kingdom about 40 – 50% in treatment Data on visible population can be used to estimate the size of the total population
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Mortality Multiplier Uses the: –Number of drug-related deaths –Mortality rate Both need to refer to the same population, such as opiate users
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Drug related death data Source: Health Statistics Quarterly 1,506 deaths in 2005
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Mortality Multiplier 1,506 drug-related deaths in 2005 What is the mortality rate? –Anecdotal evidence = 1% per year Therefore 150,600 problem drug users
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Mortality Multiplier Average 40 drug-related deaths in Lithuania –Source: Lithuanian Focal Point Report to the EMCDDA Mortality rate = 1.7% –Source: Most up-to-date study of drug-related mortality in European Union (data for Denmark) 2,350 injecting drug users in Lithuania 2,940 problem drug users in Lithuania
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Capture-recapture method Simple idea: –Only a certain proportion of drug users are in contact with treatment agencies Examine the overlap between those in treatment and a second sample (e.g. Police) Find the proportion in treatment Thus estimate the total number of drug users
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Two sample capture-recapture method
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Capture-recapture Methods With two sources we need to assume that the sources are not related to each other With three sources we can include relationships between data sources Different statistical models are fitted to the data We select the ‘best’ model and estimate
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Data sources (Vilnius) Three distinct sources from the Vilnius Centre for Addictive Disorders –Detoxification with Subutex (n = 207) –Outpatient Treatment (n = 306) –Police sample (n = 166) 6 month period within 2006 Opiate users (mostly injectors) Does not include methadone substitution
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Three-source overlap (Vilnius) In total there were 588 ‘visible’ individuals 457 were in Detox or Outpatient Treatment
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Results (Vilnius) 2,167 problem drug users –95% Confidence Interval = 1,663 – 2,934 –Assumes that detox and outpatient sources are related (but Police data independent) –‘best’ model and estimate
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truncated Poisson method Uses a single data source –Number of visits at a syringe exchange Number attended once Number attended twice Total number who had attended –Estimates number who have attended zero times Assumptions –Attendances are not related to each other –You can identify people who attend more than once
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truncated Poisson Analysis
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truncated Poisson analysis (Vilnius) Data for 2006 complete year Vilnius Centre for Addictive Disorders –Computerised data –1,444 people who had used the syringe exchange provision at any time during 2006 Estimated 1,622 drug injectors in 2006
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truncated Poisson analysis (Vilnius) Data for individual months Between 250 and 550 individuals attended in any one month period –More in summer Average number of ‘active’ drug injectors each month = 600
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truncated Poisson analysis (Klaipeda) Data from hand written log book (registers) –Good data –My understanding of Lithuanian alphabet is bad! Could only do a monthly analysis Between 100 and 185 individual attended in any one month period Average number of ‘active’ drug injectors each month = 280 Total number of injectors in Klaipeda = 750
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truncated Poisson analysis (Summary) Vilnius –600 ‘active’ injectors per month –1,663 injectors in 2006 Klaipeda –280 ‘active’ injectors per month –750 injectors in 2006 Both estimates should be treated with caution –Useful for comparing Vilnius and Klaipeda –Does not contradict capture-recapture analysis
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National Estimates Use published statistics to extrapolate –Ministry of Interior Drug offences –Lithuanian Focal Point to the EMCDDA Number of new demands for treatment –Vilnius Municipality has 50% of national total in both datasets Half of Lithuania’s problem drug users live in Vilnius Municipality
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National Estimates 4,300 problem drug users in Lithuania –2006 estimate –Problem opiate use 3,200 drug injectors –truncated Poisson analysis –75% injecting
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Summary These are provisional estimates The capture-recapture analysis for Vilnius is as good (if not better) than studies elsewhere in Europe The truncated Poisson estimates (for Vilnius and Klaipeda) should be used with caution –But should be reliable for comparing prevalence rates between the two cities
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Discussion National Treatment Register –Over 5,000 for Lithuania –2,600 for Vilnius WHO estimates –7,000 – 11,000 problem drug users (Lithuania) Case definition –Opiate use, problem opiate use
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