Characteristics of attrition within the SuperMIX cohort of people who inject drugs: A multiple event discrete-time survival analysis

Author:

Abdelsalam Shady1,Agius Paul A2,Sacks-Davis Rachel2,Roxburgh Amanda2,Livingston Michael1,Maher Lisa2,Hickman Matthew2,Dietze Paul1

Affiliation:

1. Curtin University

2. Burnet Institute

Abstract

Abstract Background Compared to the general population, people who inject drugs have poor health and wellbeing. Longitudinal studies can provide insight into factors driving these worse health outcomes but are subject to methodological challenges, such as cohort attrition. The aim of this study was to assess and characterise attrition in a prospective cohort of people who inject drugs in Victoria, Australia. Methods Using annually collected self-reported data from The Melbourne Injecting Drug User Cohort Study (SuperMIX) from September 2008 to January 2021, we estimated the incidence of participants being lost-to-follow-up (LTFU), with an episode of being LTFU defined as participants not undertaking a follow-up interview within two years of their last interview. We utilised a multiple event discrete-time survival analysis on participant period-observation data to estimate the associations between key factors and LTFU. Key areas of exposure measurement in analyses were sociodemographic, drug use and mental health. Results A total of n=1328 SuperMIX participants completed a baseline interview, with n=489 (36.8%) LTFU, i.e. not completing a follow up interview in the following two years. Increased attrition was observed among SuperMIX participants who were: born outside Australia, younger than 30 years, reporting having completed fewer years of education, not residing in stable accommodation, not in stable employment and not on opioid agonist therapy (OAT). Conclusions The attrition rate of the SuperMIX cohort has largely been stable throughout the duration of the study. Higher attrition rates among individuals at greater sociodemographic disadvantage and not on OAT suggest that additional efforts are required to retain these participants. Findings also suggest that SuperMIX might not be capturing data on adverse health and wellbeing outcomes among individuals at greatest risk of harm.

Publisher

Research Square Platform LLC

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