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"The machine doesn't judge": Counternarratives on surveillance among people accessing a safer opioid supply via biometric machines.

Authors :
Bardwell, Geoff
Ivsins, Andrew
Wallace, James R.
Mansoor, Manal
Kerr, Thomas
Source :
Social Science & Medicine. Mar2024, Vol. 345, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

People who use illegal drugs experience routine surveillance, including in healthcare and harm reduction settings. The MySafe Project - a safer supply pilot project that dispenses prescription opioids via a biometric vending machine - exists in the Canadian province of British Columbia. The machine scans a participant's palmprint and has a built-in camera that records every machine interaction. The aim of this paper is to understand participants' experiences of surveillance, privacy, and personal security when accessing this novel program. An integrative case study and grounded theory methodology was employed. Qualitative one-to-one interviews were conducted with 46 MySafe participants across three different program sites in Vancouver. We used a team-based approach to code interview transcripts and utilized directed and conventional content analyses for deductive and inductive analyses. While participants described negative experiences of surveillance in other public and harm reduction settings, they did not have concerns regarding cameras, collection of personal information, tracking, nor staff issues associated with MySafe. Similarly, while some participants had privacy concerns in other settings, very few privacy and confidentiality concerns were expressed regarding accessing the machine in front of others. Lastly, while some participants reported being targeted by others when accessing the machines, most participants described how cameras, staff, and machine locations helped ensure a sense of safety. Despite negative experiences of surveillance and privacy issues elsewhere, participants largely lacked concern regarding the MySafe program and machines. The machine-human interaction was characterized as different than some human-human interactions as the machine is completing tasks in a manner that is acceptable and comfortable to participants, leading to a social preference toward the machines in comparison to other surveilled means of accessing medications. These findings provide an opportunity to rethink how we conceptualize surveillance, medication access, and harm reduction programs targeting people who use drugs. • Studies demonstrate the negative effects of surveillance on people who use drugs in many healthcare settings. • Acquiring prescription opioids daily from a clinician is known to be stigmatizing. • Providing prescription opioids via biometric machines elicits a positive response despite surveillance mechanisms. • Counternarratives challenge assumptions about surveillance of people who use drugs. • Interacting with machines rather than humans may lead to more positive outcomes. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
02779536
Volume :
345
Database :
Academic Search Index
Journal :
Social Science & Medicine
Publication Type :
Academic Journal
Accession number :
175983562
Full Text :
https://doi.org/10.1016/j.socscimed.2024.116683