The opioid epidemic was declared a national public health emergency in 2017. In Georgia, standing orders for the opioid antagonist, naloxone, have been implemented to reduce mortality from opioid overdoses. Service industry workers in the Atlanta, Georgia, inner-city community of Little Five Points (L5P) have access to naloxone, potentially expanding overdose rescue efforts in the community setting. To explore the issues facing L5P, our research brings together qualitative descriptive inquiry, ethnography, community-based research, a community advisory board, and a local artist to maximize community dissemination of research findings through a graphic novel that describes encountering an opioid overdose. This format was chosen due to the ethical responsibility to disseminate in participants' language and for its potential to empower and educate readers. This article describes the process of working on this study with the community and a local artist to create sample pages that will be tested for clarity of the message in a later phase. Working with an artist has revealed that while dissemination and implementation for collaboration begin before findings are ready, cross-collaboration with the artist requires early engagement, substantial funding, artist education in appropriate content, and member checking to establish community acceptability altering illustrations that reinforce negative stereotypes. By sharing the experiences of actions taken during an opioid overdose in L5P through a graphic novel, we can validate service industry workers' experiences, acknowledge their efforts to contribute to harm reduction, and provide much-needed closure to those who encounter opioid overdoses in the community.

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http://dx.doi.org/10.1177/1524839921996405DOI Listing

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