Integrating social media inspired features into a personalized normative feedback intervention combats social media-based alcohol influence.

2021 
Abstract Backround Research suggests that the social media platforms popular on college campuses may reflect, reinforce, and even exacerbate heavy drinking practices among students. The present study was designed to directly examine: (1) whether exposure to alcohol-related content on social media diminishes the efficacy of a traditional web-based personalized normative feedback (PNF) alcohol intervention among first-year drinkers; and (2) if social media inspired features and digital game mechanics can be integrated into a PNF intervention to combat social media-based alcohol influence and increase efficacy. Method Alcohol experienced first-year college students (N = 223) completed a pre-survey that assessed exposure to alcohol-related content and social media and were randomized to 1 of 3 web-based alcohol PNF conditions (traditional, gamified only, or social media inspired gamified). One month later, participants’ alcohol consumption was reassessed. Results Among participants who received traditional PNF, social media-based alcohol exposure interacted with pre-intervention drinking such that traditional PNF was less effective in reducing drinking among heavier drinkers reporting greater exposure to alcohol-related social media content. Further, when regression models compared the efficacy of all three conditions, the social media inspired gamified PNF condition was significantly more effective in reducing drinking than was traditional PNF among moderate and heavy drinkers reporting greater exposure to alcohol on social media. Conclusion Although additional research is needed, these findings suggest that representing the population of students on whom normative statistics are based with social media-like user avatars and profiles may enhance the degree to which alcohol PNF is relatable and believable among high-risk students.
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