Monitoring Potential Drug Interactions and Reactions via Network Analysis of Instagram User Timelines
Rion Brattig Correia, Lang Li, Luis M. Rocha

TL;DR
This study explores the potential of Instagram social media data for monitoring drug interactions and adverse reactions at both individual and population levels using network analysis techniques.
Contribution
It develops a novel monitoring tool and applies network analysis to large-scale Instagram data to identify drug-ADR associations and behavioral patterns related to drug use.
Findings
Instagram data contains valuable drug and symptom information.
Network analysis reveals significant drug-ADR associations.
Clusters of related symptoms and drugs are identified in population data.
Abstract
Much recent research aims to identify evidence for Drug-Drug Interactions (DDI) and Adverse Drug reactions (ADR) from the biomedical scientific literature. In addition to this "Bibliome", the universe of social media provides a very promising source of large-scale data that can help identify DDI and ADR in ways that have not been hitherto possible. Given the large number of users, analysis of social media data may be useful to identify under-reported, population-level pathology associated with DDI, thus further contributing to improvements in population health. Moreover, tapping into this data allows us to infer drug interactions with natural products--including cannabis--which constitute an array of DDI very poorly explored by biomedical research thus far. Our goal is to determine the potential of Instagram for public health monitoring and surveillance for DDI, ADR, and behavioral…
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