Adverse side effects (ASEs) of drugs, revealed after FDA approval, pose a
threat to patient safety. To promptly detect overlooked ASEs, we developed a
digital health methodology capable of analyzing massive public data from social
media, published clinical research, manufacturers' reports, and ChatGPT. We
uncovered ASEs associated with the glucagon-like peptide 1 receptor agonists
(GLP-1 RA), a market expected to grow exponentially to 133.5billionUSDby2030.UsingaNamedEntityRecognition(NER)model,ourmethodsuccessfullydetected21potentialASEsoverlookeduponFDAapproval,includingirritabilityandnumbness.Ourdata−analyticapproachrevolutionizesthedetectionofunreportedASEsassociatedwithnewlydeployeddrugs,leveragingcutting−edgeAI−drivensocialmediaanalytics.ItcanincreasethesafetyofnewdrugsinthemarketplacebyunlockingthepowerofsocialmediatosupportregulatorsandmanufacturersintherapiddiscoveryofhiddenASErisks.