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Mining Potentially Unreported Effects from Twitter Posts through Relational Similarity: A Case for Opioids

机译:通过关系相似性从Twitter帖子中挖掘潜在的未报告效果:阿片类药物的案例

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Growing uses of opioids for pain management have led to a crisis of addiction and thousands of deaths in the United States. Although many of the opioid effects have been observed and reported, experience directly from the opioid users may help provide additional information in identifying any potentially unreported effects. In this study, we developed a neural embedding-based method to discover potential opioid-effect relations through similar relations of known medication effects. Using a corpus of 3.6 million clean unannotated tweets, a vector space model was learned with word2vec, and the model was used to identify potential opioid effects. The inferred results were further verified against 5 authoritative sources of medication effects. Seven of inferred effects were identified as potentially unreported, demonstrating the power and utility of our method. It is conceivable that our approach can be applied to discovery of potentially unreported effects of other medications.
机译:痛苦管理的阿片类药物的生长用途导致了美国成瘾的危机和数千人死亡。虽然已经观察到并报告了许多阿片类药物,但直接从阿片类药物经验可能有助于提供识别任何可能未报告的效果的其他信息。在这项研究中,我们通过已知药物效应的类似关系开发了基于神经嵌入的方法,以发现潜在的阿片效应关系。使用360万清洁未定位的推文的语料库,使用Word2VEC学习矢量空间模型,而该模型用于识别潜在的表述效果。推断结果进一步验证了5项权威性药物影响。七种推断效果被确定为潜在的未报告,展示我们方法的权力和效用。可以想到,我们的方法可以应用于发现其他药物的可能未报告的效果。

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