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Identifying Consumer Health Terms of Side Effects in Twitter Posts

机译:在Twitter帖子中识别消费者健康方面的副作用

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Prevalence of social media has driven a growing number of health related applications with the information shared by online users. It is well known that a gap exists between healthcare professionals and laypeople in expressing the same health concepts. Filling this gap is particularly important for health related applications using social media data. A data-driven, attributional similarity-based method was developed to identify Twitter terms related to side effect concepts. For the 10 most common side effect (symptom) concepts, our method was able to identify a total of 333 Twitter terms, among which only 90 are mapped to those in the consumer health vocabulary (CHV). The identified Twitter terms are specific to Twitter data, indicating a need to expand the existing CHV, and many of them seem to have less ambiguity in word senses than those in CHV.
机译:社交媒体的普遍性使得在线用户共享的信息推动了越来越多的健康相关应用程序。众所周知,医疗保健专业人员和表达同一健康概念之间存在差距。使用社交媒体数据填充这种差距对于健康相关的应用尤为重要。开发了一种数据驱动的归因相似性的方法,以识别与副作用概念相关的Twitter术语。对于10个最常见的副作用(症状)概念,我们的方法能够识别总共333个Twitter术语,其中只有90只映射到消费者健康词汇(CHV)中的90个。所识别的Twitter术语特定于Twitter数据,表明需要扩展现有的CHV,其中许多似乎在字感觉中具有比CHV中的字的较少的模糊性。

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