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Learning the Relationships between Drug, Symptom, and Medical Condition Mentions in Social Media

机译:学习在社交媒体中的药物,症状和医疗状况之间的关系

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We consider the general problem of learning relationships between drugs, symptoms, and medical conditions mentioned on Twitter, with the goal of estimating probability distributions to reduce the difficulties presented by social media's incomplete picture. If a user mentions taking a drug and experiencing several unexpected symptoms, for example, are the symptoms associated with that drug or is it more likely that the symptoms are associated with an unmentioned underlying condition? We describe a model for learning from and utilizing such relationships. We demonstrate that our approach identifies drugs that are similar based on their associated symptoms (or conditions), identifies conditions that are similar based on their associated symptoms, and can determine whether a symptom is caused by a medical condition or by a drug (i.e., a drug side effect).
机译:我们考虑在Twitter上提到的药物,症状和医疗条件之间学习关系的一般问题,目的是估算概率分布,以减少社交媒体不完整图片所呈现的困难。例如,如果用户提到药物并经历几种意外症状,则是与该药物相关的症状,或者症状更可能与未疑问的潜在条件相关吗?我们描述了一种学习和利用这种关系的模型。我们证明我们的方法鉴定了基于其相关症状(或条件)类似的药物,鉴定基于其相关症状的条件,并且可以确定症状是由医疗条件还是药物引起的(即,药物副作用)。

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