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首页> 外文期刊>Iranian journal of public health. >Automatic Identification of Messages Related to Adverse Drug Reactions from Online User Reviews using Feature-based Classification
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Automatic Identification of Messages Related to Adverse Drug Reactions from Online User Reviews using Feature-based Classification

机译:使用基于特征的分类从在线用户评论中自动识别与药物不良反应有关的消息

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BackgroundUser-generated medical messages on Internet contain extensive information related to adverse drug reactions (ADRs) and are known as valuable resources for post-marketing drug surveillance. The aim of this study was to find an effective method to identify messages related to ADRs automatically from online user reviews.MethodsWe conducted experiments on online user reviews using different feature set and different classification technique. Firstly, the messages from three communities, allergy community, schizophrenia community and pain management community, were collected, the 3000 messages were annotated. Secondly, the N-gram-based features set and medical domain-specific features set were generated. Thirdly, three classification techniques, SVM, C4.5 and Na?ve Bayes, were used to perform classification tasks separately. Finally, we evaluated the performance of different method using different feature set and different classification technique by comparing the metrics including accuracy and F-measure.ResultsIn terms of accuracy, the accuracy of SVM classifier was higher than 0.8, the accuracy of C4.5 classifier or Na?ve Bayes classifier was lower than 0.8; meanwhile, the combination feature sets including n-gram-based feature set and domain-specific feature set consistently outperformed single feature set. In terms of F-measure, the highest F-measure is 0.895 which was achieved by using combination feature sets and a SVM classifier. In all, we can get the best classification performance by using combination feature sets and SVM classifier.ConclusionBy using combination feature sets and SVM classifier, we can get an effective method to identify messages related to ADRs automatically from online user reviews.
机译:背景技术用户在Internet上生成的医疗消息包含与药物不良反应(ADR)相关的大量信息,被称为用于上市后药物监视的宝贵资源。这项研究的目的是找到一种有效的方法,以从在线用户评论中自动识别与ADR相关的消息。方法我们使用不同的特征集和不同的分类技术对在线用户评论进行了实验。首先,收集了来自三个社区(过敏社区,精神分裂症社区和疼痛管理社区)的消息,并注释了3000条消息。其次,生成了基于N元语法的特征集和特定于医学领域的特征集。第三,分别使用SVM,C4.5和朴素贝叶斯这三种分类技术来执行分类任务。最后,通过比较准确性和F度量等指标,评估了使用不同特征集和不同分类技术的不同方法的性能。结果就准确性而言,SVM分类器的准确性高于0.8,C4.5分类器的准确性或朴素贝叶斯分类器低于0.8;或同时,包括基于n-gram的特征集和特定于领域的特征集在内的组合特征集始终优于单个特征集。就F量度而言,最高的F量度为0.895,这是通过使用组合特征集和SVM分类器实现的。总之,通过使用组合特征集和SVM分类器,我们可以获得最佳的分类性能。结论通过使用组合特征集和SVM分类器,我们可以找到一种有效的方法,该方法可以从在线用户评论中自动识别与ADR相关的消息。

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