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Automated Detection of Adverse Drug Reactions from Social Media Posts with Machine Learning

机译:自动检测社交媒体帖子与机器学习的不良药物反应

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Adverse drug reactions can have serious consequences for patients. Social media is a source of information useful for detecting previously unknown side effects from a drug since users publish valuable information about various aspects of their lives, including health care. Therefore, detection of adverse drug reactions from social media becomes one of the actual tools for pharmacovigilance. In this paper, we focus on identification of adverse drug reactions from user reviews and formulate this problem as a binary classification task. We developed a machine learning classifier with a set of features for resolving this problem. Our feature-rich classifier achieves significant improvements on a benchmark dataset over baseline approaches and convolutional neural networks.
机译:不良药物反应对患者产生严重后果。社交媒体是一种用于检测来自药物的先前未知的副作用的信息来源,因为用户发布了有关他们生命的各个方面的有价值的信息,包括医疗保健。因此,检测来自社交媒体的不良药物反应成为药物检测的实际工具之一。在本文中,我们专注于鉴定用户评论的不良药物反应,并将这个问题作为二进制分类任务。我们开发了一种机器学习分类器,具有用于解决此问题的一组功能。我们的功能丰富的分类器可以通过基线方法和卷积神经网络实现基准数据集的显着改进。

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