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Portable Automatic Text Classification for Adverse Drug Reaction Detection via Multi-corpus Training

机译:便携式自动文本分类用于通过多体训练进行药物不良反应检测

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摘要

ObjectiveAutomatic detection of Adverse Drug Reaction (ADR) mentions from text has recently received significant interest in pharmacovigilance research. Current research focuses on various sources of text-based information, including social media — where enormous amounts of user posted data is available, which have the potential for use in pharmacovigilance if collected and filtered accurately. The aims of this study are: (i) to explore natural language processing approaches for generating useful features from text, and utilizing them in optimized machine learning algorithms for automatic classification of ADR assertive text segments; (ii) to present two data sets that we prepared for the task of ADR detection from user posted internet data; and (iii) to investigate if combining training data from distinct corpora can improve automatic classification accuracies.
机译:目的文本中提到的自动检测药物不良反应(ADR)引起了人们对药物警戒性研究的极大兴趣。当前的研究集中在基于文本的信息的各种来源,包括社交媒体,在这些来源中,可以获得大量的用户发布数据,如果准确地进行收集和过滤,则有可能用于药物警戒。这项研究的目的是:(i)探索自然语言处理方法以从文本生成有用的特征,并将其用于优化的机器学习算法中,以对ADR断言文本片段进行自动分类; (ii)展示我们为从用户发布的互联网数据中进行ADR检测而准备的两个数据集; (iii)研究合并来自不同语料库的训练数据是否可以提高自动分类的准确性。

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