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Mining a Weighted Heterogeneous Network Extracted from Healthcare-Specific Social Media for Identifying Interactions between Drugs

机译:挖掘从医疗保健特定社交媒体中提取的加权异构网络,以识别药物之间的相互作用

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Drug-drug interaction (DDI) detection is an important issue of pharmacovigilance. Currently, approaches proposed to detection DDIs are mainly focused on data sources such as spontaneous reporting systems, electronic health records, chemical/pharmacological databases, and biomedical literatures. However, those data sources are limited either by low reporting ratio, access issue, or long publication time span. In this work, we propose to explore online health communities, a timely, informative and publicly available data source, for DDI detection. We construct a weighted heterogeneous healthcare network that contains drugs, adverse drug reactions (ADRs), diseases, and users extracted from online health consumer-contributed contents, extract topological features, develop weighted path count to quantify the features, and use supervised learning techniques to detect DDI signals. The experiment results show that weighted heterogeneous healthcare network using leverage and lift are more effective in DDI detection than both unweighted homogeneous and heterogeneous network.
机译:药物相互作用(DDI)检测是药物警戒性的重要问题。当前,提议的检测DDI的方法主要集中在数据源上,例如自发报告系统,电子健康记录,化学/药理数据库和生物医学文献。但是,这些数据源受到报告率低,访问问题或发布时间长的限制。在这项工作中,我们建议探索在线卫生社区,这是一个及时,翔实且可公开获得的数据源,用于DDI检测。我们构建了一个加权异构医疗网络,该网络包含从在线健康消费者贡献内容中提取的药物,药品不良反应(ADR),疾病和用户,提取拓扑特征,开发加权路径计数以量化特征,并使用监督学习技术来检测DDI信号。实验结果表明,与未加权同质网络和异构网络相比,使用杠杆和提升的加权异质医疗网络在DDI检测中更有效。

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