基于异构网络挖掘的超说明书用药检测

Mengnan Zhao
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引用次数: 2

摘要

说明书外用药指的是在市场上销售的药物,其适应症未包括在fda批准的标签信息中。超说明书用药在临床实践中相当普遍,在一定程度上是不可避免的。考虑到在线健康社区(ohc)中健康消费者之间的讨论越来越多,我们建议利用ohc中的大量及时信息开发一种自动化方法,从健康消费者生成的数据中检测超说明书药物使用。从文本语料库中,我们使用基于词典的方法提取医学,并使用词嵌入模型测量它们之间的相互作用,在此基础上,我们构建了一个异构医疗网络。我们定义了几个基于元路径的指标来描述异构网络中的药物-疾病关联,并将它们作为特征来训练分类器来识别已知的药物-疾病关联。最后,我们从假阳性结果中确定了标签外药物的使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Off-Label Drug Use Detection Based on Heterogeneous Network Mining
Off-label drug use refers to prescribing marketed medications for the indications that are not included in their FDA-approved labeling information. Off-label drug use is quite common in clinical practice and inevitable to some extent. Considering the increasing discussions in online health communities (OHCs) among the health consumers, we proposed to harness the large volume of timely information in OHCs to develop an automated method for detecting off-label drug uses from health consumer generated data. From the text corpus, we extracted medical with lexicon-based approaches and measured their interactions with word embedding models, based on which, we constructed a heterogeneous healthcare network. We defined several meta-path-based indicators to describe the drug-disease associations in the heterogeneous network and used them as features to train classifiers to recognize the known drug-disease associations. Lastly, we identified the off-label drug uses from the false-positive results.
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