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首页> 外文期刊>BMC Medical Informatics and Decision Making >Mining Adverse Drug Reactions from online healthcare forums using Hidden Markov Model
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Mining Adverse Drug Reactions from online healthcare forums using Hidden Markov Model

机译:使用隐马尔可夫模型从在线医疗论坛中挖掘药物不良反应

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Background Adverse Drug Reactions are one of the leading causes of injury or death among patients undergoing medical treatments. Not all Adverse Drug Reactions are identified before a drug is made available in the market. Current post-marketing drug surveillance methods, which are based purely on voluntary spontaneous reports, are unable to provide the early indications necessary to prevent the occurrence of such injuries or fatalities. The objective of this research is to extract reports of adverse drug side-effects from messages in online healthcare forums and use them as early indicators to assist in post-marketing drug surveillance. Methods We treat the task of extracting adverse side-effects of drugs from healthcare forum messages as a sequence labeling problem and present a Hidden Markov Model(HMM) based Text Mining system that can be used to classify a message as containing drug side-effect information and then extract the adverse side-effect mentions from it. A manually annotated dataset from http://www.medications.com webcite is used in the training and validation of the HMM based Text Mining system. Results A 10-fold cross-validation on the manually annotated dataset yielded on average an F-Score of 0.76 from the HMM Classifier, in comparison to 0.575 from the Baseline classifier. Without the Plain Text Filter component as a part of the Text Processing module, the F-Score of the HMM Classifier was reduced to 0.378 on average, while absence of the HTML Filter component was found to have no impact. Reducing the Drug names dictionary size by half, on average reduced the F-Score of the HMM Classifier to 0.359, while a similar reduction to the side-effects dictionary yielded an F-Score of 0.651 on average. Adverse side-effects mined from http://www.medications.com webcite and http://www.steadyhealth.com webcite were found to match the Adverse Drug Reactions on the Drug Package Labels of several drugs. In addition, some novel adverse side-effects, which can be potential Adverse Drug Reactions, were also identified. Conclusions The results from the HMM based Text Miner are encouraging to pursue further enhancements to this approach. The mined novel side-effects can act as early indicators for health authorities to help focus their efforts in post-marketing drug surveillance.
机译:背景技术药物不良反应是接受药物治疗的患者受伤或死亡的主要原因之一。在市场上销售某种药物之前,并不是所有的不良药物反应都可以识别。当前仅基于自愿自发报告的售后药品监视方法无法提供预防此类伤害或死亡的必要早期迹象。这项研究的目的是从在线医疗论坛中的消息中提取药物不良副作用的报告,并将其用作早期指标以辅助上市后药物监测。方法我们将从医疗论坛消息中提取药物不良副作用的任务视为序列标签问题,并提出了基于隐马尔可夫模型(HMM)的文本挖掘系统,该系统可用于将消息分类为包含药物副作用信息然后从中提取不利的副作用。来自http://www.medications.com网站的手动注释数据集用于基于HMM的文本挖掘系统的训练和验证。结果在手动注释的数据集上进行10倍交叉验证后,HMM分类器的F分数平均为0.76,而基线分类器的F分数为0.575。如果没有“纯文本过滤器”组件作为“文本处理”模块的一部分,则HMM分类器的F分数平均降低到0.378,而没有HTML过滤器组件则没有影响。将药品名称字典的大小减少一半,平均会使HMM分类器的F分数降低到0.359,而与副作用字典的减少相似,则平均F分数为0.651。发现从http://www.medications.com网站和http://www.steadyhealth.com网站获得的不良副作用与几种药物的药品包装标签上的药物不良反应相匹配。此外,还发现了一些新的不良副作用,这些副作用可能是潜在的药物不良反应。结论基于HMM的Text Miner的结果令人鼓舞,以寻求对该方法的进一步增强。挖掘出的新颖副作用可以作为卫生主管部门的早期指标,帮助他们集中精力进行上市后药物监测。

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