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Predicting Drug Recalls From Internet Search Engine Queries

机译:预测Internet搜索引擎查询中的药物召回

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摘要

Batches of pharmaceuticals are sometimes recalled from the market when a safety issue or a defect is detected in specific production runs of a drug. Such problems are usually detected when patients or healthcare providers report abnormalities to medical authorities. Here, we test the hypothesis that defective production lots can be detected earlier by monitoring queries to Internet search engines. We extracted queries from the USA to the Bing search engine, which mentioned one of the 5195 pharmaceutical drugs during 2015 and all recall notifications issued by the Food and Drug Administration (FDA) during that year. By using attributes that quantify the change in query volume at the state level, we attempted to predict if a recall of a specific drug will be ordered by FDA in a time horizon ranging from 1 to 40 days in future. Our results show that future drug recalls can indeed be identified with an AUC of 0.791 and a lift at 5% of approximately 6 when predicting a recall occurring one day ahead. This performance degrades as prediction is made for longer periods ahead. The most indicative attributes for prediction are sudden spikes in query volume about a specific medicine in each state. Recalls of prescription drugs and those estimated to be of medium-risk are more likely to be identified using search query data. These findings suggest that aggregated Internet search engine data can be used to facilitate in early warning of faulty batches of medicines.
机译:在药品的特定生产过程中检测到安全问题或缺陷时,有时会从市场上召回一批药品。通常在患者或医疗保健提供者向医疗机构报告异常时检测到此类问题。在这里,我们测试了这样的假设,即可以通过监视对Internet搜索引擎的查询来更早地检测出有缺陷的生产批次。我们从美国提取了必应搜索引擎的查询,该引擎在2015年提到了5195种药品中的一种,并在该年内提到了食品药品监督管理局(FDA)发出的所有召回通知。通过使用量化状态级别查询量变化的属性,我们试图预测FDA在未来1到40天的时间范围内是否会下令召回特定药物。我们的结果表明,将来的药品召回确实可以通过预测未来一天发生的召回来确定,其AUC为0.791,提升幅度约为6的5%。随着对未来较长时间的预测,此性能会降低。用于预测的最具指示性的属性是在每种状态下有关特定药物的查询量突然增加。处方药的召回和估计为中等风险的召回更有可能使用搜索查询数据来识别。这些发现表明,汇总的Internet搜索引擎数据可用于促进对有批次药品的早期预警。

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