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通过整合推特数据和疫苗不良事件报告系统(VAERS)进行不良事件检测。

Adverse event detection by integrating twitter data and VAERS.

作者信息

Wang Junxiang, Zhao Liang, Ye Yanfang, Zhang Yuji

机构信息

Department of Information Science and Technology, George Mason University, Fairfax, VA, USA.

Lane Department of Computer Science and Electrical Engineering, West Virginia University, Morgantown, WV, USA.

出版信息

J Biomed Semantics. 2018 Jun 20;9(1):19. doi: 10.1186/s13326-018-0184-y.

Abstract

BACKGROUND

Vaccine has been one of the most successful public health interventions to date. However, vaccines are pharmaceutical products that carry risks so that many adverse events (AEs) are reported after receiving vaccines. Traditional adverse event reporting systems suffer from several crucial challenges including poor timeliness. This motivates increasing social media-based detection systems, which demonstrate successful capability to capture timely and prevalent disease information. Despite these advantages, social media-based AE detection suffers from serious challenges such as labor-intensive labeling and class imbalance of the training data.

RESULTS

To tackle both challenges from traditional reporting systems and social media, we exploit their complementary strength and develop a combinatorial classification approach by integrating Twitter data and the Vaccine Adverse Event Reporting System (VAERS) information aiming to identify potential AEs after influenza vaccine. Specifically, we combine formal reports which have accurately predefined labels with social media data to reduce the cost of manual labeling; in order to combat the class imbalance problem, a max-rule based multi-instance learning method is proposed to bias positive users. Various experiments were conducted to validate our model compared with other baselines. We observed that (1) multi-instance learning methods outperformed baselines when only Twitter data were used; (2) formal reports helped improve the performance metrics of our multi-instance learning methods consistently while affecting the performance of other baselines negatively; (3) the effect of formal reports was more obvious when the training size was smaller. Case studies show that our model labeled users and tweets accurately.

CONCLUSIONS

We have developed a framework to detect vaccine AEs by combining formal reports with social media data. We demonstrate the power of formal reports on the performance improvement of AE detection when the amount of social media data was small. Various experiments and case studies show the effectiveness of our model.

摘要

背景

疫苗是迄今为止最成功的公共卫生干预措施之一。然而,疫苗作为药品存在风险,因此在接种疫苗后会报告许多不良事件(AE)。传统的不良事件报告系统面临着一些关键挑战,包括及时性差。这促使人们越来越多地采用基于社交媒体的检测系统,该系统已证明有能力成功捕捉及时且普遍的疾病信息。尽管有这些优势,但基于社交媒体的AE检测仍面临严峻挑战,如人工标注工作量大以及训练数据的类别不平衡问题。

结果

为应对传统报告系统和社交媒体带来的双重挑战,我们利用它们的互补优势,通过整合推特数据和疫苗不良事件报告系统(VAERS)信息,开发了一种组合分类方法,旨在识别流感疫苗接种后的潜在AE。具体而言,我们将具有准确预定义标签的正式报告与社交媒体数据相结合,以降低人工标注成本;为解决类别不平衡问题,提出了一种基于最大规则的多实例学习方法来偏向阳性用户。与其他基线模型相比,我们进行了各种实验来验证我们的模型。我们观察到:(1)仅使用推特数据时,多实例学习方法优于基线模型;(2)正式报告有助于持续提高我们多实例学习方法的性能指标,同时对其他基线模型的性能产生负面影响;(3)当训练规模较小时,正式报告的效果更明显。案例研究表明,我们的模型能够准确地标记用户和推文。

结论

我们开发了一个通过将正式报告与社交媒体数据相结合来检测疫苗AE的框架。我们证明了在社交媒体数据量较少时,正式报告对AE检测性能提升的作用。各种实验和案例研究表明了我们模型的有效性。

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