Discovering Potential Effects of Dietary Supplements from Twitter Data

Keyuan Jiang
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引用次数: 8

Abstract

The U.S. Food and Drug Administration uses the Center for Food Safety and Applied Nutrition (CFSAN) Adverse Event Reporting System (CAERS) as the primary tool for identifying new and emerging dietary supplement adverse events. Despite mandatory and voluntary reporting of dietary supplement adverse events to CAERS, many continue to go unreported. Availability of social media has enabled dietary supplement consumers to freely share their concerns and experiences online. Such consumer generated information can be a useful source to further monitor the safety of dietary supplements. To study the usefulness of social media (Twitter in particular) for safety surveillance of dietary supplements, we developed a computational processing pipeline: 1) machine learning based identification of potential Twitter posts (tweets) of personal experiences related to the use of dietary supplements, 2) detection of potential supplement events from these tweets using the medpie open source tool, and 3) mapping detected events to effects through the taxonomy provided in SNOMED CT. Using our pipeline, we identified, from a group of 1,244,661 tweets collected, a total of 17,346 personal experience tweets pertaining to 4 dietary supplements. A total of 191 effects were mapped to SNOMED CT and we discovered that 48 of the 191 effects are not listed in either of the two online sources we referenced. However, the effects discovered from the social media data will need to be verified and confirmed with other sources and/or clinical evidences.
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从Twitter数据中发现膳食补充剂的潜在影响
美国食品和药物管理局使用食品安全和应用营养中心(CFSAN)不良事件报告系统(CAERS)作为识别新的和正在出现的膳食补充剂不良事件的主要工具。尽管强制性和自愿报告膳食补充剂的不良事件CAERS,许多继续没有报告。社交媒体的可用性使得膳食补充剂消费者可以在网上自由地分享他们的担忧和经验。这些消费者提供的信息可以成为进一步监测膳食补充剂安全性的有用来源。为了研究社交媒体(特别是Twitter)对膳食补充剂安全监测的有用性,我们开发了一个计算处理管道:1)基于机器学习的识别与使用膳食补充剂相关的潜在Twitter帖子(推文),2)使用medpie开源工具从这些推文中检测潜在的补充剂事件,3)通过SNOMED CT提供的分类将检测到的事件映射到效果。使用我们的管道,我们从收集的1,244,661条推文中确定了总共17,346条与4种膳食补充剂有关的个人体验推文。总共有191种效果被映射到SNOMED CT,我们发现这191种效果中有48种没有在我们引用的两个在线资源中列出。然而,从社交媒体数据中发现的效果需要通过其他来源和/或临床证据进行验证和确认。
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