The use of social media data, like Twitter, for biomedical research has been gradually increasing over the years. With the COVID-19 pandemic, researchers have turned to more nontraditional sources of clinical data to characterize the disease in near real-time, study the societal implications of interventions, as well as the sequelae that recovered COVID-19 cases present (Long-COVID). However, manually curated social media datasets are difficult to come by due to the expensive costs of manual annotation and the efforts needed to identify the correct texts. When datasets are available, they are usually very small and their annotations do not generalize well over time or to larger sets of documents. As part of the 2021 Biomedical Linked Annotation Hackathon, we release our dataset of over 120 million automatically annotated tweets for biomedical research purposes. Incorporating best practices, we identify tweets with potentially high clinical relevance. We evaluated our work by comparing several SpaCy-based annotation frameworks against a manually annotated gold-standard dataset. Selecting the best method to use for automatic annotation, we then annotated 120 million tweets and released them publicly for future downstream usage within the biomedical domain.
翻译:多年来,生物医学研究使用社交媒体数据(如Twitter)的情况逐渐增加。随着COVID-19大流行,研究人员转向了非传统的临床数据来源,以近实时地对疾病进行定性,研究干预措施的社会影响,以及回收COVID-19现有病例(Long-COVID)的后遗症(Long-COVID),然而,由于人工批注的费用昂贵,以及确定正确文本的努力,人工整理的社会媒体数据集难以实现。当数据集可用时,它们通常非常小,其说明没有超时或更大量的文件。作为2021年生物医学链接说明Hackathon的一部分,我们为生物医学研究目的自动发布超过1.2亿个附加注释的推文。我们采用最佳做法,确定具有潜在高度临床相关性的推文。我们通过比较一些基于SpaCy的批注框架和人工加注解的黄金标准数据集来评估我们的工作。我们选择了自动注释使用的最佳方法,然后在生物医学领域公开发布120万个域域域。