The COVID-19 has brought about a significant challenge to the whole of humanity, but with a special burden upon the medical community. Clinicians must keep updated continuously about symptoms, diagnoses, and effectiveness of emergent treatments under a never-ending flood of scientific literature. In this context, the role of evidence-based medicine (EBM) for curating the most substantial evidence to support public health and clinical practice turns essential but is being challenged as never before due to the high volume of research articles published and pre-prints posted daily. Artificial Intelligence can have a crucial role in this situation. In this article, we report the results of an applied research project to classify scientific articles to support Epistemonikos, one of the most active foundations worldwide conducting EBM. We test several methods, and the best one, based on the XLNet neural language model, improves the current approach by 93\% on average F1-score, saving valuable time from physicians who volunteer to curate COVID-19 research articles manually.
翻译:科VID-19给全人类带来了巨大的挑战,但对医学界却有特殊负担;临床医生必须不断更新科学文献不断泛滥的紧急治疗的症状、诊断和有效性;在这方面,基于证据的医学(EBM)在整理支持公共卫生和临床实践的最实质性证据方面的作用至关重要,但由于每天发表的研究文章和预印的论文数量庞大,目前从未像现在这样受到挑战;人工智能可以在这方面发挥关键作用;在本篇文章中,我们报告了用于对科学文章进行分类以支持Epistemonikos的应用研究项目的结果,Epistemonikos是全世界开展EBM的最活跃的基金会之一;我们测试了几种方法,以及基于XLNet神经语言模型的最佳方法,在平均F1核心上改进了目前的做法,从自愿翻译COVID-19研究文章的医生那里节省了宝贵的时间。