a LATIM, Laboratoire de Traitement de l'Information Médicale, Université de Brest, Inserm, CHU Brest , Brest , France.
b Lymphocytes B et Autoimmunité Université de Brest, Inserm, CHU Brest, LabEx IGO , Brest , France.
Hum Vaccin Immunother. 2018;14(11):2553-2558. doi: 10.1080/21645515.2018.1475872. Epub 2018 Jun 28.
Big data analysis has become a common way to extract information from complex and large datasets among most scientific domains. This approach is now used to study large cohorts of patients in medicine. This work is a review of publications that have used artificial intelligence and advanced machine learning techniques to study physio pathogenesis-based treatments in pSS. A systematic literature review retrieved all articles reporting on the use of advanced statistical analysis applied to the study of systemic autoimmune diseases (SADs) over the last decade. An automatic bibliography screening method has been developed to perform this task. The program called BIBOT was designed to fetch and analyze articles from the pubmed database using a list of keywords and Natural Language Processing approaches. The evolution of trends in statistical approaches, sizes of cohorts and number of publications over this period were also computed in the process. In all, 44077 abstracts were screened and 1017 publications were analyzed. The mean number of selected articles was 101.0 (S.D. 19.16) by year, but increased significantly over the time (from 74 articles in 2008 to 138 in 2017). Among them only 12 focused on pSS but none of them emphasized on the aspect of pathogenesis-based treatments. To conclude, medicine progressively enters the era of big data analysis and artificial intelligence, but these approaches are not yet used to describe pSS-specific pathogenesis-based treatment. Nevertheless, large multicentre studies are investigating this aspect with advanced algorithmic tools on large cohorts of SADs patients.
大数据分析已成为大多数科学领域从复杂和大型数据集提取信息的常用方法。这种方法现在被用于研究医学中的大量患者队列。这项工作是对使用人工智能和先进的机器学习技术研究 pSS 基于病理生理学的治疗方法的出版物的综述。通过开发自动书目筛选方法,进行了系统性文献回顾,以检索过去十年中报告使用先进统计分析方法研究系统性自身免疫性疾病 (SAD) 的所有文章。名为 BIBOT 的程序旨在使用关键字列表和自然语言处理方法从 pubmed 数据库中获取和分析文章。在此过程中,还计算了该时期内统计方法、队列规模和出版物数量的趋势演变。总共筛选了 44077 篇摘要,分析了 1017 篇出版物。每年选择的文章平均数量为 101.0(标准差为 19.16),但随着时间的推移显著增加(从 2008 年的 74 篇增加到 2017 年的 138 篇)。其中只有 12 篇文章关注 pSS,但没有一篇文章强调基于病理生理学的治疗方法。总之,医学正在逐渐进入大数据分析和人工智能时代,但这些方法尚未用于描述 pSS 特异性基于病理生理学的治疗方法。尽管如此,大型多中心研究正在使用先进的算法工具对大型 SAD 患者队列进行这方面的研究。