Institute for Global Public Policy, Fudan University, 220 Handan Road, Yangpu District, Shanghai, 200433, China.
LSE-Fudan Research Centre for Global Public Policy, Fudan University, 220 Handan Road, Yangpu District, Shanghai, 200433, China.
J Epidemiol Glob Health. 2024 Sep;14(3):1268-1280. doi: 10.1007/s44197-024-00284-8. Epub 2024 Aug 8.
The global research on pandemics or epidemics and mental health has been growing exponentially recently, which cannot be integrated through traditional systematic review. Our study aims to systematically synthesize the evidence using natural language processing (NLP) techniques.
Multiple databases were searched using titles, abstracts, and keywords. We systematically identified relevant literature published prior to Dec 31, 2023, using NLP techniques such as text classification, topic modelling and geoparsing methods. Relevant articles were categorized by content, date, and geographic location, outputting evidence heat maps, geographical maps, and narrative synthesis of trends in related publications.
Our NLP analysis identified 77,915 studies in the area of pandemics or epidemics and mental health published before Dec 31, 2023. The Covid pandemic was the most common, followed by SARS and HIV/AIDS; Anxiety and stress were the most frequently studied mental health outcomes; Social support and healthcare were the most common way of coping. Geographically, the evidence base was dominated by studies from high-income countries, with scant evidence from low-income counties. Co-occurrence of pandemics or epidemics and fear, depression, stress was common. Anxiety was one of the three most common topics in all continents except North America.
Our findings suggest the importance and feasibility of using NLP to comprehensively map pandemics or epidemics and mental health in the age of big literature. The review identifies clear themes for future clinical and public health research, and is critical for designing evidence-based approaches to reduce the negative mental health impacts of pandemics or epidemics.
最近,全球关于大流行病或传染病和心理健康的研究呈指数级增长,这些研究无法通过传统的系统综述进行整合。我们的研究旨在使用自然语言处理 (NLP) 技术系统地综合证据。
使用标题、摘要和关键词在多个数据库中进行搜索。我们使用文本分类、主题建模和地理解析方法等 NLP 技术,系统地确定了截至 2023 年 12 月 31 日之前发表的相关文献。将相关文章按内容、日期和地理位置进行分类,输出证据热图、地理地图和相关出版物趋势的叙述性综合。
我们的 NLP 分析确定了 2023 年 12 月 31 日前在大流行病或传染病和心理健康领域发表的 77,915 项研究。Covid 大流行最为常见,其次是 SARS 和 HIV/AIDS;焦虑和压力是研究最多的心理健康结果;社会支持和医疗保健是最常见的应对方式。从地理位置上看,证据基础主要由高收入国家的研究组成,来自低收入国家的证据很少。大流行病或传染病和恐惧、抑郁、压力的同时发生很常见。除了北美,焦虑是所有大陆上除了抑郁和压力之外最常见的三个话题之一。
我们的研究结果表明,在大数据时代,使用 NLP 全面绘制大流行病或传染病和心理健康图谱的重要性和可行性。该综述确定了未来临床和公共卫生研究的明确主题,对于设计基于证据的方法以减少大流行病或传染病对心理健康的负面影响至关重要。