Shakeel Sheikh Muzaffar, Kumar Nithya Sathya, Madalli Pranita Pandurang, Srinivasaiah Rashmi, Swamy Devappa Renuka
Department of Industrial Engineering and Management, JSS Academy of Technical Education, Bengaluru, India.
Osong Public Health Res Perspect. 2021 Aug;12(4):215-229. doi: 10.24171/j.phrp.2021.0100. Epub 2021 Aug 13.
As the world grapples with the problem of the coronavirus disease 2019 (COVID-19) pandemic and its devastating effects, scientific groups are working towards solutions to mitigate the effects of the virus. This paper aimed to collate information on COVID-19 prediction models. A systematic literature review is reported, based on a manual search of 1,196 papers published from January to December 2020. Various databases such as Google Scholar, Web of Science, and Scopus were searched. The search strategy was formulated and refined in terms of subject keywords, geographical purview, and time period according to a predefined protocol. Visualizations were created to present the data trends according to different parameters. The results of this systematic literature review show that the study findings are critically relevant for both healthcare managers and prediction model developers. Healthcare managers can choose the best prediction model output for their organization or process management. Meanwhile, prediction model developers and managers can identify the lacunae in their models and improve their data-driven approaches.
随着世界应对2019冠状病毒病(COVID-19)大流行及其破坏性影响,科学团体正在努力寻找减轻该病毒影响的解决方案。本文旨在整理有关COVID-19预测模型的信息。报告了一项系统的文献综述,该综述基于对2020年1月至12月发表的1196篇论文的手动检索。搜索了各种数据库,如谷歌学术、科学网和Scopus。根据预定义的协议,在主题关键词、地理范围和时间段方面制定并完善了搜索策略。创建了可视化图表以根据不同参数呈现数据趋势。这项系统文献综述的结果表明,研究结果对医疗保健管理人员和预测模型开发者都至关重要。医疗保健管理人员可以为其组织或流程管理选择最佳的预测模型输出。同时,预测模型开发者和管理人员可以识别其模型中的漏洞,并改进其数据驱动方法。