Xing Yihan, Gaidai Oleg
Department of Mechanical and Structural Engineering and Materials Science, University of Stavanger, Stavanger, Norway.
College of Engineering Science and Technology, Shanghai Ocean University, Shanghai, China.
Digit Health. 2023 Mar 14;9:20552076231162984. doi: 10.1177/20552076231162984. eCollection 2023 Jan-Dec.
The novel coronavirus disease 2019 (COVID-19) is a contagious disease with high transmissibility to spread worldwide, reported to present a certain burden on worldwide public health. This study aimed to determine epidemic occurrence probability at any reasonable time horizon in any region of interest by applying modern novel statistical methods directly to raw clinical data. This paper describes a novel bio-system reliability approach, particularly suitable for multi-regional health and stationary environmental systems, observed over a sufficient period of time, resulting in a reliable long-term forecast of the highly pathogenic virus outbreak probability. For this study, COVID-19 daily recorded patient numbers in most affected Sweden regions were chosen. This work aims to benchmark state-of-the-art methods, making it possible to extract necessary information from dynamically observed patient numbers while considering relevant territorial mapping. The method proposed in this paper opens up the possibility of accurately predicting epidemic outbreak probability for multi-regional biological systems. Based on their clinical survey data, the suggested methodology can be used in various public health applications. Key findings are: A novel spatiotemporal health system reliability method has been developed and applied to COVID-19 epidemic data.Accurate multi-regional epidemic occurrence prediction is made.Epidemic threshold confidence bands given.
2019年新型冠状病毒病(COVID-19)是一种具有高传播性的传染病,已在全球范围内传播,据报道给全球公共卫生带来了一定负担。本研究旨在通过直接将现代新型统计方法应用于原始临床数据,确定任何感兴趣区域在任何合理时间范围内的疫情发生概率。本文描述了一种新颖的生物系统可靠性方法,特别适用于在足够长的时间内观察到的多区域健康和静态环境系统,从而对高致病性病毒爆发概率进行可靠的长期预测。对于本研究,选取了受影响最严重的瑞典地区每日记录的COVID-19患者数量。这项工作旨在对最先进的方法进行基准测试,以便在考虑相关地域映射的同时,能够从动态观察到的患者数量中提取必要信息。本文提出的方法为准确预测多区域生物系统的疫情爆发概率开辟了可能性。基于其临床调查数据,所建议的方法可用于各种公共卫生应用。主要发现如下:已开发出一种新颖的时空健康系统可靠性方法并将其应用于COVID-19疫情数据。做出了准确的多区域疫情发生预测。给出了疫情阈值置信区间。