Engineering Research Center of Marine Renewable Energy, Shanghai Ocean University, Shanghai, China.
Department of Mechanical and Structural Engineering and Materials Science, University of Stavanger, Stavanger, Norway.
F1000Res. 2023 Nov 21;11:1282. doi: 10.12688/f1000research.125924.2. eCollection 2022.
Novel coronavirus disease has been recently a concern for worldwide public health. To determine epidemic rate probability at any time in any region of interest, one needs efficient bio-system reliability approach, particularly suitable for multi-regional environmental and health systems, observed over a sufficient period of time, resulting in a reliable long-term forecast of novel coronavirus infection rate. Traditional statistical methods dealing with temporal observations of multi-regional processes do not have the multi-dimensionality advantage, that suggested methodology offers, namely dealing efficiently with multiple regions at the same time and accounting for cross-correlations between different regional observations.
Modern multi-dimensional novel statistical method was directly applied to raw clinical data, able to deal with territorial mapping. Novel reliability method based on statistical extreme value theory has been suggested to deal with challenging epidemic forecast. Authors used MATLAB optimization software.
This paper described a novel bio-system reliability approach, particularly suitable for multi-country environmental and health systems, observed over a sufficient period of time, resulting in a reliable long-term forecast of extreme novel coronavirus death rate probability. Namely, accurate maximum recorded patient numbers are predicted for the years to come for the analyzed provinces.
The suggested method performed well by supplying not only an estimate but 95% confidence interval as well. Note that suggested methodology is not limited to any specific epidemics or any specific terrain, namely its truly general. The only assumption and limitation is bio-system stationarity, alternatively trend analysis should be performed first. The suggested methodology can be used in various public health applications, based on their clinical survey data.
新型冠状病毒疾病最近引起了全球公共卫生的关注。为了在任何感兴趣的地区和任何时间确定疾病流行率的概率,我们需要一种有效的生物系统可靠性方法,特别是适用于多地区环境和卫生系统的方法,该方法需要经过足够长的时间进行观测,从而能够对新型冠状病毒感染率进行可靠的长期预测。传统的统计方法在处理多地区过程的时间观测时没有多维性优势,而所提出的方法具有这种优势,即能够同时有效地处理多个地区,并考虑到不同地区观测之间的交叉相关性。
现代多维新型统计方法被直接应用于原始临床数据,能够处理地域映射。基于统计极值理论的新型可靠性方法被建议用于处理具有挑战性的流行预测。作者使用了 MATLAB 优化软件。
本文描述了一种新型的生物系统可靠性方法,特别适用于经过足够长时间观测的多国家环境和卫生系统,从而能够对极端新型冠状病毒死亡率概率进行可靠的长期预测。也就是说,为未来几年分析的省份预测了准确的记录最高患者数量。
该方法表现良好,不仅提供了估计值,还提供了 95%的置信区间。需要注意的是,所提出的方法不仅限于任何特定的流行病或任何特定的地形,即具有真正的通用性。唯一的假设和限制是生物系统的稳定性,或者首先应该进行趋势分析。所提出的方法可以基于临床调查数据,应用于各种公共卫生应用。