通过多变量外代风险评估方法进行呼吸道流行病动态预报

Oleg Gaidai , Hongchen Li , Yu Cao , Alia Ashraf , Yan Zhu
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引用次数: 0

摘要

导言:本研究介绍了一种用于流行病爆发风险评估的精确预测时空模型。方法是在原始/未过滤的临床数据集上采用最先进的统计方法。为了对病毒爆发风险进行可靠的长期预测,这项研究提出了一种新的生物系统生物可靠性方法,这种方法特别适用于在具有代表性的时间间隔内进行监测的多区域生物、环境和公共卫生系统。这项研究的目的是为新型生物可靠性方法建立新的基准,以便根据记录的原始临床患者人数进行有效的风险分析,同时考虑到相关的区域映射。 Remarks and significance by effectively using various clinical survey datasets that are now accessible, the proposed technique may be used for contemporary biomedical applications, as well as the general welfare.
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Prognostics for respiratory epidemic dynamics by multivariate gaidai risk assessment methodology

Introduction

current study introduces an accurate prediction spatiotemporal model for epidemic outbreaks risk assessment.

Methods

utilize state-of-the-art statistical methodology on raw/unfiltered clinical datasets. In order to provide trustworthy long-term forecasts of viral outbreak risks, this research suggests a novel biosystem bio-reliability approach that works particularly well for multi-regional biological, environmental, and public health systems that are monitored over a representative time-lapse.

Results

study made use of daily clinically reported patient counts from COVID-19 (SARS-CoV-2) throughout all impacted Dutch administrative areas. The objective of this research was to establish new benchmark for novel bio-reliability methodology that enables efficient risk analysis, based on recorded raw clinical patient numbers, with accounting for pertinent area mapping.

Remarks and significance

by effectively employing various clinical survey datasets that are now accessible, the proposed technique may be used for contemporary biomedical applications, as well as the general welfare.
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来源期刊
Intelligence-based medicine
Intelligence-based medicine Health Informatics
CiteScore
5.00
自引率
0.00%
发文量
0
审稿时长
187 days
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