在前瞻性时空序列中评估观察到的传染病传播的空间变异性。

IF 3 2区 医学 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Chih-Chieh Wu, Chien-Hsiun Chen, Shann-Rong Wang, Sanjay Shete
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引用次数: 0

摘要

时空疾病监测的前瞻性分析方法和疾病监测系统的预期功能主要集中在疾病爆发、疾病聚集或发病率增加的早期检测上。在疫情中,SARS-CoV-2等病毒的传播在空间和时间上并不均匀。随着传染病暴发的确定,在暴发过程中,识别和评估疾病发生时的异常情况(过量和减少)是合乎逻辑的下一步。我们提出并制定了一个超几何概率模型,该模型在持续的日常监测过程中,调查了许多地理上描述的人群(例如,医院,城镇,县)在时间轴上发生传染病发病率传播的异常情况。其结构是为了确定某一区域的发病率在当天或最近几天的增长或下降速度是否比在监测期内其他地方的前几天发病率的发生速度更快。新方法使用一种时变基线风险模型,考虑到疾病发生时定期(例如每天)更新的发病率信息,并评估由于抽样波动导致的特定频率偏差的可能性,考虑到地理单位内不同人口基础造成的发病率差异不相等。本文通过对台湾省蚊媒传染病登革热和传染性传染病COVID-19发病率时空监测数据的亚样本分析,提出并阐述了一种新的模型,以推进传染病发病率传播异常的调查。利用高效的R计算包实现了大事件数的超几何概率模型的两个近似公式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Assessing spatial variability in observed infectious disease spread in a prospective time-space series.

Assessing spatial variability in observed infectious disease spread in a prospective time-space series.

Assessing spatial variability in observed infectious disease spread in a prospective time-space series.

Assessing spatial variability in observed infectious disease spread in a prospective time-space series.

Most of the growing prospective analytic methods in space-time disease surveillance and intended functions of disease surveillance systems focus on earlier detection of disease outbreaks, disease clusters, or increased incidence. The spread of the virus such as SARS-CoV-2 has not been spatially and temporally uniform in an outbreak. With the identification of an infectious disease outbreak, recognizing and evaluating anomalies (excess and decline) of disease incidence spread at the time of occurrence during the course of an outbreak is a logical next step. We propose and formulate a hypergeometric probability model that investigates anomalies of infectious disease incidence spread at the time of occurrence in the timeline for many geographically described populations (e.g., hospitals, towns, counties) in an ongoing daily monitoring process. It is structured to determine whether the incidence grows or declines more rapidly in a region on the single current day or the most recent few days compared to the occurrence of the incidence during the previous few days relative to elsewhere in the surveillance period. The new method uses a time-varying baseline risk model, accounting for regularly (e.g., daily) updated information on disease incidence at the time of occurrence, and evaluates the probability of the deviation of particular frequencies to be attributed to sampling fluctuations, accounting for the unequal variances of the rates due to different population bases in geographical units. We attempt to present and illustrate a new model to advance the investigation of anomalies of infectious disease incidence spread by analyzing subsamples of spatiotemporal disease surveillance data from Taiwan on dengue and COVID-19 incidence which are mosquito-borne and contagious infectious diseases, respectively. Efficient R packages for computation are available to implement the two approximate formulae of the hypergeometric probability model for large numbers of events.

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来源期刊
International Journal of Health Geographics
International Journal of Health Geographics PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH -
CiteScore
10.20
自引率
2.00%
发文量
17
审稿时长
12 weeks
期刊介绍: A leader among the field, International Journal of Health Geographics is an interdisciplinary, open access journal publishing internationally significant studies of geospatial information systems and science applications in health and healthcare. With an exceptional author satisfaction rate and a quick time to first decision, the journal caters to readers across an array of healthcare disciplines globally. International Journal of Health Geographics welcomes novel studies in the health and healthcare context spanning from spatial data infrastructure and Web geospatial interoperability research, to research into real-time Geographic Information Systems (GIS)-enabled surveillance services, remote sensing applications, spatial epidemiology, spatio-temporal statistics, internet GIS and cyberspace mapping, participatory GIS and citizen sensing, geospatial big data, healthy smart cities and regions, and geospatial Internet of Things and blockchain.
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