新冠肺炎早期传播的动态模式和动态模式分解模型。

IF 4.4 3区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Dehong Fang, Lei Guo, M Courtney Hughes, Jifu Tan
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引用次数: 0

摘要

简介:了解新冠肺炎的传播模式和动态对于未来流行病的有效监测、干预和控制至关重要。本研究的目的是调查美国疫情早期新冠肺炎传播的空间和时间特征,目的是为未来应对类似疫情提供信息。方法:我们使用动态模式分解(DMD)和新冠肺炎病例的国家数据(2020年4月6日至2020年10月9日),将新冠肺炎在美国的传播建模为一个动态系统。DMD可以将疾病病例的复杂演变分解为简单空间模式或结构(模式)与时间相关模式振幅(系数)的线性组合。这些模式揭示了数据隐藏的动态行为。我们确定了新冠肺炎传播的地理模式,并量化了研究期间新冠肺炎病例的时间依赖性变化。结果:DMD主导模式的幅度分析显示,在研究期间,加利福尼亚州、路易斯安那州、堪萨斯州、佐治亚州和得克萨斯州的新冠肺炎病例数高于其他地区。亚利桑那州、佛罗里达州、佐治亚州、马萨诸塞州、纽约州和得克萨斯州等州的新冠肺炎病例数同时增加,这与疾病控制和预防中心的数据一致。结论:DMD分析结果表明,美国某些地区的新冠肺炎具有相似的趋势和相似的时空传播模式。这些结果为新冠肺炎的传播提供了有价值的见解,可以为政策制定者和公共卫生当局设计和实施缓解干预措施提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Dynamic Patterns and Modeling of Early COVID-19 Transmission by Dynamic Mode Decomposition.

Dynamic Patterns and Modeling of Early COVID-19 Transmission by Dynamic Mode Decomposition.

Dynamic Patterns and Modeling of Early COVID-19 Transmission by Dynamic Mode Decomposition.

Introduction: Understanding the transmission patterns and dynamics of COVID-19 is critical to effective monitoring, intervention, and control for future pandemics. The aim of this study was to investigate the spatial and temporal characteristics of COVID-19 transmission during the early stage of the outbreak in the US, with the goal of informing future responses to similar outbreaks.

Methods: We used dynamic mode decomposition (DMD) and national data on COVID-19 cases (April 6, 2020-October 9, 2020) to model the spread of COVID-19 in the US as a dynamic system. DMD can decompose the complex evolution of disease cases into linear combinations of simple spatial patterns or structures (modes) with time-dependent mode amplitudes (coefficients). The modes reveal the hidden dynamic behaviors of the data. We identified geographic patterns of COVID-19 spread and quantified time-dependent changes in COVID-19 cases during the study period.

Results: The magnitude analysis from the dominant mode in DMD showed that California, Louisiana, Kansas, Georgia, and Texas had higher numbers of COVID-19 cases than other areas during the study period. States such as Arizona, Florida, Georgia, Massachusetts, New York, and Texas showed simultaneous increases in the number of COVID-19 cases, consistent with data from the Centers for Disease Control and Prevention.

Conclusion: Results from DMD analysis indicate that certain areas in the US shared similar trends and similar spatiotemporal transmission patterns of COVID-19. These results provide valuable insights into the spread of COVID-19 and can inform policy makers and public health authorities in designing and implementing mitigation interventions.

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来源期刊
Preventing Chronic Disease
Preventing Chronic Disease PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
6.70
自引率
3.60%
发文量
74
期刊介绍: Preventing Chronic Disease (PCD) is a peer-reviewed electronic journal established by the National Center for Chronic Disease Prevention and Health Promotion. The mission of PCD is to promote the open exchange of information and knowledge among researchers, practitioners, policy makers, and others who strive to improve the health of the public through chronic disease prevention. The vision of PCD is to be the premier forum where practitioners and policy makers inform research and researchers help practitioners and policy makers more effectively improve the health of the population. Articles focus on preventing and controlling chronic diseases and conditions, promoting health, and examining the biological, behavioral, physical, and social determinants of health and their impact on quality of life, morbidity, and mortality across the life span.
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