Growth Factor: an Important Factor in Determining the Fate of Outbreaks

Q4 Medicine
Y. Alimohamadi, M. Sepandi, Taher Teymouri, Hadiseh Hosamirudsari
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引用次数: 0

Abstract

Introduction: Epidemic curves are a type of time series data consisting of the number of events that occur over a period of time. The time unit in this data can be a day, a week, or a month, etc. Methods: In the current letter, the authors tried to explain the growth factor and its effect on epidemic curves by using some literature. Results: In the outbreaks setting, the number of cases can increase with different patterns. When the number of cases is increasing exponentially, it means that the number of cases is increasing at a certain speed, which is determined by a factor called an exponential growth factor. When this factor is greater than one, it means that the cases are increasing exponentially, and when this coefficient is equal to 1, it means that we have reached an inflection point that we will face a change in the growth rate of the cases. Conclusion: Some factors such as reducing the contact between infected and healthy people, run the social distancing program, and so on can have an effective role in decreasing epidemic growth factor and controlling the epidemic.
生长因子:决定疫情命运的重要因素
流行病曲线是一种时间序列数据,由一段时间内发生的事件数量组成。该数据中的时间单位可以是一天、一周或一个月等。方法:在本文中,作者试图用一些文献来解释生长因子及其对流行曲线的影响。结果:在暴发环境下,病例数可以不同的方式增加。当病例数呈指数增长时,意味着病例数以一定的速度增长,这是由一个称为指数增长因子的因素决定的。当这个系数大于1时,意味着病例呈指数增长,当这个系数等于1时,意味着我们已经达到了一个拐点,我们将面临病例增长率的变化。结论:减少感染者与健康人接触、实施社会距离等措施可有效降低疫情增长因子,控制疫情。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.80
自引率
0.00%
发文量
26
审稿时长
12 weeks
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