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Impact of COVID-19 epidemic curtailment strategies in selected Indian states: An analysis by reproduction number and doubling time with incidence modelling

机译:Covid-19流行病措施策略在选定的印度国家的影响:通过发病率复制数和倍增时间分析

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The Government of India in-network with the state governments has implemented the epidemic curtailment strategies inclusive of case-isolation, quarantine and lockdown in response to ongoing novel coronavirus (COVID-19) outbreak. In this manuscript, we attempt to estimate the impact of these steps across ten selected Indian states using crowd-sourced data. The trajectory of the outbreak was parameterized by the reproduction number ( R 0 ), doubling time, and growth rate. These parameters were estimated at two time-periods after the enforcement of the lockdown on 24 th March 2020, i.e. 15 days into lockdown and 30 days into lockdown. The authors used a crowd sourced database which is available in the public domain. After preparing the data for analysis, R 0 was estimated using maximum likelihood (ML) method which is based on the expectation minimum algorithm where the distribution probability of secondary cases is maximized using the serial interval discretization. The doubling time and growth rate were estimated by the natural log transformation of the exponential growth equation. The overall analysis shows decreasing trends in time-varying reproduction numbers ( R (t) ) and growth rate (with a few exceptions) and increasing trends in doubling time. The curtailment strategies employed by the Indian government seem to be effective in reducing the transmission parameters of the COVID-19 epidemic. The estimated R (t) are still above the threshold of 1, and the resultant absolute case numbers show an increase with time. Future curtailment and mitigation strategies thus may take into account these findings while formulating further course of action.
机译:与州政府的印度政府在网络中实施了案例隔离,检疫和锁定的疫情削减战略,以应对正在进行的小冠状病毒(Covid-19)爆发。在这份手稿中,我们试图估计使用人群资源数据来估计这些步骤对十个选定的印度国家的影响。爆发的轨迹由再现号(R 0),倍增时间和增长率进行参数化。在2020年3月24日在执行锁定后的两个时间段,即15天内,将这些参数估计在锁上15天和30天内锁定。作者使用了一个人群资源数据库,该数据库可在公共领域中使用。在准备分析数据之后,使用基于期望最小算法的最大似然(ML)方法估计R 0,其中使用串行间隔离散化最大化辅助情况的分布概率。通过指数增长方程的自然对数转换估算了倍增时间和增长率。整体分析显示时变量(R(T))和增长率(具有几种例外)和增长速度的趋势降低,并增加了倍增时间的趋势。印度政府雇用的缩减策略似乎有效地减少了Covid-19流行病的传输参数。估计的R(t)仍然高于1的阈值,并且所得到的绝对案例编号显示随时间的增加。因此,未来的缩减和缓解策略可能会考虑到这些发现,同时制定进一步的行动方案。

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