新冠肺炎封锁期间印度德里-UP地区跨境反向移民的影响

Q2 Mathematics
Shubhangi Dwivedi, Saravana Perumal, Sumit Kumar, Samit Bhattacharyya, Nitu Kumari
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引用次数: 0

摘要

摘要印度宣布全国封锁,导致数百万移民工人,特别是来自北方邦和比哈尔邦的移民工人,在没有适当交通和与德里、孟买和海得拉巴等城市保持社交距离的情况下返回家乡。这种不可预见的移民和社会融合加速了疾病在全国的传播。为了分析反向移民对疾病进展的影响,我们为印度邻近的德里州和UP州开发了一个疾病传播模型。该模型的基本数学性质,包括正性、有界性、平衡点(EP)及其线性稳定性,以及基本繁殖数(R0)的计算({R}_{0})。数学分析表明,具有主动反向迁移的模型无法达到无病平衡,表明反向迁移导致的限制性流动干预的失败使疾病传播保持了活力。此外,PRCC的分析强调了有效的居家隔离、更好的疾病检测技术和医疗干预措施的必要性,以遏制传播。这项研究估计,这两个地区的疾病指数增长的翻倍时间要短得多。此外,德里和UP地区疫情轨迹之间出现同步模式,加剧了移民困境对UP本已脆弱的农村卫生基础设施的严重影响。通过使用新冠肺炎发病率数据,我们量化了关键的流行病学参数,我们的情景分析证明了不同的封锁计划可能会对疾病流行率产生怎样的影响。根据我们的观察,传播率对新冠肺炎病例的影响最为显著。这项案例研究表明,在全国各地实施封锁和社会隔离以应对未来疫情之前,仔细考虑这些问题的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of cross border reverse migration in Delhi–UP region of India during COVID-19 lockdown
Abstract The declaration of a nationwide lockdown in India led to millions of migrant workers, particularly from Uttar Pradesh (UP) and Bihar, returning to their home states without proper transportation and social distancing from cities such as Delhi, Mumbai, and Hyderabad. This unforeseen migration and social mixing accelerated the transmission of diseases across the country. To analyze the impact of reverse migration on disease progression, we have developed a disease transmission model for the neighboring Indian states of Delhi and UP. The model’s essential mathematical properties, including positivity, boundedness, equilibrium points (EPs), and their linear stability, as well as computation of the basic reproduction number ( R 0 ) \left({R}_{0}) , are studied. The mathematical analysis reveals that the model with active reverse migration cannot reach a disease-free equilibrium, indicating that the failure of restrictive mobility intervention caused by reverse migration kept the disease propagation alive. Further, PRCC analysis highlights the need for effective home isolation, better disease detection techniques, and medical interventions to curb the spread. The study estimates a significantly shorter doubling time for exponential growth of the disease in both regions. In addition, the occurrence of synchronous patterns between epidemic trajectories of the Delhi and UP regions accentuates the severe implications of migrant plight on UP’s already fragile rural health infrastructure. By using COVID-19 incidence data, we quantify key epidemiological parameters, and our scenario analyses demonstrate how different lockdown plans might have impacted disease prevalence. Based on our observations, the transmission rate has the most significant impact on COVID-19 cases. This case study exemplifies the importance of carefully considering these issues before implementing lockdowns and social isolation throughout the country to combat future outbreaks.
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来源期刊
Computational and Mathematical Biophysics
Computational and Mathematical Biophysics Mathematics-Mathematical Physics
CiteScore
2.50
自引率
0.00%
发文量
8
审稿时长
30 weeks
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