预测 COVID-19 在孟加拉国的流行:易感-感染-恢复(SIR)和机器学习方法的双重应用。

Q3 Immunology and Microbiology
Interdisciplinary Perspectives on Infectious Diseases Pub Date : 2022-04-26 eCollection Date: 2022-01-01 DOI:10.1155/2022/8570089
Iqramul Haq, Md Ismail Hossain, Ahmed Abdus Saleh Saleheen, Md Iqbal Hossain Nayan, Mafruha Sultana Mila
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引用次数: 0

摘要

COVID-19 的爆发是当今的一个全球性问题,为了减少感染病例和增加康复病例,对该疾病未来的移动和模式进行估计具有重要意义。为了确定 COVID-19 在孟加拉国的热点地区,我们采用分层 K-means 方法进行了聚类分析。利用 IEDCR 的数据,我们使用了一个名为 "易感-感染-恢复(SIR)"的知名流行病学模型和一个名为 "Facebook PROPHET 程序 "的加法回归模型来预测 COVID-19 的未来走向。在此,我们比较了优化的 SIR 模型和著名的机器学习算法(PROPHET 算法)对 COVID-19 大流行趋势的预测结果。聚类分析结果表明,达卡市目前是 COVID-19 大流行的热点地区。基本繁殖比值为 2.1,表明感染率将大于恢复率。就 SIR 模型而言,结果显示病毒可能在 2022 年 8 月之后才会受到轻微控制。此外,PROPHET 算法观察到的结果与 SIR 有所不同,这意味着孟加拉国的所有确诊、死亡和康复病例都在逐日增加。因此,PROPHET 算法似乎适用于具有增长趋势的流行病数据。根据研究结果,研究建议大流行病没有得到控制,并确保如果孟加拉国继续保持目前的感染率模式,明年大流行病在孟加拉国的传播将会增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prediction of COVID-19 Pandemic in Bangladesh: Dual Application of Susceptible-Infective-Recovered (SIR) and Machine Learning Approach.

Prediction of COVID-19 Pandemic in Bangladesh: Dual Application of Susceptible-Infective-Recovered (SIR) and Machine Learning Approach.

Prediction of COVID-19 Pandemic in Bangladesh: Dual Application of Susceptible-Infective-Recovered (SIR) and Machine Learning Approach.

Prediction of COVID-19 Pandemic in Bangladesh: Dual Application of Susceptible-Infective-Recovered (SIR) and Machine Learning Approach.

The outbreak of COVID-19 is a global problem today, and, to reduce infectious cases and increase recovered cases, it is relevant to estimate the future movement and pattern of the disease. To identify the hotspot for COVID-19 in Bangladesh, we performed a cluster analysis based on the hierarchical k-means approach. A well-known epidemiological model named "susceptible-infectious-recovered (SIR)" and an additive regression model named "Facebook PROPHET Procedure" were used to predict the future direction of COVID-19 using data from IEDCR. Here we compare the results of the optimized SIR model and a well-known machine learning algorithm (PROPHET algorithm) for the forecasting trend of the COVID-19 pandemic. The result of the cluster analysis demonstrates that Dhaka city is now a hotspot for the COVID-19 pandemic. The basic reproduction ratio value was 2.1, which indicates that the infection rate would be greater than the recovery rate. In terms of the SIR model, the result showed that the virus might be slightly under control only after August 2022. Furthermore, the PROPHET algorithm observed an altered result from SIR, implying that all confirmed, death, and recovered cases in Bangladesh are increasing on a daily basis. As a result, it appears that the PROPHET algorithm is appropriate for pandemic data with a growing trend. Based on the findings, the study recommended that the pandemic is not under control and ensured that if Bangladesh continues the current pattern of infectious rate, the spread of the pandemic in Bangladesh next year will increase.

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CiteScore
4.10
自引率
0.00%
发文量
51
审稿时长
18 weeks
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