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线性回归分析,用于预测自第0天起6周内印度因SARS-CoV-2导致的死亡人数(100例——2020年3月14日)。

Linear Regression Analysis to predict the number of deaths in India due to SARS-CoV-2 at 6 weeks from day 0 (100 cases - March 14th 2020).

作者信息

Ghosal Samit, Sengupta Sumit, Majumder Milan, Sinha Binayak

机构信息

Consultant Endocrinologist. Nightingale Hospital, Kolkata, India.

Consultant Pulmonologist. AMRI Hospitals, Kolkata, India.

出版信息

Diabetes Metab Syndr. 2020 Jul-Aug;14(4):311-315. doi: 10.1016/j.dsx.2020.03.017. Epub 2020 Apr 2.

Abstract

INTRODUCTION

and Aims: No valid treatment or preventative strategy has evolved till date to counter the SARS CoV 2 (Novel Coronavirus) epidemic that originated in China in late 2019 and have since wrought havoc on millions across the world with illness, socioeconomic recession and death. This analysis was aimed at tracing a trend related to death counts expected at the 5th and 6th week of the COVID-19 in India.

MATERIAL AND METHODS

Validated database was used to procure global and Indian data related to coronavirus and related outcomes. Multiple regression and linear regression analyses were used interchangeably. Since the week 6 death count data was not correlated significantly with any of the chosen inputs, an auto-regression technique was employed to improve the predictive ability of the regression model.

RESULTS

A linear regression analysis predicted average week 5 death count to be 211 with a 95% CI: 1.31-2.60). Similarly, week 6 death count, in spite of a strong correlation with input variables, did not pass the test of statistical significance. Using auto-regression technique and using week 5 death count as input the linear regression model predicted week 6 death count in India to be 467, while keeping at the back of our mind the risk of over-estimation by most of the risk-based models.

CONCLUSION

According to our analysis, if situation continue in present state; projected death rate (n) is 211 and467 at the end of the 5th and 6th week from now, respectively.

摘要

引言与目的

截至目前,尚未形成有效的治疗或预防策略来应对2019年末起源于中国的严重急性呼吸综合征冠状病毒2(新型冠状病毒)疫情,该疫情已给全球数百万人带来疾病、社会经济衰退和死亡的灾难。本分析旨在追踪印度新冠肺炎疫情第5周和第6周预计死亡人数的趋势。

材料与方法

使用经过验证的数据库获取全球和印度与冠状病毒及相关结果的数据。交替使用多元回归和线性回归分析。由于第6周的死亡人数数据与任何选定的输入变量均无显著相关性,因此采用自回归技术来提高回归模型的预测能力。

结果

线性回归分析预测第5周平均死亡人数为211人,95%置信区间为1.31 - 2.60)。同样,尽管第6周的死亡人数与输入变量有很强的相关性,但未通过统计显著性检验。使用自回归技术并将第5周的死亡人数作为输入,线性回归模型预测印度第6周的死亡人数为467人,同时我们牢记大多数基于风险的模型存在高估风险。

结论

根据我们的分析,如果情况继续保持现状,预计从现在起第5周和第6周结束时的死亡率(n)分别为211人和467人。

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