Forecasting Vaccination Growth for COVID-19 using Machine Learning

Aimee Putri Hartono, Callista Roselynn Luhur, N. N. Qomariyah
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引用次数: 1

Abstract

In this digital era, machine learning (ML) is becoming more common in the healthcare industry. It plays many essential roles in the medical field including clinical forecasting, visualization, and even automated diagnostics. This paper focuses on the future prediction of COVID-19 vaccination rates in different countries. Considering how destructive the novel Coronavirus has been and its continuous mutation and spread, clinical interventions such as vaccines serve as a ray of hope for many individuals. As of 2021, an estimated total of 8,687,201,202 vaccine doses by numerous biopharmaceutical manufacturers have been administered worldwide [1]. This study intends to estimate the probable increase or decrease in global vaccination rates, as well as analyze the correlation between future trends of daily vaccinations and new COVID-19 cases, along with deaths and reproduction rates. Three models were utilized in forecasting and comparing the overall prediction toward the COVID19 vaccine rates; Auto-Regressive Integrated Moving Average (ARIMA), an ML approach, Long-Short Term Memory (LSTM), an artificial Recurrent Neural Networks (RNN), and Prophet which is based on an additive model. The Vector Autoregression (VAR) model will also be utilized to compare COVID-19 cases, deaths and reproduction rates to that of COVID-19 vaccine growth. ARIMA resulted to be the best model, while Prophet turned out to be the worst-performing model. In general, our comparison of employing the ARIMA model vs the other three results in the conclusion that adopting this method shows to be a more effective approach in projecting vaccination growth in the future. Furthermore, a visible increase in future daily vaccinations can be seen to be correlated with the increase in COVID-19 cases, deaths reproduction rates, and a fluctuating trend in COVID-19 deaths.
利用机器学习预测COVID-19疫苗接种增长
在这个数字时代,机器学习(ML)在医疗保健行业变得越来越普遍。它在医学领域扮演着许多重要的角色,包括临床预测、可视化甚至自动诊断。本文重点对不同国家未来COVID-19疫苗接种率进行预测。考虑到新型冠状病毒的破坏性及其持续突变和传播,疫苗等临床干预措施为许多人带来了希望。截至2021年,全球估计共接种了8,687,201,202剂由众多生物制药制造商生产的疫苗。本研究旨在估计全球疫苗接种率可能增加或减少的情况,并分析每日疫苗接种的未来趋势与COVID-19新病例以及死亡率和繁殖率之间的相关性。利用3种模型对新冠肺炎疫苗接种率进行预测并比较整体预测结果;自回归综合移动平均(ARIMA)是一种机器学习方法,长短期记忆(LSTM)是一种人工循环神经网络(RNN),基于加性模型的先知(Prophet)。向量自回归(VAR)模型还将用于将COVID-19病例、死亡率和繁殖率与COVID-19疫苗生长率进行比较。结果ARIMA是最好的模型,而Prophet是表现最差的模型。总的来说,我们采用ARIMA模型与其他三种模型的比较结果表明,采用这种方法在预测未来疫苗接种增长方面是一种更有效的方法。此外,未来每日疫苗接种的明显增加与COVID-19病例的增加、死亡率的增加以及COVID-19死亡人数的波动趋势有关。
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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