在推特上使用COVID-19疫苗态度来改进美国的疫苗摄取预测模型:推特的信息流行病学研究

IF 3.5 Q1 HEALTH CARE SCIENCES & SERVICES JMIR infodemiology Pub Date : 2023-08-21 DOI:10.2196/43703
Nekabari Sigalo, Naman Awasthi, Saad Mohammad, Vanessa Frias-Martinez
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引用次数: 1

摘要

背景:自2019冠状病毒病大流行开始以来,全球一直在努力开发预防COVID-19的疫苗。完全接种疫苗的人感染病毒并将病毒传播给他人的可能性要小得多。研究人员发现,互联网和社交媒体都在影响个人对疫苗接种的选择方面发挥了作用。目的:本研究旨在确定在推特中发现的态度补充COVID-19疫苗摄取预测模型是否优于仅使用历史疫苗接种数据的基线模型。方法:在2021年1月至2021年5月的研究期间,收集县级每日COVID-19疫苗接种数据。在同一时期,Twitter的流媒体应用程序编程接口用于收集COVID-19疫苗推文。几个自回归综合移动平均模型仅使用历史数据(基线自回归综合移动平均)和单个twitter衍生特征(自回归综合移动平均外生变量模型)来预测疫苗接种率。结果:在这项研究中,我们发现,将历史疫苗接种数据和推文中发现的COVID-19疫苗态度补充基线预测模型,可将均方根误差降低多达83%。结论:开发美国疫苗接种的预测工具将使公共卫生研究人员和决策者能够设计有针对性的疫苗接种活动,以期达到美国实现广泛人口保护所需的疫苗接种门槛。
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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Using COVID-19 Vaccine Attitudes on Twitter to Improve Vaccine Uptake Forecast Models in the United States: Infodemiology Study of Tweets.

Background: Since the onset of the COVID-19 pandemic, there has been a global effort to develop vaccines that protect against COVID-19. Individuals who are fully vaccinated are far less likely to contract and therefore transmit the virus to others. Researchers have found that the internet and social media both play a role in shaping personal choices about vaccinations.

Objective: This study aims to determine whether supplementing COVID-19 vaccine uptake forecast models with the attitudes found in tweets improves over baseline models that only use historical vaccination data.

Methods: Daily COVID-19 vaccination data at the county level was collected for the January 2021 to May 2021 study period. Twitter's streaming application programming interface was used to collect COVID-19 vaccine tweets during this same period. Several autoregressive integrated moving average models were executed to predict the vaccine uptake rate using only historical data (baseline autoregressive integrated moving average) and individual Twitter-derived features (autoregressive integrated moving average exogenous variable model).

Results: In this study, we found that supplementing baseline forecast models with both historical vaccination data and COVID-19 vaccine attitudes found in tweets reduced root mean square error by as much as 83%.

Conclusions: Developing a predictive tool for vaccination uptake in the United States will empower public health researchers and decisionmakers to design targeted vaccination campaigns in hopes of achieving the vaccination threshold required for the United States to reach widespread population protection.

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