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关于临床极易感染新冠病毒群体的推文情感分析

Emotional Analysis of Tweets About Clinically Extremely Vulnerable COVID-19 Groups.

作者信息

Awoyemi Toluwalase, Ogunniyi Kayode E, Adejumo Adedolapo V, Ebili Ujunwa, Olusanya Abiola, Olojakpoke Eloho H, Shonibare Olufunto

机构信息

Nuffield Department of Women's and Reproductive Health, University of Oxford, Oxford, GBR.

Internal Medicine, University Hospital of North Durham, Durham, GBR.

出版信息

Cureus. 2022 Sep 19;14(9):e29323. doi: 10.7759/cureus.29323. eCollection 2022 Sep.

Abstract

Background Clinically extremely vulnerable (CEV) individuals have a significantly higher risk of morbidity and mortality from coronavirus disease 2019 (COVID-19). This high risk is due to predispositions such as chronic obstructive pulmonary disease (COPD), diabetes mellitus, hypertension, smoking, or extreme age (≥75). The initial COVID-19 preventive measures (use of face masks, social distancing, social bubbles) and vaccine allocation prioritized this group of vulnerable individuals to ensure their continued protection. However, as countries start relaxing the lockdown measures to help prevent socio-economic collapse, the impact of this relaxation on CEVs is once again brought to light. In this study, we set out to understand the impact of policy changes on the lives of CEVs by analyzing Twitter data with the hashtag #highriskcovid used by many high-risk individuals to tweet about and express their opinions and feelings. Methodology Tweets were extracted from the Twitter API between March 01, 2022, and April 21, 2022, using the Twarc2 tool. Extracted tweets were in English and included the hashtag #highriskcovid. We evaluated the most frequently used words and hashtags by calculating term frequency-inverse document frequency, and the location of tweets using the tidygeocoder package (method = osm). We also evaluated the sentiments and emotions depicted by these tweets using the National Research Council sentiment lexicon of the Syuzhet package. Finally, we used the latent Dirichlet allocation algorithm to determine relevant high-risk COVID-19 themes. Results The vast majority of the tweets originated from the United States (64%), Canada (22%), and the United Kingdom (4%). The most common hashtags were #highriskcovid (25.5%), #covid (6.82%), #immunocompromised (4.93%), #covidisnotover (4.0%), and #Maskup (1.40%), and the most frequently used words were immunocompromised (1.64%), people (1.4%), disabled (0.97%), maskup (0.85%), and eugenics (0.85%). The tweets were more negative (19.27%) than positive, and the most expressed negative emotions were fear (13.62%) and sadness (12.47%). At the same time, trust was the most expressed positive emotion and was used in relation to belief in masks, policies, and health workers to help. Finally, we detected frequently co-tweeted words such asmass and disaster, deadly and disabling, high and risk, public and health, immunocompromised and people, mass and disaster, and deadly and disabling. Conclusions The study provides evidence regarding the concerns and fears of high-risk COVID-19 groups as expressed via social media. It is imperative that further policies be implemented to specifically protect the health and mental wellness of high-risk individuals (for example, incorporating sentiment analyses of high-risk COVID-19 individuals such as this paper to inform the evaluation of already implemented preventive measures and policies). In addition, considerable work needs to be done to educate the public on high-risk individuals.

摘要

背景

临床极度脆弱(CEV)个体感染2019冠状病毒病(COVID-19)后发病和死亡风险显著更高。这种高风险归因于慢性阻塞性肺疾病(COPD)、糖尿病、高血压、吸烟或高龄(≥75岁)等易感因素。最初的COVID-19预防措施(使用口罩、保持社交距离、社交气泡)以及疫苗分配优先考虑了这一脆弱群体,以确保他们持续得到保护。然而,随着各国开始放松封锁措施以防止社会经济崩溃,这种放松对临床极度脆弱个体的影响再次受到关注。在本研究中,我们通过分析许多高危个体用于发推文谈论并表达其观点和感受的带有#highriskcovid标签的推特数据,着手了解政策变化对临床极度脆弱个体生活的影响。

方法

使用Twarc2工具在2022年3月1日至2022年4月21日期间从推特应用程序编程接口(API)提取推文。提取的推文为英文且包含#highriskcovid标签。我们通过计算词频逆文档频率来评估最常用的单词和标签,并使用tidygeocoder包(方法 = osm)确定推文的位置。我们还使用Syuzhet包中的美国国家研究委员会情感词典评估这些推文所表达的情感和情绪。最后,我们使用潜在狄利克雷分配算法确定相关的高危COVID-19主题。

结果

绝大多数推文来自美国(64%)、加拿大(22%)和英国(4%)。最常见的标签是#highriskcovid(25.5%)、#covid(6.82%)、#immunocompromised(4.93%)、#covidisnotover(4.0%)和#Maskup(1.40%),最常用的单词是immunocompromised(1.64%)、people(1.4%)、disabled(0.97%)、maskup(0.85%)和eugenics(0.85%)。推文负面的(19.27%)多于正面的,最常表达的负面情绪是恐惧(13.62%)和悲伤(12.47%)。同时,信任是最常表达的正面情绪,用于表达对口罩、政策和医护人员帮助的信任。最后,我们检测到频繁共同出现的词汇,如mass和disaster、deadly和disabling、high和risk、public和health、immunocompromised和people、mass和disaster以及deadly和disabling。

结论

该研究提供了关于高危COVID-19群体通过社交媒体表达的担忧和恐惧的证据。必须实施进一步政策以专门保护高危个体的健康和心理健康(例如,纳入此类针对高危COVID-19个体的情感分析,为已实施的预防措施和政策的评估提供信息)。此外,需要开展大量工作对公众进行关于高危个体的教育。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a85c/9580331/628905890a8e/cureus-0014-00000029323-i01.jpg

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