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“帮帮我们!”:对封控期间微博上 COVID-19 求助帖的内容分析。

"Help Us!": a content analysis of COVID-19 help-seeking posts on Weibo during the first lockdown.

机构信息

Faculty of Humanities and Arts, Macau University of Science and Technology, R309, Wailong Avenida, Macau SAR, Taipa, China.

School of Journalism and Communication, Tsinghua University, Beijing, China.

出版信息

BMC Public Health. 2023 Apr 19;23(1):710. doi: 10.1186/s12889-023-15578-y.

Abstract

BACKGROUND

Social media is playing an increasingly important role in public emergencies for help-seekers, especially during the global COVID-19 pandemic. Wuhan, China, firstly official reported COVID-19 cases and implemented lockdown measures to prevent the spread of the virus. People during the first lockdown were restricted from seeking help face-to-face. Social media is more prominent as an online tool for people seeking help, especially for patients, than in other stages of the COVID-19 pandemic.

OBJECTIVE

This study aimed to explore the urgent needs presented in help-seeking posts in Wuhan during the first COVID-19 lockdown, the content features of these posts, and how they influenced online user engagement.

METHODS

This study collected posts from Weibo posted with specific help tags during the first COVID-19 lockdown in Wuhan: from 23 January 2020 to 24 March 2020, and eventually received 2055 data, including textual content, comments, retweets, and publishing location. Content analysis was conducted, and manual coding was performed on help-seeking typology, narrative mode, narrative subject, and emotional valence.

RESULTS

The result showed that help-seeking posts primarily were seeking medical (97.7%). Features of these posts were mainly adopting a mixed narrative mode (46.4%), released by relatives of patients (61.7%), and expressing negative emotions (93.2%). Chi-square tests suggested that help-seeking posts with mixed narrative modes released by relatives express more frequent negative emotions. Results of negative binomial regression indicated posts of seeking information (B = 0.52, p < .001, e = 1.68), with mixed narrative mode (B = 0.63, p < .001, e = 1.86), released by themselves (as referential groups) and with neutral emotions increased comments. Posts of seeking medical (B = 0.57, p < .01, e = 1.77), with mixed narrative mode (B = 1.88, p < .001, e = 6.53), released by people of unrelated patients (B = 0.47, p < .001, e = 1.60) and with neutral emotions increased retweets.

CONCLUSIONS

This study provides evidence of what actual public demands are to be considered and addressed by governments and public administrators before implementing closure and lockdown policies to limit the spread of the virus. Meanwhile, our findings offer strategies for people help-seeking on social media in similar public health emergencies.

摘要

背景

社交媒体在帮助寻求者应对公共突发事件方面发挥着越来越重要的作用,尤其是在全球 COVID-19 大流行期间。中国武汉首次报告 COVID-19 病例,并实施封锁措施以防止病毒传播。在第一次封锁期间,人们被限制面对面寻求帮助。社交媒体作为人们寻求帮助的在线工具,比 COVID-19 大流行的其他阶段更为突出,特别是对于患者。

目的

本研究旨在探讨武汉 COVID-19 第一次封锁期间帮助寻求者在帮助寻求帖子中提出的紧急需求、这些帖子的内容特征,以及它们如何影响在线用户参与度。

方法

本研究从 2020 年 1 月 23 日至 2020 年 3 月 24 日期间,从微博上收集了带有武汉 COVID-19 第一次封锁期间特定帮助标签的帖子,最终收到了 2055 条数据,包括文本内容、评论、转发和发布地点。进行了内容分析,并对帮助寻求类型学、叙述模式、叙述主体和情感效价进行了手动编码。

结果

结果表明,帮助寻求帖子主要是寻求医疗帮助(97.7%)。这些帖子的特点主要是采用混合叙述模式(46.4%),由患者的亲属发布(61.7%),并表达负面情绪(93.2%)。卡方检验表明,采用混合叙述模式、由亲属发布并表达更频繁负面情绪的帮助寻求帖子。负二项回归结果表明,发布信息的帖子(B=0.52,p<.001,e=1.68)、采用混合叙述模式(B=0.63,p<.001,e=1.86)、由自己(作为参照群体)发布且具有中性情绪的帖子增加了评论。发布医疗帮助的帖子(B=0.57,p<.01,e=1.77)、采用混合叙述模式(B=1.88,p<.001,e=6.53)、由无关患者的人发布(B=0.47,p<.001,e=1.60)且具有中性情绪的帖子增加了转发。

结论

本研究提供了证据,说明在实施关闭和封锁政策以限制病毒传播之前,政府和公共管理人员应考虑和解决哪些实际的公众需求。同时,我们的研究结果为社交媒体上处于类似公共卫生紧急情况的人们提供了帮助寻求策略。

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