Gbashi Sefater, Adebo Oluwafemi Ayodeji, Doorsamy Wesley, Njobeh Patrick Berka
Faculty of Science, University of Johannesburg, Johannesburg, South Africa.
Institute for Intelligent Systems, University of Johannesburg, Johannesburg, South Africa.
JMIR Med Inform. 2021 Mar 16;9(3):e22916. doi: 10.2196/22916.
The global onset of COVID-19 has resulted in substantial public health and socioeconomic impacts. An immediate medical breakthrough is needed. However, parallel to the emergence of the COVID-19 pandemic is the proliferation of information regarding the pandemic, which, if uncontrolled, cannot only mislead the public but also hinder the concerted efforts of relevant stakeholders in mitigating the effect of this pandemic. It is known that media communications can affect public perception and attitude toward medical treatment, vaccination, or subject matter, particularly when the population has limited knowledge on the subject.
This study attempts to systematically scrutinize media communications (Google News headlines or snippets and Twitter posts) to understand the prevailing sentiments regarding COVID-19 vaccines in Africa.
A total of 637 Twitter posts and 569 Google News headlines or descriptions, retrieved between February 2 and May 5, 2020, were analyzed using three standard computational linguistics models (ie, TextBlob, Valence Aware Dictionary and Sentiment Reasoner, and Word2Vec combined with a bidirectional long short-term memory neural network).
Our findings revealed that, contrary to general perceptions, Google News headlines or snippets and Twitter posts within the stated period were generally passive or positive toward COVID-19 vaccines in Africa. It was possible to understand these patterns in light of increasingly sustained efforts by various media and health actors in ensuring the availability of factual information about the pandemic.
This type of analysis could contribute to understanding predominant polarities and associated potential attitudinal inclinations. Such knowledge could be critical in informing relevant public health and media engagement policies.
新冠疫情在全球爆发已对公共卫生和社会经济产生了重大影响。迫切需要医学上的突破。然而,与新冠疫情大流行同时出现的是有关该疫情的信息大量扩散,如果不加控制,这些信息不仅会误导公众,还会阻碍相关利益攸关方为减轻疫情影响而做出的协同努力。众所周知,媒体传播会影响公众对医疗、疫苗接种或相关主题的认知和态度,尤其是当民众对该主题了解有限时。
本研究试图系统地审视媒体传播内容(谷歌新闻标题或摘要以及推特帖子),以了解非洲对新冠疫苗的普遍看法。
使用三种标准的计算语言学模型(即TextBlob、情感感知词典和情感推理器以及结合双向长短期记忆神经网络的Word2Vec),对2020年2月2日至5月5日期间检索到的637条推特帖子和569条谷歌新闻标题或描述进行了分析。
我们的研究结果显示,与普遍看法相反,在所述期间,谷歌新闻标题或摘要以及推特帖子对非洲的新冠疫苗总体上呈消极或积极态度。鉴于各种媒体和卫生行为体不断努力确保提供有关该疫情的事实信息,有可能理解这些模式。
这种类型的分析有助于理解主要的两极分化以及相关的潜在态度倾向。这些知识对于为相关的公共卫生和媒体参与政策提供信息可能至关重要。