Health stigma on Twitter: investigating the prevalence and type of stigma communication in tweets about different conditions and disorders

IF 1.5 Q2 COMMUNICATION
Richard Brown, Elizabeth Sillence, Lynne Coventry, Dawn Branley-Bell, Claire Murphy-Morgan, Abigail C. Durrant
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Abstract

Background Health-related stigma can act as a barrier to seeking treatment and can negatively impact wellbeing. Comparing stigma communication across different conditions may generate insights previously lacking from condition-specific approaches and help to broaden our understanding of health stigma as a whole. Method A sequential explanatory mixed-methods approach was used to investigate the prevalence and type of health-related stigma on Twitter by extracting 1.8 million tweets referring to five potentially stigmatized health conditions and disorders (PSHCDs): Human Immunodeficiency Virus (HIV)/Acquired Immunodeficiency Syndrome (AIDS), Diabetes, Eating Disorders, Alcoholism, and Substance Use Disorders (SUD). Firstly, 1,500 tweets were manually coded by stigma communication type, followed by a larger sentiment analysis ( n = 250,000). Finally, the most prevalent category of tweets, “ Anti-Stigma and Advice ” ( n = 273), was thematically analyzed to contextualize and explain its prevalence. Results We found differences in stigma communication between PSHCDs. Tweets referring to substance use disorders were frequently accompanied by messages of societal peril. Whereas, HIV/AIDS related tweets were most associated with potential labels of stigma communication. We found consistencies between automatic tools for sentiment analysis and manual coding of stigma communication. Finally, the themes identified by our thematic analysis of anti-stigma and advice were Social Understanding, Need for Change, Encouragement and Support , and Information and Advice . Conclusions Despite one third of health-related tweets being manually coded as potentially stigmatizing, the notable presence of anti-stigma suggests that efforts are being made by users to counter online health stigma. The negative sentiment and societal peril associated with substance use disorders reflects recent suggestions that, though attitudes have improved toward physical diseases in recent years, stigma around addiction has seen little decline. Finally, consistencies between our manual coding and automatic tools for identifying language features of harmful content, suggest that machine learning approaches may be a reasonable next step for identifying general health-related stigma online.
推特上的健康污名:调查关于不同情况和疾病的推特上的污名传播的流行程度和类型
背景与健康相关的耻辱感可能成为寻求治疗的障碍,并可能对健康产生负面影响。比较不同条件下的病耻感传播可能会产生以前缺乏特定条件方法的见解,并有助于扩大我们对整体健康病耻感的理解。方法采用顺序解释混合方法,通过提取180万条涉及人类免疫缺陷病毒(HIV)/获得性免疫缺陷综合征(AIDS)、糖尿病、饮食失调、酒精中毒和物质使用障碍(SUD)五种可能被污名化的健康状况和疾病(pshcd)的推文,调查Twitter上与健康相关的污名化的流行程度和类型。首先,根据污名传播类型手动编码1500条推文,然后进行更大的情感分析(n = 25万)。最后,对最普遍的推文类别“反污名和建议”(n = 273)进行主题分析,以背景化和解释其流行程度。结果发现pshcd间的柱头交流存在差异。提到物质使用障碍的推文经常伴随着社会危险的信息。然而,与艾滋病毒/艾滋病相关的推文与潜在的污名传播标签最相关。我们发现情绪分析的自动工具与污名传播的手动编码之间存在一致性。最后,通过我们对反污名和建议的专题分析确定的主题是社会理解、变革需求、鼓励和支持以及信息和建议。尽管三分之一与健康相关的推文被人工编码为潜在的污名化,但反污名化的显著存在表明,用户正在努力对抗在线健康污名化。与药物使用障碍相关的负面情绪和社会危险反映了最近的一些建议,即尽管近年来人们对身体疾病的态度有所改善,但围绕成瘾的耻辱感几乎没有下降。最后,我们在识别有害内容的语言特征方面的手动编码和自动工具之间的一致性表明,机器学习方法可能是在线识别一般与健康相关的污名的合理下一步。
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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来源期刊
CiteScore
3.30
自引率
8.30%
发文量
284
审稿时长
14 weeks
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