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Diabetes on Twitter: A Sentiment Analysis

机译:Twitter上的糖尿病:情绪分析

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Background: Contents published on social media have an impact on individuals and on their decision making. Knowing the sentiment toward diabetes is fundamental to understanding the impact that such information could have on people affected with this health condition and their family members. The objective of this study is to analyze the sentiment expressed in messages on diabetes posted on Twitter. Method: Tweets including one of the terms “diabetes,” “t1d,” and/or “t2d” were extracted for one week using the Twitter standard API. Only the text message and the number of followers of the users were extracted. The sentiment analysis was performed by using SentiStrength. Results: A total of 67?421 tweets were automatically extracted, of those 3.7% specifically referred to T1D; and 6.8% specifically mentioned T2D. One or more emojis were included in 7.0% of the posts. Tweets specifically mentioning T2D and that did not include emojis were significantly more negative than the tweets that included emojis (–2.22 vs ?1.48, P < .001). Tweets on T1D and that included emojis were both significantly more positive and also less negative than tweets without emojis (1.71 vs 1.49 and ?1.31 vs ?1.50, respectively; P < .005). The number of followers had a negative association with positive sentiment strength ( r = –.023, P < .001) and a positive association with negative sentiment ( r = .016, P < .001). Conclusion: The use of sentiment analysis techniques on social media could increase our knowledge of how social media impact people with diabetes and their families and could help to improve public health strategies.
机译:背景:在社交媒体上发布的内容会影响个人及其决策。了解糖尿病的情绪是了解此类信息可能对受此健康状况影响的人们及其家人的影响的基础。这项研究的目的是分析在Twitter上发布的有关糖尿病的信息中表达的情感。方法:使用Twitter标准API将包含“糖尿病”,“ t1d”和/或“ t2d”之一的推文提取一周。仅提取文本消息和用户的关注者数量。使用SentiStrength进行情感分析。结果:总共自动提取了67?421条推文,其中3.7%专指T1D;和6.8%明确提到了T2D。 7.0%的帖子中包含一种或多种表情符号。特别提及T2D且不包含表情符号的推文与包含表情符号的推文相比,负面影响明显更大(–2.22对1.48,P <.001)。与没有表情符号的推文相比,T1D上的推文以及包含表情符号的推文既明显更积极,也更不消极(分别为1.71 vs 1.49和?1.31 vs?1.50; P <.005)。追随者数量与情感强度呈负相关(r = –.023,P <.001),与情感呈负相关(r = .016,P <.001)。结论:在社交媒体上使用情绪分析技术可以增加我们对社交媒体如何影响糖尿病患者及其家人的了解,并有助于改善公共卫生策略。

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