推特上的非酒精性脂肪肝:情绪分析

A. Mantovani, Giorgia Beatrice, C. Zusi, A. Dalbeni
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引用次数: 0

摘要

情感分析是一种探索文本的技术,目的是调查隐藏在其中的情感。在医疗保健中使用情感分析可以帮助了解个人如何讨论和感受特定主题。非酒精性脂肪性肝病(NAFLD)是世界上最常见的慢性肝病,并与肝脏和肝外并发症相关,目前,关于使用与NAFLD相关的情绪分析的数据很少。因此,本报告的目的是评估NAFLD在Twitter(全球最受欢迎的社交媒体平台之一)上发布的信息中表达的情绪。我们选择了#脂肪肝,#NAFLD, #NASH和#MAFLD作为Twitter上与NAFLD相关的信息的标签。使用Twitter提供的标准应用程序编程接口收集包含至少一个这些标签的消息。情绪分析显示,与NAFLD相关的信息中隐藏的情绪基本上是中性的,“乳腺癌”和“癌症”是两个最常用的词,这表明大部分信息集中在NAFLD和肝外癌症之间的关系上。相反,NAFLD与心血管疾病之间的关联似乎与Twitter社区不太相关。这些观察结果可能有助于制定更好的公共卫生策略,并促进在社交媒体上阅读和讨论NAFLD(及其并发症)的主题的建设性态度。Mantovani等人的第2页。Metab靶器官损伤2021;1:6 https://dx.doi.org/10.20517/mtod.2021.09
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Nonalcoholic fatty liver disease on Twitter: a sentiment analysis
Sentiment analysis is a technique for exploring a piece of text with the aim to investigate sentiments hidden within it. The use of sentiment analysis in health care could assist in understanding how individuals discuss and feel about a specific topic. Currently, there are scarce data regarding the use of sentiment analysis related to nonalcoholic fatty liver disease (NAFLD), which is the most common chronic liver disease worldwide and is associated with hepatic and extra-hepatic complications. Hence, the aim of this report was to assess the sentiments of NAFLD expressed in messages posted on Twitter, one of the most popular social media platforms worldwide. We chose the hashtags #FattyLiver, #NAFLD, #NASH, and #MAFLD as terms to identify the messages related to NAFLD on Twitter. Messages containing at least one of these hashtags were collected using the standard Application Programming Interface provided by Twitter. The sentiment analysis revealed that sentiments hidden within messages related to NAFLD were substantially neutral and that “breastcancer” and “cancer” were two of the most common words used, suggesting that a large part of messages focused on the relationship between NAFLD and extra-hepatic cancers. Conversely, the association between NAFLD and cardiovascular disease seems to be less relevant for Twitter community. These observations might be useful for developing better public health strategies and for promoting a constructive attitude among subjects that read and discuss about NAFLD (and its complications) on social media. Page 2 of Mantovani et al. Metab Target Organ Damage 2021;1:6 https://dx.doi.org/10.20517/mtod.2021.09 5
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