MEDCIDS-Department of Community Medicine, Information and Health Decision Sciences, Faculty of Medicine, University of Porto, Porto, Portugal.
Centre for Health Technology and Services Research, Health Research Network (CINTESIS@RISE), Faculty of Medicine, University of Porto, Porto, Portugal.
Clin Exp Allergy. 2024 Jul;54(7):500-508. doi: 10.1111/cea.14479. Epub 2024 Apr 3.
Analysis of X (formerly Twitter) posts can inform on the interest/perceptions that social media users have on health subjects. In this study, we aimed to analyse tweets on allergic conditions, comparing them with surveillance data.
We retrieved tweets from England on "allergy," "asthma," and "allergic rhinitis," published between 2016 and 2021. We estimated the correlation between the frequency of tweets on "asthma" and "allergic rhinitis" and English surveillance data on the incidence of asthma and allergic rhinitis medical visits. We performed sentiment analysis, computing a score informing on the emotional tone of assessed tweets. We applied a topic modelling approach to identify topics (clusters of words frequently occurring together) for tweets on each assessed condition.
We analysed a total of 13,605 tweets on "allergy," 7767 tweets on "asthma," and 11,974 tweets on "allergic rhinitis." Food-related words were preponderant on tweets on "allergy," while "eyes" was the most frequent meaningful word on "allergy rhinitis" tweets. We observed seasonal patterns for tweets on "allergic rhinitis," both in their frequency and sentiment - the incidence of allergic rhinitis medical visits was moderately to strongly correlated with the frequency (ρ = 0.866) and sentiment (ρ = -0.474) of tweets on "allergic rhinitis." For tweets on "asthma," no such patterns/correlations were observed. The average sentiment score was negative for all assessed conditions, ranging from -0.004 ("asthma") to -0.083 ("allergic rhinitis").
Tweets on "allergic rhinitis" displayed a seasonal pattern regarding their frequency and sentiment, which correlated with surveillance data. No such patterns were observed for "asthma."
对 X(前称 Twitter)帖子的分析可以了解社交媒体用户对健康主题的兴趣/看法。在这项研究中,我们旨在分析有关过敏情况的推文,并将其与监测数据进行比较。
我们检索了 2016 年至 2021 年间在英格兰发布的关于“过敏”、“哮喘”和“过敏性鼻炎”的推文。我们估计了关于哮喘和过敏性鼻炎就诊的发病率的推文频率与英国监测数据之间的相关性。我们进行了情感分析,计算了一个分数来告知评估推文的情绪基调。我们应用主题建模方法来识别每个评估条件的推文的主题(经常一起出现的单词群)。
我们分析了总共 13605 条关于“过敏”的推文、7767 条关于“哮喘”的推文和 11974 条关于“过敏性鼻炎”的推文。食物相关的词在关于“过敏”的推文中占主导地位,而“眼睛”是关于“过敏性鼻炎”推文的最常见有意义的词。我们观察到了关于“过敏性鼻炎”的推文在频率和情绪方面的季节性模式-过敏性鼻炎就诊的发生率与关于“过敏性鼻炎”的推文的频率(ρ=0.866)和情绪(ρ=-0.474)中度至强相关。对于关于“哮喘”的推文,没有观察到这种模式/相关性。所有评估条件的平均情绪得分均为负,范围从-0.004(“哮喘”)到-0.083(“过敏性鼻炎”)。
关于“过敏性鼻炎”的推文在频率和情绪方面显示出季节性模式,与监测数据相关。对于“哮喘”,没有观察到这种模式。