用于湿疹和牛皮癣社交媒体评论大规模分析的自然语言处理

Jack A. Cummins , Guohai Zhou , Vinod E. Nambudiri
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引用次数: 0

摘要

皮肤病患者广泛使用社交媒体工具。湿疹和牛皮癣是两种最常见的炎症性皮肤病,在社交媒体网站Reddit上有很好的代表性。我们使用自然语言处理工具来检查reddit r/牛皮癣和r/湿疹子网站(合并用户群>;187000)中的评论,跟踪评论者对牛皮癣、湿疹常见治疗方法的兴趣水平和情绪,以及对药物不良反应的讨论。使用自然语言处理工具检索和处理来自reddit r/湿疹(n=196571)和r/牛皮癣(n=123144)子版块2014年至2020年的所有评论。2014年至2020年,与抗菌疗法、生活方式改变和泼尼松相关的r/湿疹评论量下降,而光疗评论保持稳定,dupilumab评论量增加。美国食品药品监督管理局批准后,新疗法(包括生物制剂和阿普司特)的r/银屑病评论量增加,而依那西普、阿达木单抗和甲氨蝶呤等旧疗法的评论量随着时间的推移而下降。在美国食品药品监督管理局批准后的几年里,情绪得分趋于下降。在银屑病治疗中,钙三烯和品牌钙三烯/倍他米松泡沫的情绪最高,而阿普司特的总体情绪得分最低。这些分析还发现了与湿疹和银屑病治疗相关的患者兴趣水平和情绪的变化,这表明还有一个需要进一步研究的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Natural Language Processing for Large-Scale Analysis of Eczema and Psoriasis Social Media Comments

Natural Language Processing for Large-Scale Analysis of Eczema and Psoriasis Social Media Comments

Natural Language Processing for Large-Scale Analysis of Eczema and Psoriasis Social Media Comments

Natural Language Processing for Large-Scale Analysis of Eczema and Psoriasis Social Media Comments

Social media tools are widely used by dermatologic patients. Eczema and psoriasis, two of the most common inflammatory skin diseases, are well-represented on the social media site Reddit. We used natural language processing tools to examine comments in subreddits r/psoriasis and r/eczema (combined user base >187,000), tracking commenters’ interest levels and sentiments related to common treatments for psoriasis and eczema as well as discussions of adverse drug reactions. All comments from 2014–2020 from the subreddits r/eczema (n = 196,571) and r/psoriasis (n = 123,144) were retrieved and processed using natural language processing tools. Comment volume in r/eczema related to antibacterial therapies, lifestyle changes, and prednisone decreased from 2014–2020, whereas phototherapy comments remained stable, and dupilumab comment volume increased. Comment volume in r/psoriasis for newer therapeutics (including biologics and apremilast) increased after Food and Drug Administration approval, whereas older therapies such as etanercept, adalimumab, and methotrexate decreased over time. Sentiment scores tended to decrease in the years after Food and Drug Administration approval. Among psoriasis treatments, calcipotriene and branded calcipotriene/betamethasone foam had the highest sentiment, whereas apremilast had the lowest overall sentiment score. These analyses also identified changes in patient interest levels and sentiment related to eczema and psoriasis treatments, suggesting an area for additional research.

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