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Mapping and Modeling of Discussions Related to Gastrointestinal Discomfort in French-Speaking Online Forums: Results of a 15-Year Retrospective Infodemiology Study

机译:法语在线论坛中胃肠道不适相关的讨论的映射和建模:15年来的回顾性的型信息学研究

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摘要

BackgroundGastrointestinal (GI) discomfort is prevalent and known to be associated with impaired quality of life. Real-world information on factors of GI discomfort and solutions used by people is, however, limited. Social media, including online forums, have been considered a new source of information to examine the health of populations in real-life settings. ObjectiveThe aims of this retrospective infodemiology study are to identify discussion topics, characterize users, and identify perceived determinants of GI discomfort in web-based messages posted by users of French social media. MethodsMessages related to GI discomfort posted between January 2003 and August 2018 were extracted from 14 French-speaking general and specialized publicly available online forums. Extracted messages were cleaned and deidentified. Relevant medical concepts were determined on the basis of the Medical Dictionary for Regulatory Activities and vernacular terms. The identification of discussion topics was carried out by using a correlated topic model on the basis of the latent Dirichlet allocation. A nonsupervised clustering algorithm was applied to cluster forum users according to the reported symptoms of GI discomfort, discussion topics, and activity on online forums. Users’ age and gender were determined by linear regression and application of a support vector machine, respectively, to characterize the identified clusters according to demographic parameters. Perceived factors of GI discomfort were classified by a combined method on the basis of syntactic analysis to identify messages with causality terms and a second topic modeling in a relevant segment of phrases. ResultsA total of 198,866 messages associated with GI discomfort were included in the analysis corpus after extraction and cleaning. These messages were posted by 36,989 separate web users, most of them being women younger than 40 years. Everyday life, diet, digestion, abdominal pain, impact on the quality of life, and tips to manage stress were among the most discussed topics. Segmentation of users identified 5 clusters corresponding to chronic and acute GI concerns. Diet topic was associated with each cluster, and stress was strongly associated with abdominal pain. Psychological factors, food, and allergens were perceived as the main causes of GI discomfort by web users. ConclusionsGI discomfort is actively discussed by web users. This study reveals a complex relationship between food, stress, and GI discomfort. Our approach has shown that identifying web-based discussion topics associated with GI discomfort and its perceived factors is feasible and can serve as a complementary source of real-world evidence for caregivers.
机译:背景形象(GI)不适是普遍的,并且已知与生活质量受损相关。然而,有关人们使用的GI不适和解决方案的真实信息是有限的。社交媒体(包括在线论坛)被认为是审查现实生活中的人口健康的新信息来源。目的这一回顾性的信息化学研究的目的是识别讨论主题,表征用户,并识别法国社交媒体用户发布的基于网络的消息中的GI不适的感知决定因素。涉及2003年1月至2018年8月之间的GI不适相关的方法,从14名法语一般和专门公开的在线论坛中提取。提取的消息被清洗并脱厘。基于监管活动和白话术语的医学词典确定了相关的医学概念。通过基于潜在的Dirichlet分配使用相关主题模型来执行讨论主题的识别。根据GI不适,讨论主题和在线论坛活动的症状,对群集论坛用户应用于群集论坛用户的非经验化聚类算法。用户年龄和性别分别由支撑向量机的线性回归和应用来确定根据人口统计参数表征所识别的群集。在句法分析的基础上,通过组合方法对GI不适的感知因素进行分类,以识别因果关系术语的消息和在相关的短语的相关段中的第二个主题建模。结果在提取和清洁后,分析语料库中包含与GI不适相关的198,866条消息。这些消息发布了36,989个单独的网络用户,其中大多数是40年来的女性。日常生活,饮食,消化,腹痛,对生活质量的影响以及管理压力的提示是最讨论的主题之一。用户的分割鉴定了与慢性和急性GI对应的5个簇。饮食课题与每个集群有关,压力与腹痛强烈相关。心理因子,食物和过敏原因被认为是网络用户GI不适的主要原因。结论Web用户积极讨论了Groundfort。本研究揭示了食物,压力和GI不适之间的复杂关系。我们的方法表明,识别与GI不适相关的基于网络的讨论主题,并且其感知因素是可行的,可以作为护理人员的真实证据的互补来源。

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