自闭症在线社区中讨论和使用的治疗方法编目。

Shaodian Zhang, Tian Kang, Lin Qiu, Weinan Zhang, Yong Yu, Noémie Elhadad
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摘要

大量患者在在线健康社区(OHC)中讨论治疗方法。健康研究人员感兴趣的一个研究问题是,在线健康社区中讨论的治疗方法最终是否会被社区成员在现实生活中使用。在本文中,我们利用机器学习方法自动识别自闭症在线社区中提及治疗方法的归因。我们工作的背景是在线自闭症社区,家长们在这里交流对自闭症谱系障碍患儿的护理支持。我们的方法能够区分与患者、护理人员和其他人相关的治疗讨论,并识别治疗是否被实际采用。我们根据横向和纵向两类内容分析,调查了患者不仅讨论而且使用的治疗方法。通过内容分析确定的治疗方法有助于建立真实世界的治疗方法目录。这项研究结果为今后将真实世界的药物使用情况与既定临床指南进行比较的研究奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Cataloguing Treatments Discussed and Used in Online Autism Communities.

A large number of patients discuss treatments in online health communities (OHCs). One research question of interest to health researchers is whether treatments being discussed in OHCs are eventually used by community members in their real lives. In this paper, we rely on machine learning methods to automatically identify attributions of mentions of treatments from an online autism community. The context of our work is online autism communities, where parents exchange support for the care of their children with autism spectrum disorder. Our methods are able to distinguish discussions of treatments that are associated with patients, caregivers, and others, as well as identify whether a treatment is actually taken. We investigate treatments that are not just discussed but also used by patients according to two types of content analysis, cross-sectional and longitudinal. The treatments identified through our content analysis help create a catalogue of real-world treatments. This study results lay the foundation for future research to compare real-world drug usage with established clinical guidelines.

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