@Article{info:doi/10.2196/39582,作者=“Koss, Jonathan and Bohnet-Joschko, Sabine”,标题=“Reddit用户报告的长期自我用药的社交媒体挖掘:支持药物再利用的可行性研究”,期刊=“JMIR Form Res”,年=“2022”,月=“10”,日=“3”,卷=“6”,数=“10”,页=“e39582”,关键词=“社交媒体挖掘”;毒品再利用;long-COVID;众包;COVID-19;Reddit;社交媒体;内容分析;网络分析;识别算法; treatment", abstract="Background: Since the beginning of the COVID-19 pandemic, over 480 million people have been infected and more than 6 million people have died from COVID-19 worldwide. In some patients with acute COVID-19, symptoms manifest over a longer period, which is also called ``long-COVID.'' Unmet medical needs related to long-COVID are high, since there are no treatments approved. Patients experiment with various medications and supplements hoping to alleviate their suffering. They often share their experiences on social media. Objective: The aim of this study was to explore the feasibility of social media mining methods to extract important compounds from the perspective of patients. The goal is to provide an overview of different medication strategies and important agents mentioned in Reddit users' self-reports to support hypothesis generation for drug repurposing, by incorporating patients' experiences. Methods: We used named-entity recognition to extract substances representing medications or supplements used to treat long-COVID from almost 70,000 posts on the ``/r/covidlonghaulers'' subreddit. We analyzed substances by frequency, co-occurrences, and network analysis to identify important substances and substance clusters. Results: The named-entity recognition algorithm achieved an F1 score of 0.67. A total of 28,447 substance entities and 5789 word co-occurrence pairs were extracted. ``Histamine antagonists,'' ``famotidine,'' ``magnesium,'' ``vitamins,'' and ``steroids'' were the most frequently mentioned substances. Network analysis revealed three clusters of substances, indicating certain medication patterns. Conclusions: This feasibility study indicates that network analysis can be used to characterize the medication strategies discussed in social media. Comparison with existing literature shows that this approach identifies substances that are promising candidates for drug repurposing, such as antihistamines, steroids, or antidepressants. In the context of a pandemic, the proposed method could be used to support drug repurposing hypothesis development by prioritizing substances that are important to users. ", issn="2561-326X", doi="10.2196/39582", url="https://formative.www.mybigtv.com/2022/10/e39582", url="https://doi.org/10.2196/39582", url="http://www.ncbi.nlm.nih.gov/pubmed/36007131" }
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