辅助镇痛药在社交媒体上的用户生成帖子分析:一项机器学习研究。

IF 3.2 3区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Federico Carabot, Carolina Donat-Vargas, Francisco J Lara-Abelenda, Oscar Fraile- Martínez, Javier Santoma, Cielo Garcia-Montero, Teresa Valadés, Luis Gutierrez- Rojas, M A Martinez-González, Miguel Angel Ortega, Melchor Alvarez-Mon, Miguel Angel Alvarez-Mon
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引用次数: 0

摘要

背景:抗癫痫药和抗抑郁药经常用于治疗慢性疼痛,但它们的疗效和潜在的副作用引起了人们的关注,包括依赖性问题。处方增加,有时是欺诈,促使一些国家对抗癫痫药物进行重新分类。我们的目标是从X(以前称为Twitter)的在线讨论中了解对共镇痛药的意见、看法、信念和态度,提供比传统调查更接近现实的见解。方法:在这项横断面研究中,我们收集了2019年1月1日至2020年12月31日期间英语或西班牙语关于共镇痛药的77,183篇公开帖子。总共包括51167个帖子,其中2000个是使用研究人员创建的代码本手工分析的。然后将机器学习分类器应用于剩余的数据集,以确定每种用户类型的出版物数量,并通过内容分析确定类别。结果:在分析的51,167篇帖子中,78%讨论了抗惊厥药,24%讨论了镇痛抗抑郁药(百分比加起来超过100%,因为有1,300篇帖子包含了这两种药物)。只有13%是由医疗保健专业人员撰写的,而67%来自患者。医疗内容占主导地位,70%的人指出药物疗效低,近50%的人提到副作用。非医疗内容包括配药方面的挑战(25%)、对高成本的抱怨(15%)和药物使用的琐屑化(10%)。结论:本研究为公众对共镇痛药的认知提供了有价值的见解。研究结果有助于设计公共卫生宣传,以提高对相关风险的认识,敦促卫生保健提供者和公众优化药物使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of User-Generated Posts on Social Media of Adjuvant Analgesics: A Machine Learning Study.

Background: Antiepileptics and antidepressants are frequently prescribed for chronic pain, but their efficacy and potential adverse effects raise concerns, including dependency issues. Increased prescriptions, sometimes fraudulent, prompted reclassification of antiepileptics in some countries. Our aim is to comprehend opinions, perceptions, beliefs, and attitudes towards co-analgesics from online discussions on X (formerly known as Twitter), offering insights closer to reality than conventional surveys. Methods: In this cross-sectional study, we collected 77,183 public posts about co-analgesics in English or Spanish from January 1st 2019 to December 31st, 2020. A total of 51,167 post were included, and 2,000 were manually analyzed using a researcher-created codebook. Machine learning classifiers were then applied to the remaining datasets to determine the number of publications for each user type and identify categories through content analysis. Results: Of the 51,167 posts analyzed, 78% discussed anticonvulsants and 24% discussed analgesic antidepressants (Percentages add up to more than 100% because there were 1,300 posts containing references to both types of medications). Only 13% were authored by healthcare professionals, while 67% were from patients. Medical content predominated, with 70% noting low medication efficacy and almost 50% referencing side effects. Non-medical content included challenges in dispensing (25%), complaints about high costs (15%), and trivialization of medication use (10%). Conclusions: This study offers valuable insights into public perceptions of co-analgesics. Findings aid in designing public health communications to raise awareness of associated risks, urging both healthcare providers and the public to optimize drug use.

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来源期刊
International Journal of Medical Sciences
International Journal of Medical Sciences MEDICINE, GENERAL & INTERNAL-
CiteScore
7.20
自引率
0.00%
发文量
185
审稿时长
2.7 months
期刊介绍: Original research papers, reviews, and short research communications in any medical related area can be submitted to the Journal on the understanding that the work has not been published previously in whole or part and is not under consideration for publication elsewhere. Manuscripts in basic science and clinical medicine are both considered. There is no restriction on the length of research papers and reviews, although authors are encouraged to be concise. Short research communication is limited to be under 2500 words.
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