公众对哮喘信息在线搜索的兴趣:来自谷歌趋势分析的见解。

IF 2.6 3区 医学 Q2 RESPIRATORY SYSTEM
Marsa Gholamzadeh, Mehrnaz Asadi Gharabaghi, Hamidreza Abtahi
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引用次数: 0

摘要

背景:谷歌Trends (GT)是一个免费的工具,可以提供公众对特定主题的兴趣和信息寻求行为的见解。在本研究中,我们利用患者搜索史的GT数据来更好地了解他们对哮喘的问题和信息需求。方法:提取哮喘相关关键词的相对GT搜索量(RSV),探索2004 - 2024年英语和波斯语哮喘相关疾病的信息寻求行为,并评估网络搜索模式。此外,还进行了相关分析,以评估与哮喘搜索相关的术语。然后,开发了AutoRegressive预测模型来估计哮喘相关搜索的未来模式和哮喘患者的信息需求。结果:20年哮喘相关关键词RSV均值为41.79±6.07。研究人员发现,虽然在过去十年中,与哮喘相关的搜索量在波斯语国家呈现出持续上升的趋势,但除了在COVID-19大流行期间出现峰值外,英语国家的此类搜索量变化较小。相关对象的相关分析显示,“空气污染”、“感染”、“失眠”与哮喘呈正相关。在检索到的谷歌趋势数据上开发自回归预测模型,揭示了全球哮喘相关搜索兴趣的季节性模式。相比之下,这些模型预测,在未来几十年里,讲波斯语的患者中,关于哮喘的信息寻求行为会越来越多。结论:基于语言和地域背景,人们搜索和获取哮喘信息的方式存在显著差异。在英语国家,搜索往往集中在更广泛的哮喘相关主题,如污染和感染,可能是由于全面的哮喘资源的可用性。相比之下,说波斯语的人优先考虑了解哮喘样症状、药物和补充治疗的具体方面。为了满足这些不同的信息需求,卫生组织应该根据这些不同的需求定制内容。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Public interest in online searching of asthma information: insights from a Google trends analysis.

Background: Google Trends (GT) is a free tool that provides insights into the public's interest and information-seeking behavior on specific topics. In this study, we utilized GT data on patients' search history to better understand their questions and information needs regarding asthma.

Methods: We extracted the relative GT search volume (RSV) for keywords associated with asthma to explore information-seeking behaviors and assess internet search patterns regarding asthma disease from 2004 to 2024 in both English and Persian languages. In addition, a correlation analysis was conducted to assess terms correlated with asthma searches. Then, the AutoRegressive predictive models were developed to estimate future patterns of asthma-related searches and the information needs of individuals with asthma.

Results: The analysis revealed that the mean total RSV for asthma-related keywords over the 20-year period was 41.79 ± 6.07. The researchers found that while asthma-related search volume has shown a consistent upward trend in Persian-speaking countries over the last decade, English-speaking countries have experienced less variability in such searches except for a spike during the COVID-19 pandemic. The correlation analysis of related subjects showed that "air pollution", "infection", and "insomnia" have a positive correlation with asthma. Developing AutoRegressive predictive models on retrieved Google Trends data revealed a seasonal pattern in global asthma-related search interest. In contrast, the models forecasted a growing increase in information-seeking behaviors regarding asthma among Persian-speaking patients over the coming decades.

Conclusions: There are significant differences in how people search for and access asthma information based on their language and regional context. In English-speaking countries, searches tend to focus on broader asthma-related topics like pollution and infections, likely due to the availability of comprehensive asthma resources. In contrast, Persian speakers prioritize understanding specific aspects of asthma-like symptoms, medications, and complementary treatments. To address these divergent information needs, health organizations should tailor content to these divergent needs.

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来源期刊
BMC Pulmonary Medicine
BMC Pulmonary Medicine RESPIRATORY SYSTEM-
CiteScore
4.40
自引率
3.20%
发文量
423
审稿时长
6-12 weeks
期刊介绍: BMC Pulmonary Medicine is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of pulmonary and associated disorders, as well as related molecular genetics, pathophysiology, and epidemiology.
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