将网络搜索量作为意大利蜱传脑炎(TBE)近实时辅助监测工具

IF 3.1 2区 医学 Q2 INFECTIOUS DISEASES Ticks and Tick-borne Diseases Pub Date : 2024-03-13 DOI:10.1016/j.ttbdis.2024.102332
Alexander Domnich , Allegra Ferrari , Matilde Ogliastro , Andrea Orsi , Giancarlo Icardi
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引用次数: 0

摘要

互联网是获取健康相关信息的重要途径,通过网络查询生成的数据已被越来越多地用作传染病监测和预测的补充来源,并可部分解决报告不足的问题。在这项研究中,我们评估了与蜱传脑炎(TBE)相关的互联网搜索量是否可作为意大利蜱传脑炎监测的补充工具。我们提取了 2017 年 1 月至 2022 年 9 月期间谷歌趋势(GT)中与 TBE 相关信息的月度数据,这些数据与意大利现有的 TBE 报告时间序列相对应。通过应用季节性自回归综合移动平均(SARIMA)模型,结合或不结合 GT 数据,进行了时间序列建模。与蜱虫叮咬相关的搜索词最能反映观察到的 TBE 病例的时间分布,相关系数为 0.81(95 % CI:0.71-0.88)。特别是,报告的 TBE 病例数和 GT 搜索量都主要出现在夏季。在 6 年中,有 4 年的疾病通报高峰与谷歌搜索高峰相吻合。校准后,将包含或不包含 GT 数据的 SARIMA 模型应用于验证集。有 GT 数据的模型所做的回顾性预测与较低的预测误差有关,并能准确预测高峰时间。相比之下,传统的 SARIMA 模型低估了 TBE 通知的实际数量,低估了 65%。及时性、易用性、低成本和透明度使得对与肺结核相关的互联网搜索查询的监测成为意大利肺结核传统监测方法的有益补充。
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Web search volume as a near-real-time complementary surveillance tool of tick-borne encephalitis (TBE) in Italy

The Internet is an important gateway for accessing health-related information, and data generated through web queries have been increasingly used as a complementary source for monitoring and forecasting of infectious diseases and they may partially address the issue of underreporting. In this study, we assessed whether tick-borne encephalitis (TBE)-related Internet search volume may be useful as a complementary tool for TBE surveillance in Italy. Monthly Google Trends (GT) data for TBE-related information were extracted for the period between January 2017 and September 2022, corresponding to the available time series of TBE notifications in Italy. Time series modeling was performed by applying seasonal autoregressive integrated moving average (SARIMA) models with or without GT data. The search terms relative to tick bites reflected best the observed temporal distribution of TBE cases, showing a correlation coefficient of 0.81 (95 % CI: 0.71–0.88). Particularly, both the reported number of TBE cases and GT searches occurred mainly during the summer. The peak of disease notifications coincided with that of Google searches in 4 of 6 years. Once calibrated, SARIMA models with or without GT data were applied to a validation set. Retrospective forecast made by the model with GT data was associated with a lower prediction error and accurately predicted the peak timing. By contrast, the traditional SARIMA model underestimated the actual number of TBE notifications by 65 %. Timeliness, easy availability, low cost and transparency make monitoring of the TBE-related Internet search queries a promising addition to the traditional methods of TBE surveillance in Italy.

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来源期刊
Ticks and Tick-borne Diseases
Ticks and Tick-borne Diseases INFECTIOUS DISEASES-MICROBIOLOGY
CiteScore
6.90
自引率
12.50%
发文量
185
审稿时长
6-12 weeks
期刊介绍: Ticks and Tick-borne Diseases is an international, peer-reviewed scientific journal. It publishes original research papers, short communications, state-of-the-art mini-reviews, letters to the editor, clinical-case studies, announcements of pertinent international meetings, and editorials. The journal covers a broad spectrum and brings together various disciplines, for example, zoology, microbiology, molecular biology, genetics, mathematical modelling, veterinary and human medicine. Multidisciplinary approaches and the use of conventional and novel methods/methodologies (in the field and in the laboratory) are crucial for deeper understanding of the natural processes and human behaviour/activities that result in human or animal diseases and in economic effects of ticks and tick-borne pathogens. Such understanding is essential for management of tick populations and tick-borne diseases in an effective and environmentally acceptable manner.
期刊最新文献
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