COVID-19 and thyroid disease: An infodemiological pilot study.

Ioannis Ilias, Charalampos Milionis, Eftychia Koukkou
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引用次数: 1

Abstract

Background: Google Trends searches for symptoms and/or diseases may reflect actual disease epidemiology. Recently, Google Trends searches for coronavirus disease 2019 (COVID-19)-associated terms have been linked to the epidemiology of COVID-19. Some studies have linked COVID-19 with thyroid disease.

Aim: To assess COVID-19 cases per se vs COVID-19-associated Google Trends searches and thyroid-associated Google Trends searches.

Methods: We collected data on worldwide weekly Google Trends searches regarding "COVID-19", "severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2)", "coronavirus", "smell", "taste", "cough", "thyroid", "thyroiditis", and "subacute thyroiditis" for 92 wk and worldwide weekly COVID-19 cases' statistics in the same time period. The study period was split in half (approximately corresponding to the preponderance of different SARS-COV-2 virus variants) and in each time period we performed cross-correlation analysis and mediation analysis.

Results: Significant positive cross-correlation function values were noted in both time periods. More in detail, COVID-19 cases per se were found to be associated with no lag with Google Trends searches for COVID-19 symptoms in the first time period and in the second time period to lead searches for symptoms, COVID-19 terms, and thyroid terms. COVID-19 cases per se were associated with thyroid-related searches in both time periods. In the second time period, the effect of "COVID-19" searches on "thyroid' searches was significantly mediated by COVID-19 cases (P = 0.048).

Conclusion: Searches for a non-specific symptom or COVID-19 search terms mostly lead Google Trends thyroid-related searches, in the second time period. This time frame/sequence particularly in the second time period (noted by the preponderance of the SARS-COV-2 delta variant) lends some credence to associations of COVID-19 cases per se with (apparent) thyroid disease (via searches for them).

Abstract Image

COVID-19与甲状腺疾病:一项信息流行病学初步研究。
背景:谷歌趋势搜索症状和/或疾病可能反映实际的疾病流行病学。最近,与2019冠状病毒病(COVID-19)相关的谷歌趋势搜索词与COVID-19的流行病学有关。一些研究将COVID-19与甲状腺疾病联系起来。目的:评估COVID-19病例本身与COVID-19相关的谷歌趋势搜索和甲状腺相关的谷歌趋势搜索。方法:收集全球范围内连续92周关于“COVID-19”、“严重急性呼吸综合征冠状病毒2”、“冠状病毒”、“气味”、“味道”、“咳嗽”、“甲状腺”、“甲状腺炎”、“亚急性甲状腺炎”的每周谷歌趋势搜索数据以及同期全球范围内每周COVID-19病例统计数据。研究期被分成两半(大约对应于不同SARS-COV-2病毒变体的优势),在每个时间段我们进行了相互关联分析和中介分析。结果:两个时间段均存在显著的正相关函数值。更详细地说,研究发现,COVID-19病例本身与谷歌趋势在第一个时间段内搜索COVID-19症状和在第二个时间段内搜索症状、COVID-19术语和甲状腺术语没有滞后相关。在这两个时间段内,COVID-19病例本身与甲状腺相关的搜索有关。在第二个时间段,COVID-19病例显著介导了“COVID-19”搜索对“甲状腺”搜索的影响(P = 0.048)。结论:在第二个时间段内,非特异性症状或COVID-19搜索词的搜索量主要领先于谷歌趋势甲状腺相关搜索。这个时间框架/序列,特别是在第二个时间段(由SARS-COV-2 δ型变异的优势所指出),在一定程度上证明了COVID-19病例本身与(明显的)甲状腺疾病(通过搜索)之间的关联。
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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