Department of Clinical Chemistry, Synlab, 28036 Madrid, Spain.
Clinical Laboratory, Infanta Sofia University Hospital, UR Health, 28703 Madrid, Spain.
Viruses. 2023 Feb 2;15(2):421. doi: 10.3390/v15020421.
Tools to predict surges in cases and hospitalizations during the COVID-19 pandemic may help guide public health decisions. Low cycle threshold (CT) counts may indicate greater SARS-CoV-2 concentrations in the respiratory tract, and thereby may be used as a surrogate marker of enhanced viral transmission. Several population studies have found an association between the oscillations in the mean CT over time and the evolution of the pandemic. For the first time, we applied temporal series analysis (Granger-type causality) to validate the CT counts as an epidemiological marker of forthcoming pandemic waves using samples and analyzing cases and hospital admissions during the third pandemic wave (October 2020 to May 2021) in Madrid. A total of 22,906 SARS-CoV-2 RT-PCR-positive nasopharyngeal swabs were evaluated; the mean CT value was 27.4 (SD: 2.1) (22.2% below 20 cycles). During this period, 422,110 cases and 36,727 hospital admissions were also recorded. A temporal association was found between the CT counts and the cases of COVID-19 with a lag of 9-10 days ( ≤ 0.01) and hospital admissions by COVID-19 ( < 0.04) with a lag of 2-6 days. According to a validated method to prove associations between variables that change over time, the short-term evolution of average CT counts in the population may forecast the evolution of the COVID-19 pandemic.
用于预测 COVID-19 大流行期间病例和住院人数激增的工具可能有助于指导公共卫生决策。低循环阈值 (CT) 计数可能表明呼吸道中 SARS-CoV-2 浓度更高,因此可作为病毒传播增强的替代标志物。几项人群研究发现,随着时间的推移,平均 CT 值的波动与大流行的演变之间存在关联。我们首次应用时间序列分析 (格兰杰因果关系) 通过分析马德里第三次大流行波(2020 年 10 月至 2021 年 5 月)期间的样本和病例及住院人数,验证 CT 计数作为即将到来的大流行波的流行病学标志物的有效性。共评估了 22,906 份 SARS-CoV-2 RT-PCR 阳性鼻咽拭子;平均 CT 值为 27.4(SD:2.1)(低于 20 个循环的 22.2%)。在此期间,还记录了 422,110 例病例和 36,727 例住院治疗。在 COVID-19 病例(滞后 9-10 天,≤0.01)和 COVID-19 住院人数(滞后 2-6 天,<0.04)与 CT 计数之间发现了时间关联。根据一种验证用于证明随时间变化的变量之间关联的方法,人群中平均 CT 计数的短期演变可能预测 COVID-19 大流行的演变。