Section on Infectious Diseases, Department of Medicine, Wake Forest University School of Medicine, Medical Center Blvd, Winston Salem, NC, 27159, United States, 1 336-422-7771.
Department of Biology, Wake Forest University, Winston Salem, NC, United States.
JMIR Public Health Surveill. 2024 Sep 12;10:e56571. doi: 10.2196/56571.
The COVID-19 pandemic resulted in a massive disruption in access to care and thus passive, hospital- and clinic-based surveillance programs. In 2020, the reported cases of Lyme disease were the lowest both across the United States and North Carolina in recent years. During this period, human contact patterns began to shift with higher rates of greenspace utilization and outdoor activities, putting more people into contact with potential vectors and associated vector-borne diseases. Lyme disease reporting relies on passive surveillance systems, which were likely disrupted by changes in health care-seeking behavior during the pandemic.
This study aimed to quantify the likely under-ascertainment of cases of Lyme disease during the COVID-19 pandemic in the United States and North Carolina.
We fitted publicly available, reported Lyme disease cases for both the United States and North Carolina prior to the year 2020 to predict the number of anticipated Lyme disease cases in the absence of the pandemic using a Bayesian modeling approach. We then compared the ratio of reported cases divided by the predicted cases to quantify the number of likely under-ascertained cases. We then fitted geospatial models to further quantify the spatial distribution of the likely under-ascertained cases and characterize spatial dynamics at local scales.
Reported cases of Lyme Disease were lower in 2020 in both the United States and North Carolina than prior years. Our findings suggest that roughly 14,200 cases may have gone undetected given historical trends prior to the pandemic. Furthermore, we estimate that only 40% to 80% of Lyme diseases cases were detected in North Carolina between August 2020 and February 2021, the peak months of the COVID-19 pandemic in both the United States and North Carolina, with prior ascertainment rates returning to normal levels after this period. Our models suggest both strong temporal effects with higher numbers of cases reported in the summer months as well as strong geographic effects.
Ascertainment rates of Lyme disease were highly variable during the pandemic period both at national and subnational scales. Our findings suggest that there may have been a substantial number of unreported Lyme disease cases despite an apparent increase in greenspace utilization. The use of counterfactual modeling using spatial and historical trends can provide insight into the likely numbers of missed cases. Variable ascertainment of cases has implications for passive surveillance programs, especially in the trending of disease morbidity and outbreak detection, suggesting that other methods may be appropriate for outbreak detection during disturbances to these passive surveillance systems.
COVID-19 大流行导致医疗服务获取受到严重干扰,进而影响了被动式、基于医院和诊所的监测项目。2020 年,全美和北卡罗来纳州的莱姆病报告病例数均为近年来最低。在此期间,人类接触模式发生变化,绿地利用率和户外活动率上升,更多人接触到潜在的传播媒介和相关的媒介传播疾病。莱姆病的报告依赖于被动监测系统,但由于大流行期间人们寻求医疗服务的行为发生变化,这些系统很可能受到干扰。
本研究旨在量化 COVID-19 大流行期间美国和北卡罗来纳州莱姆病病例漏报的情况。
我们采用公开的、2020 年前报告的莱姆病病例,利用贝叶斯建模方法预测大流行前的预期莱姆病病例数,从而量化大流行期间可能漏报的病例数。然后,我们比较报告病例数与预测病例数的比值,以量化可能漏报的病例数。随后,我们拟合地理空间模型,进一步量化可能漏报病例的空间分布,并描述局部尺度的空间动态。
美国和北卡罗来纳州 2020 年的莱姆病报告病例数均低于往年。我们的研究结果表明,考虑到大流行前的历史趋势,大约有 14200 例病例可能未被发现。此外,我们估计,2020 年 8 月至 2021 年 2 月,即美国和北卡罗来纳州 COVID-19 大流行的高峰期,北卡罗来纳州仅有 40%至 80%的莱姆病病例被发现,此后之前的发现率恢复正常水平。我们的模型表明,在全国和州以下各级,大流行期间莱姆病的发现率存在明显的季节性变化,夏季报告的病例数较多,同时还存在明显的地域效应。
大流行期间,莱姆病的发现率在国家和州以下各级均存在高度变化。尽管绿地利用率明显增加,但我们的研究结果表明,可能有大量莱姆病病例未被报告。使用空间和历史趋势的反事实建模可以提供对漏报病例数量的洞察。病例发现的可变性对被动监测项目有影响,特别是在疾病发病率趋势和疫情检测方面,这表明在这些被动监测系统受到干扰时,其他方法可能更适合疫情检测。