英格兰不同社会人口群体的 COVID-19 检测和报告行为:一项利用检测数据和社区流行病监测调查数据进行的人口研究。

IF 23.8 1区 医学 Q1 MEDICAL INFORMATICS Lancet Digital Health Pub Date : 2024-10-23 DOI:10.1016/S2589-7500(24)00169-9
Sumali Bajaj SM , Siyu Chen DPhil , Richard Creswell DPhil , Reshania Naidoo MD , Joseph L-H Tsui MSc , Olumide Kolade BSc , George Nicholson DPhil , Brieuc Lehmann PhD , James A Hay PhD , Prof Moritz U G Kraemer DPhil , Ricardo Aguas PhD , Prof Christl A Donnelly ScD , Tom Fowler FFPH , Prof Susan Hopkins FMedSci , Liberty Cantrell MSc , Prabin Dahal DPhil , Prof Lisa J White PhD , Kasia Stepniewska PhD , Merryn Voysey DPhil , Ben Lambert DPhil , Lisa J White
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引用次数: 0

摘要

背景:了解传染病爆发期间寻求检测和报告行为异质性的内在机制有助于保护易感人群并指导以公平为导向的干预措施。COVID-19 大流行可能对不同社会人口群体的个人造成了不同的压力,而确保公平获得和使用 COVID-19 检测是英格兰检测计划的关键要素。我们旨在调查 COVID-19 大流行期间英格兰社会人口因素与 COVID-19 检测行为之间的关系:我们利用 2020 年 10 月 1 日至 2022 年 3 月 30 日期间英格兰的大规模 COVID-19 检测数据和社区流行率监测调查(REACT-1 和 ONS-CIS)数据,对 COVID-19 检测行为进行了基于人群的研究。我们使用了面向公众的侧流装置(LFD;已进行并报告的约 2.9 亿次检测数据)和 PCR(已进行并从实验室返回的约 1.07 亿次检测数据)检测的大规模检测数据,这些数据按日期和自我报告的年龄和种族在下级地方当局(LTLA)一级提供。我们还使用了可公开获得的单个低级别地方当局的平均人口规模估计数据,以及低级别地方当局的种族群体、年龄组和贫困指数数据。我们无法获得按性别分列的 REACT-1 或 ONS-CIS 患病率数据。我们利用机理因果模型对 PCR 检测数据进行去伪存真,得出了英格兰长期病患按自我报告的种族群体和年龄组别分列的每周 SARS-CoV-2 流行率估计值。这种对 PCR(或 LFD)检测数据去伪存真的方法还估算出了检测偏差参数,该参数被定义为感染者与未感染者的检测几率,如果无论感染状况如何,寻求检测(或寻求检测并报告)的几率相同,则该参数接近零。通过 PCR 确证数据,我们估算了假阳性率、灵敏度、特异性,以及按社会人口组别分列的 PCR 检测报告 LFD 阳性后的检测概率下降率。我们还估算了每天的发病率,从而计算出检测计划捕获的病例比例:从 2021 年 3 月起,最贫困地区的人均 LFD 检测次数约为最不贫困地区的一半(中位数比率为 0-50 [IQR为 0-44-0-54])。在 2020 年 10 月至 2021 年 6 月期间,PCR 检测模式呈现出相反的趋势,最贫困地区的人均 PCR 检测次数几乎是最不贫困地区的两倍(1-8 [1-7-1-9])。在阿尔法(B.1.1.7)和奥米克隆(B.1.1.529)BA.1 波中,亚裔或亚裔英国人的感染率大大高于其他种族群体。我们的估计结果表明,在研究期间,英格兰第二支柱部门 COVID-19 检测项目发现了 26-40% 的病例(包括无症状病例),不同贫困水平或种族群体之间没有一致的差异。PCR 的检测偏倚通常高于 LFD,这与无症状和无症状使用这些检测方法的总体政策一致。贫困程度和年龄与平均检测偏差有关;不过,不同贫困程度的不确定区间有所重叠,但特定年龄的模式更为明显。我们还发现,在疫情的大部分时间里,少数民族和老年人不太可能使用 PCR 确证检测,而在自称为 "黑人、非洲人、英国黑人或加勒比海人 "的人群中,报告 LFD 检测阳性的延迟时间可能更长:不同社会人口群体在检测行为上的差异可能反映了弱势人群自我隔离的成本较高、检测可及性的差异、数字扫盲的差异以及对检测效用和感染风险的不同认识。这项研究展示了如何将大规模检测数据与监测调查结合起来使用,以确定公共卫生干预措施在细微层面和不同社会人口群体中的吸收差距。它为监测地方干预措施提供了一个框架,并为政策制定者提供了宝贵的经验,以确保公平应对未来的流行病:资金来源:英国卫生安全局。
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COVID-19 testing and reporting behaviours in England across different sociodemographic groups: a population-based study using testing data and data from community prevalence surveillance surveys

Background

Understanding underlying mechanisms of heterogeneity in test-seeking and reporting behaviour during an infectious disease outbreak can help to protect vulnerable populations and guide equity-driven interventions. The COVID-19 pandemic probably exerted different stresses on individuals in different sociodemographic groups and ensuring fair access to and usage of COVID-19 tests was a crucial element of England's testing programme. We aimed to investigate the relationship between sociodemographic factors and COVID-19 testing behaviours in England during the COVID-19 pandemic.

Methods

We did a population-based study of COVID-19 testing behaviours with mass COVID-19 testing data for England and data from community prevalence surveillance surveys (REACT-1 and ONS-CIS) from Oct 1, 2020, to March 30, 2022. We used mass testing data for lateral flow device (LFD; data for approximately 290 million tests performed and reported) and PCR (data for approximately 107 million tests performed and returned from the laboratory) tests made available for the general public and provided by date and self-reported age and ethnicity at the lower tier local authority (LTLA) level. We also used publicly available data on mean population size estimates for individual LTLAs, and data on ethnic groups, age groups, and deprivation indices for LTLAs. We did not have access to REACT-1 or ONS-CIS prevalence data disaggregated by sex or gender. Using a mechanistic causal model to debias the PCR testing data, we obtained estimates of weekly SARS-CoV-2 prevalence by both self-reported ethnic groups and age groups for LTLAs in England. This approach to debiasing the PCR (or LFD) testing data also estimated a testing bias parameter defined as the odds of testing in infected versus not infected individuals, which would be close to zero if the likelihood of test seeking (or seeking and reporting) was the same regardless of infection status. With confirmatory PCR data, we estimated false positivity rates, sensitivity, specificity, and the rate of decline in detection probability subsequent to reporting a positive LFD for PCR tests by sociodemographic groups. We also estimated the daily incidence, allowing us to calculate the fraction of cases captured by the testing programme.

Findings

From March, 2021 onwards, individuals in the most deprived regions reported approximately half as many LFD tests per capita as individuals in the least deprived areas (median ratio 0·50 [IQR 0·44–0·54]). During the period October, 2020, to June, 2021, PCR testing patterns showed the opposite trend, with individuals in the most deprived areas performing almost double the number of PCR tests per capita than those in the least deprived areas (1·8 [1·7–1·9]). Infection prevalences in Asian or Asian British individuals were considerably higher than those of other ethnic groups during the alpha (B.1.1.7) and omicron (B.1.1.529) BA.1 waves. Our estimates indicate that the England Pillar 2 COVID-19 testing programme detected 26–40% of all cases (including asymptomatic cases) over the study period with no consistent differences by deprivation levels or ethnic groups. Testing biases for PCR were generally higher than those for LFDs, in line with the general policy of symptomatic and asymptomatic use of these tests. Deprivation and age were associated with testing biases on average; however, the uncertainty intervals overlapped across deprivation levels, although the age-specific patterns were more distinct. We also found that ethnic minorities and older individuals were less likely to use confirmatory PCR tests through most of the pandemic and that delays in reporting a positive LFD test were possibly longer in populations self-reporting as “Black; African; Black British or Caribbean”.

Interpretation

Differences in testing behaviours across sociodemographic groups might be reflective of the higher costs of self-isolation to vulnerable populations, differences in test accessibility, differences in digital literacy, and differing perceptions about the utility of tests and risks posed by infection. This study shows how mass testing data can be used in conjunction with surveillance surveys to identify gaps in the uptake of public health interventions both at fine-scale levels and across sociodemographic groups. It provides a framework for monitoring local interventions and yields valuable lessons for policy makers in ensuring an equitable response to future pandemics.

Funding

UK Health Security Agency.
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来源期刊
CiteScore
41.20
自引率
1.60%
发文量
232
审稿时长
13 weeks
期刊介绍: The Lancet Digital Health publishes important, innovative, and practice-changing research on any topic connected with digital technology in clinical medicine, public health, and global health. The journal’s open access content crosses subject boundaries, building bridges between health professionals and researchers.By bringing together the most important advances in this multidisciplinary field,The Lancet Digital Health is the most prominent publishing venue in digital health. We publish a range of content types including Articles,Review, Comment, and Correspondence, contributing to promoting digital technologies in health practice worldwide.
期刊最新文献
Artificial intelligence-enabled electrocardiogram for mortality and cardiovascular risk estimation: a model development and validation study COVID-19 testing and reporting behaviours in England across different sociodemographic groups: a population-based study using testing data and data from community prevalence surveillance surveys Fairly evaluating the performance of normative models – Authors' reply Fairly evaluating the performance of normative models Lifting the veil on health datasets
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