Field Epidemiology Service, Public Health England, Bristol, UK.
Heart and Lung Unit, Torbay and South Devon NHS Foundation Trust, Torbay, UK.
BMC Infect Dis. 2019 Feb 13;19(1):154. doi: 10.1186/s12879-019-3734-8.
TB outbreaks in educational institutions can result in significant transmission and pose a considerable threat to TB control. Investigation using traditional microbiological and epidemiological tools can lead to imprecise screening strategies due to difficulties characterising complex transmission networks. Application of whole genome sequencing (WGS) and social network analysis can provide additional information that may facilitate rapid directed public health action. We report the utility of these methods in combination with traditional approaches for the first time to investigate a TB outbreak in an educational setting.
Latent tuberculosis infection (LTBI) cases were screenees with a positive T-SPOT®.TB test. Active TB cases were defined through laboratory confirmation of M. tuberculosis on culture or through clinical or radiological findings consistent with infection. Epidemiological data were collected from institutional records and screenees. Samples were cultured and analysed using traditional M. tuberculosis typing and WGS. We undertook multivariable multinomial regression and social network analysis to identify exposures associated with case status and risk communities.
We identified 189 LTBI cases (13.7% positivity rate) and nine active TB cases from 1377 persons screened. The LTBI positivity rate was 39.1% (99/253) among persons who shared a course with an infectious case (odds ratio 7.3, 95% confidence interval [CI] 5.2 to 10.3). The community structure analysis divided the students into five communities based on connectivity, as opposed to the 11 shared courses. Social network analysis identified that the community including the suspected index case was at significantly elevated risk of active disease (odds ratio 7.5, 95% CI 1.3 to 44.0) and contained eight persons who were lost to follow-up. Five sputum samples underwent WGS, four had zero single nucleotide polymorphism (SNP) differences and one had a single SNP difference.
This study demonstrates the public health impact an undiagnosed case of active TB disease can have in an educational setting within a low incidence area. Social network analysis and whole genome sequencing provided greater insight to evolution of the transmission network and identification of communities of risk. These tools provide further information over traditional epidemiological and microbiological approaches to direct public health action in this setting.
教育机构中的结核病爆发可能导致严重传播,并对结核病控制构成相当大的威胁。由于难以描述复杂的传播网络,传统的微生物学和流行病学工具的调查可能导致不精确的筛查策略。全基因组测序 (WGS) 和社交网络分析的应用可以提供可能有助于快速定向公共卫生行动的额外信息。我们首次报告了这些方法与传统方法相结合用于调查教育环境中的结核病爆发的效用。
潜伏性结核感染 (LTBI) 病例通过 T-SPOT®.TB 检测呈阳性进行筛查。活动性结核病病例通过培养物中结核分枝杆菌的实验室确认或通过与感染一致的临床或影像学发现进行定义。从机构记录和筛查者那里收集流行病学数据。对样本进行培养和分析,使用传统的结核分枝杆菌分型和 WGS。我们进行了多变量多项回归和社交网络分析,以确定与病例状态和风险社区相关的暴露因素。
我们从 1377 名接受筛查的人中发现了 189 例 LTBI 病例(阳性率为 13.7%)和 9 例活动性结核病病例。与传染性病例上同一门课程的人(比值比 7.3,95%置信区间 [CI] 5.2 至 10.3)的 LTBI 阳性率为 39.1%(99/253)。社区结构分析根据连接性将学生分为五个社区,而不是 11 个共享课程。社交网络分析表明,包括疑似索引病例的社区患活动性疾病的风险显著升高(比值比 7.5,95%CI 1.3 至 44.0),并包含 8 名失访者。五份痰样本进行了 WGS,四份样本零单核苷酸多态性 (SNP) 差异,一份样本有一个 SNP 差异。
本研究表明,在低发病率地区的教育环境中,未确诊的活动性结核病病例可能对公共卫生产生影响。社交网络分析和全基因组测序提供了对传播网络演变和风险社区识别的更深入了解。与传统的流行病学和微生物学方法相比,这些工具为指导该环境中的公共卫生行动提供了更多信息。