Clinical Informatics Foundations of 57 Years Sentinel and Genomic Surveillance: Data Quality, Linkage and Access.

Simon de Lusignan, Mark Joy, Maria Zambon
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Abstract

Sentinel surveillance networks are sophisticated health information systems that warn about outbreaks and spread of infectious diseases with epidemic or pandemic potential, the effectiveness of countermeasures and pressures on health systems. They are underpinned by their ability to turn data into information and knowledge in a timely way. The Royal College of General Practitioners (RCGP) Research and Surveillance Centre (RSC) is one of Europe's oldest. We report its progressive use of technology to improve the scope of sentinel surveillance, with a focus on genomic surveillance. The technologies include terminologies, phenotypes, compute capability, virology including virial genome sequencing, and serology. The RSC's data collection developed from partial, then full extraction of computerised medical record (CMR) data. with increasing sophistication in its creation of phenotypes. The scope of surveillance in 1967 was clinical diagnosis, influenza-like-illness (ILI) was its focus. In the 1992-1993 winter virology sampling started, with progressively more sophisticated sequencing of the viral genome. From 2008 viral sequencing was comprehensive with the Global Initiative on Sharing All Influenza Data (GISAID) the primary repository, supplemented by the COVID-19 Genomics UK (COG-UK) consortium in-pandemic. High quality primary care data captures sociodemographic features, risk group status, and vaccine exposure; linked hospital and death data informs about severe outcomes; virology identified the causative organism and genomic surveillance the variant. Timely data access and analysis will enable identification of new variants resistant to vaccination or other countermeasures and enable new interventions to be developed.

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57 年哨点和基因组监测的临床信息学基础:数据质量、链接和访问。
哨点监测网络是复杂的卫生信息系统,可对具有流行或大流行潜力的传染病的爆发和传播、应对措施的有效性以及卫生系统面临的压力发出警报。它们的基础是能够及时将数据转化为信息和知识。皇家全科医师学院(RCGP)研究与监测中心(RSC)是欧洲历史最悠久的研究与监测中心之一。我们报告了该中心逐步利用技术改善哨点监测范围的情况,重点是基因组监测。这些技术包括术语、表型、计算能力、病毒学(包括病毒基因组测序)和血清学。RSC 的数据收集工作从部分提取计算机化病历 (CMR) 数据发展到全面提取。1967 年的监测范围是临床诊断,重点是流感样疾病(ILI)。1992-1993 年冬季开始进行病毒学采样,病毒基因组的测序工作逐渐复杂化。从 2008 年开始,病毒测序工作全面展开,全球流感数据共享计划(GISAID)是主要的储存库,在流感大流行时,英国 COVID-19 基因组学联盟(COG-UK)对其进行补充。高质量的初级保健数据可捕捉社会人口特征、风险群体状况和疫苗接种情况;关联的医院和死亡数据可提供有关严重后果的信息;病毒学可确定致病菌,基因组监测可确定变异体。及时的数据访问和分析将有助于识别对疫苗接种或其他应对措施有抵抗力的新变种,并开发新的干预措施。
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