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医院感染性疾病爆发的自动检测:一项回顾性队列研究。

Automated detection of infectious disease outbreaks in hospitals: a retrospective cohort study.

机构信息

Division of Infectious Diseases and Health Policy Research Institute, University of California Irvine School of Medicine, Irvine, California, United States of America.

出版信息

PLoS Med. 2010 Feb 23;7(2):e1000238. doi: 10.1371/journal.pmed.1000238.

Abstract

BACKGROUND

Detection of outbreaks of hospital-acquired infections is often based on simple rules, such as the occurrence of three new cases of a single pathogen in two weeks on the same ward. These rules typically focus on only a few pathogens, and they do not account for the pathogens' underlying prevalence, the normal random variation in rates, and clusters that may occur beyond a single ward, such as those associated with specialty services. Ideally, outbreak detection programs should evaluate many pathogens, using a wide array of data sources.

METHODS AND FINDINGS

We applied a space-time permutation scan statistic to microbiology data from patients admitted to a 750-bed academic medical center in 2002-2006, using WHONET-SaTScan laboratory information software from the World Health Organization (WHO) Collaborating Centre for Surveillance of Antimicrobial Resistance. We evaluated patients' first isolates for each potential pathogenic species. In order to evaluate hospital-associated infections, only pathogens first isolated >2 d after admission were included. Clusters were sought daily across the entire hospital, as well as in hospital wards, specialty services, and using similar antimicrobial susceptibility profiles. We assessed clusters that had a likelihood of occurring by chance less than once per year. For methicillin-resistant Staphylococcus aureus (MRSA) or vancomycin-resistant enterococci (VRE), WHONET-SaTScan-generated clusters were compared to those previously identified by the Infection Control program, which were based on a rule-based criterion of three occurrences in two weeks in the same ward. Two hospital epidemiologists independently classified each cluster's importance. From 2002 to 2006, WHONET-SaTScan found 59 clusters involving 2-27 patients (median 4). Clusters were identified by antimicrobial resistance profile (41%), wards (29%), service (13%), and hospital-wide assessments (17%). WHONET-SaTScan rapidly detected the two previously known gram-negative pathogen clusters. Compared to rule-based thresholds, WHONET-SaTScan considered only one of 73 previously designated MRSA clusters and 0 of 87 VRE clusters as episodes statistically unlikely to have occurred by chance. WHONET-SaTScan identified six MRSA and four VRE clusters that were previously unknown. Epidemiologists considered more than 95% of the 59 detected clusters to merit consideration, with 27% warranting active investigation or intervention.

CONCLUSIONS

Automated statistical software identified hospital clusters that had escaped routine detection. It also classified many previously identified clusters as events likely to occur because of normal random fluctuations. This automated method has the potential to provide valuable real-time guidance both by identifying otherwise unrecognized outbreaks and by preventing the unnecessary implementation of resource-intensive infection control measures that interfere with regular patient care. Please see later in the article for the Editors' Summary.

摘要

背景

医院获得性感染的爆发检测通常基于简单的规则,例如在同一病房两周内出现三种新的单一病原体感染。这些规则通常只关注少数几种病原体,而且没有考虑到病原体的潜在流行率、正常随机变化率以及可能超出单个病房的集群,例如与专科服务相关的集群。理想情况下,爆发检测程序应使用多种数据源评估许多病原体。

方法和发现

我们使用世界卫生组织(WHO)合作中心的 WHONET-SaTScan 实验室信息软件,对 2002 年至 2006 年期间入住一家 750 张床位的学术医疗中心的患者的微生物学数据应用时空置换扫描统计方法。我们评估了每位患者的每种潜在致病物种的首次分离株。为了评估医院相关性感染,仅包括入院后>2 天首次分离的病原体。每天在整个医院以及医院病房、专科服务中寻找集群,并使用类似的抗菌药物敏感性谱进行搜索。我们评估了每年发生可能性小于一次的集群。对于耐甲氧西林金黄色葡萄球菌(MRSA)或万古霉素耐药肠球菌(VRE),WHONET-SaTScan 生成的集群与感染控制计划先前确定的集群进行了比较,后者基于同一病房两周内出现三种情况的基于规则的标准。两名医院流行病学家独立对每个集群的重要性进行了分类。从 2002 年到 2006 年,WHONET-SaTScan 发现了涉及 2-27 名患者(中位数 4 名)的 59 个集群。集群是通过抗菌药物耐药性模式(41%)、病房(29%)、服务(13%)和全院评估(17%)确定的。WHONET-SaTScan 迅速检测到了先前已知的两种革兰氏阴性病原体集群。与基于规则的阈值相比,WHONET-SaTScan 仅将 73 个先前指定的 MRSA 集群中的 1 个和 87 个 VRE 集群中的 0 个视为统计上不太可能因随机波动而发生的事件。WHONET-SaTScan 发现了六个 MRSA 和四个 VRE 集群是以前未知的。流行病学家认为,59 个检测到的集群中有 95%以上值得考虑,其中 27%需要进行主动调查或干预。

结论

自动化统计软件识别了常规检测方法遗漏的医院集群。它还将许多以前确定的集群归类为由于正常随机波动而可能发生的事件。这种自动化方法有可能通过识别未被识别的爆发并防止实施不必要的资源密集型感染控制措施来提供有价值的实时指导,这些措施会干扰常规患者护理。请在文章后面查看编辑摘要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/39af/2826381/7468bade4b2a/pmed.1000238.g001.jpg

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