Mellmann Alexander, Friedrich Alexander W, Rosenkötter Nicole, Rothgänger Jörg, Karch Helge, Reintjes Ralf, Harmsen Dag
Institute for Hygiene, University Hospital Münster, Münster, Germany.
PLoS Med. 2006 Mar;3(3):e33. doi: 10.1371/journal.pmed.0030033.
The detection of methicillin-resistant Staphylococcus aureus (MRSA) usually requires the implementation of often rigorous infection-control measures. Prompt identification of an MRSA epidemic is crucial for the control of an outbreak. In this study we evaluated various early warning algorithms for the detection of an MRSA cluster.
Between 1998 and 2003, 557 non-replicate MRSA strains were collected from staff and patients admitted to a German tertiary-care university hospital. The repeat region of the S. aureus protein A (spa) gene in each of these strains was sequenced. Using epidemiological and typing information for the period 1998-2002 as reference data, clusters in 2003 were determined by temporal-scan test statistics. Various early warning algorithms (frequency, clonal, and infection control professionals [ICP] alerts) were tested in a prospective analysis for the year 2003. In addition, a newly implemented automated clonal alert system of the Ridom StaphType software was evaluated. A total of 549 of 557 MRSA were typeable using spa sequencing. When analyzed using scan test statistics, 42 out of 175 MRSA in 2003 formed 13 significant clusters (p < 0.05). These clusters were used as the "gold standard" to evaluate the various algorithms. Clonal alerts (spa typing and epidemiological data) were 100% sensitive and 95.2% specific. Frequency (epidemiological data only) and ICP alerts were 100% and 62.1% sensitive and 47.2% and 97.3% specific, respectively. The difference in specificity between clonal and ICP alerts was not significant. Both methods exhibited a positive predictive value above 80%.
Rapid MRSA outbreak detection, based on epidemiological and spa typing data, is a suitable alternative for classical approaches and can assist in the identification of potential sources of infection.
耐甲氧西林金黄色葡萄球菌(MRSA)的检测通常需要实施严格的感染控制措施。及时识别MRSA疫情对于控制疫情爆发至关重要。在本研究中,我们评估了用于检测MRSA聚集性感染的各种早期预警算法。
1998年至2003年间,从一家德国三级护理大学医院收治的工作人员和患者中收集了557株非重复的MRSA菌株。对这些菌株中金黄色葡萄球菌蛋白A(spa)基因的重复区域进行了测序。利用1998 - 2002年期间的流行病学和分型信息作为参考数据,通过时间扫描检验统计确定2003年的聚集性感染。在对2003年的前瞻性分析中测试了各种早期预警算法(频率、克隆和感染控制专业人员[ICP]警报)。此外,还评估了Ridom StaphType软件新实施的自动克隆警报系统。557株MRSA中有549株可通过spa测序分型。使用扫描检验统计分析时,2003年175株MRSA中有42株形成了13个显著的聚集性感染(p < 0.05)。这些聚集性感染被用作“金标准”来评估各种算法。克隆警报(spa分型和流行病学数据)的敏感性为100%,特异性为95.2%。频率警报(仅流行病学数据)和ICP警报的敏感性分别为100%和62.1%,特异性分别为47.2%和97.3%。克隆警报和ICP警报在特异性上的差异不显著。两种方法的阳性预测值均高于80%。
基于流行病学和spa分型数据的快速MRSA疫情检测是传统方法的合适替代方案,可有助于识别潜在的感染源。