首页> 外文期刊>Journal of the American Medical Informatics Association : >Evaluating the utility of syndromic surveillance algorithms for screening to detect potentially clonal hospital infection outbreaks.
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Evaluating the utility of syndromic surveillance algorithms for screening to detect potentially clonal hospital infection outbreaks.

机译:评估综合征监测算法用于筛选以检测潜在的克隆性医院感染暴发的实用性。

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OBJECTIVE: The authors evaluated algorithms commonly used in syndromic surveillance for use as screening tools to detect potentially clonal outbreaks for review by infection control practitioners. DESIGN: Study phase 1 applied four aberrancy detection algorithms (CUSUM, EWMA, space-time scan statistic, and WSARE) to retrospective microbiologic culture data, producing a list of past candidate outbreak clusters. In phase 2, four infectious disease physicians categorized the phase 1 algorithm-identified clusters to ascertain algorithm performance. In phase 3, project members combined the algorithms to create a unified screening system and conducted a retrospective pilot evaluation. MEASUREMENTS: The study calculated recall and precision for each algorithm, and created precision-recall curves for various methods of combining the algorithms into a unified screening tool. RESULTS: Individual algorithm recall and precision ranged from 0.21 to 0.31 and from 0.053 to 0.29, respectively. Few candidate outbreak clusters were identified by more than one algorithm. The best method of combining the algorithms yielded an area under the precision-recall curve of 0.553. The phase 3 combined system detected all infection control-confirmed outbreaks during the retrospective evaluation period. LIMITATIONS: Lack of phase 2 reviewers' agreement indicates that subjective expert review was an imperfect gold standard. Less conservative filtering of culture results and alternate parameter selection for each algorithm might have improved algorithm performance. CONCLUSION: Hospital outbreak detection presents different challenges than traditional syndromic surveillance. Nevertheless, algorithms developed for syndromic surveillance have potential to form the basis of a combined system that might perform clinically useful hospital outbreak screening.
机译:目的:作者评估了综合征监测中常用的算法,将其用作筛选工具,以检测潜在的克隆性暴发,以供感染控制人员进行审查。设计:研究阶段1对回顾性微生物培养数据应用了四种异常检测算法(CUSUM,EWMA,时空扫描统计和WSARE),从而产生了过去候选暴发簇的列表。在阶段2中,四位传染病医生对阶段1算法识别的群集进行了分类,以确定算法的性能。在第3阶段,项目成员将算法结合在一起,创建了一个统一的筛选系统,并进行了回顾性试验评估。测量:该研究计算了每种算法的查全率和精确度,并为将算法组合到统一筛选工具中的各种方法创建了精确查全曲线。结果:单独的算法调用和精度分别为0.21至0.31和0.053至0.29。几乎没有一种以上的算法可以识别出候选爆发群。结合算法的最佳方法在精确召回曲线下的面积为0.553。在回顾性评估期间,第3阶段组合系统检测到所有感染控制确认的暴发。局限性:缺乏第二阶段审稿人的同意表明,主观专家审稿是不完善的黄金标准。对于每种算法,对培养结果进行较不保守的过滤和备用参数选择可能会提高算法性能。结论:医院暴发检测与传统的综合征监测相比面临着不同的挑战。尽管如此,为症状监测开发的算法有可能形成一个组合系统的基础,该组合系统可能会进行临床上有用的医院暴发筛查。

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