Bureau of Healthcare-Associated Infections, New York State Department of Health, Albany, New York.
Infect Control Hosp Epidemiol. 2014 Jan;35(1):1-7. doi: 10.1086/674389. Epub 2013 Nov 26.
To assess the effect of multiple sources of bias on state- and hospital-specific National Healthcare Safety Network (NHSN) laboratory-identified Clostridium difficile infection (CDI) rates.
Sensitivity analysis.
A total of 124 New York hospitals in 2010.
New York NHSN CDI events from audited hospitals were matched to New York hospital discharge billing records to obtain additional information on patient age, length of stay, and previous hospital discharges. "Corrected" hospital-onset (HO) CDI rates were calculated after (1) correcting inaccurate case reporting found during audits, (2) incorporating knowledge of laboratory results from outside hospitals, (3) excluding days when patients were not at risk from the denominator of the rates, and (4) adjusting for patient age. Data sets were simulated with each of these sources of bias reintroduced individually and combined. The simulated rates were compared with the corrected rates. Performance (ie, better, worse, or average compared with the state average) was categorized, and misclassification compared with the corrected data set was measured.
Counting days patients were not at risk in the denominator reduced the state HO rate by 45% and resulted in 8% misclassification. Age adjustment and reporting errors also shifted rates (7% and 6% misclassification, respectively).
Changing the NHSN protocol to require reporting of age-stratified patient-days and adjusting for patient-days at risk would improve comparability of rates across hospitals. Further research is needed to validate the risk-adjustment model before these data should be used as hospital performance measures.
评估多种偏倚源对州和医院特异性国家医疗保健安全网络(NHSN)实验室鉴定的艰难梭菌感染(CDI)率的影响。
敏感性分析。
2010 年共有 124 家纽约医院。
从审核医院获得的纽约 NHSN CDI 事件与纽约医院出院计费记录相匹配,以获取有关患者年龄、住院时间和先前医院出院情况的其他信息。在(1)纠正审核过程中发现的不准确病例报告,(2)纳入来自其他医院的实验室结果知识,(3)排除患者无风险的天数,以及(4)调整患者年龄后,计算“校正”的医院发病(HO)CDI 率。在单个和组合引入每种偏倚源的情况下,对数据集进行模拟。将模拟的比率与校正的比率进行比较。将性能(即与州平均水平相比更好、更差或平均)进行分类,并测量与校正数据集的错误分类。
在分母中计算患者无风险的天数减少了州 HO 率 45%,并导致 8%的错误分类。年龄调整和报告错误也改变了比率(分别为 7%和 6%的错误分类)。
更改 NHSN 方案以要求报告分层患者年龄的天数并调整风险患者天数,将提高医院间比率的可比性。在将这些数据用作医院绩效指标之前,需要进一步研究以验证风险调整模型。