Department of Health Policy and Management, UCLA Fielding School of Public Health, Los Angeles, CA 90095-1772, USA.
Med Care. 2013 Aug;51(8):722-30. doi: 10.1097/MLR.0b013e31829808de.
The Agency for Healthcare Research and Quality (AHRQ) patient safety indicator "death among surgical inpatients with serious treatable complications" (failure-to-rescue) uses rules to exclude complications presumed to be present-on-admission (POA). Like other administrative data-based quality measures, exclusion rules were developed with limited information on whether complications were POA. We examine whether the accuracy of failure-to-rescue exclusion rules can be improved with data with good POA indicators.
POA-coded data from 243,825 discharges from a large academic medical center were used to develop 3 failure-to-rescue exclusion rules. Data from 82,871 discharges from California hospitals screened for good POA coding practices was used as a validation sample. The AHRQ failure-to-rescue measure and 3 new measures based on alternative exclusion rules were compared on sensitivity, specificity, and C-statistics for prediction of POA status. Using data from the AHRQ HCUP National Inpatient Sample, the alternative specifications were tested for sensitivity to nurse staffing.
The AHRQ exclusion rules had sensitivity of 18.5%, specificity 92.1%, and a C-statistic of 0.553. All POA-informed specifications of exclusion rules improved the C-statistic of the failure-to-rescue measure and its sensitivity, with modest losses of specificity. For all tested specifications, higher licensed hours and proportions of registered nurse were statistically significant and associated with lower risk of death.
Failure-to-rescue is a robust quality measure, sensitive to nursing across alternative exclusion rule specifications. Despite expanded POA coding, exclusion-based rules are needed to analyze datasets not coded for POA, legacy datasets, and datasets with poor POA coding. POA-informed construction of exclusions significantly improves rules identifying POA complications.
医疗保健研究与质量署(AHRQ)的患者安全指标“有严重可治疗并发症的住院手术患者死亡(救援失败)”使用规则排除假定为入院时存在的并发症(POA)。与其他基于行政数据的质量指标一样,排除规则的制定所依据的是关于并发症是否为 POA 的信息有限。我们研究了是否可以通过具有良好 POA 指标的数据来提高救援失败排除规则的准确性。
使用来自大型学术医疗中心的 243825 份出院记录中的 POA 编码数据来制定 3 种救援失败排除规则。使用加利福尼亚州医院的 82871 份出院记录作为验证样本,这些记录经过筛选,具有良好的 POA 编码实践。将 AHRQ 救援失败指标和基于替代排除规则的 3 个新指标在预测 POA 状态的灵敏度、特异性和 C 统计量方面进行了比较。使用 AHRQ HCUP 国家住院样本数据,对替代规格进行了护士人员配备敏感性测试。
AHRQ 排除规则的灵敏度为 18.5%,特异性为 92.1%,C 统计量为 0.553。所有基于 POA 信息的排除规则都提高了救援失败指标的 C 统计量和其灵敏度,特异性略有下降。对于所有测试的规格,许可时间更长和注册护士比例更高在统计学上与死亡风险降低相关。
救援失败是一种稳健的质量指标,对各种替代排除规则规格的护理均敏感。尽管进行了更广泛的 POA 编码,但仍需要排除规则来分析未编码 POA 的数据集、遗留数据集和 POA 编码较差的数据集。基于 POA 的排除规则构建可显著改进用于识别 POA 并发症的规则。