Large-scale empirical optimisation of statistical control charts to detect clinically relevant increases in surgical site infection rates

Iulian Ilies, D. Anderson, J. Salem, A. Baker, Margo Jacobsen, J. Benneyan
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引用次数: 9

Abstract

Objective Surgical site infections (SSIs) are common costly hospital-acquired conditions. While statistical process control (SPC) use in healthcare has increased, limited rigorous empirical research compares and optimises these methods for SSI surveillance. We sought to determine which SPC chart types and design parameters maximise the detection of clinically relevant SSI rate increases while minimising false alarms. Design Systematic retrospective data analysis and empirical optimisation. Methods We analysed 12 years of data on 13 surgical procedures from a network of 58 community hospitals. Statistically significant SSI rate increases (signals) at individual hospitals initially were identified using 50 different SPC chart variations (Shewhart or exponentially weighted moving average, 5 baseline periods, 5 baseline types). Blinded epidemiologists evaluated the clinical significance of 2709 representative signals of potential outbreaks (out of 5536 generated), rating them as requiring ‘action’ or ‘no action’. These ratings were used to identify which SPC approaches maximised sensitivity and specificity within a broader set of 3600 individual chart variations (additional baseline variations and chart types, including moving average (MA), and five control limit widths) and over 32 million dual-chart combinations based on different baseline periods, reference data (network-wide vs local hospital SSI rates), control limit widths and other calculation considerations. Results were validated with an additional year of data from the same hospital cohort. Results The optimal SPC approach to detect clinically important SSI rate increases used two simultaneous MA charts calculated using lagged rolling baseline windows and 1 SD limits. The first chart used 12-month MAs with 18-month baselines and best identified small sustained increases above network-wide SSI rates. The second chart used 6-month MAs with 3-month baselines and best detected large short-term increases above individual hospital SSI rates. This combination outperformed more commonly used charts, with high sensitivity (0.90; positive predictive value=0.56) and practical specificity (0.67; negative predictive value=0.94). Conclusions An optimised combination of two MA charts had the best performance for identifying clinically relevant small but sustained above-network SSI rates and large short-term individual hospital increases.
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大规模的经验优化统计控制图,以检测临床相关的手术部位感染率的增加
目的手术部位感染(ssi)是常见的昂贵的医院获得性疾病。虽然统计过程控制(SPC)在医疗保健中的使用有所增加,但有限的严格实证研究比较和优化了这些用于SSI监测的方法。我们试图确定哪种SPC图类型和设计参数最大限度地检测临床相关SSI率增加,同时最大限度地减少误报。系统的回顾性数据分析和实证优化。方法我们分析了来自58家社区医院网络的12年来13例外科手术的数据。通过50种不同的SPC图表变化(Shewhart或指数加权移动平均,5个基线期,5个基线类型),初步确定了各个医院统计上显著的SSI率增加(信号)。盲法流行病学家评估了2709个潜在疫情的代表性信号的临床意义(从产生的5536个信号中),将其评级为需要“采取行动”或“不采取行动”。这些评分用于确定哪些SPC方法在更广泛的3600个单独图表变化(额外的基线变化和图表类型,包括移动平均线(MA)和五个控制极限宽度)和超过3200万个基于不同基线期、参考数据(网络范围与当地医院SSI率)、控制极限宽度和其他计算考虑的双图表组合中具有最大的灵敏度和特异性。结果通过同一医院队列的额外一年数据得到验证。结果检测临床重要SSI率升高的最佳SPC方法使用两个同时使用滞后滚动基线窗口和1个SD限制计算的MA图。第一张图表使用了12个月的ma和18个月的基线,最好地确定了高于全网SSI率的持续小幅增长。第二张图表使用6个月的ma和3个月的基线,最好地检测到高于个别医院SSI率的短期大幅增长。这种组合优于更常用的图表,具有高灵敏度(0.90;阳性预测值=0.56)和实际特异性(0.67;阴性预测值=0.94)。结论:两个MA图的优化组合在确定临床相关的小但持续的网络上SSI率和短期内单个医院的大增长方面具有最佳性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Quality & Safety in Health Care
Quality & Safety in Health Care 医学-卫生保健
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