Most statistical process control programmes in healthcare focus on surveillance of outcomes at the final stage of a procedure, such as mortality or failure rates. Such an approach ignores the multi-stage nature of these procedures, in which a patient progresses through several stages prior to the final stage. In this paper, we develop a multi-stage control chart based on a multivariate exponentially weighted moving average (EWMA) test statistic derived from score equations. This allows simultaneous monitoring of all intermediate and final stage outcomes of a healthcare process, with adjustment for underlying patient risk factors and dependence between outcome variables. Use of the EWMA test statistics allows quick detection of small gradual changes in any part of the process. Three advantages of the approach are: better understanding of how outcomes at different stages relate to each other, explicit monitoring of upstream stage outcomes may help curtail trends that lead to poorer end-stage outcomes and understanding the impact of each stage can help determine the most effective allocation of quality improvement resources. Simulations are performed to test the control charts under various types of hypothesised shifts, and the results are summarised using out-of-control average run lengths.
翻译:保健方面大多数统计过程控制方案的重点是在程序最后阶段监测结果,例如死亡率或故障率,这种方法忽视了这些程序的多阶段性质,即病人在最后阶段之前进入几个阶段;在本文件中,我们根据从得分方程得出的多变指数加权移动平均数(EWMA)测试统计数据,制定了多阶段控制图表,从而可以同时监测保健过程的所有中期和最后阶段结果,同时调整潜在的病人风险因素和结果变量之间的依赖性;使用EWMA测试统计数据,可以快速发现过程任何部分的微小渐进变化;这种方法的三长优点是:更好地了解不同阶段的结果如何相互关联,明确监测上游阶段的结果可能有助于遏制导致较穷的末阶段结果的趋势,了解每个阶段的影响,有助于确定质量改进资源的最有效分配;进行模拟,以测试各种假设的转变中的控制图表,并使用控制外平均长度对结果进行总结。