Benneyan J C, Lloyd R C, Plsek P E
Director, Quality & Productivity Laboratory, MIME Department, 334 Snell Engineering Center, 360 Huntington Avenue, Northeastern University, Boston, MA 02115, USA.
Qual Saf Health Care. 2003 Dec;12(6):458-64. doi: 10.1136/qhc.12.6.458.
Improvement of health care requires making changes in processes of care and service delivery. Although process performance is measured to determine if these changes are having the desired beneficial effects, this analysis is complicated by the existence of natural variation-that is, repeated measurements naturally yield different values and, even if nothing was done, a subsequent measurement might seem to indicate a better or worse performance. Traditional statistical analysis methods account for natural variation but require aggregation of measurements over time, which can delay decision making. Statistical process control (SPC) is a branch of statistics that combines rigorous time series analysis methods with graphical presentation of data, often yielding insights into the data more quickly and in a way more understandable to lay decision makers. SPC and its primary tool-the control chart-provide researchers and practitioners with a method of better understanding and communicating data from healthcare improvement efforts. This paper provides an overview of SPC and several practical examples of the healthcare applications of control charts.
改善医疗保健需要对护理流程和服务提供方式进行变革。尽管会对流程绩效进行衡量,以确定这些变革是否产生了预期的有益效果,但由于存在自然变异,这种分析变得复杂——也就是说,重复测量自然会得出不同的值,而且即使什么都不做,后续测量可能看起来也表明绩效有所改善或恶化。传统的统计分析方法考虑了自然变异,但需要对一段时间内的测量数据进行汇总,这可能会延迟决策。统计过程控制(SPC)是统计学的一个分支,它将严格的时间序列分析方法与数据的图形化呈现相结合,通常能更快地洞察数据,并且以一种更易于外行决策者理解的方式呈现。SPC及其主要工具——控制图,为研究人员和从业者提供了一种更好地理解和交流医疗保健改进工作数据的方法。本文概述了SPC以及控制图在医疗保健应用中的几个实际例子。