Data-Driven Process and Operational Improvement in the Emergency Department: The ED Dashboard and Reporting Application

被引:30
作者
Stone-Griffith, Suzanne
Englebright, Jane D.
Cheung, Dickson
Korwek, Kimberly M.
Perlin, Jonathan B.
机构
关键词
QUALITY; CARE;
D O I
10.1097/00115514-201205000-00006
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Emergency departments (EDs) in the United States are expected to provide consistent, high-quality care to patients. Unfortunately, EDs are encumbered by problems associated with the demand for services and the limitations of current resources, such as overcrowding, long wait times, and operational inefficiencies. While increasing the effectiveness and efficiency of emergency care would improve both access and quality of patient care, coordinated improvement efforts have been hindered by a lack of timely access to data. The ED Dashboard and Reporting Application was developed to support datadriven process improvement projects. It incorporated standard definitions of metrics, a data repository, and near real-time analysis capabilities. This helped acute care hospitals in a large healthcare system evaluate and target individual improvement projects in accordance with corporate goals. Subsequently, there was a decrease in "arrival to greet" time-the time from patient arrival to physician contact-from an average of 51 minutes in 2007 to the goal level of less than 35 minutes by 2010. The ED Dashboard and Reporting Application has also contributed to datadriven improvements in length of stay and other measures of ED efficiency and care quality. Between January 2007 and December 2010, overall length of stay decreased 10.5 percent while annual visit volume increased 13.6 percent. Thus, investing in the development and implementation of a system for ED data capture, storage, and analysis has supported operational management decisions, gains in ED efficiency, and ultimately improvements in patient care.
引用
收藏
页码:167 / 180
页数:14
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