Valdmanis Vivian G, Rosko Michael D, Mutter Ryan L
Department of Health Policy & Public Health, University of the Sciences in Philadelphia, PA, USA.
Health Serv Res. 2008 Oct;43(5 Pt 2):1830-48. doi: 10.1111/j.1475-6773.2008.00893.x. Epub 2008 Sep 8.
To use an advance in data envelopment analysis (DEA) called congestion analysis to assess the trade-offs between quality and efficiency in U.S. hospitals.
Urban U.S. hospitals in 34 states operating in 2004.
Input and output data from 1,377 urban hospitals were taken from the American Hospital Association Annual Survey and the Medicare Cost Reports. Nurse-sensitive measures of quality came from the application of the Patient Safety Indicator (PSI) module of the Agency for Healthcare Research and Quality (AHRQ) Quality Indicator software to State Inpatient Databases (SID) provided by the Healthcare Cost and Utilization Project (HCUP).
In the first step of the study, hospitals' relative output-based efficiency was determined in order to obtain a measure of congestion (i.e., the productivity loss due to the occurrence of patient safety events). The outputs were adjusted to account for this productivity loss, and a second DEA was performed to obtain input slack values. Differences in slack values between unadjusted and adjusted outputs were used to measure either relative inefficiency or a need for quality improvement.
Overall, the hospitals in our sample could increase the total amount of outputs produced by an average of 26 percent by eliminating inefficiency. About 3 percent of this inefficiency can be attributed to congestion. Analysis of subsamples showed that teaching hospitals experienced no congestion loss. We found that quality of care could be improved by increasing the number of labor inputs in low-quality hospitals, whereas high-quality hospitals tended to have slack on personnel.
Results suggest that reallocation of resources could increase the relative quality among hospitals in our sample. Further, higher quality in some dimensions of care need not be achieved as a result of higher costs or through reduced access to health care.
运用数据包络分析(DEA)中的一项进展即拥塞分析,来评估美国医院在质量与效率之间的权衡。
2004年运营的美国34个州的城市医院。
1377家城市医院的投入和产出数据取自美国医院协会年度调查和医疗保险成本报告。质量的护士敏感指标来自于医疗保健研究与质量局(AHRQ)质量指标软件的患者安全指标(PSI)模块应用于医疗成本和利用项目(HCUP)提供的州住院数据库(SID)。
在研究的第一步,确定医院基于相对产出的效率,以获得拥塞度量(即由于患者安全事件发生导致的生产率损失)。对产出进行调整以考虑这种生产率损失,然后进行第二次DEA以获得投入松弛值。未调整和调整后产出之间的松弛值差异用于衡量相对无效率或质量改进的需求。
总体而言,我们样本中的医院若消除无效率,平均可将产出总量提高26%。这种无效率中约3%可归因于拥塞。子样本分析表明,教学医院未经历拥塞损失。我们发现,通过增加低质量医院的劳动力投入数量可提高护理质量,而高质量医院在人员方面往往存在松弛。
结果表明,资源重新分配可提高我们样本中医院之间的相对质量。此外,在某些护理维度上实现更高质量无需以更高成本或减少医疗服务可及性为代价。