C. McDermott, L. O'Neill, G. Stock, H. M. Yayla-Kullu
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引用次数: 1
Abstract
Research into hospital quality performance typically considers a single dimension of quality at a time (e.g., West et al., 2002; McFadden et al., 2004). But as both hospitals and payers are aware, quality is multidimensional and needs to be measured more holistically to capture top performers. Data envelopment analysis (DEA) is a useful tool that typically looks at economic or cost data to determine the most efficient organisations in a group (with few exceptions). Using data from cardiology units in a sample of hospitals, this paper presents results from the use of DEA to study multiple quality metrics simultaneously in a geographically clustered group of hospitals to determine the best performers. This type of analysis might be useful for a hospital payer or a government agency that wants to reward hospitals for greater quality performance, but might otherwise be using a single dimension. Even those organisations that use multiple quality measures must face the problem of how to combine these different ...
对医院质量绩效的研究通常只考虑一次质量的单一维度(例如,West等人,2002;McFadden et al., 2004)。但正如医院和付款人都意识到的那样,质量是多维的,需要更全面地衡量,以抓住表现最好的人。数据包络分析(DEA)是一种有用的工具,通常通过查看经济或成本数据来确定一个群体中最有效的组织(几乎没有例外)。使用来自医院样本的心脏病科单位的数据,本文展示了使用DEA在地理上聚集的医院群中同时研究多个质量指标以确定最佳绩效的结果。这种类型的分析可能对医院付款人或政府机构有用,因为他们希望奖励医院的更高质量性能,但可能使用单一维度。即使是那些使用多种质量指标的组织也必须面对如何将这些不同的质量指标结合起来的问题。