Dilts D, Khamalah J, Plotkin A
Department of Management Sciences, University of Waterloo, Ontario, Canada.
Med Decis Making. 1995 Oct-Dec;15(4):333-47. doi: 10.1177/0272989X9501500404.
Escalating costs of health care delivery have in the recent past often made the health care industry investigate, adapt, and apply those management techniques relating to budgeting, resource control, and forecasting that have long been used in the manufacturing sector. A strategy that has contributed much in this direction is the definition and classification of a hospital's output into "products" or groups of patients that impose similar resource or cost demands on the hospital. Existing classification schemes have frequently employed cluster analysis in generating these groupings. Unfortunately, the myriad articles and books on clustering and classification contain few formalized selection methodologies for choosing a technique for solving a particular problem, hence they often leave the novice investigator at a loss. This paper reviews the literature on clustering, particularly as it has been applied in the medical resource-utilization domain, addresses the critical choices facing an investigator in the medical field using cluster analysis, and offers suggestions (using the example of clustering low-vision patients) for how such choices can be made.
近期,医疗保健服务成本的不断攀升常常促使医疗行业去研究、采用并应用那些长期以来在制造业中使用的与预算编制、资源控制和预测相关的管理技术。在这一方向上做出了很大贡献的一项策略是将医院的产出定义并分类为“产品”或患者群体,这些“产品”或患者群体对医院施加相似的资源或成本需求。现有的分类方案经常采用聚类分析来生成这些分组。不幸的是,关于聚类和分类的大量文章和书籍几乎没有用于选择解决特定问题技术的形式化选择方法,因此常常让新手研究者不知所措。本文回顾了关于聚类的文献,特别是其在医疗资源利用领域的应用,探讨了医疗领域的研究者在使用聚类分析时面临的关键选择,并(以对低视力患者进行聚类为例)就如何做出此类选择提供了建议。