Ridley S, Jones S, Shahani A, Brampton W, Nielsen M, Rowan K
Department of Anaesthesia, Norfolk and Norwich Hospital, UK.
Anaesthesia. 1998 Sep;53(9):833-40. doi: 10.1046/j.1365-2044.1998.t01-1-00564.x.
Classification and grouping of clinical data into defined categories or hierarchies is difficult in intensive care practice. Diagnosis-related groups are used to categorise patients on the basis of diagnosis. However, this approach may not be applicable to intensive care where there is wide heterogeneity within diagnostic groups. Classification tree analysis uses selected independent variables to group patients according to a dependent variable in a way that reduces variation. In this study, the influence of three easily identified patient attributes on their length of intensive care unit stay was explored using classification analysis. Two thousand five hundred and forty-five critically ill patients from three hospitals were classified into groups so that the variation in length of stay within each group was minimised. In 23 out of 39 terminal groups, the interquartile range of the length of stay was < or = 3 days.
在重症监护实践中,将临床数据分类并归为特定类别或层次结构是困难的。诊断相关组用于根据诊断对患者进行分类。然而,这种方法可能不适用于重症监护,因为诊断组内存在广泛的异质性。分类树分析使用选定的自变量,以减少变异的方式根据因变量对患者进行分组。在本研究中,使用分类分析探讨了三种易于识别的患者属性对其重症监护病房住院时间的影响。来自三家医院的2545名危重症患者被分组,以使每组住院时间的变异最小化。在39个终末组中的其中23个组中,住院时间的四分位数间距≤3天。