Huntley D A, Cho D W, Christman J, Csernansky J G
Metropolitan St. Louis Psychiatric Center, Missouri 63112, USA.
Psychiatr Serv. 1998 Aug;49(8):1049-53. doi: 10.1176/ps.49.8.1049.
Multivariate statistical methods were used to identify patient-related variables that predicted length of stay in a single psychiatric facility. The study investigated whether these variables remained stable over time and could be used to provide individual physicians with data on length of stay adjusted for differences in clinical caseloads and to detect trends in the physicians' practice patterns.
Data on all patients discharged over two six-month periods were collected at an acute psychiatric inpatient facility. Stepwise multiple regression analyses were conducted on the two datasets.
The results from both analyses revealed that five variables significantly predicted length of stay and were stable over time. They were a primary diagnosis of schizophrenia, the number of previous admissions, a primary diagnosis of a mood disorder, age, and a secondary diagnosis of an alcohol- or other drug-related disorder. For some physicians, the mean length of stay of their patients differed significantly from the length predicted by the regression model--generally, it was shorter.
The results demonstrate that patient-related predictors of length of stay in a single psychiatric hospital can be identified using relatively simple statistical procedures and can be consistent across a large dataset and over time.
运用多元统计方法来确定能够预测在一家精神病机构住院时间长短的患者相关变量。该研究调查了这些变量是否随时间保持稳定,以及能否用于为个体医生提供经临床工作量差异调整后的住院时间数据,并检测医生诊疗模式的趋势。
在一家急性精神病住院机构收集了两个为期六个月期间内所有出院患者的数据。对这两个数据集进行逐步多元回归分析。
两项分析的结果均显示,五个变量可显著预测住院时间长短且随时间保持稳定。它们分别是精神分裂症的初步诊断、既往住院次数、心境障碍的初步诊断、年龄以及酒精或其他药物相关障碍的次要诊断。对于一些医生而言,其患者的平均住院时间与回归模型预测的时间存在显著差异——通常较短。
结果表明,使用相对简单的统计程序即可确定在一家精神病医院住院时间长短的患者相关预测因素,且这些因素在大型数据集中以及随时间推移具有一致性。