Lu Mingshan, Sajobi Tolulope, Lucyk Kelsey, Lorenzetti Diane, Quan Hude
*Department of Economics and Community Health Sciences †Department of Community Health Sciences and Centre for Health and Policy Studies, University of Calgary, Calgary, AB, Canada.
Med Care. 2015 Apr;53(4):355-65. doi: 10.1097/MLR.0000000000000317.
Policy decisions in health care, such as hospital performance evaluation and performance-based budgeting, require an accurate prediction of hospital length of stay (LOS). This paper provides a systematic review of risk adjustment models for hospital LOS, and focuses primarily on studies that use administrative data.
MEDLINE, EMBASE, Cochrane, PubMed, and EconLit were searched for studies that tested the performance of risk adjustment models in predicting hospital LOS. We included studies that tested models developed for the general inpatient population, and excluded those that analyzed risk factors only correlated with LOS, impact analyses, or those that used disease-specific scales and indexes to predict LOS.
Our search yielded 3973 abstracts, of which 37 were included. These studies used various disease groupers and severity/morbidity indexes to predict LOS. Few models were developed specifically for explaining hospital LOS; most focused primarily on explaining resource spending and the costs associated with hospital LOS, and applied these models to hospital LOS. We found a large variation in predictive power across different LOS predictive models. The best model performance for most studies fell in the range of 0.30-0.60, approximately.
The current risk adjustment methodologies for predicting LOS are still limited in terms of models, predictors, and predictive power. One possible approach to improving the performance of LOS risk adjustment models is to include more disease-specific variables, such as disease-specific or condition-specific measures, and functional measures. For this approach, however, more comprehensive and standardized data are urgently needed. In addition, statistical methods and evaluation tools more appropriate to LOS should be tested and adopted.
医疗保健领域的政策决策,如医院绩效评估和基于绩效的预算编制,需要准确预测医院住院时间(LOS)。本文对医院LOS的风险调整模型进行了系统综述,主要关注使用行政数据的研究。
检索了MEDLINE、EMBASE、Cochrane、PubMed和EconLit,以查找测试风险调整模型在预测医院LOS方面性能的研究。我们纳入了测试为普通住院患者群体开发的模型的研究,并排除了那些仅分析与LOS相关的风险因素、影响分析,或那些使用特定疾病量表和指数来预测LOS的研究。
我们的检索产生了3973篇摘要,其中37篇被纳入。这些研究使用了各种疾病分组器和严重程度/发病率指数来预测LOS。很少有模型是专门为解释医院LOS而开发的;大多数主要关注解释资源支出和与医院LOS相关的成本,并将这些模型应用于医院LOS。我们发现不同的LOS预测模型在预测能力上有很大差异。大多数研究的最佳模型性能大致在0.30 - 0.60范围内。
目前用于预测LOS的风险调整方法在模型、预测因素和预测能力方面仍然有限。提高LOS风险调整模型性能的一种可能方法是纳入更多特定疾病变量,如特定疾病或特定状况的测量指标以及功能测量指标。然而,对于这种方法,迫切需要更全面和标准化的数据。此外,应测试并采用更适合LOS的统计方法和评估工具。