Rosen A K, Loveland S, Anderson J J, Rothendler J A, Hankin C S, Rakovski C C, Moskowitz M A, Berlowitz D R
Center for Health Quality, Outcomes and Economic Research, Bedford VAMC, MA 01730, USA.
Med Care. 2001 Jul;39(7):692-704. doi: 10.1097/00005650-200107000-00006.
Diagnosis-based case-mix measures are increasingly used for provider profiling, resource allocation, and capitation rate setting. Measures developed in one setting may not adequately capture the disease burden in other settings.
To examine the feasibility of adapting two such measures, Adjusted Clinical Groups (ACGs) and Diagnostic Cost Groups (DCGs), to the Department of Veterans Affairs (VA) population.
A 60% random sample of veterans who used health care services during FY 1997 was obtained from VA inpatient and outpatient administrative databases. A split-sample technique was used to obtain a 40% sample (n = 1,046,803) for development and a 20% sample (n = 524,461) for validation.
Concurrent ACG and DCG risk adjustment models, using 1997 diagnoses and demographics to predict FY 1997 utilization (ambulatory provider encounters, and service days-the sum of a patient's inpatient and outpatient visit days), were fitted and cross-validated.
Patients were classified into groupings that indicated a population with multiple psychiatric and medical diseases. Model R-squares explained between 6% and 32% of the variation in service utilization. Although reparameterized models did better in predicting utilization than models with external weights, none of the models was adequate in characterizing the entire population. For predicting service days, DCGs were superior to ACGs in most categories, whereas ACGs did better at discriminating among veterans who had the lowest utilization.
Although "off-the-shelf" case-mix measures perform moderately well when applied to another setting, modifications may be required to accurately characterize a population's disease burden with respect to the resource needs of all patients.
基于诊断的病例组合测量方法越来越多地用于医疗服务提供者评估、资源分配和人头费率设定。在一种环境中开发的测量方法可能无法充分反映其他环境中的疾病负担。
检验调整临床组(ACG)和诊断成本组(DCG)这两种测量方法应用于退伍军人事务部(VA)人群的可行性。
从VA住院和门诊管理数据库中获取1997财年使用医疗服务的退伍军人的60%随机样本。采用分割样本技术获取40%的样本(n = 1,046,803)用于开发,20%的样本(n = 524,461)用于验证。
使用1997年的诊断和人口统计学数据来预测1997财年的医疗服务利用率(门诊医疗服务接触次数和服务天数——患者住院和门诊就诊天数之和),拟合并交叉验证同期ACG和DCG风险调整模型。
患者被分类到表明患有多种精神疾病和躯体疾病的人群分组中。模型决定系数解释了服务利用率6%至32%的变异。尽管重新参数化的模型在预测利用率方面比具有外部权重的模型表现更好,但没有一个模型能够充分描述整个人群。对于预测服务天数,在大多数类别中DCG优于ACG,而ACG在区分利用率最低的退伍军人方面表现更好。
尽管“现成的”病例组合测量方法应用于另一种环境时表现中等,但可能需要进行修改,以便根据所有患者的资源需求准确描述人群的疾病负担。