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Predicting resource utilization in a Veterans Health Administration primary care population: comparison of methods based on diagnoses and medications.

机译:预测退伍军人卫生管理局基层医疗人员的资源利用:基于诊断和药物的方法比较。

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BACKGROUND: Valid methods of predicting resource utilization in primary care populations are needed. We compared the predictive validity of a method based on diagnoses from administrative data (Adjusted Clinical Groups [ACGs]) and a method using medication profiles (Chronic Disease Index [CDI]). METHODS: This retrospective cohort study included 31,212 primary care patients in a Veterans Health Administration (VA) network who received outpatient medication prescriptions in 1999 and who had VA utilization in 1999 and 2000. ACG and CDI classifications were determined using 1999 data. Analyses compared the predictive validity with respect to outpatient clinic visits and days of hospital care. RESULTS: Both ACGs and CDI explained a higher proportion of the variance in outpatient visits than demographic data alone. However, explained variance was higher for ACGs. For example, ACGs explained 30.2% of the variance in total visits in 1999, compared with 8.8% for the CDI. Results were similar for 2000, although the explained variance declined for both methods (eg, 16.3% and 5.7%, respectively, for total visits). Results were similar in analyses examining the discrimination of the 2 methods to predict hospital use; for example, c statistics for ACGs and CDI scores were 0.86 versus 0.70, respectively (P <0.05), for 1999 and 0.72 and 0.65, respectively (P <0.05), for 2000. CONCLUSION: Among VA patients, ACGs had superior predictive validity than the CDI, a newer nonproprietary method based on pharmacy data. The findings suggest that diagnosis-based measures could be preferable for ambulatory case-mix adjustment and are valid across a wide range of populations.
机译:背景:需要有效的方法来预测初级保健人群的资源利用。我们比较了基于行政数据诊断的方法(调整后的临床组[ACGs])和使用药物状况(慢性疾病指数[CDI])的方法的预测有效性。方法:这项回顾性队列研究纳入了退伍军人卫生管理局(VA)网络中的31,212名初级护理患者,这些患者在1999年接受了门诊用药处方,并在1999年和2000年使用了VA。利用1999年的数据确定了ACG和CDI分类。分析比较了门诊就诊和住院天数的预测有效性。结果:ACG和CDI都比单独的人口统计学数据解释了更高的门诊就诊差异。但是,ACG的解释方差更高。例如,ACG解释了1999年总访问量中30.2%的差异,而CDI则为8.8%。 2000年的结果相似,尽管两种方法的解释方差均下降(例如,总访问量分别为16.3%和5.7%)。分析检查两种预测医院使用方法的区别的分析结果相似。例如,1999年的ACGs和CDI评分的c统计分别为0.86比0.70(P <0.05),2000年的c统计学分别为0.72和0.65(P <0.05)(结论)。与CDI相比,这是一种基于药房数据的更新非专利方法。研究结果表明,基于诊断的措施可能更适用于动态病例混合调整,并且适用于广泛的人群。

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