Department of Biomedical Data Science, Stanford, California, USA.
Stanford Health Care, Menlo Park, CA, USA.
AMIA Annu Symp Proc. 2024 Jan 11;2023:1201-1208. eCollection 2023.
In analyzing direct hospitalization cost and clinical data from an academic medical center, commonly used metrics such as diagnosis-related group (DRG) weight explain approximately 37% of cost variability, but a substantial amount of variation remains unaccounted for by case mix index (CMI) alone. Using CMI as a benchmark, we isolate and target individual DRGs with higher than expected average costs for specific quality improvement efforts. While DRGs summarize hospitalization care after discharge, a predictive model using only information known before admission explained up to 60% of cost variability for two DRGs with a high excess cost burden. This level of variability likely reflects underlying patient factors that are not modifiable (e.g., age and prior comorbidities) and therefore less useful for health systems to target for intervention. However, the remaining unexplained variation can be inspected in further studies to discover operational factors that health systems can target to improve quality and value for their patients. Since DRG weights represent the expected resource consumption for a specific hospitalization type relative to the average hospitalization, the data-driven approach we demonstrate can be utilized by any health institution to quantify excess costs and potential savings among DRGs.
在分析学术医疗中心的直接住院费用和临床数据时,常用的指标(如诊断相关组 [DRG] 权重)可解释约 37%的费用变异性,但病例组合指数 [CMI] 单独并不能解释大部分的变异性。我们使用 CMI 作为基准,针对特定质量改进工作,对个别高于预期平均费用的 DRG 进行隔离和定位。虽然 DRG 总结了出院后的住院护理,但仅使用入院前已知信息的预测模型可以解释两个高超额费用负担的 DRG 中高达 60%的费用变异性。这种变异性可能反映了不可改变的潜在患者因素(例如年龄和先前的合并症),因此对卫生系统来说,针对这些因素进行干预的效果较差。然而,剩余的无法解释的变异可以在进一步的研究中进行检查,以发现卫生系统可以针对提高患者质量和价值的运营因素。由于 DRG 权重代表特定住院类型相对于平均住院的预期资源消耗,因此我们展示的数据驱动方法可被任何医疗机构用于量化 DRG 之间的超额成本和潜在节省。