Advanced School for Health Policy, University of Bologna, Bologna, Italy.
Haas School of Business, University of California, Berkeley, California, USA.
Health Econ. 2022 Jul;31(7):1368-1380. doi: 10.1002/hec.4512. Epub 2022 Apr 5.
The Italian National Healthcare Service relies on per capita allocation for healthcare funds, despite having a highly detailed and wide range of data to potentially build a complex risk-adjustment formula. However, heterogeneity in data availability limits the development of a national model. This paper implements and ealuates machine learning (ML) and standard risk-adjustment models on different data scenarios that a Region or Country may face, to optimize information with the most predictive model. We show that ML achieves a small but generally statistically insignificant improvement of adjusted R and mean squared error with fine data granularity compared to linear regression, while in coarse granularity and poor range of variables scenario no differences were observed. The advantage of ML algorithms is greater in the coarse granularity and fair/rich range of variables set and limited with fine granularity scenarios. The inclusion of detailed morbidity- and pharmacy-based adjustors generally increases fit, although the trade-off of creating adverse economic incentives must be considered.
意大利国家医疗保健服务依赖人均医疗资金分配,尽管拥有详细且广泛的数据,有可能建立一个复杂的风险调整公式。然而,数据可用性的异质性限制了国家模型的发展。本文在不同的数据场景下实施和评估了机器学习 (ML) 和标准风险调整模型,这些场景可能是一个地区或国家所面临的,以优化具有最佳预测模型的信息。我们表明,与线性回归相比,在精细数据粒度下,ML 实现了调整后 R 和均方误差的微小但通常在统计学上无显著差异的改进,而在粗糙粒度和较差变量范围的场景中则没有观察到差异。ML 算法的优势在粗糙粒度和公平/丰富变量集的场景中更大,而在精细粒度场景中则受到限制。包含详细的发病率和基于药房的调整因素通常会增加拟合度,尽管必须考虑到创建不利经济激励的权衡。