Mental Health Risk Adjustment with Clinical Categories and Machine Learning

被引:22
|
作者
Shrestha, Akritee [2 ]
Bergquist, Savannah [1 ]
Montz, Ellen [1 ]
Rose, Sherri [1 ]
机构
[1] Harvard Med Sch, Dept Hlth Care Policy, 180 Longwood Ave, Boston, MA 02115 USA
[2] Harvard TH Chan Sch Publ Hlth, Dept Biostat, Boston, MA USA
关键词
Risk adjustment; machine learning; mental health; regression; CARE; INCENTIVES; ECONOMICS; COSTS; PLANS;
D O I
10.1111/1475-6773.12818
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
ObjectiveTo propose nonparametric ensemble machine learning for mental health and substance use disorders (MHSUD) spending risk adjustment formulas, including considering Clinical Classification Software (CCS) categories as diagnostic covariates over the commonly used Hierarchical Condition Category (HCC) system. Data Sources2012-2013 Truven MarketScan database. Study DesignWe implement 21 algorithms to predict MHSUD spending, as well as a weighted combination of these algorithms called super learning. The algorithm collection included seven unique algorithms that were supplied with three differing sets of MHSUD-related predictors alongside demographic covariates: HCC, CCS, and HCC+CCS diagnostic variables. Performance was evaluated based on cross-validated R-2 and predictive ratios. Principal FindingsResults show that super learning had the best performance based on both metrics. The top single algorithm was random forests, which improved on ordinary least squares regression by 10 percent with respect to relative efficiency. CCS categories-based formulas were generally more predictive of MHSUD spending compared to HCC-based formulas. ConclusionsLiterature supports the potential benefit of implementing a separate MHSUD spending risk adjustment formula. Our results suggest there is an incentive to explore machine learning for MHSUD-specific risk adjustment, as well as considering CCS categories over HCCs.
引用
收藏
页码:3189 / 3206
页数:18
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