Improper health insurance payments resulting from fraud and upcoding result in tens of billions of dollars in excess health care costs annually in the United States, motivating machine learning researchers to build anomaly detection models for health insurance claims. This article describes two such strategies specifically for ER claims. The first is an upcoding model based on severity code distributions, stratified by hierarchical diagnosis code clusters. A statistically significant difference in mean upcoding anomaly scores is observed between free-standing ERs and acute care hospitals, with free-standing ERs being more anomalous. The second model is a random forest that minimizes improper payments by optimally sorting ER claims within review queues. Depending on the percentage of claims reviewed, the random forest saved 12% to 40% above a baseline approach that prioritized claims by billed amount.
翻译:欺诈和升级导致的不正确医疗保险付款在美国每年造成数百亿美元的保健费用超额,激励机器学习研究人员为医疗保险索赔建立异常现象检测模型。本条款描述了两种具体针对ER索赔的战略。第一个是基于重度代码分布的更新代码模型,按等级诊断代码组分分。在独立的ERs和急性护理医院之间观察到了一个统计上显著的差异,即高度异常分数,而独立的ERs则更加异常。第二个模式是随机森林,通过在审查排队内对ER索赔进行最佳分类,最大限度地减少不当付款。根据审查的索赔百分比,随机森林节省了12%至40%的基线方法,该方法以计价数额优先处理索赔。