Data mining to predict and prevent errors in health insurance claims processing

Mohit Kumar, R. Ghani, Z. Mei
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引用次数: 69

Abstract

Health insurance costs across the world have increased alarmingly in recent years. A major cause of this increase are payment errors made by the insurance companies while processing claims. These errors often result in extra administrative effort to re-process (or rework) the claim which accounts for up to 30% of the administrative staff in a typical health insurer. We describe a system that helps reduce these errors using machine learning techniques by predicting claims that will need to be reworked, generating explanations to help the auditors correct these claims, and experiment with feature selection, concept drift, and active learning to collect feedback from the auditors to improve over time. We describe our framework, problem formulation, evaluation metrics, and experimental results on claims data from a large US health insurer. We show that our system results in an order of magnitude better precision (hit rate) over existing approaches which is accurate enough to potentially result in over $15-25 million in savings for a typical insurer. We also describe interesting research problems in this domain as well as design choices made to make the system easily deployable across health insurance companies.
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用于预测和防止健康保险索赔处理中的错误的数据挖掘
近年来,世界各地的医疗保险费用增长惊人。这一增长的主要原因是保险公司在处理索赔时支付错误。这些错误通常会导致额外的管理工作来重新处理(或重做)索赔,这在典型的健康保险公司中占到管理人员的30%。我们描述了一个使用机器学习技术帮助减少这些错误的系统,通过预测需要重做的声明,生成解释来帮助审核员纠正这些声明,并尝试特征选择,概念漂移和主动学习来收集审核员的反馈,以随着时间的推移进行改进。我们描述了我们的框架、问题表述、评估指标和来自美国一家大型健康保险公司的索赔数据的实验结果。我们表明,与现有的方法相比,我们的系统的精度(命中率)提高了一个数量级,这些方法的精确度足以为一家典型的保险公司节省超过1500万至2500万美元。我们还描述了该领域中有趣的研究问题,以及为使系统易于跨健康保险公司部署而做出的设计选择。
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