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A Prescription Trend Analysis using Medical Insurance Claim Big Data

机译:使用医疗保险理赔大数据的处方趋势分析

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Understanding the spread of diseases and the use of medicines is of practical importance for various organizations, such as medical providers, medical payers, and national governments. This study aims to detect the change in the prescription trends and to identify its cause through an analysis of Medical Insurance Claims (MICs), which comprise the specifications of medical fees charged to health insurers. Our approach is two-fold. (1) We propose a latent variable model that simulates the medication behavior of physicians to accurately reproduce monthly prescription time series from the MIC data, where prescription links between the diseases and medicines are missing. (2) We apply a state space model with intervention variables to decompose the monthly prescription time series into different components including seasonality and structural changes. Using a large dataset consisting of 3.5-year MIC records, we conduct experiments to evaluate our approach in terms of accuracy, usefulness, and efficiency. We also demonstrate three applications for our medical analysis.
机译:对于各种组织,例如医疗提供者,医疗付款人和国家政府,了解疾病的传播和药物的使用具有实际意义。本研究旨在通过对医疗保险理赔(MIC)的分析来发现处方趋势的变化并找出其原因,其中包括对健康保险公司收取的医疗费用规范。我们的方法有两个方面。 (1)我们提出了一个潜在变量模型,该模型可以模拟医生的用药行为,以准确地从MIC数据中再现疾病和药物之间的处方链接的每月处方时间序列。 (2)我们使用带有干预变量的状态空间模型将每月处方时间序列分解为不同的组成部分,包括季节性和结构变化。我们使用包含3.5年MIC记录的大型数据集,进行实验以评估我们方法的准确性,有用性和效率。我们还演示了三种用于医学分析的应用程序。

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