论文标题
深入学习人口健康成本
Deep learning for prediction of population health costs
论文作者
论文摘要
准确的医疗保健费用预测对于最佳管理健康成本很重要。但是,缺少从健康保险索赔或电子健康记录等数据中利用医疗丰富性的方法。在这里,我们开发了一个深层神经网络,以预测健康保险索赔记录中的未来成本。我们将深层网络和岭回归模型应用于140万德国保险公司的样本,以预测一年的医疗保健总成本。将这两种方法与具有各种绩效指标的MORBI-RSA模型进行了比较,还用于预测成本变化的患者,并确定该预测的相关代码。我们表明,神经网络的表现优于山脊回归以及所有MORBI-RSA模型以进行成本预测。此外,在预测成本变化并确定更具体的代码的患者方面,神经网络优于脊回归。总而言之,我们表明我们的深神经网络可以利用患者记录的全部复杂性并胜过标准方法。我们认为,更好的性能是由于能够在模型中纳入复杂相互作用的能力,并且该模型也可以用于预测其他健康表型。
Accurate prediction of healthcare costs is important for optimally managing health costs. However, methods leveraging the medical richness from data such as health insurance claims or electronic health records are missing. Here, we developed a deep neural network to predict future cost from health insurance claims records. We applied the deep network and a ridge regression model to a sample of 1.4 million German insurants to predict total one-year health care costs. Both methods were compared to Morbi-RSA models with various performance measures and were also used to predict patients with a change in costs and to identify relevant codes for this prediction. We showed that the neural network outperformed the ridge regression as well as all Morbi-RSA models for cost prediction. Further, the neural network was superior to ridge regression in predicting patients with cost change and identified more specific codes. In summary, we showed that our deep neural network can leverage the full complexity of the patient records and outperforms standard approaches. We suggest that the better performance is due to the ability to incorporate complex interactions in the model and that the model might also be used for predicting other health phenotypes.