Feature Exploration and Causal Inference on Mortality of Epilepsy Patients Using Insurance Claims Data.

Yuanda Zhu, Hang Wu, May D Wang
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引用次数: 6

Abstract

Approximately 0.5-1% of the global population is afflicted with epilepsy, a neurological disorder characterized by repeated seizures. Sudden Unexpected Death in Epilepsy (SUDEP) is a poorly understood complication that claims the lives of nearly 1-in-1000 epilepsy patients every year. This paper aims to explore diagnosis codes, demographic and payment features on mortality of epilepsy patients. We design a mortality prediction model with diagnosis codes and non-diagnosis features extracted from US commercial insurance claims data. We present classification accuracy of 0.91 and 0.85 by using different feature vectors. After analyzing the aforementioned features in prediction model, we extend the work to causal inference between modified diagnosis codes and selected non-diagnosis features. The uplift test of causal inference using three algorithms indicates that a patient is more likely to survive if upgrading from a low-coverage healthcare plan into a high-coverage plan.

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基于保险理赔数据的癫痫患者死亡率特征探索及因果推断。
全球约有0.5-1%的人口患有癫痫,这是一种以反复发作为特征的神经系统疾病。癫痫猝死(SUDEP)是一种鲜为人知的并发症,每年夺去近千分之一癫痫患者的生命。本文旨在探讨癫痫患者死亡率的诊断编码、人口学特征和支付特征。我们设计了一个死亡率预测模型,其中包含了从美国商业保险索赔数据中提取的诊断代码和非诊断特征。使用不同的特征向量,分类准确率分别为0.91和0.85。在分析了预测模型中的上述特征之后,我们将工作扩展到修改后的诊断代码与选定的非诊断特征之间的因果推理。使用三种算法的因果推理提升测试表明,如果患者从低覆盖率的医疗保健计划升级到高覆盖率的医疗保健计划,则患者更有可能存活。
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