Large-Scale Study of Temporal Shift in Health Insurance Claims

Christina X. Ji, A. Alaa, D. Sontag
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引用次数: 2

Abstract

Most machine learning models for predicting clinical outcomes are developed using historical data. Yet, even if these models are deployed in the near future, dataset shift over time may result in less than ideal performance. To capture this phenomenon, we consider a task--that is, an outcome to be predicted at a particular time point--to be non-stationary if a historical model is no longer optimal for predicting that outcome. We build an algorithm to test for temporal shift either at the population level or within a discovered sub-population. Then, we construct a meta-algorithm to perform a retrospective scan for temporal shift on a large collection of tasks. Our algorithms enable us to perform the first comprehensive evaluation of temporal shift in healthcare to our knowledge. We create 1,010 tasks by evaluating 242 healthcare outcomes for temporal shift from 2015 to 2020 on a health insurance claims dataset. 9.7% of the tasks show temporal shifts at the population level, and 93.0% have some sub-population affected by shifts. We dive into case studies to understand the clinical implications. Our analysis highlights the widespread prevalence of temporal shifts in healthcare.
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健康保险理赔时间变迁的大规模研究
大多数用于预测临床结果的机器学习模型都是使用历史数据开发的。然而,即使这些模型在不久的将来部署,随着时间的推移,数据集的迁移也可能导致性能不理想。为了捕捉这一现象,我们认为,如果历史模型不再是预测结果的最佳选择,那么任务——即在特定时间点预测的结果——是非平稳的。我们建立了一个算法来测试在种群水平或在发现的子种群内的时间位移。然后,我们构建了一个元算法来对大量任务的时间偏移进行回顾性扫描。我们的算法使我们能够对我们所知的医疗保健时间变化进行首次全面评估。我们通过在健康保险索赔数据集上评估242个医疗保健结果,从2015年到2020年的时间变化,创建了1,010个任务。9.7%的任务在人口水平上表现出时间的变化,93.0%的任务有一些受变化影响的子人口。我们深入研究案例,以了解临床意义。我们的分析强调了医疗保健中普遍存在的时间变化。
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