利用医疗索赔数据的半监督预测共病罕见病

Chirag Nagpal, K. Miller, Tiffany Pellathy, M. Hravnak, G. Clermont, M. Pinsky, A. Dubrawski
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引用次数: 0

摘要

医疗保险索赔数据提供了患者医疗概况的粗略视图,包括有关先前诊断和执行的程序的信息。这些数据在过去被用来预测未显现的疾病的存在。然而,更罕见的情况为训练监督模型提供了极其有限的基础事实,但预测相关的合并症可以帮助减少从可治疗但可能危及生命的疾病中抢救失败。在本文中,我们的目标是一项艰巨的任务,即改进用于预测住院期间出现的罕见疾病合并症的模型,并提出PreCoRC,这是一种利用诊断和程序代码的分层结构来缓解特定类型抢救失败(FTR)事件相对较低患病率的新方法。它可以应用于先前学习的预测模型,并用于发现有助于任务的底层层次结构的部分。我们的实验结果表明,PreCoRC有望在临床环境中发挥实用作用,并为危及生命的并发症的潜在领先指标提供见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-Supervised Prediction of Comorbid Rare Conditions Using Medical Claims Data
Medical insurance claims data offer a coarse view of a patient's medical profile, including information about previous diagnoses and procedures performed. These data have been exploited in the past to predict presence of unmanifested conditions. Rarer conditions however, provide an extremely limited amount of ground truth to train supervised models, but predicting relevant co-morbidities can help reduce failure to rescue from a treatable, yet potentially life threatening condition. In this paper, we aim at a formidable task of improving models built to predict comorbidity of rare conditions that emerge during hospitalization and present PreCoRC, a novel approach that leverages hierarchical structures of diagnosis and procedure codes to alleviate the relatively low prevalence of specific types of Failure to Rescue (FTR) incidents. It can be applied post-hoc over previously learnt predictive models, and used to discover parts of the underlying hierarchies that contribute to the task. Our experimental results demonstrate that PreCoRC carries promise for operational utility in clinical settings, and offer insights into potential leading indicators of life threatening complications.
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