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Unsupervised DRG Upcoding Detection in Healthcare Databases

机译:医疗保健数据库中的无监督DRG Upcoding检测

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Diagnosis Related Group (DRG) upcoding is an anomaly in healthcare data that costs hundreds of millions of dollars in many developed countries. DRG upcoding is typically detected through resource intensive auditing. As supervised modeling of DRG upcoding is severely constrained by scope and timeliness of past audit data, we propose in this paper an unsupervised algorithm to filter data for potential identification of DRG upcoding. The algorithm has been applied to a hip replacement/revision dataset and a heart-attack dataset. The results are consistent with the assumptions held by domain experts.
机译:诊断相关组(DRG)Upcoding是医疗保健数据的异常,在许多发达国家中花费数亿美元。 DRG Upcoding通常通过资源密集审计检测。由于DRG Upcoding的监督建模受到过去审计数据的范围和及时性的严重限制,我们提出了一种无监督的算法来筛选DRG Upcoding的潜在识别数据。该算法已应用于HIP替换/修订数据集和心脏攻击数据集。结果与域专家持有的假设一致。

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