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Improving Fraud and Abuse Detection in General Physician Claims: A Data Mining Study

机译:改进普通医师索赔中的欺诈和滥用检测:数据挖掘研究

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摘要

>Background: We aimed to identify the indicators of healthcare fraud and abuse in general physicians’ drug prescription claims, and to identify a subset of general physicians that were more likely to have committed fraud and abuse. >Methods: We applied data mining approach to a major health insurance organization dataset of private sector general physicians’ prescription claims. It involved 5 steps: clarifying the nature of the problem and objectives, data preparation, indicator identification and selection, cluster analysis to identify suspect physicians, and discriminant analysis to assess the validity of the clustering approach. >Results: Thirteen indicators were developed in total. Over half of the general physicians (54%) were ‘suspects’ of conducting abusive behavior. The results also identified 2% of physicians as suspects of fraud. Discriminant analysis suggested that the indicators demonstrated adequate performance in the detection of physicians who were suspect of perpetrating fraud (98%) and abuse (85%) in a new sample of data. >Conclusion: Our data mining approach will help health insurance organizations in low-and middle-income countries (LMICs) in streamlining auditing approaches towards the suspect groups rather than routine auditing of all physicians.
机译:>背景:我们旨在确定普通医生的药物处方声明中医疗保健欺诈和滥用的指标,并确定一部分更可能实施欺诈和滥用的普通医生。 >方法:我们将数据挖掘方法应用于主要医疗保险组织的私人部门普通医师处方药索赔数据集。它涉及5个步骤:阐明问题和目标的性质,数据准备,指标识别和选择,聚类分析以识别可疑医生,以及判别分析以评估聚类方法的有效性。 >结果:总共制定了十三项指标。超过一半的普通医师(54%)是“怀疑”进行虐待行为。结果还确定了2%的医生为欺诈嫌疑人。判别分析表明,这些指标在检测新数据样本中怀疑存在欺诈(98%)和虐待(85%)的医生中表现出了足够的性能。 >结论:我们的数据挖掘方法将帮助中低收入国家(LMIC)的健康保险组织简化对犯罪嫌疑人群体的审核方法,而不是对所有医生进行例行审核。

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