Joudaki Hossein, Rashidian Arash, Minaei-Bidgoli Behrouz, Mahmoodi Mahmood, Geraili Bijan, Nasiri Mahdi, Arab Mohammad
Department of Health Management and Economics, School of Public Health, Tehran University of Medical Sciences, Tehran, Iran.
Glob J Health Sci. 2014 Aug 31;7(1):194-202. doi: 10.5539/gjhs.v7n1p194.
Inappropriate payments by insurance organizations or third party payers occur because of errors, abuse and fraud. The scale of this problem is large enough to make it a priority issue for health systems. Traditional methods of detecting health care fraud and abuse are time-consuming and inefficient. Combining automated methods and statistical knowledge lead to the emergence of a new interdisciplinary branch of science that is named Knowledge Discovery from Databases (KDD). Data mining is a core of the KDD process. Data mining can help third-party payers such as health insurance organizations to extract useful information from thousands of claims and identify a smaller subset of the claims or claimants for further assessment. We reviewed studies that performed data mining techniques for detecting health care fraud and abuse, using supervised and unsupervised data mining approaches. Most available studies have focused on algorithmic data mining without an emphasis on or application to fraud detection efforts in the context of health service provision or health insurance policy. More studies are needed to connect sound and evidence-based diagnosis and treatment approaches toward fraudulent or abusive behaviors. Ultimately, based on available studies, we recommend seven general steps to data mining of health care claims.
保险机构或第三方支付方出现不当支付是由于错误、滥用和欺诈行为。这个问题的规模大到足以使其成为卫生系统的一个优先问题。传统的检测医疗保健欺诈和滥用行为的方法既耗时又低效。将自动化方法与统计知识相结合,催生了一个名为数据库知识发现(KDD)的新跨学科科学分支。数据挖掘是KDD过程的核心。数据挖掘可以帮助诸如健康保险机构等第三方支付方从数千份理赔申请中提取有用信息,并识别出一小部分理赔申请或索赔人以便进行进一步评估。我们回顾了使用监督式和无监督式数据挖掘方法来执行数据挖掘技术以检测医疗保健欺诈和滥用行为的研究。大多数现有研究都集中在算法数据挖掘上,而没有强调或将其应用于卫生服务提供或健康保险政策背景下的欺诈检测工作。需要更多研究来将合理且基于证据的诊断和治疗方法与欺诈或滥用行为联系起来。最终,基于现有研究,我们推荐了医疗保健理赔数据挖掘的七个一般步骤。