A decision support tool for identifying abuse of controlled substances by ForwardHealth Medicaid members.

Allan T Mailloux, Stephen W Cummings, Mrinal Mugdh
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引用次数: 10

Abstract

Objective: Our objective was to use Wisconsin's Medicaid Evaluation and Decision Support (MEDS) data warehouse to develop and validate a decision support tool (DST) that (1) identifies Wisconsin Medicaid fee-for-service recipients who are abusing controlled substances, (2) effectively replicates clinical pharmacist recommendations for interventions intended to curb abuse of physician and pharmacy services, and (3) automates data extraction, profile generation and tracking of recommendations and interventions.

Methods: From pharmacist manual reviews of medication profiles, seven measures of overutilization of controlled substances were developed, including (1-2) 6-month and 2-month "shopping" scores, (3-4) 6-month and 2-month forgery scores, (5) duplicate/same day prescriptions, (6) count of controlled substance claims, and the (7) shopping 6-month score for the individual therapeutic class with the highest score. The pattern analysis logic for the measures was encoded into SQL and applied to the medication profiles of 190 recipients who had already undergone manual review. The scores for each measure and numbers of providers were analyzed by exhaustive chi-squared automatic interaction detection (CHAID) to determine significant thresholds and combinations of predictors of pharmacist recommendations, resulting in a decision tree to classify recipients by pharmacist recommendations.

Results: The overall correct classification rate of the decision tree was 95.3%, with a 2.4% false positive rate and 4.0% false negative rate for lock-in versus prescriber-alert letter recommendations. Measures used by the decision tree include the 2-month and 6-month shopping scores, and the number of pharmacies and prescribers. The number of pharmacies was the best predictor of abuse of controlled substances. When a Medicaid recipient receives prescriptions for controlled substances at 8 or more pharmacies, the likelihood of a lock-in recommendation is 90%.

Conclusion: The availability of the Wisconsin MEDS data warehouse has enabled development and application of a decision tree for detecting recipient fraud and abuse of controlled substance medications. Using standard pharmacy claims data, the decision tree effectively replicates pharmacist manual review recommendations. The DST has automated extraction and evaluation of pharmacy claims data for creating recommendations for guiding pharmacists in the selection of profiles for manual review. The DST is now the primary method used by the Wisconsin Medicaid program to detect fraud and abuse of physician and pharmacy services committed by recipients.

一个用于识别ForwardHealth Medicaid成员滥用管制药物的决策支持工具。
摘要目的:我们的目标是使用威斯康星州的医疗补助评估和决策支持(MEDS)数据仓库来开发和验证一个决策支持工具(DST),该工具可以(1)识别滥用受控物质的威斯康星州医疗补助收费服务接受者,(2)有效地复制旨在遏制滥用医生和药房服务的干预措施的临床药剂师建议,以及(3)自动提取数据。概况生成和跟踪建议和干预措施。方法:根据药师手册的用药资料,制定了7项管制药物过度使用指标,包括(1 ~ 2)6个月和2个月的“购物”评分,(3 ~ 4)6个月和2个月的伪造评分,(5)重复/同日处方,(6)管制药物声明计数,以及(7)得分最高的个别治疗类的6个月购物评分。度量的模式分析逻辑被编码到SQL中,并应用到已经经过人工审查的190名接受者的药物配置文件中。通过穷举卡方自动交互检测(CHAID)分析每个措施的得分和提供者数量,以确定药剂师推荐的显著阈值和预测因子组合,从而形成决策树,根据药剂师推荐对接受者进行分类。结果:决策树的总体正确分类率为95.3%,锁定与处方警告信推荐的假阳性率为2.4%,假阴性率为4.0%。决策树使用的度量包括2个月和6个月的购物评分,以及药店和开处方者的数量。药店的数量是滥用管制药物的最佳预测指标。当接受医疗补助的人在8家或更多的药店收到管制药物的处方时,锁定推荐的可能性为90%。结论:Wisconsin MEDS数据仓库的可用性使决策树的开发和应用成为可能,用于检测收件人欺诈和滥用管制物质药物。使用标准药房索赔数据,决策树有效地复制了药剂师手工审查建议。DST自动提取和评估药房索赔数据,为指导药剂师选择手动审查的配置文件创建建议。DST现在是威斯康辛州医疗补助计划用来检测欺诈和滥用医生和药房服务的主要方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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