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Managing healthcare costs by peer-group modeling

机译:通过对等组建模管理医疗保健成本

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摘要

We describe statistical methods for managing healthcare costs using peer-group models and outlier detection. A peer group is a collection of similar entities such as patients, physicians, clinics, hospitals or pharmacies. In an empirical study of drug volumes prescribed by physicians, we examined the billing and prescription records for all patients covered by a major insurer over a 6 month period, encompassing over twenty million individual patient-physician encounters. During this period, 21,243 physicians prescribed a major pain-control medication which is frequently the subject of abuse - oxycodone. Profiles were computed for each physician based on their specialty and the clinical characteristics of their patients. For each physician, the average prescription volume within the corresponding peer group of similar physicians is an estimate of the expected volume of prescriptions for that physician. Strategies were developed to select outliers from the expected values as the ones that are candidates for potential cost reduction. Overall, the prediction of actual outcomes from peer profiles is significantly better than chance, with a reduction of average error of 45.5 %. For the 10 % of physicians that prescribed the most medications, there were extreme and highly significant differences found between their expected and predicted outcomes.
机译:我们描述了使用对等群体模型和离群值检测来管理医疗费用的统计方法。同级组是类似实体的集合,例如患者,医生,诊所,医院或药房。在对医生开具的药物数量进行的实证研究中,我们检查了主要保险公司在6个月内为所有患者开具的账单和处方记录,其中包括超过2000万的患者与医师个人接触。在此期间,有21,243位医生开出了一种主要的止痛药物-羟考酮,经常被滥用。根据每位医师的专长和患者的临床特征计算其资料。对于每个医师,相似医师的相应对等组内的平均处方量是对该医师的预期处方量的估计。制定了从预期值中选择异常值的策略,以作为可能降低成本的候选方法。总体而言,从同伴档案中预测实际结果要好于机会,平均误差降低45.5%。对于开具最多药物的10%的医生来说,他们的预期结果与预期结果之间存在极端和高度显着的差异。

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