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Utilization of Data- Mining Techniques for Evaluation of Patterns of Asthma Drugs Use by Ambulatory Patients in a Large Health Maintenance Organization

机译:利用数据挖掘技术,用于评估大型健康维护组织中的动态患者使用的哮喘药物模式

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A major problem of drugs utilization is to identify outlier patients who are using large quantities of drugs over extended periods of time. Today, healthcare and health insurance systems have to deal with an increased number of patients suffering from chronic diseases, such as asthma, who are continuously using a combination of several medications. This has caused a substantial increase in the cost of providing healthcare for such patients. In Israel, 11% of the national health care budget is spent on medications. However, healthcare management operations do not have the information that can assist in determining whether extensive multi-year drug utilization by a chronic patient is an outlier or misuse of resources. In this work, we construct a prediction model for asthma drug utilization by applying novel methods of knowledge discovery in time-series databases to a multi-year asthma drug utilization data set. Methods of mining utilization patterns combine clustering algorithms, clustering validity measures, and decision-tree classification algorithms. This methodology is applied to a regional patients' database maintained in 'Clalit Health Services' HMO, Beer-Sheva, Israel between January 2000 and November 2002. The clustering results reveal that 274 asthma patients who received 9,319 prescriptions during that period can be partitioned into three groups of utilization patterns, where ten patients (3.6%) who used 1,333 prescriptions (14.3%) are classified as outliers. The classification results show that the use of corticosteroids medications (oral or by inhalation) and the age of a patient can be considered as the main predictive factors in the induced models.
机译:药物利用的主要问题是识别在延长的时间内使用大量药物的异常患者。如今,医疗保健和健康保险制度必须处理患有患有慢性疾病的患者,例如哮喘,他们连续使用几种药物的组合。这导致为此类患者提供医疗保健的成本大幅增加。在以色列中,11%的国家医疗预算用于药物。然而,医疗保健管理业务没有能够帮助确定慢性患者是否广泛的多年药物利用的信息是一个异常或滥用资源。在这项工作中,通过将时间序列数据库中的知识发现方法应用于多年的哮喘药物利用数据集来构建哮喘药物利用的预测模型。采矿利用模式的方法组合聚类算法,聚类有效性测量和决策树分类算法。该方法适用于2000年1月至2002年11月在以色列啤酒舍州的“Clalit卫生服务”HMO,Beer-Sheva的区域患者数据库中。聚类结果表明,在该期间收到9,319名处方的274名哮喘患者可以分配到三组利用模式,其中有10名患者(3.6%)使用1,333处处方(14.3%)被归类为异常值。分类结果表明,使用皮质类固醇药物(口腔或吸入)和患者的年龄可以被认为是诱导模型中的主要预测因素。

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