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Using Dispensing Data to Evaluate Adherence Implementation Rates in Community Pharmacy

机译:使用分配数据评估社区药房的依从性实施率

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Background: Medication non-adherence remains a significant problem for the health care system with clinical, humanistic and economic impact. Dispensing data is a valuable and commonly utilized measure due accessibility in electronic health data. The purpose of this study was to analyze the changes on adherence implementation rates before and after a community pharmacist intervention integrated in usual real life practice, incorporating big data analysis techniques to evaluate Proportion of Days Covered (PDC) from pharmacy dispensing data. Methods: Retrospective observational study. A de-identified database of dispensing data from 20,335 patients ( n = 11,257 on rosuvastatin, n = 6,797 on irbesartan, and n = 2,281 on desvenlafaxine) was analyzed. Included patients received a pharmacist-led medication adherence intervention and had dispensing records before and after the intervention. As a measure of adherence implementation, PDC was utilized. Analysis of the database was performed using SQL and Python. Results: Three months after the pharmacist intervention there was an increase on average PDC from 50.2% (SD: 30.1) to 66.9% (SD: 29.9) for rosuvastatin, from 50.8% (SD: 30.3) to 68% (SD: 29.3) for irbesartan and from 47.3% (SD: 28.4) to 66.3% (SD: 27.3) for desvenlafaxine. These rates declined over 12 months to 62.1% (SD: 32.0) for rosuvastatin, to 62.4% (SD: 32.5) for irbesartan and to 58.1% (SD: 31.1) for desvenlafaxine. In terms of the proportion of adherent patients (PDC &= 80.0%) the trend was similar, increasing after the pharmacist intervention from overall 17.4 to 41.2% and decreasing after one year of analysis to 35.3%. Conclusion: Big database analysis techniques provided results on adherence implementation over 2 years of analysis. An increase in adherence rates was observed after the pharmacist intervention, followed by a gradual decrease over time. Enhancing the current intervention using an evidence-based approach and integrating big database analysis techniques to a real-time measurement of adherence could help community pharmacies improve and sustain medication adherence.
机译:背景:药物不依从性仍然是具有临床,人文和经济影响的卫生保健系统的重要问题。分配数据是电子健康数据应有的可访问性,是一种有价值的常用方法。这项研究的目的是分析在社区药师干预并入通常的现实生活实践之前和之后,依从实施率的变化,并结合大数据分析技术以根据药房分配数据评估所涵盖天数(PDC)。方法:回顾性观察研究。分析了一个未识别的分配数据库,该数据库分配了来自20335名患者的数据(罗苏伐他汀组n = 11,257,厄贝沙坦组n = 6,797,地斯文拉法辛组n = 2,281)。纳入的患者接受了药剂师指导的药物依从性干预,并且在干预前后都有配药记录。作为遵守实施情况的一种措施,使用了PDC。使用SQL和Python进行数据库分析。结果:在药剂师干预后三个月,瑞舒伐他汀的平均PDC从50.2%(SD:30.1)增加到66.9%(SD:29.9),从50.8%(SD:30.3)增加到68%(SD:29.3)对于厄贝沙坦而言,去甲文西汀的使用率从47.3%(SD:28.4)降低到66.3%(SD:27.3)。罗苏伐他汀的使用率在过去的12个月中下降至62.1%(SD:32.0),厄贝沙坦降至62.4%(SD:32.5),而去甲文拉法辛降至58.1%(SD:31.1)。就依从患者的比例而言(PDC> = 80.0%),趋势是相似的,在药剂师干预后从总体的17.4%增加到41.2%,并且在分析一年后降低到35.3%。结论:大数据库分析技术提供了2年分析过程中遵从性实施的结果。在药剂师干预后,观察到依从性增加,随后随时间逐渐减少。使用基于证据的方法来增强当前的干预效果,并将大数据库分析技术集成到实时的依从性衡量中,可以帮助社区药房改善和维持药物依从性。

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