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Integrating Database Knowledge and Epidemiological Design to Improve the Implementation of Data Mining Methods that Evaluate Vaccine Safety in Large Healthcare Databases

机译:集成数据库知识和流行病学设计,改进数据挖掘方法的实施,评估大型医疗数据库中的疫苗安全

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Large healthcare databases maintained by health plans have been widely used to conduct customized protocol-based epidemiological safety studies as well as targeted routine sequential monitoring of suspected adverse events for newly licensed vaccines. These databases also offer a rich data source to discover vaccine-related adverse events not known prior to licensure using data mining methods, but they remain relatively under-utilized for this purpose. Initial safety applications of data mining methods using 'big healthcare data' are promising, but stronger integration of database expertize, epidemiological design, and statistical analysis strategies are needed to better leverage the available information, reduce bias, and improve reporting transparency. We enumerate major methodological challenges in mining large healthcare databases for vaccine safety research, describe existing strategies that have been used to address these issues, and identify opportunities for methodological advancements that emphasize the importance of adapting techniques used in customized protocol-based vaccine safety assessments. Investment in such research methods and in the development of deeper collaborations between database safety experts and data mining methodologists has great potential to improve existing safety surveillance programs and further increase public confidence in the safety of newly licensed vaccines. (C) 2014 Wiley Periodicals, Inc.
机译:由健康计划维持的大型医疗数据库已被广泛用于进行定制的基于协议的流行病学安全研究,以及针对新持牌疫苗的疑似不良事件的有针对性的常规顺序监测。这些数据库还提供丰富的数据源来发现使用数据挖掘方法之前未知的疫苗相关的不利事件,但它们仍然相对较低为此目的。数据挖掘方法的初始安全应用使用“大医疗保健数据”是有前途的,但更强大的数据库专业化,流行病学设计和统计分析策略需要更好地利用可用信息,减少偏见,提高报告透明度。我们列举了矿业​​大型医疗数据库的主要方法挑战,用于疫苗安全研究,描述已被用于解决这些问题的现有策略,并确定了强调基于协议的疫苗安全评估中使用的适应技术的重要性的方法论进步的机会。在这些研究方法和数据库安全专家和数据挖掘方法之间的更深层次合作的发展中的投资具有巨大的潜力,可以提高现有的安全监测计划,并进一步提高公众对新持牌疫苗的安全的信心。 (c)2014 Wiley期刊,Inc。

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