...
首页> 外文期刊>Medical care >Data Quality Assessment for Comparative Effectiveness Research in Distributed Data Networks
【24h】

Data Quality Assessment for Comparative Effectiveness Research in Distributed Data Networks

机译:分布式数据网络中比较有效性研究的数据质量评估

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Background: Electronic health information routinely collected during health care delivery and reimbursement can help address the need for evidence about the real-world effectiveness, safety, and quality of medical care. Often, distributed networks that combine information from multiple sources are needed to generate this real-world evidence.Objective: We provide a set of field-tested best practices and a set of recommendations for data quality checking for comparative effectiveness research (CER) in distributed data networks.Methods: Explore the requirements for data quality checking and describe data quality approaches undertaken by several existing multi-site networks.Results: There are no established standards regarding how to evaluate the quality of electronic health data for CER within distributed networks. Data checks of increasing complexity are often used, ranging from consistency with syntactic rules to evaluation of semantics and consistency within and across sites. Temporal trends within and across sites are widely used, as are checks of each data refresh or update. Rates of specific events and exposures by age group, sex, and month are also common.Discussion: Secondary use of electronic health data for CER holds promise but is complex, especially in distributed data networks that incorporate periodic data refreshes. The viability of a learning health system is dependent on a robust understanding of the quality, validity, and optimal secondary uses of routinely collected electronic health data within distributed health data networks. Robust data quality checking can strengthen confidence in findings based on distributed data network.
机译:背景:在医疗保健提供和报销期间常规收集的电子医疗信息可以帮助满足对现实世界中有效性,安全性和医疗质量的证据的需求。通常,需要结合来自多个来源的信息的分布式网络来生成此真实世界的证据。目的:我们提供了一组经过现场测试的最佳实践,并提供了一组数据质量检查的建议,以进行分布式比较有效性研究(CER)方法:探索数据质量检查的要求,并描述几种现有的多站点网络采取的数据质量方法。结果:关于如何评估分布式网络中CER的电子健康数据的质量,尚无既定标准。经常使用越来越复杂的数据检查,范围从语法规则的一致性到站点内部和站点之间语义和一致性的评估。站点内部和站点之间的时间趋势被广泛使用,每个数据刷新或更新的检查也被广泛使用。特定事件的发生率和年龄,性别和月份的暴露率也很普遍。讨论:二次使用CER电子健康数据固然有希望,但很复杂,尤其是在包含定期更新数据的分布式数据网络中。学习型健康系统的生存能力取决于对分布式健康数据网络中常规收集的电子健康数据的质量,有效性和最佳二次使用的深入了解。强大的数据质量检查可以增强对基于分布式数据网络的调查结果的信心。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号