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A Data Quality Framework for Process Mining of Electronic Health Record Data

机译:电子病历数据处理挖掘的数据质量框架

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Reliable research demands data of known quality. This can be very challenging for electronic health record (EHR) based research where data quality issues can be complex and often unknown. Emerging technologies such as process mining can reveal insights into how to improve care pathways but only if technological advances are matched by strategies and methods to improve data quality. The aim of this work was to develop a care pathway data quality framework (CP-DQF) to identify, manage and mitigate EHR data quality in the context of process mining, using dental EHRs as an example. Objectives: To: 1) Design a framework implementable within our e-health record research environments; 2) Scale it to further dimensions and sources; 3) Run code to mark the data; 4) Mitigate issues and provide an audit trail. Methods: We reviewed the existing literature covering data quality frameworks for process mining and for data mining of EHRs and constructed a unified data quality framework that met the requirements of both. We applied the framework to a practical case study mining primary care dental pathways from an EHR covering 41 dental clinics and 231,760 patients in the Republic of Ireland. Results: Applying the framework helped identify many potential data quality issues and mark-up every data point affected. This enabled systematic assessment of the data quality issues relevant to mining care pathways. Conclusion: The complexity of data quality in an EHR-data research environment was addressed through a re-usable and comprehensible framework that met the needs of our case study. This structured approach saved time and brought rigor to the management and mitigation of data quality issues. The resulting metadata is being used within cohort selection, experiment and process mining software so that our research with this data is based on data of known quality. Our framework is a useful starting point for process mining researchers to address EHR data quality concerns.
机译:可靠的研究要求已知质量的数据。这对于基于电子健康记录(EHR)的研究可能非常具有挑战性,数据质量问题可能复杂并且往往未知。流程挖掘等新兴技术可以揭示进入如何改善护理途径的见解,但只有在技术进步与改善数据质量的策略和方法匹配。这项工作的目的是开发护理途径数据质量框架(CP-DQF),以在流程挖掘的背景下识别,管理和缓解EHR数据质量,以牙科EHRS为例。目标:至:1)设计在我们的电子健康记录研究环境中可实现的框架; 2)将其缩放到进一步的尺寸和来源; 3)运行代码以标记数据; 4)减轻问题并提供审计跟踪。方法:我们审查了现有的文献,涵盖了流程挖掘的数据质量框架和ehrs的数据挖掘,并构建了符合两者要求的统一数据质量框架。我们将框架应用于一个实用的案例研究矿业初级保健牙科途径,涵盖了爱尔兰共和国的41名牙科诊所和231,760名患者。结果:应用框架有助于识别许多潜在的数据质量问题并标记每个数据点影响。这使得对与采矿途径相关的数据质量问题的系统进行了系统评估。结论:通过符合我们案例研究需求的可重复和可理解的框架来解决EHR数据研究环境中数据质量的复杂性。这种结构化方法节省了时间并将严格带到了管理和缓解数据质量问题。由此产生的元数据在群组选择,实验和过程挖掘软件中使用,以便我们的使用此数据的研究基于已知质量的数据。我们的框架是过程挖掘研究人员的有用起点,以解决EHR数据质量问题。

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