Johnson Owen A, Hall Peter S, Hulme Claire
School of Computing, Leeds MRC Bioinformatics Research Centre, The University of Leeds, Woodhouse Lane, Leeds, LS2 9JT, UK.
X-Lab Ltd, Joseph's Well, Hanover Walk, Leeds, UK.
Pharmacoeconomics. 2016 Feb;34(2):107-14. doi: 10.1007/s40273-016-0384-1.
Many healthcare organizations are now making good use of electronic health record (EHR) systems to record clinical information about their patients and the details of their healthcare. Electronic data in EHRs is generated by people engaged in complex processes within complex environments, and their human input, albeit shaped by computer systems, is compromised by many human factors. These data are potentially valuable to health economists and outcomes researchers but are sufficiently large and complex enough to be considered part of the new frontier of 'big data'. This paper describes emerging methods that draw together data mining, process modelling, activity-based costing and dynamic simulation models. Our research infrastructure includes safe links to Leeds hospital's EHRs with 3 million secondary and tertiary care patients. We created a multidisciplinary team of health economists, clinical specialists, and data and computer scientists, and developed a dynamic simulation tool called NETIMIS (Network Tools for Intervention Modelling with Intelligent Simulation; http://www.netimis.com ) suitable for visualization of both human-designed and data-mined processes which can then be used for 'what-if' analysis by stakeholders interested in costing, designing and evaluating healthcare interventions. We present two examples of model development to illustrate how dynamic simulation can be informed by big data from an EHR. We found the tool provided a focal point for multidisciplinary team work to help them iteratively and collaboratively 'deep dive' into big data.
许多医疗保健机构现在都在充分利用电子健康记录(EHR)系统来记录有关其患者的临床信息及其医疗保健细节。EHR中的电子数据由在复杂环境中参与复杂流程的人员生成,尽管其人工输入受计算机系统影响,但仍受到许多人为因素的影响。这些数据对卫生经济学家和结果研究人员可能具有潜在价值,但规模足够大且足够复杂,可被视为“大数据”新领域的一部分。本文介绍了将数据挖掘、流程建模、基于活动的成本核算和动态仿真模型结合在一起的新兴方法。我们的研究基础设施包括与利兹医院的EHR的安全链接,该医院有300万二级和三级护理患者。我们组建了一个由卫生经济学家、临床专家以及数据和计算机科学家组成的多学科团队,并开发了一种名为NETIMIS(用于智能仿真的干预建模网络工具;http://www.netimis.com )的动态仿真工具,适用于可视化人工设计和数据挖掘的流程,然后可供对医疗保健干预措施的成本核算、设计和评估感兴趣的利益相关者进行“假设分析”。我们给出了两个模型开发的例子,以说明动态仿真如何从EHR的大数据中获取信息。我们发现该工具为多学科团队合作提供了一个焦点,帮助他们迭代地、协作地“深入研究”大数据。