Department of Clinical Chemistry, Erasmus University Medical Center, Rotterdam, The Netherlands.
Center for Healthcare Operations Improvement and Research (CHOIR), University of Twente, Enschede, The Netherlands.
Appl Clin Inform. 2023 Jan;14(1):144-152. doi: 10.1055/a-1996-8479. Epub 2022 Dec 12.
The rising level of laboratory automation provides an increasing number of logged events that can be used for the characterization of laboratory performance and process improvements. This abundance of data is often underutilized for improving laboratory efficiency.
The first aim of this descriptive study is to provide a structured approach for transforming raw laboratory data to data that is suitable for process mining. The second aim is to describe a process mining approach for mapping and characterizing the sample flow in a clinical chemistry laboratory to identify areas for improvement in the testing process.
Data were extracted from instrument log files and the middleware between laboratory instruments and information technology infrastructure. Process mining was used for automated process discovery and analysis. Laboratory performance was quantified in terms of relevant key performance indicators (KPIs): turnaround time, timeliness, workload, work-in-process, and machine downtime.
The method was applied to two Dutch university hospital clinical chemistry laboratories. We identified areas where alternative routes might increase laboratory efficiency and observed the negative effects of machine downtime on laboratory performance. This encourages the laboratory to review sample routes in its analyzer lines, the routes of high priority samples during instrument downtime, as well as the preventive maintenance policy.
This article provides the first application of process mining to event data from a medical diagnostic laboratory for automated process model discovery. Our study shows that process mining, with the use of relevant KPIs, provides valuable insights for laboratories that motivates the disclosure and increased utilization of laboratory event data, which in turn drive the analytical staff to intervene in the process to achieve the set performance goals. Our approach is vendor independent and widely applicable for all medical diagnostic laboratories.
实验室自动化水平的提高提供了越来越多的可用于描述实验室性能和改进流程的记录事件。然而,这些大量的数据往往未被充分利用来提高实验室效率。
本描述性研究的首要目标是提供一种从原始实验室数据转换为适合流程挖掘的数据的结构化方法。其次,描述一种流程挖掘方法,用于映射和描述临床化学实验室中的样本流程,以确定测试过程中需要改进的领域。
从仪器日志文件和实验室仪器与信息技术基础架构之间的中间件中提取数据。使用流程挖掘进行自动化流程发现和分析。实验室性能通过相关关键绩效指标 (KPI) 进行量化:周转时间、及时性、工作量、在制品和机器停机时间。
该方法应用于两家荷兰大学医院的临床化学实验室。我们确定了可能提高实验室效率的替代路径,并观察到机器停机时间对实验室性能的负面影响。这鼓励实验室审查分析仪线上的样本路径、仪器停机期间高优先级样本的路径以及预防性维护策略。
本文首次将流程挖掘应用于医疗诊断实验室的事件数据,用于自动化流程模型发现。我们的研究表明,使用相关 KPI 的流程挖掘为实验室提供了有价值的见解,激发了实验室对事件数据的揭示和更充分的利用,进而促使分析人员干预流程以实现既定的绩效目标。我们的方法与供应商无关,广泛适用于所有医疗诊断实验室。