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交互式流程发现如何解决实际业务环境中的数据质量问题?来自医疗保健案例研究的证据。

How Can Interactive Process Discovery Address Data Quality Issues in Real Business Settings? Evidence from a Case Study in Healthcare.

机构信息

Department of Energy, Systems, Territory and Construction Engineering, University of Pisa, Largo Lucio Lazzarino 1, Pisa 56122, Italy.

Rheinisch-Westfälische Technische Hochschule (RWTH), Ahornstraße 55, 52074 Aachen, Germany; Fraunhofer Institute for Applied Information Technology FIT, Schloss Birlinghoven, 53757 Sankt Augustin, Germany.

出版信息

J Biomed Inform. 2022 Jun;130:104083. doi: 10.1016/j.jbi.2022.104083. Epub 2022 Apr 30.

Abstract

The focus of this paper is on how data quality can affect business process discovery in real complex environments, which is a major factor determining the success in any data-driven Business Process Management project. Many real-life event logs, especially healthcare ones, can suffer from several data quality issues, some of which cannot be solved by pre-processing or data cleaning techniques, leading to inaccurate results. We take an innovative Process Mining (PM) approach, termed Interactive Process Discovery (IPD), which combines domain knowledge with available data. This approach can overcome the limitations of noisy and incomplete event logs by putting "humans in the loop", leading to improved business process modelling. This is particularly valuable in healthcare, where physicians have a tacit domain knowledge not available in the event log, and, thus, difficult to elicit. We conducted a two-step approach based on a controlled experiment and a case study in an Italian hospital. At each step, we compared IPD with traditional PM techniques to assess the extent to which domain knowledge helps to improve the accuracy of process models. The case study tests the effectiveness of IPD to uncover knowledge-intensive processes extracted from noisy real-life event logs. The evaluation has been carried out by exploiting a real dataset of an Italian hospital, involving the medical staff. IPD can produce an accurate process model that is fully compliant with the clinical guidelines by addressing data quality issues. Accurate and reliable process models can support healthcare organizations in detecting process-related issues and in taking decisions related to capacity planning and process re-design.

摘要

本文的重点是数据质量如何影响现实复杂环境中的业务流程发现,这是任何数据驱动的业务流程管理项目成功的关键因素。许多现实生活中的事件日志,特别是医疗保健事件日志,可能存在多种数据质量问题,其中一些问题无法通过预处理或数据清理技术解决,从而导致结果不准确。我们采用了一种创新的流程挖掘(PM)方法,称为交互式流程发现(IPD),该方法将领域知识与可用数据相结合。通过将“人置于循环中”,这种方法可以克服嘈杂和不完整的事件日志的局限性,从而改进业务流程建模。这在医疗保健领域尤为有价值,因为医生具有事件日志中无法获得的隐性领域知识,因此难以提取。我们在意大利的一家医院进行了一项基于对照实验和案例研究的两步方法。在每个步骤中,我们将 IPD 与传统的 PM 技术进行比较,以评估领域知识在多大程度上有助于提高流程模型的准确性。案例研究测试了 IPD 从嘈杂的现实生活事件日志中发现知识密集型流程的有效性。评估是通过利用意大利医院的真实数据集和医疗人员来进行的。IPD 可以通过解决数据质量问题生成与临床指南完全一致的准确流程模型。准确可靠的流程模型可以帮助医疗保健组织检测与流程相关的问题,并做出与能力规划和流程重新设计相关的决策。

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