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A Process Mining Approach to Statistical Analysis: Application to a Real-World Advanced Melanoma Dataset

机译:统计分析的过程采矿方法:应用于真实世界先进的黑色素瘤数据集

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Thanks to its ability to offer a time-oriented perspective on the clinical events that define the patient's path of care, Process Mining (PM) is assuming an emerging role in clinical data analytics. PM's ability to exploit time-series data and to build processes without any a priori knowledge suggests interesting synergies with the most common statistical analyses in healthcare, in particular survival analysis. In this work we demonstrate contributions of our process-oriented approach in analyzing a real-world retrospective dataset of patients treated for advanced melanoma at the Lausanne University Hospital. Addressing the clinical questions raised by our oncologists, we integrated PM in almost all the steps of a common statistical analysis. We show: (1) how PM can be leveraged to improve the quality of the data (data cleaning/preprocessing), (2) how PM can provide efficient data visualizations that support and/or suggest clinical hypotheses, also allowing to check the consistency between real and expected processes (descriptive statistics), and (3) how PM can assist in querying or re-expressing the data in terms of pre-defined reference workflows for testing survival differences among sub-cohorts (statistical inference). We exploit a rich set of PM tools for querying the event logs, inspecting the processes using statistical hypothesis testing, and performing conformance checking analyses to identify patterns in patient clinical paths and study the effects of different treatment sequences in our cohort.
机译:由于能够在定义患者护理路径的临床事件上提供时间为导向的视角,处理挖掘(PM)假设在临床数据分析中的新兴作用。 PM能够利用时间序列数据和建立没有任何先验知识的进程的能力,表明了具有医疗保健中最常见的统计分析,特别是生存分析的有趣协同作用。在这项工作中,我们展示了我们的过程导向方法在分析洛桑大学医院治疗晚期黑素瘤的患者的真实回顾性数据集中。解决我们肿瘤科医师提出的临床问题,我们在几乎所有步骤中融入了PM的常见统计分析。我们展示:(1)PM如何利用,以提高数据的质量(数据清洁/预处理),(2)PM如何提供支持和/或建议临床假设的有效数据可视化,也允许检查一致性在实际和预期的过程(描述性统计)之间,和(3)PM如何有助于在预定义的参考工作流程中有助于查询或重新表达数据,以测试子群(统计推断)之间的存活差异。我们利用了丰富的PM工具来查询事件日志,检查使用统计假设检测的过程,并执行一致性检查分析,以识别患者临床路径中的模式,并研究不同治疗序列在我们的队列中的影响。

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