BMC Medical Informatics and Decision Making (Dec 2020)

Modeling clinical activities based on multi-perspective declarative process mining with openEHR’s characteristic

  • Haifeng Xu,
  • Jianfei Pang,
  • Xi Yang,
  • Jinghui Yu,
  • Xuemeng Li,
  • Dongsheng Zhao

DOI
https://doi.org/10.1186/s12911-020-01323-7
Journal volume & issue
Vol. 20, no. S14
pp. 1 – 11

Abstract

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Abstract Background It is significant to model clinical activities for process mining, which assists in improving medical service quality. However, current process mining studies in healthcare pay more attention to the control flow of events, while the data properties and the time perspective are generally ignored. Moreover, classifying event attributes from the view of computers usually are difficult for medical experts. There are also problems of model sharing and reusing after it is generated. Methods In this paper, we presented a constraint-based method using multi-perspective declarative process mining, supporting healthcare personnel to model clinical processes by themselves. Inspired by openEHR, we classified event attributes into seven types, and each relationship between these types is represented in a Constrained Relationship Matrix. Finally, a conformance checking algorithm is designed. Results The method was verified in a retrospective observational case study, which consists of Electronic Medical Record (EMR) of 358 patients from a large general hospital in China. We take the ischemic stroke treatment process as an example to check compliance with clinical guidelines. Conformance checking results are analyzed and confirmed by medical experts. Conclusions This representation approach was applicable with the characteristic of easily understandable and expandable for modeling clinical activities, supporting to share the models created across different medical facilities.

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