Trace Clustering on Very Large Event Data in Healthcare Using Frequent Sequence Patterns

Publication date

2019

Authors

Lu, XixiISNI 0000000492910684
Tabatabaei, Seyed Amin
Hoogendoorn, Mark
Reijers, Hajo A.ORCID 0000-0001-9634-5852ISNI 0000000037238136

Editors

Hildebrandt, Thomas

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

Trace clustering has increasingly been applied to find homogenous process executions. However, current techniques have difficulties in finding a meaningful and insightful clustering of patients on the basis of healthcare data. The resulting clusters are often not in line with those of medical experts, nor do the clusters guarantee to help return meaningful process maps of patients’ clinical pathways. After all, a single hospital may conduct thousands of distinct activities and generate millions of events per year. In this paper, we propose a novel trace clustering approach by using sample sets of patients provided by medical experts. More specifically, we learn frequent sequence patterns on a sample set, rank each patient based on the patterns, and use an automated approach to determine the corresponding cluster. We find each cluster separately, while the frequent sequence patterns are used to discover a process map. The approach is implemented in ProM and evaluated using a large data set obtained from a university medical center. The evaluation shows F1-scores of 0.7 for grouping kidney injury, 0.9 for diabetes, and 0.64 for head/neck tumor, while the process maps show meaningful behavioral patterns of the clinical pathways of these groups, according to the domain experts.

Keywords

Trace clustering, Frequent sequential patterns, Process mining, Machine learning, Taverne, SDG 3 - Good Health and Well-being

Citation

Lu, X, Tabatabaei, S A, Hoogendoorn, M & Reijers, H A 2019, Trace Clustering on Very Large Event Data in Healthcare Using Frequent Sequence Patterns. in T Hildebrandt (ed.), Business Process Management : 17th International Conference, BPM 2019, Vienna, Austria, September 1–6, 2019, Proceedings. Lecture Notes in Computer Science, vol. 11675, Springer, Cham, pp. 198-215. https://doi.org/10.1007/978-3-030-26619-6_14