Mining Statistical Relations for Better Decision Making in Healthcare Processes

Publication date

2022

Authors

Koorn, J.J.ISNI 0000000492899569
Lu, XixiISNI 0000000492910684
Leopold, H.ISNI 0000000410084674
Martin, Niels
Verboven, Sam
Reijers, Hajo A.ORCID 0000-0001-9634-5852ISNI 0000000037238136

Editors

Burattin, Andrea
Polyvyanyy, Artem
Weber, Barbara

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

An important part of healthcare decision making is to understand how certain actions relate to desired and undesired outcomes. One key challenge is to deal with confounding variables, i.e., variables that influence the relation between actions and outcomes. Existing techniques aim to uncover the underlying statistical relations between actions and outcomes, but either do not account for confounding variables or only consider the process or case level instead of the event level. Therefore, this paper proposes a novel relation mining approach for healthcare processes that 1) explicitly accounts for confounding variables at the event level, and 2) transparently communicates the effect of the confounding variables to the user. We demonstrate the applicability and importance of our approach using two evaluation experiments. We use a real-world healthcare dataset to show that the identified relations indeed provide important input for decision making in healthcare processes. We use a synthetic dataset to illustrate the importance of our approach in the general setting of causal model estimation.

Keywords

Taverne

Citation

Koorn, J J, Lu, X, Leopold, H, Martin, N, Verboven, S & Reijers, H A 2022, Mining Statistical Relations for Better Decision Making in Healthcare Processes. in A Burattin, A Polyvyanyy & B Weber (eds), 4th International Conference on Process Mining, ICPM 2022, Bolzano, Italy, October 23-28, 2022. IEEE, pp. 32-39. https://doi.org/10.1109/ICPM57379.2022.9980719