Identifying Patient Groups based on Frequent Patterns of Patient Samples

Publication date

2020

Authors

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

Editors

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

Grouping patients meaningfully can give insights about the different types of patients, their needs, and the priorities. Finding groups that are meaningful is however very challenging as background knowledge is often required to determine what a useful grouping is. In this paper we propose an approach that is able to find groups of patients based on a small sample of positive examples given by a domain expert. Because of that, the approach relies on very limited efforts by the domain experts. The approach groups based on the activities and diagnostic/billing codes within health pathways of patients. To define such a grouping based on the sample of patients efficiently, frequent patterns of activities are discovered and used to measure the similarity between the care pathways of other patients to the patients in the sample group. This approach results in an insightful definition of the group. The proposed approach is evaluated using several datasets obtained from a large university medical center. The evaluation shows F1-scores of around 0.7 for grouping kidney injury and around 0.6 for diabetes.

Keywords

clustering, machine learning, patient grouping, health care, Taverne, SDG 3 - Good Health and Well-being

Citation

Tabatabaei, S A, Lu, X, Hoogendoorn, M & Reijers, H A 2020, Identifying Patient Groups based on Frequent Patterns of Patient Samples. in IEEE Healthcom : 2019 IEEE International Conference on E-health Networking, Application & Services (HealthCom). IEEE. https://doi.org/10.1109/HealthCom46333.2019.9009606