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Clustering of a Health Dataset Using Diagnosis Co-Occurrences

Adrien Wartelle, Farah Mourad-Chehade, Farouk Yalaoui, Jan Chrusciel, David Laplanche, Stéphane Sanchez

2021Applied Sciences23 citationsDOIOpen Access PDF

Abstract

Assessing the health profiles of populations is a crucial task to create a coherent healthcare offer. Emergency Departments (EDs) are at the core of the healthcare system and could benefit from this evaluation via an improved understanding of the healthcare needs of their population. This paper proposes a novel hierarchical agglomerative clustering algorithm based on multimorbidity analysis. The proposed approach constructs the clustering dendrogram by introducing new quality indicators based on the relative risk of co-occurrences of patient diagnoses. This algorithm enables the detection of multimorbidity patterns by merging similar patient profiles according to their common diagnoses. The multimorbidity approach has been applied to the data of the largest ED of the Aube Department (Eastern France) to cluster its patient visits. Among the 120,718 visits identified during a 24-month period, 16 clusters were identified, accounting for 94.8% of the visits, with the five most prevalent clusters representing 63.0% of them. The new quality indicators show a coherent and good clustering solution with a cluster membership of 1.81 based on a cluster compactness of 1.40 and a cluster separation of 0.77. Compared to the literature, the proposed approach is appropriate for the discovery of multimorbidity patterns and could help to develop better clustering algorithms for more diverse healthcare datasets.

Topics & Concepts

Cluster analysisMedical diagnosisHierarchical clusteringComputer scienceData miningCluster (spacecraft)Health careDendrogramQuality (philosophy)PopulationData scienceArtificial intelligenceMedicineEconomic growthProgramming languageEpistemologyPhilosophyEconomicsPathologyGenetic diversityEnvironmental healthChronic Disease Management StrategiesEmergency and Acute Care StudiesMedical Coding and Health Information
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