Characterizing multimorbidity in ALIVE: comparing single and ensemble clustering methods

Author:

Rudolph Jacqueline E12ORCID,Lau Bryan12ORCID,Genberg Becky L12ORCID,Sun Jing12,Kirk Gregory D123,Mehta Shruti H12

Affiliation:

1. Department of Epidemiology , Bloomberg School of Public Health, , Baltimore, MD 21205 , United States

2. Johns Hopkins University , Bloomberg School of Public Health, , Baltimore, MD 21205 , United States

3. Division of Infectious Diseases, Johns Hopkins School of Medicine , Baltimore, MD 21205 , United States

Abstract

Abstract Multimorbidity, defined as having 2 or more chronic conditions, is a growing public health concern, but research in this area is complicated by the fact that multimorbidity is a highly heterogenous outcome. Individuals in a sample may have a differing number and varied combinations of conditions. Clustering methods, such as unsupervised machine learning algorithms, may allow us to tease out the unique multimorbidity phenotypes. However, many clustering methods exist, and choosing which to use is challenging because we do not know the true underlying clusters. Here, we demonstrate the use of 3 individual algorithms (partition around medoids, hierarchical clustering, and probabilistic clustering) and a clustering ensemble approach (which pools different clustering approaches) to identify multimorbidity clusters in the AIDS Linked to the Intravenous Experience cohort study. We show how the clusters can be compared based on cluster quality, interpretability, and predictive ability. In practice, it is critical to compare the clustering results from multiple algorithms and to choose the approach that performs best in the domain(s) that aligns with plans to use the clusters in future analyses.

Funder

National Institutes of Health

Publisher

Oxford University Press (OUP)

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