2024
DOI: 10.21203/rs.3.rs-5314625/v1
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Phenotyping to predict 12-month health outcomes of older general medicine patients

Richard John Woodman,
Kimberly Bryant,
Michael J Sorich
et al.

Abstract: Background: A variety of unsupervised learning algorithms have been used to phenotype older patients, enabling directed care and personalised treatment plans. However, the ability of the clusters to accurately discriminate for the risk of older patients, may vary depending on the methods employed. Aims: To compare seven clustering algorithms in their ability to develop patient phenotypes that accurately predict health outcomes. Methods: Data was collected for N=737 older medical inpatients for five different… Show more

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