COPD phenotypes and machine learning cluster analysis: A systematic review and future research agenda

Vasilis Nikolaou, Sebastiano Massaro, Masoud Fakhimi, Lampros Stergioulas, David Price, Vasilis Nikolaou, Sebastiano Massaro, Masoud Fakhimi, Lampros Stergioulas, David Price

Abstract

Chronic Obstructive Pulmonary Disease (COPD) is a highly heterogeneous condition projected to become the third leading cause of death worldwide by 2030. To better characterize this condition, clinicians have classified patients sharing certain symptomatic characteristics, such as symptom intensity and history of exacerbations, into distinct phenotypes. In recent years, the growing use of machine learning algorithms, and cluster analysis in particular, has promised to advance this classification through the integration of additional patient characteristics, including comorbidities, biomarkers, and genomic information. This combination would allow researchers to more reliably identify new COPD phenotypes, as well as better characterize existing ones, with the aim of improving diagnosis and developing novel treatments. Here, we systematically review the last decade of research progress, which uses cluster analysis to identify COPD phenotypes. Collectively, we provide a systematized account of the extant evidence, describe the strengths and weaknesses of the main methods used, identify gaps in the literature, and suggest recommendations for future research.

Keywords: Chronic respiratory disease; Statistical analysis; Subtypes.

Copyright © 2020 Elsevier Ltd. All rights reserved.

Source: PubMed

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