Phenotype clustering in health care: A narrative review for clinicians

Human pathophysiology is occasionally too complex for unaided hypothetical-deductive reasoning and the isolated application of additive or linear statistical methods. Clustering algorithms use input data patterns and distributions to form groups of similar patients or diseases that share distinct pr...

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Published inFrontiers in artificial intelligence Vol. 5; p. 842306
Main Authors Loftus, Tyler J., Shickel, Benjamin, Balch, Jeremy A., Tighe, Patrick J., Abbott, Kenneth L., Fazzone, Brian, Anderson, Erik M., Rozowsky, Jared, Ozrazgat-Baslanti, Tezcan, Ren, Yuanfang, Berceli, Scott A., Hogan, William R., Efron, Philip A., Moorman, J. Randall, Rashidi, Parisa, Upchurch, Gilbert R., Bihorac, Azra
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Media S.A 12.08.2022
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ISSN2624-8212
2624-8212
DOI10.3389/frai.2022.842306

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Summary:Human pathophysiology is occasionally too complex for unaided hypothetical-deductive reasoning and the isolated application of additive or linear statistical methods. Clustering algorithms use input data patterns and distributions to form groups of similar patients or diseases that share distinct properties. Although clinicians frequently perform tasks that may be enhanced by clustering, few receive formal training and clinician-centered literature in clustering is sparse. To add value to clinical care and research, optimal clustering practices require a thorough understanding of how to process and optimize data, select features, weigh strengths and weaknesses of different clustering methods, select the optimal clustering method, and apply clustering methods to solve problems. These concepts and our suggestions for implementing them are described in this narrative review of published literature. All clustering methods share the weakness of finding potential clusters even when natural clusters do not exist, underscoring the importance of applying data-driven techniques as well as clinical and statistical expertise to clustering analyses. When applied properly, patient and disease phenotype clustering can reveal obscured associations that can help clinicians understand disease pathophysiology, predict treatment response, and identify patients for clinical trial enrollment.
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Edited by: Hong Wang, Central South University, China
Reviewed by: Daniel Donoho, Children's National Hospital, United States; Christopher Kuppler, Atrium Health Carolinas Medical Center (CMC), United States
This article was submitted to Medicine and Public Health, a section of the journal Frontiers in Artificial Intelligence
ISSN:2624-8212
2624-8212
DOI:10.3389/frai.2022.842306