Dynamic clustering of genomics cohorts beyond race, ethnicity—and ancestry Journal Article


Authors: Mohsen, H.; Blenman, K.; Emani, P. S.; Morris, Q.; Carrot-Zhang, J.; Pusztai, L.
Article Title: Dynamic clustering of genomics cohorts beyond race, ethnicity—and ancestry
Abstract: Background: Recent decades have witnessed a steady decrease in the use of race categories in genomic studies. While studies that still include race categories vary in goal and type, these categories already build on a history during which racial color lines have been enforced and adjusted in the service of social and political systems of power and disenfranchisement. For early modern classification systems, data collection was also considerably arbitrary and limited. Fixed, discrete classifications have limited the study of human genomic variation and disrupted widely spread genetic and phenotypic continuums across geographic scales. Relatedly, the use of broad and predefined classification schemes—e.g. continent-based—across traits can risk missing important trait-specific genomic signals. Methods: To address these issues, we introduce a dynamic approach to clustering human genomics cohorts based on genomic variation in trait-specific loci and without using a set of predefined categories. We tested the approach on whole-exome sequencing datasets in ten cancer types and partitioned them based on germline variants in cancer-relevant genes that could confer cancer type-specific disease predisposition. Results: Results demonstrate clustering patterns that transcend discrete continent-based categories across cancer types. Functional analysis based on cancer type-specific clusterings also captures the fundamental biological processes underlying cancer, differentiates between dynamic clusters on a functional level, and identifies novel potential drivers overlooked by a predefined continent-based clustering. Conclusions: Through a trait-based lens, the dynamic clustering approach reveals genomic patterns that transcend predefined classification categories. We propose that coupled with diverse data collection, new clustering approaches have the potential to draw a more complete portrait of genomic variation and to address, in parallel, technical and social aspects of its study. © The Author(s) 2025.
Keywords: genetics; neoplasm; neoplasms; cohort studies; cluster analysis; classification; cohort analysis; genetic variation; genomics; ethnicity; race; cancer genomics; ethnology; procedures; ancestry group; humans; human; ancestry; racial groups
Journal Title: BMC Medical Genomics
Volume: 18
ISSN: 1755-8794
Publisher: Biomed Central Ltd  
Date Published: 2025-05-15
Start Page: 87
Language: English
DOI: 10.1186/s12920-025-02154-z
PUBMED: 40375077
PROVIDER: scopus
PMCID: PMC12082885
DOI/URL:
Notes: Article -- Source: Scopus
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  1. Quaid Morris
    36 Morris
  2. Hussein Mohsen
    1 Mohsen