4.5 Article

The Biologic Basis of Clinical Heterogeneity in Juvenile Idiopathic Arthritis

期刊

ARTHRITIS & RHEUMATOLOGY
卷 66, 期 12, 页码 3463-3475

出版社

WILEY
DOI: 10.1002/art.38875

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资金

  1. Canadian Institutes of Health Research (CIHR)
  2. Arthritis Society (CIHR) [82517, QNT-69301]
  3. Canadian Arthritis Network [SRI-IJD-01]
  4. Natural Science and Engineering Research Council
  5. University of Saskatchewan
  6. Manitoba Institute of Child Health
  7. McGill University
  8. Memorial University
  9. University of British Columbia
  10. University of Sherbrooke

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Objective. Childhood arthritis encompasses a heterogeneous family of diseases. Significant variation in clinical presentation remains despite consensusdriven diagnostic classifications. Developments in data analysis provide powerful tools for interrogating large heterogeneous data sets. We report a novel approach to integrating biologic and clinical data toward a new classification for childhood arthritis, using computational biology for data-driven pattern recognition. Methods. Probabilistic principal components analysis was used to transform a large set of data into 4 interpretable indicators or composite variables on which patients were grouped by cluster analysis. Sensitivity analysis was conducted to determine key variables in determining indicators and cluster assignment. Results were validated against an independent validation cohort. Results. Meaningful biologic and clinical charac-teristics, including levels of proinflammatory cytokines and measures of disease activity, defined axes/indicators that identified homogeneous patient subgroups by cluster analysis. The new patient classifications resolved major differences between patient subpopulations better than International League of Associations for Rheumatology subtypes. Fourteen variables were identified by sensitivity analysis to crucially determine indicators and clusters. This new schema was conserved in an independent validation cohort. Conclusion. Data-driven unsupervised machine learning is a powerful approach for interrogating clinical and biologic data toward disease classification, providing insight into the biology underlying clinical heterogeneity in childhood arthritis. Our analytical framework enabled the recovery of unique patterns from small cohorts and addresses a major challenge, patient numbers, in studying rare diseases.

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