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The Biologic Basis of Clinical Heterogeneity in Juvenile Idiopathic Arthritis

机译:幼年特发性关节炎临床异质性的生物学基础

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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.
机译:目的。儿童关节炎涵盖多种疾病。尽管存在共识驱动的诊断分类,但临床表现仍存在显着差异。数据分析的发展为查询大型异构数据集提供了强大的工具。我们报告了一种新的方法,将生物学和临床数据集成到儿童关节炎的新分类中,并使用计算生物学进行数据驱动的模式识别。方法。概率主成分分析用于将大量数据转换为4个可解释的指标或复合变量,通过聚类分析将患者分组。进行敏感性分析以确定确定指标和聚类分配的关键变量。根据独立的验证队列验证结果。结果。有意义的生物学和临床特征,包括促炎细胞因子水平和疾病活动度,定义了通过聚类分析确定同质患者亚组的轴/指标。新的患者分类比国际风湿病协会亚型更好地解决了患者亚群之间的主要差异。通过敏感性分析确定了十四个变量,以决定性地确定指标和集群。在独立的验证队列中保存了此新架构。结论。数据驱动的无监督机器学习是一种针对疾病分类询问临床和生物学数据的强大方法,可洞悉儿童关节炎的临床异质性生物学基础。我们的分析框架使小规模人群的独特模式得以恢复,并解决了研究稀有疾病时的主要挑战,即患者人数。

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