转录组
仿形(计算机编程)
特应性皮炎
生物
皮肤病科
医学
基因表达
计算机科学
基因
遗传学
操作系统
作者
Lena Möbus,Elke Rodríguez,Inken Harder,Nicole Boraczynski,Silke Szymczak,Matthias Hübenthal,Dora Stölzl,Sascha Gerdes,Andreas Kleinheinz,Susanne Abraham,Annice Heratizadeh,Christiane Handrick,Eva Haufe,Thomas Werfel,Jochen Schmitt,Stephan Weidinger
标识
DOI:10.1016/j.jaci.2022.02.001
摘要
BackgroundFew studies have analyzed the blood transcriptome in atopic dermatitis (AD).ObjectiveWe explored blood transcriptomic features of moderate to severe AD.MethodsBlood messenger RNA sequencing on 60 adults from the TREATgermany registry including 49 patients before and after dupilumab treatment, as well as from an independent cohort of 31 patients and 43 controls was performed. Patient clustering, differential expression, correlation and coexpression network analysis, and unsupervised learning were conducted.ResultsAD patients showed pronounced inflammatory expression signatures with increased myeloid and IL-5–related patterns, and clearly segregated into 2 distinct clusters, with striking differences in particular for transcripts involved in eosinophil signaling. The eosinophil-high endotype showed a more pronounced global dysregulation, a positive correlation between disease activity and signatures related to IL-5 signaling, and strong correlations with several target proteins of antibodies or small molecules under development for AD. In contrast, the eosinophil-low endotype showed little transcriptomic dysregulation and no association between disease activity and gene expression. Clinical improvement with receipt of dupilumab was accompanied by a decrease of innate immune responses and an increase of lymphocyte signatures including B-cell activation and natural killer cell composition and/or function. The proportion of super responders was higher in the eosinophil-low endotype (32% vs 11%). Continued downregulation of IL18RAP, IFNG, and granzyme A in the eosinophil-high endotype suggests a residual disturbance of natural killer cell function despite clinical improvement.ConclusionAD can be stratified into eosinophilic and noneosinophilic endotypes; such stratification may be useful when assessing stratified trial designs and treatment strategies. Few studies have analyzed the blood transcriptome in atopic dermatitis (AD). We explored blood transcriptomic features of moderate to severe AD. Blood messenger RNA sequencing on 60 adults from the TREATgermany registry including 49 patients before and after dupilumab treatment, as well as from an independent cohort of 31 patients and 43 controls was performed. Patient clustering, differential expression, correlation and coexpression network analysis, and unsupervised learning were conducted. AD patients showed pronounced inflammatory expression signatures with increased myeloid and IL-5–related patterns, and clearly segregated into 2 distinct clusters, with striking differences in particular for transcripts involved in eosinophil signaling. The eosinophil-high endotype showed a more pronounced global dysregulation, a positive correlation between disease activity and signatures related to IL-5 signaling, and strong correlations with several target proteins of antibodies or small molecules under development for AD. In contrast, the eosinophil-low endotype showed little transcriptomic dysregulation and no association between disease activity and gene expression. Clinical improvement with receipt of dupilumab was accompanied by a decrease of innate immune responses and an increase of lymphocyte signatures including B-cell activation and natural killer cell composition and/or function. The proportion of super responders was higher in the eosinophil-low endotype (32% vs 11%). Continued downregulation of IL18RAP, IFNG, and granzyme A in the eosinophil-high endotype suggests a residual disturbance of natural killer cell function despite clinical improvement. AD can be stratified into eosinophilic and noneosinophilic endotypes; such stratification may be useful when assessing stratified trial designs and treatment strategies.
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