Mahoney J Matthew, Taroni Jaclyn, Martyanov Viktor, Wood Tammara A, Greene Casey S, Pioli Patricia A, Hinchcliff Monique E, Whitfield Michael L
Department of Genetics, Geisel School of Medicine at Dartmouth, Hannover, New Hampshire, United States of America.
Department of Obstetrics and Gynecology, Geisel School of Medicine at Dartmouth, Hannover, New Hampshire, United States of America.
PLoS Comput Biol. 2015 Jan 8;11(1):e1004005. doi: 10.1371/journal.pcbi.1004005. eCollection 2015 Jan.
Systemic sclerosis (SSc) is a rare systemic autoimmune disease characterized by skin and organ fibrosis. The pathogenesis of SSc and its progression are poorly understood. The SSc intrinsic gene expression subsets (inflammatory, fibroproliferative, normal-like, and limited) are observed in multiple clinical cohorts of patients with SSc. Analysis of longitudinal skin biopsies suggests that a patient's subset assignment is stable over 6-12 months. Genetically, SSc is multi-factorial with many genetic risk loci for SSc generally and for specific clinical manifestations. Here we identify the genes consistently associated with the intrinsic subsets across three independent cohorts, show the relationship between these genes using a gene-gene interaction network, and place the genetic risk loci in the context of the intrinsic subsets. To identify gene expression modules common to three independent datasets from three different clinical centers, we developed a consensus clustering procedure based on mutual information of partitions, an information theory concept, and performed a meta-analysis of these genome-wide gene expression datasets. We created a gene-gene interaction network of the conserved molecular features across the intrinsic subsets and analyzed their connections with SSc-associated genetic polymorphisms. The network is composed of distinct, but interconnected, components related to interferon activation, M2 macrophages, adaptive immunity, extracellular matrix remodeling, and cell proliferation. The network shows extensive connections between the inflammatory- and fibroproliferative-specific genes. The network also shows connections between these subset-specific genes and 30 SSc-associated polymorphic genes including STAT4, BLK, IRF7, NOTCH4, PLAUR, CSK, IRAK1, and several human leukocyte antigen (HLA) genes. Our analyses suggest that the gene expression changes underlying the SSc subsets may be long-lived, but mechanistically interconnected and related to a patients underlying genetic risk.
系统性硬化症(SSc)是一种罕见的系统性自身免疫性疾病,其特征为皮肤和器官纤维化。SSc的发病机制及其进展尚不清楚。在多个SSc患者临床队列中观察到了SSc内在基因表达亚组(炎症性、纤维增生性、正常样和局限性)。对纵向皮肤活检的分析表明,患者的亚组分类在6至12个月内是稳定的。从遗传学角度来看,SSc是多因素的,存在许多与SSc总体以及特定临床表现相关的遗传风险位点。在此,我们确定了在三个独立队列中与内在亚组始终相关的基因,使用基因-基因相互作用网络展示了这些基因之间的关系,并将遗传风险位点置于内在亚组的背景下。为了识别来自三个不同临床中心的三个独立数据集共有的基因表达模块,我们基于分区互信息(一种信息论概念)开发了一种共识聚类程序,并对这些全基因组基因表达数据集进行了荟萃分析。我们创建了一个跨内在亚组的保守分子特征的基因-基因相互作用网络,并分析了它们与SSc相关基因多态性的联系。该网络由与干扰素激活、M2巨噬细胞、适应性免疫、细胞外基质重塑和细胞增殖相关的不同但相互连接的组件组成。该网络显示了炎症特异性基因和纤维增生特异性基因之间的广泛联系。该网络还显示了这些亚组特异性基因与30个SSc相关多态性基因之间的联系,这些基因包括STAT4、BLK、IRF7、NOTCH4、PLAUR、CSK、IRAK1以及几个人类白细胞抗原(HLA)基因。我们的分析表明,SSc亚组潜在的基因表达变化可能是长期存在的,但在机制上相互关联且与患者潜在的遗传风险相关。