Computational Biology, Boehringer-Ingelheim Pharmaceuticals Inc, Ridgefield, CT, United States of America.
Immunology and Respiratory Diseases Research, Boehringer-Ingelheim Pharmaceuticals Inc, Ridgefield, CT, United States of America.
PLoS One. 2020 Nov 30;15(11):e0242863. doi: 10.1371/journal.pone.0242863. eCollection 2020.
Pathophysiology of systemic sclerosis (SSc, Scleroderma), an autoimmune rheumatic disease, comprises of mechanisms that drive vasculopathy, inflammation and fibrosis. Understanding of the disease and associated clinical heterogeneity has advanced considerably in the past decade, highlighting the necessity of more specific targeted therapy. While many of the recent trials in SSc failed to meet the primary end points that predominantly relied on changes in modified Rodnan skin scores (MRSS), sub-group analysis, especially those focused on the basal skin transcriptomic data have provided insights into patient subsets that respond to therapies. These findings suggest that deeper understanding of the molecular changes in pathways is very important to define disease drivers in various patient subgroups. In view of these challenges, we performed meta-analysis on 9 public available SSc microarray studies using a novel pathway pivoted approach combining consensus clustering and machine learning assisted feature selection. Selected pathway modules were further explored through cluster specific topological network analysis in search of novel therapeutic concepts. In addition, we went beyond previously described SSc class divisions of 3 clusters (e.g. inflammation, fibro-proliferative, normal-like) and expanded into a much finer stratification in order to profile SSc patients more accurately. Our analysis unveiled an important 80 pathway signatures that differentiated SSc patients into 8 unique subtypes. The 5 pathway modules derived from such signature successfully defined the 8 SSc subsets and were validated by in-silico cellular deconvolution analysis. Myeloid cells and fibroblasts involvement in different clusters were confirmed and linked to corresponding pathway activities. Collectively, our findings revealed more complex disease subtypes in SSc; Key gene mediators such as IL6, FGFR1, TLR7, PLCG2, IRK2 identified by network analysis underscored the scientific rationale for exploring additional targets in treatment of SSc.
系统性硬化症(SSc,硬皮病)的病理生理学是一种自身免疫性风湿病,包括驱动血管病变、炎症和纤维化的机制。在过去的十年中,对该疾病的理解和相关的临床异质性有了很大的进展,这突出了更具体的靶向治疗的必要性。虽然 SSc 中的许多最近的试验未能达到主要依赖于改良 Rodnan 皮肤评分(MRSS)变化的主要终点,但亚组分析,特别是那些专注于基础皮肤转录组数据的亚组分析,为那些对治疗有反应的患者亚组提供了深入了解。这些发现表明,更深入地了解途径中的分子变化对于确定各种患者亚组中的疾病驱动因素非常重要。鉴于这些挑战,我们使用一种新的基于途径的方法(结合共识聚类和机器学习辅助特征选择)对 9 个公开的 SSc 微阵列研究进行了荟萃分析。通过聚类特异性拓扑网络分析进一步探索选定的途径模块,以寻找新的治疗概念。此外,我们超越了以前描述的 SSc 3 个聚类(如炎症、纤维增生、正常样)的分类,并进一步扩展到更精细的分层,以便更准确地对 SSc 患者进行分析。我们的分析揭示了 80 个重要的途径特征,这些特征将 SSc 患者分为 8 个独特的亚型。从这种特征中得出的 5 个途径模块成功地定义了 8 个 SSc 子集,并通过计算机细胞去卷积分析进行了验证。髓样细胞和成纤维细胞在不同簇中的参与得到了证实,并与相应的途径活动相关联。总的来说,我们的发现揭示了 SSc 中更复杂的疾病亚型;网络分析确定的关键基因介质,如 IL6、FGFR1、TLR7、PLC G2、IRK2,强调了在 SSc 治疗中探索其他靶点的科学依据。