Translational and Clinical Research Institute, Newcastle University Faculty of Medical Sciences, Newcastle upon Tyne, UK.
Bioinformatics Support Unit, Newcastle University, Newcastle upon Tyne, UK.
Ann Rheum Dis. 2024 Jan 2;83(1):88-95. doi: 10.1136/ard-2023-224503.
Stratification approaches are vital to address clinical heterogeneity in Sjogren's syndrome (SS). We previously described that the Newcastle Sjogren's Stratification Tool (NSST) identified four distinct clinical subtypes of SS. We performed proteomic and network analysis to analyse the underlying pathobiology and highlight potential therapeutic targets for different SS subtypes.
We profiled serum proteins using O-link technology of 180 SS subjects. We used 5 O-link proteomics panels which included a total of 454 unique proteins. Network reconstruction was performed using the ARACNE algorithm, with differential expression estimates overlaid on these networks to reveal the key subnetworks of differential expression. Furthermore, data from a phase III trial of tocilizumab in SS were reanalysed by stratifying patients at baseline using NSST.
Our analysis highlights differential expression of chemokines, cytokines and the major autoantigen TRIM21 between the SS subtypes. Furthermore, we observe differential expression of several transcription factors associated with energy metabolism and redox balance namely APE1/Ref-1, FOXO1, TIGAR and BACH1. The differentially expressed proteins were inter-related in our network analysis, supporting the concept that distinct molecular networks underlie the clinical subtypes of SS. Stratification of patients at baseline using NSST revealed improvement of fatigue score only in the subtype expressing the highest levels of serum IL-6.
Our data provide clues to the pathways contributing to the glandular and non-glandular manifestations of SS and to potential therapeutic targets for different SS subtypes. In addition, our analysis highlights the need for further exploration of altered metabolism and mitochondrial dysfunction in the context of SS subtypes.
分层方法对于解决干燥综合征(SS)的临床异质性至关重要。我们之前描述了纽卡斯尔干燥综合征分层工具(NSST)可以确定 SS 的四个不同临床亚型。我们进行了蛋白质组学和网络分析,以分析潜在的病理生物学,并为不同的 SS 亚型突出潜在的治疗靶点。
我们使用 O 链接技术对 180 名 SS 患者的血清蛋白进行了分析。我们使用了 5 个 O 链接蛋白质组学面板,其中包括总共 454 个独特的蛋白质。使用 ARACNE 算法进行网络重构,在这些网络上叠加差异表达估计值,以揭示差异表达的关键子网。此外,我们通过使用 NSST 对 SS 中托珠单抗的 III 期试验的数据进行了重新分析。
我们的分析突出了趋化因子、细胞因子和主要自身抗原 TRIM21 在 SS 亚型之间的差异表达。此外,我们观察到与能量代谢和氧化还原平衡相关的几个转录因子的差异表达,例如 APE1/Ref-1、FOXO1、TIGAR 和 BACH1。我们的网络分析中差异表达的蛋白质相互关联,支持不同分子网络为 SS 临床亚型提供基础的概念。使用 NSST 在基线时对患者进行分层,仅在表达血清 IL-6 水平最高的亚型中,疲劳评分得到改善。
我们的数据为导致 SS 的腺体和非腺体表现的途径以及不同 SS 亚型的潜在治疗靶点提供了线索。此外,我们的分析强调需要进一步探讨 SS 亚型中代谢和线粒体功能障碍的改变。