Center for Systems Immunology, Departments of Immunology and Computational & Systems Biology, University of Pittsburgh, Pittsburgh, Pennsylvania.
Division of Rheumatology and Clinical Immunology, Department of Medicine, University of Pittsburgh, Pittsburgh, Pennsylvania.
Arthritis Rheumatol. 2023 Oct;75(10):1819-1830. doi: 10.1002/art.42536. Epub 2023 Jul 25.
Systemic sclerosis (SSc) is a multifactorial autoimmune fibrotic disorder involving complex rewiring of cell-intrinsic and cell-extrinsic signaling coexpression networks involving a range of cell types. However, the rewired circuits as well as corresponding cell-cell interactions remain poorly understood. To address this, we used a predictive machine learning framework to analyze single-cell RNA-sequencing data from 24 SSc patients across the severity spectrum as quantified by the modified Rodnan skin score (MRSS).
We used a least absolute shrinkage and selection operator (LASSO)-based predictive machine learning approach on the single-cell RNA-sequencing data set to identify predictive biomarkers of SSc severity, both across and within cell types. The use of L1 regularization helps prevent overfitting on high-dimensional data. Correlation network analyses were coupled to the LASSO model to identify cell-intrinsic and cell-extrinsic co-correlates of the identified biomarkers of SSc severity.
We found that the uncovered cell type-specific predictive biomarkers of MRSS included previously implicated genes in fibroblast and myeloid cell subsets (e.g., SFPR2+ fibroblasts and monocytes), as well as novel gene biomarkers of MRSS, especially in keratinocytes. Correlation network analyses revealed novel cross-talk between immune pathways and implicated keratinocytes in addition to fibroblast and myeloid cells as key cell types involved in SSc pathogenesis. We then validated the uncovered association of key gene expression and protein markers in keratinocytes, KRT6A and S100A8, with SSc skin disease severity.
Our global systems analyses reveal previously uncharacterized cell-intrinsic and cell-extrinsic signaling coexpression networks underlying SSc severity that involve keratinocytes, myeloid cells, and fibroblasts.
系统性硬化症(SSc)是一种多因素自身免疫性纤维性疾病,涉及涉及多种细胞类型的细胞内在和细胞外在信号共表达网络的复杂重布线。然而,重布线电路以及相应的细胞-细胞相互作用仍知之甚少。为了解决这个问题,我们使用预测性机器学习框架分析了来自 24 名 SSc 患者的单细胞 RNA 测序数据,这些患者的严重程度通过改良的罗德曼皮肤评分(MRSS)进行量化。
我们使用基于最小绝对收缩和选择算子(LASSO)的预测性机器学习方法对单细胞 RNA 测序数据集进行分析,以确定 SSc 严重程度的预测性生物标志物,无论是在细胞类型之间还是细胞类型内。L1 正则化的使用有助于防止高维数据的过度拟合。相关网络分析与 LASSO 模型相结合,以识别鉴定的 SSc 严重程度生物标志物的细胞内在和细胞外在共相关物。
我们发现,MRSS 的细胞类型特异性预测性生物标志物包括先前涉及成纤维细胞和髓样细胞亚群的基因(例如 SFPR2+成纤维细胞和单核细胞),以及新的与 MRSS 相关的基因生物标志物,尤其是在角质形成细胞中。相关网络分析揭示了免疫途径之间的新的串扰,并除了成纤维细胞和髓样细胞之外,还暗示角质形成细胞是 SSc 发病机制中的关键细胞类型。然后,我们验证了角质形成细胞中关键基因表达和蛋白标志物 KRT6A 和 S100A8 与 SSc 皮肤疾病严重程度的关联。
我们的全局系统分析揭示了以前未表征的角质形成细胞、髓样细胞和成纤维细胞参与的 SSc 严重程度的细胞内在和细胞外在信号共表达网络。