Department of Biochemistry and Molecular Biology, School of Medicine & Holistic Integrative Medicine, Jiangsu Collaborative Innovation Canter of Chinese Medicinal Resources Industrialization, Nanjing University of Chinese Medicine, Nanjing 210023, China.
Int J Mol Sci. 2023 Dec 20;25(1):94. doi: 10.3390/ijms25010094.
Idiopathic pulmonary fibrosis (IPF) is a devastating lung disease of unknown cause, and the involvement of fibroblasts in its pathogenesis is well recognized. However, a comprehensive understanding of fibroblasts' heterogeneity, their molecular characteristics, and their clinical relevance in IPF is lacking. In this study, we aimed to systematically classify fibroblast populations, uncover the molecular and biological features of fibroblast subtypes in fibrotic lung tissue, and establish an IPF-associated, fibroblast-related predictive model for IPF. Herein, a meticulous analysis of scRNA-seq data obtained from lung tissues of both normal and IPF patients was conducted to identify fibroblast subpopulations in fibrotic lung tissues. In addition, hdWGCNA was utilized to identify co-expressed gene modules associated with IPF-related fibroblasts. Furthermore, we explored the prognostic utility of signature genes for these IPF-related fibroblast subtypes using a machine learning-based approach. Two predominant fibroblast subpopulations, termed IPF-related fibroblasts, were identified in fibrotic lung tissues. Additionally, we identified co-expressed gene modules that are closely associated with IPF-fibroblasts by utilizing hdWGCNA. We identified gene signatures that hold promise as prognostic markers in IPF. Moreover, we constructed a predictive model specifically focused on IPF-fibroblasts which can be utilized to assess disease prognosis in IPF patients. These findings have the potential to improve disease prediction and facilitate targeted interventions for patients with IPF.
特发性肺纤维化(IPF)是一种病因不明的严重肺部疾病,成纤维细胞在其发病机制中的作用已得到广泛认可。然而,对于成纤维细胞的异质性、分子特征及其在 IPF 中的临床相关性,我们仍缺乏全面的认识。在这项研究中,我们旨在系统地对成纤维细胞群体进行分类,揭示纤维化肺组织中成纤维细胞亚型的分子和生物学特征,并建立一个与 IPF 相关的、与成纤维细胞相关的 IPF 预测模型。在此,我们对来自正常和 IPF 患者肺部组织的 scRNA-seq 数据进行了细致的分析,以鉴定纤维化肺组织中的成纤维细胞亚群。此外,我们还利用 hdWGCNA 来鉴定与 IPF 相关成纤维细胞相关的共表达基因模块。此外,我们还通过基于机器学习的方法探索了这些与 IPF 相关的成纤维细胞亚型的特征基因的预后实用性。在纤维化的肺组织中,我们鉴定出两种主要的成纤维细胞亚群,称为与 IPF 相关的成纤维细胞。此外,我们还通过 hdWGCNA 鉴定了与 IPF 成纤维细胞密切相关的共表达基因模块。我们鉴定出了作为 IPF 预后标志物有潜力的基因特征。此外,我们构建了一个专门针对 IPF 成纤维细胞的预测模型,可用于评估 IPF 患者的疾病预后。这些发现有可能改善疾病预测,并为 IPF 患者的靶向干预提供便利。