Department of Medicine, Division of Pulmonary and Critical Care Medicine, Women's Guild Lung Institute, Cedars-Sinai Medical Center, Los Angeles, CA 90048, USA.
Genomics Core, Department of Biomedical Sciences, Cedars-Sinai Medical Center, Los Angeles, CA 90048, USA.
Cell Rep. 2018 Mar 27;22(13):3625-3640. doi: 10.1016/j.celrep.2018.03.010.
Fibroblast heterogeneity has long been recognized in mouse and human lungs, homeostasis, and disease states. However, there is no common consensus on fibroblast subtypes, lineages, biological properties, signaling, and plasticity, which severely hampers our understanding of the mechanisms of fibrosis. To comprehensively classify fibroblast populations in the lung using an unbiased approach, single-cell RNA sequencing was performed with mesenchymal preparations from either uninjured or bleomycin-treated mouse lungs. Single-cell transcriptome analyses classified and defined six mesenchymal cell types in normal lung and seven in fibrotic lung. Furthermore, delineation of their differentiation trajectory was achieved by a machine learning method. This collection of single-cell transcriptomes and the distinct classification of fibroblast subsets provide a new resource for understanding the fibroblast landscape and the roles of fibroblasts in fibrotic diseases.
成纤维细胞异质性在小鼠和人类肺部的稳态和疾病状态中早已被认识。然而,对于成纤维细胞亚型、谱系、生物学特性、信号转导和可塑性,目前尚无共识,这严重阻碍了我们对纤维化机制的理解。为了采用无偏倚的方法全面分类肺部成纤维细胞群体,对未受伤或博来霉素处理的小鼠肺部的间充质制剂进行了单细胞 RNA 测序。单细胞转录组分析将正常肺中的六种间充质细胞类型和纤维化肺中的七种细胞类型进行了分类和定义。此外,通过机器学习方法描绘了它们的分化轨迹。该单细胞转录组集合和不同的成纤维细胞亚群分类为理解成纤维细胞景观和成纤维细胞在纤维化疾病中的作用提供了新的资源。