Zhou Yong, Tong Zhongkai, Zhu Xiaoxiao, Wu Chunli, Zhou Ying, Dong Zhaoxing
Department of Respiratory and Critical Care Medicine, Ningbo No. 2 Hospital, Ningbo, 315000, Zhejiang, China.
J Transl Med. 2025 Jan 2;23(1):3. doi: 10.1186/s12967-024-06031-8.
Pulmonary fibrosis is characterized by progressive lung scarring, leading to a decline in lung function and an increase in morbidity and mortality. This study leverages single-cell sequencing and machine learning to unravel the complex cellular and molecular mechanisms underlying pulmonary fibrosis, aiming to improve diagnostic accuracy and uncover potential therapeutic targets. By analyzing lung tissue samples from pulmonary fibrosis patients, we identified distinct cellular phenotypes and gene expression patterns that contribute to the fibrotic process. Notably, our findings revealed a significant enrichment of activated B cells, CD4 T cells, macrophages, and specific fibroblast subpopulations in fibrotic versus normal lung tissue. Machine learning analysis further refined these observations, resulting in the development of a diagnostic model with enhanced precision, based on key gene signatures including TMEM52B, PHACTR1, and BLVRB. Comparative analysis with existing diagnostic models demonstrates the superior accuracy and specificity of our approach. Through In vitro experiments involving the knockdown of PHACTR1, TMEM52B, and BLVRB genes demonstrated that these genes play crucial roles in inhibiting the expression of α-SMA and collagen in lung fibroblasts induced by TGF-β. Additionally, knockout of the PHACTR1 gene reduced inflammation and collagen deposition in a bleomycin-induced mouse model of pulmonary fibrosis in vivo. Additionally, our study highlights novel gene signatures and immune cell profiles associated with pulmonary fibrosis, offering insights into potential therapeutic targets. This research underscores the importance of integrating advanced technologies like single-cell sequencing and machine learning to deepen our understanding of pulmonary fibrosis and pave the way for personalized therapeutic strategies.
肺纤维化的特征是肺组织进行性瘢痕形成,导致肺功能下降以及发病率和死亡率上升。本研究利用单细胞测序和机器学习来揭示肺纤维化潜在的复杂细胞和分子机制,旨在提高诊断准确性并发现潜在治疗靶点。通过分析肺纤维化患者的肺组织样本,我们确定了导致纤维化过程的不同细胞表型和基因表达模式。值得注意的是,我们的研究结果显示,与正常肺组织相比,纤维化肺组织中活化的B细胞、CD4 T细胞、巨噬细胞和特定成纤维细胞亚群显著富集。机器学习分析进一步优化了这些观察结果,基于包括TMEM52B、PHACTR1和BLVRB在内的关键基因特征,开发出了一种精度更高的诊断模型。与现有诊断模型的比较分析表明了我们方法具有更高的准确性和特异性。通过涉及敲低PHACTR1、TMEM52B和BLVRB基因的体外实验表明,这些基因在抑制TGF-β诱导的肺成纤维细胞中α-SMA和胶原蛋白的表达方面发挥着关键作用。此外,在博来霉素诱导的肺纤维化小鼠体内模型中,敲除PHACTR1基因可减轻炎症和胶原蛋白沉积。此外,我们的研究突出了与肺纤维化相关的新基因特征和免疫细胞谱,为潜在治疗靶点提供了见解。这项研究强调了整合单细胞测序和机器学习等先进技术对于加深我们对肺纤维化的理解以及为个性化治疗策略铺平道路的重要性。