Xiao Kui, Wang Sisi, Chen Wenxin, Hu Yiping, Chen Ziang, Liu Peng, Zhang Jinli, Chen Bin, Zhang Zhi, Li Xiaojian
Department of Plastic Surgery, Guangzhou Red Cross Hospital, Jinan University, Guangzhou, China.
Department of Gynaecology and Obstetrics, Hengyang Central Hospital, Hunan Normal University, Hengyang, China.
Hum Genomics. 2024 Jul 16;18(1):80. doi: 10.1186/s40246-024-00647-z.
Keloid is a disease characterized by proliferation of fibrous tissue after the healing of skin tissue, which seriously affects the daily life of patients. However, the clinical treatment of keloids still has limitations, that is, it is not effective in controlling keloids, resulting in a high recurrence rate. Thus, it is urgent to identify new signatures to improve the diagnosis and treatment of keloids.
Bulk RNA seq and scRNA seq data were downloaded from the GEO database. First, we used WGCNA and MEGENA to co-identify keloid/immune-related DEGs. Subsequently, we used three machine learning algorithms (Randomforest, SVM-RFE, and LASSO) to identify hub immune-related genes of keloid (KHIGs) and investigated the heterogeneous expression of KHIGs during fibroblast subpopulation differentiation using scRNA-seq. Finally, we used HE and Masson staining, quantitative reverse transcription-PCR, western blotting, immunohistochemical, and Immunofluorescent assay to investigate the dysregulated expression and the mechanism of retinoic acid in keloids.
In the present study, we identified PTGFR, RBP5, and LIF as KHIGs and validated their diagnostic performance. Subsequently, we constructed a novel artificial neural network molecular diagnostic model based on the transcriptome pattern of KHIGs, which is expected to break through the current dilemma faced by molecular diagnosis of keloids in the clinic. Meanwhile, the constructed IG score can also effectively predict keloid risk, which provides a new strategy for keloid prevention. Additionally, we observed that KHIGs were also heterogeneously expressed in the constructed differentiation trajectories of fibroblast subtypes, which may affect the differentiation of fibroblast subtypes and thus lead to dysregulation of the immune microenvironment in keloids. Finally, we found that retinoic acid may treat or alleviate keloids by inhibiting RBP5 to differentiate pro-inflammatory fibroblasts (PIF) to mesenchymal fibroblasts (MF), which further reduces collagen secretion.
In summary, the present study provides novel immune signatures (PTGFR, RBP5, and LIF) for keloid diagnosis and treatment, and identifies retinoic acid as potential anti-keloid drugs. More importantly, we provide a new perspective for understanding the interactions between different fibroblast subtypes in keloids and the remodeling of their immune microenvironment.
瘢痕疙瘩是一种皮肤组织愈合后纤维组织增生的疾病,严重影响患者的日常生活。然而,瘢痕疙瘩的临床治疗仍存在局限性,即对瘢痕疙瘩的控制效果不佳,导致复发率较高。因此,迫切需要识别新的特征以改善瘢痕疙瘩的诊断和治疗。
从GEO数据库下载批量RNA测序和单细胞RNA测序数据。首先,我们使用加权基因共表达网络分析(WGCNA)和多基因表达网络分析(MEGENA)共同识别瘢痕疙瘩/免疫相关的差异表达基因(DEGs)。随后,我们使用三种机器学习算法(随机森林、支持向量机递归特征消除法和套索回归)来识别瘢痕疙瘩的核心免疫相关基因(KHIGs),并使用单细胞RNA测序研究KHIGs在成纤维细胞亚群分化过程中的异质性表达。最后,我们使用苏木精-伊红(HE)染色、Masson染色、定量逆转录聚合酶链反应、蛋白质免疫印迹法、免疫组织化学和免疫荧光分析来研究维甲酸在瘢痕疙瘩中的表达失调及其机制。
在本研究中,我们将前列腺素F2α受体(PTGFR)、视黄醇结合蛋白5(RBP5)和白血病抑制因子(LIF)鉴定为KHIGs,并验证了它们的诊断性能。随后,我们基于KHIGs的转录组模式构建了一种新型人工神经网络分子诊断模型,有望突破目前临床瘢痕疙瘩分子诊断面临的困境。同时,构建的IG评分也能有效预测瘢痕疙瘩风险,为瘢痕疙瘩的预防提供了新策略。此外,我们观察到KHIGs在构建的成纤维细胞亚型分化轨迹中也存在异质性表达,这可能影响成纤维细胞亚型的分化,从而导致瘢痕疙瘩免疫微环境失调。最后,我们发现维甲酸可能通过抑制RBP5将促炎成纤维细胞(PIF)分化为间充质成纤维细胞(MF)来治疗或缓解瘢痕疙瘩,进而减少胶原蛋白分泌。
综上所述,本研究为瘢痕疙瘩的诊断和治疗提供了新的免疫特征(PTGFR、RBP5和LIF),并将维甲酸鉴定为潜在的抗瘢痕疙瘩药物。更重要的是,我们为理解瘢痕疙瘩中不同成纤维细胞亚型之间的相互作用及其免疫微环境的重塑提供了新的视角。