Department of Urology, The Second People’s Hospital of Meishan, Meishan, Sichuan 620500, China.
Department of Urology, China-Japan Union Hospital of Jilin University, Changchun 130000, Jilin, China.
Aging (Albany NY). 2023 Nov 6;15(21):12104-12119. doi: 10.18632/aging.205166.
Gaining a deeper insight into the single-cell RNA sequencing (scRNA-seq) results of bladder cancer (BLCA) provides a transcriptomic profiling of individual cancer cells, which may disclose the molecular mechanisms involved in BLCA carcinogenesis.
scRNA data were obtained from GSE169379 dataset. We used the InferCNV software to determine the copy number variant (CNV) with normal epithelial cells serving as the reference, and performed the pseudo-timing analysis on subsets of epithelial cell using Monocle3 software. Transcription factor analysis was conducted using the Dorothea software. Intercellular communication analysis was performed using the Liana software. Cox analysis and LASSO regression were applied to establish a prognostic model.
We investigated the heterogeneity of tumors in four distinct cell types of BLCA cancer, namely immune cells, endothelial cells, epithelial cells, and fibroblasts. We evaluated the transcription factor activity of different immune cells in BLCA and identified significant enrichment of TCF7 and TBX21 in CD8+ T cells. Additionally, we identified two distinct subtypes of cancer-associated fibroblasts (CAFs), namely iCAFs and myoCAFs, which exhibited distinct communication patterns. Using sub-cluster and cell trajectory analyses, we identified different states of normal-to-malignant cell transformation in epithelial cells. TF analysis further revealed high activation of MYC and SOX2 in tumor cells. Finally, we identified five model genes (SLCO3A1, ANXA1, TENM3, EHBP1, LSAMP) for the development of a prognostic model, which demonstrated high effectiveness in stratifying patients across seven different cohorts.
We have developed a prognostic model that has demonstrated significant efficacy in stratifying patients with BLCA.
深入了解膀胱癌(BLCA)的单细胞 RNA 测序(scRNA-seq)结果,可以提供单个癌细胞的转录组谱,从而揭示 BLCA 发生发展过程中的分子机制。
从 GSE169379 数据集获取 scRNA 数据。我们使用 InferCNV 软件以正常上皮细胞为参照确定拷贝数变异(CNV),并使用 Monocle3 软件对上皮细胞亚群进行伪时间分析。使用 Dorothea 软件进行转录因子分析。使用 Liana 软件进行细胞间通讯分析。应用 Cox 分析和 LASSO 回归建立预后模型。
我们研究了 BLCA 肿瘤在四个不同细胞类型(免疫细胞、内皮细胞、上皮细胞和成纤维细胞)中的异质性。评估了 BLCA 不同免疫细胞中的转录因子活性,发现 CD8+T 细胞中 TCF7 和 TBX21 显著富集。此外,我们鉴定了两种不同的癌症相关成纤维细胞(CAFs)亚型,即 iCAFs 和 myoCAFs,它们表现出不同的通讯模式。通过亚群和细胞轨迹分析,我们鉴定了上皮细胞中正常向恶性细胞转化的不同状态。TF 分析进一步揭示了肿瘤细胞中 MYC 和 SOX2 的高激活。最后,我们鉴定了五个模型基因(SLCO3A1、ANXA1、TENM3、EHBP1、LSAMP)用于开发预后模型,该模型在七个不同队列的患者分层中表现出很高的有效性。
我们开发了一种预后模型,在 BLCA 患者分层中表现出显著的疗效。