Chen Hanghang, Tian Tian, Luo Haihua, Jiang Yong
Guangdong Provincial Key Laboratory of Proteomics, State Key Laboratory of Organ Failure Research, Department of Pathophysiology, School of Basic Medical Sciences, Southern Medical University, Guangzhou, China.
Front Genet. 2022 Sep 16;13:979829. doi: 10.3389/fgene.2022.979829. eCollection 2022.
The invention and development of single-cell technologies have contributed a lot to the understanding of tumor heterogeneity. The objective of this research was to investigate the differentially expressed genes (DEGs) between normal and tumor cells at the single-cell level and explore the clinical application of these genes with bulk RNA-sequencing data in breast cancer. We collected single-cell, bulk RNA sequencing (RNA-seq) and microarray data from two public databases. Through single-cell analysis of 23,909 mammary gland cells from seven healthy donors and 33,138 tumor cells from seven breast cancer patients, cell type-specific DEGs between normal and tumor cells were identified. With these genes and the bulk RNA-seq data, we developed a prognostic signature and validated the efficacy in two independent cohorts. We also explored the differences of immune infiltration and tumor mutational burden (TMB) between the different risk groups. A total of 6,175 cell-type-specific DEGs were obtained through the single-cell analysis between normal and tumor cells in breast cancer, of which 1,768 genes intersected with the bulk RNA-seq data. An 18-gene signature was constructed to assess the outcomes in breast cancer patients. The efficacy of the signature was notably prominent in two independent cohorts. The low-risk group showed higher immune infiltration and lower TMB. Among the 18 genes in the signature, 16 were also differentially expressed in the bulk RNA-seq dataset. Cell-type-specific DEGs between normal and tumor cells were identified through single-cell transcriptome data. The signature constructed with these DEGs could stratify patients efficiently. The signature was also closely correlated with immune infiltration and TMB. Nearly all the genes in the signature were also differentially expressed at the bulk RNA-seq level.
单细胞技术的发明和发展对理解肿瘤异质性有很大贡献。本研究的目的是在单细胞水平上研究正常细胞和肿瘤细胞之间的差异表达基因(DEG),并利用乳腺癌的批量RNA测序数据探索这些基因的临床应用。我们从两个公共数据库收集了单细胞、批量RNA测序(RNA-seq)和微阵列数据。通过对来自7名健康供体的23,909个乳腺细胞和来自7名乳腺癌患者的33,138个肿瘤细胞进行单细胞分析,确定了正常细胞和肿瘤细胞之间细胞类型特异性的DEG。利用这些基因和批量RNA-seq数据,我们开发了一种预后特征,并在两个独立队列中验证了其有效性。我们还探讨了不同风险组之间免疫浸润和肿瘤突变负担(TMB)的差异。通过对乳腺癌中正常细胞和肿瘤细胞的单细胞分析,共获得6,175个细胞类型特异性的DEG,其中1,768个基因与批量RNA-seq数据相交。构建了一个18基因特征来评估乳腺癌患者的预后。该特征在两个独立队列中的有效性显著突出。低风险组显示出更高的免疫浸润和更低的TMB。在该特征的18个基因中,有16个在批量RNA-seq数据集中也有差异表达。通过单细胞转录组数据确定了正常细胞和肿瘤细胞之间细胞类型特异性的DEG。用这些DEG构建的特征可以有效地对患者进行分层。该特征还与免疫浸润和TMB密切相关。该特征中几乎所有基因在批量RNA-seq水平上也有差异表达。