| Literature DB >> 34168986 |
Zhenyuan Yu1,2,3,4,5, Wenhao Lu1,2,3,4,5, Cheng Su1,2,4,5, Yufang Lv1,2,3,4,5, Yu Ye2,3,4,5,6, Bingqian Guo2,4,5, Deyun Liu1,3, Haibiao Yan1,3, Hua Mi1,3, Tianyu Li1,3, Qingyun Zhang2,3,4,5,7, Jiwen Cheng1,2,3,4,5, Zengnan Mo1,2,3,4,5.
Abstract
Bilateral renal cell carcinoma (RCC) is a rare disease that can be classified as either familial or sporadic. Studying the cellular molecular characteristics of sporadic bilateral RCC is important to provide guidance for clinical treatment. Cellular molecular characteristics can be expressed at the RNA level, especially at the single-cell degree. Single-cell RNA sequencing (scRNA-seq) was performed on bilateral clear cell RCC (ccRCC). A total of 3,575 and 3,568 high-quality single-cell transcriptome data were captured from the left and right tumour tissues, respectively. Gene characteristics were identified by comparing left and right tumours at the scRNA level. The complex cellular environment of bilateral ccRCC was presented by using scRNA-seq. Single-cell transcriptomic analysis revealed high similarity in gene expression among most of the cell types of bilateral RCCs but significant differences in gene expression among different site tumour cells. Additionally, the potential biological function of different tumour cell types was determined by gene ontology (GO) analysis. The transcriptome characteristics of tumour tissues in different locations at the single-cell transcriptome level were revealed through the scRNA-seq of bilateral sporadic ccRCC. This work provides new insights into the diagnosis and treatment of bilateral RCC.Entities:
Keywords: single-cell RNA atlas; single-cell RNA sequencing; sporadic bilateral clear cell renal cell carcinoma; tumour cell microenvironment; tumour cellular molecular characteristics
Year: 2021 PMID: 34168986 PMCID: PMC8217644 DOI: 10.3389/fonc.2021.659251
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 6.244
The information of patient.
| Sex | Age | Family | Fundus lesions | Pancreatic lesion | Histology |
|---|---|---|---|---|---|
| Male | 64 | No | No | No | ccRCC |
Figure 1Imaging and pathological information of this sample. (A, B) Computed tomography (CT) plain and arterial images of the bilateral tumour. Right tumour (red arrow), left tumour (green arrow) and renal cyst (yellow arrow). (C, D) General view of the left renal tumour and histological morphology of the cells by HE staining. Scale bars, 20 μm. (E, F) General view of the right renal tumour and histological morphology of the cells by HE staining. Scale bars, 20 μm.
Information and sequencing statistics of bilateral renal cell carcinoma samples.
| Sample ID | Tumor location | WHO/ISUP | Cell viability (%) | Number of cells | Median number of detected genes | Sequencing saturation (%) | Mean reads per cell | Number of cells post filtering |
|---|---|---|---|---|---|---|---|---|
| ccRCC1 | Right | Grade I | 86.1 | 6,348 | 1,794 | 65.0 | 49,794 | 3,568 |
| ccRCC2 | Left | Grade II | 85.2 | 7,775 | 1,160 | 48.9 | 31,270 | 3,575 |
Figure 2Quality control (QC) of the scRNA-seq data. (A) QC of bilateral ccRCC scRNA-seq data. nFeature, number of genes; nCount, unique molecular identifiers (UMIs); percent.mt, percentage of mitochondrial genes. (B) Relationship between the percentage of mitochondrial genes and the mRNA reads and between the amount and reads of mRNA. (C, D) Cell clustering results by eliminating the influence of cell cycle genes. (E, F) The DEGs of ccRCC cells reported in previous study also verified in ccRCC1 (E) and ccRCC2 (F).
Figure 3Single-cell transcriptomic map of sporadic bilateral ccRCC. (A) Uniform manifold approximation and projection (UMAP) plot representation of right tumour (ccRCC1) with 15 distinct cell types. (B) Proportion of each cell type in ccRCC1. (C) UMAP plot representation of left tumour (ccRCC2) with 13 distinct cell types. (D) Proportion of each cell type in ccRCC2. (E, F) Bubble chart showing the marker genes of each cluster in ccRCC1 (E) and ccRCC2 (F); the selected marker genes for each cluster are highlighted.
Figure 4CNV analysis for all cell types in ccRCC1 (A) and ccRCC2 (B), respectively. Copy number gains (red) and losses (blue).
Figure 5Comparison of gene expression in bilateral renal tumours. (A) Scatterplot showing the log1p of the average expression (AE) per gene in total ccRCC1 (horizontal) and ccRCC2 (vertical). Pearson’s correlation coefficient was 0.968 (R=0.968). (B) Heat map indicating Pearson correlations on the averaged profiles among each cell type for ccRCC1 (horizontal) and ccRCC2 (vertical). (C, G) Scatterplot showing the log1p of the average expression (AE) per gene of CD4+ T cells (C), CD8+ T cells (C), B cells (C), NK cells (C), TAM (C), mast cells (C), endothelial cells (EC, D), CAF (E) and tumour cells (F, G) in ccRCC1 (horizontal) and ccRCC2 (vertical).
Figure 6ScRNA-seq revealed the cellular molecular characteristics of bilateral ccRCC. (A) Comparison of DEGs in different types of tumour and normal kidney cells. Proximal convoluted tubule cells (PCT), proximal straight tubule cells (PST), proximal tubule cells (PT). (B, C) Expression of common mutated genes in ccRCC1 and ccRCC2. (D, E) Expression of metabolism related genes in ccRCC1 and ccRCC2.
Figure 7GO enrichment analysis of ccRCC1 and ccRCC2 tumour cells for biological process. (A) We presented the most significant 15 biological processes in ccRCC1 tumor cells, according to the top 50 DEGs, which were selected for GO enrichment analysis. (B) The most significant 15 biological processes in ccRCC2 tumor cells 1, according to the top 50 DEGs.