| Literature DB >> 35739510 |
Peng Cao1, Ji-Yue Wu1, Jian-Dong Zhang1, Ze-Jia Sun1, Xiang Zheng1, Bao-Zhong Yu1, Hao-Yuan Cao1, Fei-Long Zhang1, Zi-Hao Gao1, Wei Wang2.
Abstract
BACKGROUND: Renal cell carcinoma (RCC) is a third most common tumor of the urinary system. Nowadays, Immunotherapy is a hot topic in the treatment of solid tumors, especially for those tumors with pre-activated immune state.Entities:
Keywords: Immunologic signature; Prognosis; RCC; Renal cell carcinoma; Tumor immunity
Mesh:
Substances:
Year: 2022 PMID: 35739510 PMCID: PMC9229885 DOI: 10.1186/s12885-022-09755-2
Source DB: PubMed Journal: BMC Cancer ISSN: 1471-2407 Impact factor: 4.638
Data of three main subtypes of RCC, kidney renal clear cell carcinoma (KIRC), kidney renal papillary cell carcinoma (KIRP) and kidney chromophobe (KICH), from TCGA and ICGC database
| Data | Number of RCC sample |
|---|---|
| KICH | 62 |
| KIRC | 429 |
| KIRP | 267 |
| RCC from ICGC | 91 |
Immune-related signatures used in the study including HLA-A and -B, IFN gamma signature, expanded immune gene signature, and cytotoxic T lymphocyte (CTL) signature, and their corresponding genes
| Signature | Gene |
|---|---|
| HLA class I molecules | HLA-A, HLA-B |
| IFN gamma signature | IDO1, CXCL10, CXCL9, HLA-DRA, IFNG |
| Expanded immune gene signature | CD30(TNFRSF8), IDO1, CIITA, CD3E, CCL5, GZMK, CD2, HLA-DRA, CXCL13, NKG7, HLA-E, CXCR6, LAG3, TAGAP, CXCL10, STAT1, GZMB |
| Cytotoxic T lymphocyte (CTL) level signature | CD8A, CD8B, GZMA, GZMB, PRF1 |
Fig. 1Prognostic risk models constructed by four immune-related signatures for overall survival (OS) in early and advanced RCC. A Classified efficiency of prognostic risk models constructed by four immune-related signatures (IFN-gamma signature, extended immune gene signature, cytotoxic T lymphocyte signature and HLA-A and HLA-B) in stage I + II RCC. B Classified efficiency of the four prognostic risk models for stage III + IV RCC. The p-value was shown in the survival plots
Fig. 2Prognostic risk models constructed by 8 genes combination for OS in advanced RCC. A Survival plots showed OS of high-risk group and low-risk group in advanced RCC. The risk score curve B and the scatter plot C were drawn according to risk score of every advanced RCC sample calculated by the model. D The heatmap indicated the expression levels of selected genes in the advanced RCC samples. High and low expressions were highlighted in red and blue, respectively. E The predicted value of the model was assessed by Time-dependent ROC curve. The p-value was shown in the survival plot
Fig. 3Validating the classified efficiency of the prognostic risk model constructed by 8 selected genes combination via data from ICGC. A Survival plots showed OS of high-risk group and low-risk group in advanced RCC from ICGC. The risk score curve B and the scatter plot C were drawn according to risk score of each RCC sample calculated by the model. (D) The heatmap indicated the expression levels of selected genes in the RCC samples. The p-value was shown in the survival plot
Fig. 4Gene mutation analysis. The landscape analysis showed the top 16 genes with mutation frequency in high-risk group A and low-risk group B of the advanced RCC. The histogram showed the number of mutations in the RCC samples. Annotation information of the samples included risk groups, clinical stages, living status and genders. Different colors represented different mutation types. C Genetic alterations of the 8 selected genes in RCC samples
Fig. 5Validating the stability of the prognostic risk model constructed by the 8 selected genes for different subtypes of advanced RCC. Survival plots all showed that high-risk RCC classified by the model resulted in unfavorable OS in different stages (A); genders (B); ages (C) and pathological patterns (C). The p values were shown in the survival plots
Fig. 6Association of the genes involved in the model with tumor immune infiltrates