Identification of prostate cancer subtypes based on immune signature scores in bulk and single-cell transcriptomes

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作者
Canping Chen
Jiangti Luo
Xiaosheng Wang
机构
[1] China Pharmaceutical University,Biomedical Informatics Research Lab, School of Basic Medicine and Clinical Pharmacy
[2] China Pharmaceutical University,Cancer Genomics Research Center, School of Basic Medicine and Clinical Pharmacy
[3] China Pharmaceutical University,Big Data Research Institute
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Prostate cancer; Tumor immune microenvironment; Subtyping; Unsupervised clustering; Transcriptomes;
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摘要
Prostate cancer (PC) is heterogeneous in the tumor immune microenvironment (TIME). Subtyping of PC based on the TIME could provide new insights into intratumor heterogeneity and its correlates of clinical features. Based on the enrichment scores of 28 immune cell types in the TIME, we performed unsupervised clustering to identify immune-specific subtypes of PC. The clustering analysis was performed in ten different bulk tumor transcriptomic datasets and in a single-cell RNA-Seq (scRNA-seq) dataset, respectively. We identified two PC subtypes: PC immunity high (PC-ImH) and PC immunity low (PC-ImL), consistently in these datasets. Compared to PC-ImL, PC-ImH displayed stronger immune signatures, worse clinical outcomes, higher epithelial-mesenchymal transition (EMT) signature, tumor stemness, intratumor heterogeneity (ITH) and genomic instability, and lower incidence of TMPRSS2-ERG fusion. Tumor mutation burden (TMB) showed no significant difference between PC-ImH and PC-ImL, while copy number alteration (CNA) was more significant in PC-ImL than in PC-ImH. PC-ImH could be further divided into two subgroups, which had significantly different immune infiltration levels and clinical features. In conclusion, “hot” PCs have stronger anti-tumor immune response, while worse clinical outcomes versus “cold” PCs. CNA instead of TMB plays a crucial role in the regulation of TIME in PC. TMPRSS2-ERG fusion correlates with decreased anti-tumor immune response while better disease-free survival in PC. The identification of immune-specific subtypes has potential clinical implications for PC immunotherapy.
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