Homologous Recombination Related Signatures Predict Prognosis and Immunotherapy Response in Metastatic Urothelial Carcinoma

This study used homologous recombination (HR) related signatures to develop a clinical prediction model for screening immune checkpoint inhibitors (ICIs) advantaged populations and identify hub genes in advanced metastatic urothelial carcinoma. The single-sample gene enrichment analysis and weighted...

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Published inFrontiers in genetics Vol. 13; p. 875128
Main Authors Li, Pan, Chen, Chaohu, Li, Jianpeng, Yang, Li, Wang, Yuhan, Dong, Zhilong, Mi, Jun, Zhang, Yunxin, Wang, Juan, Wang, Hanzhang, Rodriguez, Ronald, Tian, Junqiang, Wang, Zhiping
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Media S.A 26.04.2022
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Summary:This study used homologous recombination (HR) related signatures to develop a clinical prediction model for screening immune checkpoint inhibitors (ICIs) advantaged populations and identify hub genes in advanced metastatic urothelial carcinoma. The single-sample gene enrichment analysis and weighted gene co-expression network analysis were applied to identify modules associated with immune response and HR in IMvigor210 cohort samples. The principal component analysis was utilized to determine the differences in HR-related module gene signature scores across different tissue subtypes and clinical variables. Risk prediction models and nomograms were developed using differential gene expression analysis associated with HR scores, least absolute shrinkage and selection operator, and multivariate proportional hazards model regression. Additionally, hub genes were identified by analyzing the contribution of HR-related genes to principal components and overall survival analysis. Finally, clinical features from GSE133624, GSE13507, the TCGA, and other data sets were analyzed to validate the relationship between hub genes and tumor growth and mutation. The HR score was significantly higher in the complete/partial response group than in the stable/progressive disease group. The majority of genes associated with HR were discovered to be involved in the cell cycle and others. Genomically unstable, high tumor level, and high immune level samples all exhibited significantly higher HR score than other sample categories, and higher HR scores were related to improved survival following ICIs treatment. The risk scores for , , , , , and were identified, and the training and verification groups had markedly different survival times. The risk score, tumor neoantigen burden, mismatch repair, and cell cycle regulation were discovered to be independent predictors of survival time following immunotherapy. Patients with a high level of expression of hub genes such as , , and had a greater chance of surviving following immunotherapy. These genes are expressed at significantly higher levels in tumors, high-grade cancer, and invasive cancer than other categories, and are associated with TP53 and RB1 mutations. HR-related genes are upregulated in genomically unstable samples, the survival time of mUC patients after treatment with ICIs can be predicted using a normogram model based on HR signature.
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This article was submitted to Computational Genomics, a section of the journal Frontiers in Genetics
Yunshu Che, Sun Yat-sen University, China
Reviewed by: Yong Zhao, Chongqing Medical University, China
Yuke Chen, Peking University First Hospital, China
Edited by: Yongwen Luo, Wuhan University, China
ISSN:1664-8021
1664-8021
DOI:10.3389/fgene.2022.875128