Abstract

Background: The efficiency of immune checkpoint inhibitors (ICIs) in bladder cancer (BLCA) treatment has been widely validated; however, the tumor response to ICIs was generally low. It is critical and urgent to find biomarkers that can predict tumor response to ICIs. The tumor microenvironment (TME), which may play important roles to either dampen or enhance immune responses, has been widely concerned.Methods: The cancer genome atlas BLCA (TCGA-BLCA) cohort (n = 400) was used in this study. Based on the proportions of 22 types of immune cells calculated by CIBERSORT, TME was classified by K-means Clustering and differentially expressed genes (DEGs) were determined. Based on DEGs, patients were classified into three groups, and cluster signature genes were identified after reducing redundant genes. Then TMEscore was calculated based on cluster signature genes, and the samples were classified to two subtypes. We performed somatic mutation and copy number variation analysis to identify the genetic characteristics of the two subtypes. Correlation analysis was performed to explore the correlation between TMEscore and the tumor response to ICIs as well as the prognosis of BLCA.Results: According to the proportions of immune cells, two TME clusters were determined, and 1,144 DEGs and 138 cluster signature genes were identified. Based on cluster signature genes, samples were classified into TMEscore-high (n = 199) and TMEscore-low (n = 201) subtypes. Survival analysis showed patients with TMEscore-high phenotype had better prognosis. Among the 45 differentially expressed micro-RNAs (miRNAs) and 1,033 differentially expressed messenger RNAs (mRNAs) between the two subtypes, 16 miRNAs and 287 mRNAs had statistically significant impact on the prognosis of BLCA. Furthermore, there were 94 genes with significant differences between the two subtypes, and they were enriched in RTK-RAS, NOTCH, WNT, Hippo, and PI3K pathways. The Tumor Immune Dysfunction and Exclusion (TIDE) score of TMEscore-high BLCA was statistically lower than that of TMEscore-low BLCA. Receiver operating characteristic (ROC) curve analysis showed that the area under the curve (AUC) of TMEscore and tumor mutation burden (TMB) is 0.6918 and 0.5374, respectively.Conclusion: We developed a method to classify BLCA patients to two TME subtypes, TMEscore-high and TMEscore-low, and we found TMEscore-high subtype of BLCA had a good prognosis and a good response to ICIs.

Highlights

  • Bladder cancer (BLCA) is the tenth most common form of cancer worldwide, with an estimated 549,000 new cases and 200,000 deaths according to global cancer statistics in 2018 (Bray et al, 2018)

  • tumor microenvironment (TME) Subtypes are Associated With the Prognosis of bladder cancer (BLCA)

  • The TME cell network revealed that four types of immune cells, macrophages (M0), CD8+ T cells, mast cells, and neutrophils, had significant effects on the prognosis of BLCA (p < 0.05)

Read more

Summary

Introduction

Bladder cancer (BLCA) is the tenth most common form of cancer worldwide, with an estimated 549,000 new cases and 200,000 deaths according to global cancer statistics in 2018 (Bray et al, 2018). The efficiency of ICIs in BLCA treatment has been widely validated (Balar, 2017; Brower, 2017; Feld et al, 2019), the tumor response to ICIs was generally low (Zou et al, 2016; Sonpavde et al, 2018). It is critical and urgent to find biomarkers that can predict tumor response to ICIs (Sonpavde et al, 2018). The specificity of PD-L1 expression level in predicting ICI efficiency has been challenged (Munari et al, 2018) Another significant issue related to PD-L1 that remains to be addressed is the definition of a proper cutoff value (Zou et al, 2016). The efficiency of immune checkpoint inhibitors (ICIs) in bladder cancer (BLCA) treatment has been widely validated; the tumor response to ICIs was generally low. The tumor microenvironment (TME), which may play important roles to either dampen or enhance immune responses, has been widely concerned

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call