Abstract

BackgroundBreast cancer is a highly heterogeneous disease, this poses challenges for classification and management. Long non-coding RNAs play acrucial role in the breast cancersdevelopment and progression, especially in tumor-related immune processes which have become the most rapidly investigated area. Therefore, we aimed at developing an immune-related lncRNA signature to improve the prognosis prediction of breast cancer.MethodsWe obtained breast cancer patient samples and corresponding clinical data from The Cancer Genome Atlas (TCGA) database. Immune-related lncRNAs were screened by co-expression analysis of immune-related genes which were downloaded from the Immunology Database and Analysis Portal (ImmPort). Clinical patient samples were randomly separated into training and testing sets. In the training set, univariate Cox regression analysis and LASSO regression were utilized to build a prognostic immune-related lncRNA signature. The signature was validated in the training set, testing set, and whole cohorts by the Kaplan–Meier log-rank test, time-dependent ROC curve analysis, principal component analysis, univariate andmultivariate Cox regression analyses.ResultsA total of 937 immune- related lncRNAs were identified, 15 candidate immune-related lncRNAs were significantly associated with overall survival (OS). Eight of these lncRNAs (OTUD6B-AS1, AL122010.1, AC136475.2, AL161646.1, AC245297.3, LINC00578, LINC01871, AP000442.2) were selected for establishment of the risk prediction model. The OS of patients in the low-risk group was higher than that of patients in the high-risk group (p = 1.215e − 06 in the training set; p = 0.0069 in the validation set; p = 1.233e − 07 in whole cohort). The time-dependent ROC curve analysis revealed that the AUCs for OS in the first, eighth, and tenth year were 0.812, 0.81, and 0.857, respectively, in the training set, 0.615, 0.68, 0.655 in the validation set, and 0.725, 0.742, 0.741 in the total cohort. Multivariate Cox regression analysis indicated the model was a reliable and independent indicator for the prognosis of breast cancer in the training set (HR = 1.432; 95% CI 1.204–1.702, p < 0.001), validation set (HR = 1.162; 95% CI 1.004–1.345, p = 0.044), and whole set (HR = 1.240; 95% CI 1.128–1.362, p < 0.001). GSEA analysis revealed a strong connection between the signature and immune-related biological processes and pathways.ConclusionsWe constructed and verified a robust signature of 8 immune-related lncRNAs for the prediction of breast cancer patient survival.

Highlights

  • Breast cancer is a highly heterogeneous disease, this poses challenges for classification and management

  • Data source and processing Initially, we obtained a total of 14143 Long non-coding RNA (lncRNA) expression and 19659 gene expression profiles from 1053 breast cancer samples and 111 normal samples

  • We carried out univariate Cox regression analysis on the expression profiles of the lncRNAs in the training set and obtained 15 candidate immune-related lncRNAs, significantly associated with survival, p < 0.01(Fig. 1a, Table 2)

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Summary

Introduction

Breast cancer is a highly heterogeneous disease, this poses challenges for classification and management. Long non-coding RNAs play acrucial role in the breast cancersdevelopment and progression, especially in tumor-related immune processes which have become the most rapidly investigated area. We aimed at developing an immune-related lncRNA signature to improve the prognosis prediction of breast cancer. Breast cancer is the most commonly diagnosed cancer and the leading cause of cancer-related death [1, 2]. Immunotherapy provides the unprecedented opportunity to effectively treat malignancies owing to the essential involvement of the immune system in tumor development, progression, and therapy [9], especially in some malignancies such as hepatocellular carcinoma [10], early-stage squamous cell cancer of the anal canal [11], prostate cancer [12]

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