Abstract

BackgroundCompelling evidence has demonstrated the pivotal role of autophagy in the prognosis of breast cancer. Breast cancer (BC) patients with early relapse consistently exhibited worse survival.MethodsThe autophagy-related genes were derived from the Human Autophagy Database (HADb) and high-sequencing data were obtained from The Cancer Genome Atlas (TCGA). Discrepantly expressed autophagy genes (DEAGs) between early relapse and long-term survival groups were performed using the Linear Models for Microarray data (LIMMA) method. Lasso Cox regression analysis was conducted for the selection of the 4-gene autophagy-related gene signature. GSE42568 and GSE21653 databases were enrolled in this study for the external validation of the signature. Then patients were divided into high and low-risk groups based on the specific score formula. GSEA was used to discover the related signaling pathway. The Kaplan-Meier curves and the receiver operating characteristic (ROC) curves were used to evaluate the discrimination and accuracy of the 4-gene signature.ResultsA signature composed of four autophagy-related mRNA including APOL1, HSPA8, SIRT1, and TP73, was identified as significantly associated with the early relapse in BC patients. Time-dependent receiver-operating characteristic at 1 year suggested remarkable accuracy of the signature [area under the curve (AUC = 0.748)]. The risk score model based on the autophagy-related signature showed favorable predicting value in 1-, 2-, and 3-year relapse-free survival (RFS) in training and two validating cohorts. The GSEA displayed gene sets were remarkably enriched in carcinogenic activation pathways and autophagy-related pathways. The nomogram involving three variables (progesterone receptor status, T stage, and 4-gene signature) exhibited relatively good discrimination with a C-index of 0.766.ConclusionsOur study establishes an autophagy-related 4-gene signature that can effectively stratify the high-risk and low-risk BC patients for early relapse. Combined with the clinicopathological variables, the signature could significantly help oncologists tailor more efficient treatment strategies for BC patients.

Highlights

  • IntroductionBreast cancer (BC) is currently the most frequent malignancy and one of the leading causes of cancer death in the United States (estimated 279,100 new cases and 42,690 death) [1] and China mainland (estimated 304,000 new cases and 70,000 death) [2]

  • Breast cancer (BC) is currently the most frequent malignancy and one of the leading causes of cancer death in the United States [1] and China mainland [2]

  • The messenger RNA-seq expression and clinicopathological characteristics of 1,025 BC patients were obtained from the TCGA program website

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Summary

Introduction

Breast cancer (BC) is currently the most frequent malignancy and one of the leading causes of cancer death in the United States (estimated 279,100 new cases and 42,690 death) [1] and China mainland (estimated 304,000 new cases and 70,000 death) [2]. Early relapse in BC patients is frequently associated with poor clinicopathological features [such as young age [10], late TNM stage, poor differentiation grade, and worse histopathological type [11, 12]] and resistance to adjuvant chemotherapy or endocrine therapy [13–16]. Those cases who developed early relapse consistently tended to have poorer long-term survival rates. For the great heterogeneity of BC, the prognosis varies significantly in BC patients with the same stage and comparable clinicopathological features For this reason, hall markers and other biological indicators could help to predict the recurrence of BC [18]. Breast cancer (BC) patients with early relapse consistently exhibited worse survival

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