학술논문

An integrative bioinformatics approach reveals coding and non-coding gene variants associated with gene expression profiles and outcome in breast cancer molecular subtypes.
Document Type
Journal Article
Source
British Journal of Cancer. Apr2018, Vol. 118 Issue 8, p1107-1114. 8p. 2 Charts, 3 Graphs.
Subject
*BREAST tumor diagnosis
*BREAST tumors
*COMPARATIVE studies
*DIFFERENTIAL diagnosis
*GENES
*LONGITUDINAL method
*RESEARCH methodology
*MEDICAL cooperation
*PROGNOSIS
*RESEARCH
*RESEARCH funding
*RNA
*SURVIVAL analysis (Biometry)
*BIOINFORMATICS
*SYSTEM integration
*EVALUATION research
*TREATMENT effectiveness
*GENE expression profiling
Language
ISSN
0007-0920
Abstract
Background: Sequence variations in coding and non-coding regions of the genome can affect gene expression and signalling pathways, which in turn may influence disease outcome.Methods: In this study, we integrated somatic mutations, gene expression and clinical data from 930 breast cancer patients included in the TCGA database. Genes associated with single mutations in molecular breast cancer subtypes were identified by the Mann-Whitney U-test and their prognostic value was evaluated by Kaplan-Meier and Cox regression analyses. Results were confirmed using gene expression profiles from the Metabric data set (n = 1988) and whole-genome sequencing data from the TCGA cohort (n = 117).Results: The overall mutation rate in coding and non-coding regions were significantly higher in ER-negative/HER2-negative tumours (P = 2.8E-03 and P = 2.4E-07, respectively). Recurrent sequence variations were identified in non-coding regulatory regions of several cancer-associated genes, including NBPF1, PIK3CA and TP53. After multivariate regression analysis, gene signatures associated with three coding mutations (CDH1, MAP3K1 and TP53) and two non-coding variants (CRTC3 and STAG2) in cancer-related genes predicted prognosis in ER-positive/HER2-negative tumours.Conclusions: These findings demonstrate that sequence alterations influence gene expression and oncogenic pathways, possibly affecting the outcome of breast cancer patients. Our data provide potential opportunities to identify non-coding variations with functional and clinical relevance in breast cancer. [ABSTRACT FROM AUTHOR]