1. A systematic comparison of copy number alterations in four types of female cancer
- Author
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Anne Lise Børresen-Dale, Daniel Nebdal, Fatemeh Kaveh, Hege Edvardsen, Lars Oliver Baumbusch, Vessela N. Kristensen, Hiroko K. Solvang, and Ole Christian Lingjærde
- Subjects
0301 basic medicine ,Oncology ,Cancer Research ,Uterine Cervical Neoplasms ,Breast cancer ,0302 clinical medicine ,Endometrial cancer ,Neoplasms ,Databases, Genetic ,Epidemiology of cancer ,Cluster Analysis ,Ovarian Neoplasms ,Cervical cancer ,Genomics ,Copy number alteration ,030220 oncology & carcinogenesis ,Female ,Research Article ,medicine.medical_specialty ,DNA Copy Number Variations ,Breast Neoplasms ,Computational biology ,03 medical and health sciences ,Sex Factors ,Ovarian cancer ,Internal medicine ,Genetics ,medicine ,Humans ,Genetic Predisposition to Disease ,Gene ,Genetic Association Studies ,business.industry ,Gene Expression Profiling ,Breakpoint ,Gene Amplification ,Genomic Identification of Significant Targets in Cancer ,Correction ,Female cancers ,Cancer ,medicine.disease ,Endometrial Neoplasms ,030104 developmental biology ,business ,Gene Deletion - Abstract
Background Detection and localization of genomic alterations and breakpoints are crucial in cancer research. The purpose of this study was to investigate, in a methodological and biological perspective, different female, hormone-dependent cancers to identify common and diverse DNA aberrations, genes, and pathways. Methods In this work, we analyzed tissue samples from patients with breast (n = 112), ovarian (n = 74), endometrial (n = 84), or cervical (n = 76) cancer. To identify genomic aberrations, the Circular Binary Segmentation (CBS) and Piecewise Constant Fitting (PCF) algorithms were used and segmentation thresholds optimized. The Genomic Identification of Significant Targets in Cancer (GISTIC) algorithm was applied to the segmented data to identify significantly altered regions and the associated genes were analyzed by Ingenuity Pathway Analysis (IPA) to detect over-represented pathways and functions within the identified gene sets. Results and Discussion Analyses of high-resolution copy number alterations in four different female cancer types are presented. For appropriately adjusted segmentation parameters the two segmentation algorithms CBS and PCF performed similarly. We identified one region at 8q24.3 with focal aberrations that was altered at significant frequency across all four cancer types. Considering both, broad regions and focal peaks, three additional regions with gains at significant frequency were revealed at 1p21.1, 8p22, and 13q21.33, respectively. Several of these events involve known cancer-related genes, like PPP2R2A, PSCA, PTP4A3, and PTK2. In the female reproductive system (ovarian, endometrial, and cervix [OEC]), we discovered three common events: copy number gains at 5p15.33 and 15q11.2, further a copy number loss at 8p21.2. Interestingly, as many as 75% of the aberrations (75% amplifications and 86% deletions) identified by GISTIC were specific for just one cancer type and represented distinct molecular pathways. Conclusions Our results disclose that some prominent copy number changes are shared in the four examined female, hormone-dependent cancer whereas others are definitive to specific cancer types. Note to Correction: After publication of the original article [1] the authors found that the article contained an incorrect version of Fig. 4. This does not affect the results and conclusions of the article.
- Published
- 2016