BACKGROUND: Prostate cancer (PCa) is the most common cancer in men. PCa is strongly age associated; low death rates in surveillance cohorts call into question the widespread use of surgery, which leads to overtreatment and a reduction in quality of life. There is a great need to increase the understanding of tumor characteristics in the context of disease progression. OBJECTIVE: To perform the first multigenome investigation of PCa through analysis of both autosomal and mitochondrial DNA, and to integrate exome sequencing data, and RNA sequencing and copy-number alteration (CNA) data to investigate how various different tumor characteristics, commonly analyzed separately, are interconnected. DESIGN, SETTING, AND PARTICIPANTS: Exome sequencing was applied to 64 tumor samples from 55 PCa patients with varying stage and grade. Integrated analysis was performed on a core set of 50 tumors from which exome sequencing, CNA, and RNA sequencing data were available. OUTCOME MEASUREMENTS AND STATISTICAL ANALYSIS: Genes, mutated at a significantly higher rate relative to a genomic background, were identified. In addition, mitochondrial and autosomal mutation rates were correlated to CNAs and proliferation, assessed as a cell cycle gene expression signature. RESULTS AND LIMITATIONS: Genes not previously reported to be significantly mutated in PCa, such as cell division cycle 27 homolog (Saccharomyces cerevisiae) (CDC27), myeloid/lymphoid or mixed-lineage leukemia 3 (MLL3), lysine (K)-specific demethylase 6A (KDM6A), and kinesin family member 5A (KIF5A) were identified. The mutation rate in the mitochondrial genome was 55 times higher than that of the autosomes. Multilevel analysis demonstrated a tight correlation between high reactive-oxygen exposure, chromosomal damage, high proliferation, and in parallel, a transition from multiclonal indolent primary PCa to monoclonal aggressive disease. As we only performed targeted sequence analysis; copy-number neutral rearrangements recently described for PCa were not accounted for. CONCLUSIONS: The mitochondrial genome displays an elevated mutation rate compared to the autosomal chromosomes. By integrated analysis, we demonstrated that different tumor characteristics are interconnected, providing an increased understanding of PCa etiology.
BACKGROUND:Prostate cancer (PCa) is the most common cancer in men. PCa is strongly age associated; low death rates in surveillance cohorts call into question the widespread use of surgery, which leads to overtreatment and a reduction in quality of life. There is a great need to increase the understanding of tumor characteristics in the context of disease progression. OBJECTIVE: To perform the first multigenome investigation of PCa through analysis of both autosomal and mitochondrial DNA, and to integrate exome sequencing data, and RNA sequencing and copy-number alteration (CNA) data to investigate how various different tumor characteristics, commonly analyzed separately, are interconnected. DESIGN, SETTING, AND PARTICIPANTS: Exome sequencing was applied to 64 tumor samples from 55 PCa patients with varying stage and grade. Integrated analysis was performed on a core set of 50 tumors from which exome sequencing, CNA, and RNA sequencing data were available. OUTCOME MEASUREMENTS AND STATISTICAL ANALYSIS: Genes, mutated at a significantly higher rate relative to a genomic background, were identified. In addition, mitochondrial and autosomal mutation rates were correlated to CNAs and proliferation, assessed as a cell cycle gene expression signature. RESULTS AND LIMITATIONS: Genes not previously reported to be significantly mutated in PCa, such as cell division cycle 27 homolog (Saccharomyces cerevisiae) (CDC27), myeloid/lymphoid or mixed-lineage leukemia 3 (MLL3), lysine (K)-specific demethylase 6A (KDM6A), and kinesin family member 5A (KIF5A) were identified. The mutation rate in the mitochondrial genome was 55 times higher than that of the autosomes. Multilevel analysis demonstrated a tight correlation between high reactive-oxygen exposure, chromosomal damage, high proliferation, and in parallel, a transition from multiclonal indolent primary PCa to monoclonal aggressive disease. As we only performed targeted sequence analysis; copy-number neutral rearrangements recently described for PCa were not accounted for. CONCLUSIONS: The mitochondrial genome displays an elevated mutation rate compared to the autosomal chromosomes. By integrated analysis, we demonstrated that different tumor characteristics are interconnected, providing an increased understanding of PCa etiology.
Authors: Christopher E Barbieri; Chris H Bangma; Anders Bjartell; James W F Catto; Zoran Culig; Henrik Grönberg; Jun Luo; Tapio Visakorpi; Mark A Rubin Journal: Eur Urol Date: 2013-05-18 Impact factor: 20.096
Authors: Paul C Boutros; Michael Fraser; Nicholas J Harding; Richard de Borja; Dominique Trudel; Emilie Lalonde; Alice Meng; Pablo H Hennings-Yeomans; Andrew McPherson; Veronica Y Sabelnykova; Amin Zia; Natalie S Fox; Julie Livingstone; Yu-Jia Shiah; Jianxin Wang; Timothy A Beck; Cherry L Have; Taryne Chong; Michelle Sam; Jeremy Johns; Lee Timms; Nicholas Buchner; Ada Wong; John D Watson; Trent T Simmons; Christine P'ng; Gaetano Zafarana; Francis Nguyen; Xuemei Luo; Kenneth C Chu; Stephenie D Prokopec; Jenna Sykes; Alan Dal Pra; Alejandro Berlin; Andrew Brown; Michelle A Chan-Seng-Yue; Fouad Yousif; Robert E Denroche; Lauren C Chong; Gregory M Chen; Esther Jung; Clement Fung; Maud H W Starmans; Hanbo Chen; Shaylan K Govind; James Hawley; Alister D'Costa; Melania Pintilie; Daryl Waggott; Faraz Hach; Philippe Lambin; Lakshmi B Muthuswamy; Colin Cooper; Rosalind Eeles; David Neal; Bernard Tetu; Cenk Sahinalp; Lincoln D Stein; Neil Fleshner; Sohrab P Shah; Colin C Collins; Thomas J Hudson; John D McPherson; Theodorus van der Kwast; Robert G Bristow Journal: Nat Genet Date: 2015-05-25 Impact factor: 38.330
Authors: Adam G Sowalsky; Zheng Xia; Liguo Wang; Hao Zhao; Shaoyong Chen; Glenn J Bubley; Steven P Balk; Wei Li Journal: Mol Cancer Res Date: 2014-09-04 Impact factor: 5.852
Authors: M J Alvarez-Cubero; L J Martinez-Gonzalez; I Robles-Fernandez; J Martinez-Herrera; G Garcia-Rodriguez; M Pascual-Geler; J M Cozar; J A Lorente Journal: Mol Diagn Ther Date: 2017-04 Impact factor: 4.074