Department of Cancer Genetics, Institute for Cancer Research, Oslo University Hospital, Ullernchausseen 70 N-0310, Oslo, Norway.
Centre for Bioinformatics, Department of Informatics, University of Oslo, Gaustadalléen 23 B N-0373, Oslo, Norway.
Commun Biol. 2020 Apr 2;3(1):153. doi: 10.1038/s42003-020-0884-6.
Somatic copy number alterations are a frequent sign of genome instability in cancer. A precise characterization of the genome architecture would reveal underlying instability mechanisms and provide an instrument for outcome prediction and treatment guidance. Here we show that the local spatial behavior of copy number profiles conveys important information about this architecture. Six filters were defined to characterize regional traits in copy number profiles, and the resulting Copy Aberration Regional Mapping Analysis (CARMA) algorithm was applied to tumors in four breast cancer cohorts (n = 2919). The derived motifs represent a layer of information that complements established molecular classifications of breast cancer. A score reflecting presence or absence of motifs provided a highly significant independent prognostic predictor. Results were consistent between cohorts. The nonsite-specific occurrence of the detected patterns suggests that CARMA captures underlying replication and repair defects and could have a future potential in treatment stratification.
体细胞拷贝数改变是癌症中基因组不稳定性的一个常见标志。对基因组结构的精确描述将揭示潜在的不稳定性机制,并为预后预测和治疗指导提供工具。在这里,我们表明拷贝数谱的局部空间行为传递了有关该结构的重要信息。定义了六个滤波器来描述拷贝数谱中的区域特征,所得的拷贝数异常区域映射分析 (CARMA) 算法应用于四个乳腺癌队列中的肿瘤 (n=2919)。衍生的模体代表了一层信息,补充了乳腺癌的现有分子分类。反映模体存在或不存在的分数提供了一个高度显著的独立预后预测因子。结果在队列之间是一致的。所检测到的模式的非特定位置发生表明,CARMA 捕获了潜在的复制和修复缺陷,并且在未来可能具有治疗分层的潜力。