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Discovering Recurrent Copy Number Aberrations in Complex Patterns via Non-Negative Sparse Singular Value Decomposition

机译:通过非负稀疏奇异值分解发现复杂模式中的经常性拷贝数像差

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Recurrent copy number aberrations (RCNAs) in multiple cancer samples are strongly associated with tumorigenesis, and RCNA discovery is helpful to cancer research and treatment. Despite the emergence of numerous RCNA discovering methods, most of them are unable to detect RCNAs in complex patterns that are influenced by complicating factors including aberration in partial samples, co-existing of gains and losses and normal-like tumor samples. Here, we propose a novel computational method, called non-negative sparse singular value decomposition (NN-SSVD), to address the RCNA discovering problem in complex patterns. In NN-SSVD, the measurement of RCNA is based on the aberration frequency in a part of samples rather than all samples, which can circumvent the complexity of different RCNA patterns. We evaluate NN-SSVD on synthetic dataset by comparison on detection scores and Receiver Operating Characteristics curves, and the results show that NN-SSVD outperforms existing methods in RCNA discovery and demonstrate more robustness to RCNA complicating factors. Applying our approach on a breast cancer dataset, we successfully identify a number of genomic regions that are strongly correlated with previous studies, which harbor a bunch of known breast cancer associated genes.
机译:多个癌症样本中的反复拷贝数异常(RCNA)与肿瘤发生密切相关,而RCNA的发现有助于癌症的研究和治疗。尽管出现了许多RCNA发现方法,但大多数方法仍无法以复杂模式检测RCNA,这些复杂模式受复杂因素影响,包括部分样本中的像差,得失和正常样本肿瘤样本的共存。在这里,我们提出了一种新的计算方法,称为非负稀疏奇异值分解(NN-SSVD),以解决复杂模式下的RCNA发现问题。在NN-SSVD中,RCNA的测量基于部分样本而不是所有样本的像差频率,这可以避免不同RCNA模式的复杂性。我们通过比较检测分数和接收器工作特性曲线来评估合成数据集上的NN-SSVD,结果表明NN-SSVD优于RCNA发现中的现有方法,并显示出对RCNA复杂因素的更强健性。将我们的方法应用于乳腺癌数据集,我们成功地鉴定了许多与以前的研究高度相关的基因组区域,其中包含了许多已知的乳腺癌相关基因。

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