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NMF based approach for finding recurrent aberrations in DNA copy number data

机译:基于NMF的方法来查找DNA拷贝数数据中的重复像差

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摘要

The current advances in array-based techniques allow the measurement of copy number at very large number of locations in the genome. The copy number data from a single sample is segmented to identify gains and losses which are frequently found in cancer. The availability of large sample-size datasets encourages researchers to identify recurrent aberrations. recurrent aberrations happen within the same chromosomal region across multiple cancer samples. In this paper we propose a new algorithm based on non-negative matrix factorization (NMF) and circular binary segmentation (CBS). The proposed algorithm uses sparse NMF and CBS to detect the recurrent regions candidates. Then we adopt cyclic shift which is used to permute the data to distinguish between recurrent and sporadic copy number aberrations. We applied the proposed algorithm to two real datasets of glioblastoma and ovarian cancer. The results show the ability of the proposed algorithm to identify recurrent regions and to provide useful information to study genesis of cancer.
机译:基于阵列的技术的最新进展允许在基因组中大量位置处测量拷贝数。对单个样本的拷贝数数据进行分段,以识别在癌症中经常发现的收益和损失。大型样本数据集的可用性鼓励研究人员识别重复性像差。在多个癌症样本的同一染色体区域内会发生反复畸变。在本文中,我们提出了一种基于非负矩阵分解(NMF)和圆二进制分割(CBS)的新算法。所提出的算法使用稀疏NMF和CBS来检测递归区域候选者。然后,我们采用循环移位,该循环移位用于对数据进行置换,以区分重复性和偶发性拷贝数像差。我们将提出的算法应用于胶质母细胞瘤和卵巢癌的两个真实数据集。结果表明,所提出的算法能够识别复发区域并为研究癌症的发生提供有用的信息。

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