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首页> 外文期刊>BMC Bioinformatics >nbCNV: a multi-constrained optimization model for discovering copy number variants in single-cell sequencing data
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nbCNV: a multi-constrained optimization model for discovering copy number variants in single-cell sequencing data

机译:nbCNV:用于在单细胞测序数据中发现拷贝数变异的多约束优化模型

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摘要

Background Variations in DNA copy number have an important contribution to the development of several diseases, including autism, schizophrenia and cancer. Single-cell sequencing technology allows the dissection of genomic heterogeneity at the single-cell level, thereby providing important evolutionary information about cancer cells. In contrast to traditional bulk sequencing, single-cell sequencing requires the amplification of the whole genome of a single cell to accumulate enough samples for sequencing. However, the amplification process inevitably introduces amplification bias, resulting in an over-dispersing portion of the sequencing data. Recent study has manifested that the over-dispersed portion of the single-cell sequencing data could be well modelled by negative binomial distributions. Results We developed a read-depth based method, nbCNV to detect the copy number variants (CNVs). The nbCNV method uses two constraints-sparsity and smoothness to fit the CNV patterns under the assumption that the read signals are negatively binomially distributed. The problem of CNV detection was formulated as a quadratic optimization problem, and was solved by an efficient numerical solution based on the classical alternating direction minimization method. Conclusions Extensive experiments to compare nbCNV with existing benchmark models were conducted on both simulated data and empirical single-cell sequencing data. The results of those experiments demonstrate that nbCNV achieves superior performance and high robustness for the detection of CNVs in single-cell sequencing data.
机译:背景技术DNA拷贝数的变化对包括自闭症,精神分裂症和癌症在内的几种疾病的发展有着重要的贡献。单细胞测序技术允许在单细胞水平上解剖基因组异质性,从而提供有关癌细胞的重要进化信息。与传统的批量测序相反,单细胞测序需要扩增单个细胞的整个基因组,以积累足够的样品进行测序。但是,扩增过程不可避免地会引入扩增偏差,导致测序数据过度分散。最近的研究表明,单细胞测序数据的过度分散部分可以通过负二项式分布很好地建模。结果我们开发了一种基于读取深度的方法nbCNV来检测拷贝数变异(CNV)。在假设读取信号呈负二项式分布的假设下,nbCNV方法使用两个约束(稀疏度和平滑度)来拟合CNV模式。 CNV检测问题被公式化为二次优化问题,并通过基于经典交替方向最小化方法的有效数值解决方案得以解决。结论对模拟数据和经验性单细胞测序数据均进行了广泛的实验,以将nbCNV与现有基准模型进行比较。这些实验的结果表明,nbCNV在单细胞测序数据中检测CNV方面具有出色的性能和很高的鲁棒性。

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