Multi-norm constrained optimization methods for calling copy number variants in single cell sequencing data

Changsheng Zhang, Hongmin Cai, Jingying Huang, Bo Xu
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引用次数: 2

Abstract

The revolutionary invention of single-cell sequencing technology carves out a new way to delineate intra tumor heterogeneity and the evolution of single cells at the molecular level. Since single-cell sequencing requires a special genome amplification step to accumulate enough samples, a large number of bias were introduced, making the calling of copy number variants rather challenging. Accurately modeling this process and effectively detecting copy number variations (CNVs) are the major roadblock for single-cell sequencing data analysis. Recent advances manifested that the underlying copy numbers are corrupted by noise, which could be approximated by negative binomial distribution. In this paper, we formulated a general mathematical model for copy number reconstruction from read depth signal, and presented its two specific variants, namely Poisson-CNV and NB-CNV to catering for various reads distribution. Efficient numerical solution based on the classical alternating direction minimization method was designed to solve the proposed models. Extensive experiments on both synthetic datasets and empirical single-cell sequencing datasets were conducted to compare the performance of the two models. The results show that the proposed model of NB-CNV achieved superior performance in calling the CNV for single-cell sequencing data.
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单细胞测序数据中拷贝数变量调用的多规范约束优化方法
单细胞测序技术的革命性发明为在分子水平上描述肿瘤内异质性和单细胞进化开辟了新的途径。由于单细胞测序需要一个特殊的基因组扩增步骤来积累足够的样本,因此引入了大量的偏倚,使得拷贝数变异的调用相当具有挑战性。准确地模拟这一过程并有效地检测拷贝数变异(CNVs)是单细胞测序数据分析的主要障碍。最近的研究表明,潜在的拷贝数受到噪声的破坏,噪声可以近似为负二项分布。本文建立了从读取深度信号重构拷贝数的通用数学模型,并针对不同的读取分布,提出了该模型的两种具体变体泊松- cnv和NB-CNV。基于经典的交替方向最小化方法,设计了求解该模型的高效数值解。在合成数据集和经验单细胞测序数据集上进行了大量实验,比较了两种模型的性能。结果表明,所提出的NB-CNV模型在调用单细胞测序数据的CNV方面取得了优异的性能。
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