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首页> 外文期刊>Journal of computational biology: A journal of computational molecular cell biology >Bayesian Estimation of Three-Dimensional Chromosomal Structure from Single-Cell Hi-C Data
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Bayesian Estimation of Three-Dimensional Chromosomal Structure from Single-Cell Hi-C Data

机译:单细胞高C数据的三维染色体结构的贝叶斯估计

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摘要

The problem of three-dimensional (3D) chromosome structure inference from Hi-C data sets is important and challenging. While bulk Hi-C data sets contain contact information derived from millions of cells and can capture major structural features shared by the majority of cells in the sample, they do not provide information about local variability between cells. Single-cell Hi-C can overcome this problem, but contact matrices are generally very sparse, making structural inference more problematic. We have developed a Bayesian multiscale approach, named Structural Inference via Multiscale Bayesian Approach, to infer 3D structures of chromosomes from single-cell Hi-C while including the bulk Hi-C data and some regularization terms as a prior. We study the landscape of solutions for each single-cell Hi-C data set as a function of prior strength and demonstrate clustering of solutions using data from the same cell.
机译:HI-C数据集的三维(3D)染色体结构推断的问题是重要的和具有挑战性的。 虽然批量Hi-C数据集包含源自数百万个细胞的联系信息,并且可以捕获样品中大多数细胞共享的主要结构特征,它们不提供关于细胞之间的局部变异性的信息。 单细胞Hi-C可以克服这个问题,但是接触矩阵通常非常稀疏,使结构推理更有问题。 我们开发了一种贝叶斯多尺度方法,通过MultiScale Bayesian方法命名为结构推断,从单个单元HI-C中推断3D染色体的结构,同时包括批量Hi-C数据和一些正则化术语。 我们研究了每个单个小区HI-C数据的解决方案景观,作为现有强度的函数,并使用来自同一单元的数据演示解决方案的聚类。

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