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Bayesian Estimation of Three-Dimensional Chromosomal Structure from Single-Cell Hi-C Data.


ABSTRACT: 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.

SUBMITTER: Rosenthal M 

PROVIDER: S-EPMC6856950 | biostudies-literature | 2019 Nov

REPOSITORIES: biostudies-literature

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Bayesian Estimation of Three-Dimensional Chromosomal Structure from Single-Cell Hi-C Data.

Rosenthal Michael M   Bryner Darshan D   Huffer Fred F   Evans Shane S   Srivastava Anuj A   Neretti Nicola N  

Journal of computational biology : a journal of computational molecular cell biology 20190618 11


<b>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 problema  ...[more]

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2025-03-09 | GSE277018 | GEO