SEE: a method for predicting the dynamics of chromatin conformation based on single-cell gene expression
ID:86
Submission ID:98 View Protection:ATTENDEE
Updated Time:2024-10-27 17:16:03
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Invited speech
Abstract
The dynamics of chromatin conformation involve continuous and reversible changes within the nucleus of a cell, which participate in regulating processes such as gene expression, DNA replication, and damage repair. Here, we introduce SEE, an artificial intelligence (AI) method that utilizes autoencoder and transformer techniques to analyze chromatin dynamics using single-cell RNA sequencing data and a limited number of single-cell Hi-C maps. We employ SEE to investigate chromatin dynamics across different scales, enabling the detection of (i) rearrangements in topologically associating domains (TADs), and (ii) oscillations in chromatin interactions at gene loci. Additionally, SEE facilitates the interpretation of disease-associated single-nucleotide polymorphisms (SNPs) by leveraging the dynamic features of chromatin conformation. Overall, SEE offers a single-cell, high-resolution approach to analyzing chromatin dynamics in both developmental and disease contexts.
Keywords
chromatin dynamics, single cell Hi-C, single cell RNA-seq
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