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Graph embedding and unsupervised learning predict genomic sub-compartments from HiC chromatin interaction data

Haitham Ashoor, Xiaowen Chen, Wojciech Rosikiewicz, Jiahui Wang, Albert W. Cheng, Ping Wang, Yijun Ruan, Sheng Li

2020Nature Communications68 citationsDOIOpen Access PDF

Abstract

Chromatin interaction studies can reveal how the genome is organized into spatially confined sub-compartments in the nucleus. However, accurately identifying sub-compartments from chromatin interaction data remains a challenge in computational biology. Here, we present Sub-Compartment Identifier (SCI), an algorithm that uses graph embedding followed by unsupervised learning to predict sub-compartments using Hi-C chromatin interaction data. We find that the network topological centrality and clustering performance of SCI sub-compartment predictions are superior to those of hidden Markov model (HMM) sub-compartment predictions. Moreover, using orthogonal Chromatin Interaction Analysis by in-situ Paired-End Tag Sequencing (ChIA-PET) data, we confirmed that SCI sub-compartment prediction outperforms HMM. We show that SCI-predicted sub-compartments have distinct epigenetic marks, transcriptional activities, and transcription factor enrichment. Moreover, we present a deep neural network to predict sub-compartments using epigenome, replication timing, and sequence data. Our neural network predicts more accurate sub-compartment predictions when SCI-determined sub-compartments are used as labels for training.

Topics & Concepts

ChromatinComputer scienceEpigenomeCompartment (ship)Computational biologyEmbeddingArtificial intelligenceBiologyMachine learningPattern recognition (psychology)GeneticsGeneDNA methylationOceanographyGene expressionGeologyGenomics and Chromatin DynamicsEpigenetics and DNA MethylationRNA Research and Splicing
Graph embedding and unsupervised learning predict genomic sub-compartments from HiC chromatin interaction data | Litcius