ミクログリアにおけるストレスによるエピゲノム変化の深層学習モデリングと転写ネットワークの予測

Stress due to adverse and demanding conditions causes emotional disturbances and increases the risk of mental illness such as depression. Chronic stress, including repeated social defeat stress, activates prefrontal microglia to induce depressive-like behavior in mice. With ChIP-seq analyses, we fou...

Full description

Saved in:
Bibliographic Details
Published in日本薬理学会年会要旨集 p. 1-P-026
Main Authors 古屋敷, 智之, 谷口, 将之, 福瀬, 弘朗
Format Journal Article
LanguageJapanese
Published 公益社団法人 日本薬理学会 2022
Subjects
Online AccessGet full text
ISSN2435-4953
DOI10.1254/jpssuppl.95.0_1-P-026

Cover

More Information
Summary:Stress due to adverse and demanding conditions causes emotional disturbances and increases the risk of mental illness such as depression. Chronic stress, including repeated social defeat stress, activates prefrontal microglia to induce depressive-like behavior in mice. With ChIP-seq analyses, we found that long-term epigenomic changes accompany this microglial activation. However, cis-regulatory interactions among enhancers and promoters for the epigenomic changes remain unsolved. Here we trained a deep learning-based model with our microglial ChIP-seq data segmented into approximately 130k base-pair segments with high accuracy (r = 0.654). In silico mutagenesis in this model revealed genomic regions responsible for stress-induced epigenomic changes at single-nucleotide resolution. Notably, the predicted genomic regions matched nucleosome-free regions predicted from microglial ATAC-seq data that had not been used to train the model. We identified transcription factor binding motifs enriched in the predicted genomic regions and pairs among them in proximity. Our deep learning-based epigenomic analyses offer a novel method to predict chromatin interactions at single-nucleotide resolution even with limited sample sizes and pave the way for elucidating transcriptional networks underlying health and diseases, including stress and depression.
Bibliography:95_1-P-026
ISSN:2435-4953
DOI:10.1254/jpssuppl.95.0_1-P-026