62 / 2026-04-03 12:11:24
AI4Loop Reveals Increased Chromatin Interactions in Cancers that Constitute Therapeutic Vulnerabilities Across 12,000 Samples
chromatin interactions,Artificial Intelligence,computational biology
Abstract Pending
Fuying Dao / Nanyang Technological University
Melissa Fullwood / Nanyang Technological University
Three-dimensional chromatin interactions shape gene regulation, but their large-scale analysis remains limited by the cost and complexity of experimental assays. Here we present AI4Loop, a deep learning framework that infers genome-wide gene-centered chromatin interaction networks directly from RNA-seq data. Across multiple cell types, AI4Loop recovered interaction patterns consistent with clinical samples and orthogonal chromatin conformation datasets. Applied to 12,347 transcriptomes from 32 cancer types, AI4Loop revealed pervasive increases in gene-centered chromatin interactions in tumors, particularly at oncogene-associated loci. These inferred interaction networks outperformed gene expression alone in cancer classification. Integration with more than 50,000 drug-treated transcriptomes identified compounds predicted to reverse cancer-associated interaction gains. Hi-C experiments confirmed that the oxazolidinone antibiotics eperezolid and radezolid reduce breast cancer-gain chromatin interactions. Together, these results identify increased gene-centered chromatin interactions as a pan-cancer feature and provide a scalable strategy for linking 3D genome dysregulation to therapeutic vulnerabilities.

 
Important Date
  • Conference Date

    Apr 16

    2026

    to

    Apr 19

    2026

  • Apr 06 2026

    Draft paper submission deadline

Sponsored By
西北农林科技大学
西安交通大学
浙江大学
华中农业大学
中国遗传学会三维基因组学专委会
Organized By
西北农林科技大学
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