RepliChrom: Interpretable machine learning predicts cancer‐associated enhancer‐promoter interactions using DNA replication timing
Fanny Dao, Benjamin Lebeau, Crystal Chia Yin Ling, Mi Yang, Xueqin Xie, Melissa J. Fullwood, Hao Lin, Hao Lv
Abstract
RepliChrom is an interpretable machine learning model that predicts enhancer-promoter interactions using DNA replication timing across multiple cell types. By integrating replication timing with chromatin interaction data from multiple experimental platforms, it accurately distinguishes true interactions and reveals promoter-region signals as key regulatory drivers. Importantly, the RepliChrom uncovers cancer-specific chromatin patterns in leukemia, offering mechanistic insights into how replication timing shapes long-range gene regulation in both normal and diseased genomes.
Topics & Concepts
EnhancerReplication (statistics)Computational biologyDNA replicationBiologyDNAGeneticsComputer scienceGeneTranscription factorVirologyGenomics and Chromatin DynamicsEpigenetics and DNA MethylationRNA modifications and cancer