ChIPr: accurate prediction of cohesin-mediated 3D genome organization from 2D chromatin features.
Ahmed AbbasKhyati ChandratreYunpeng GaoJiapei YuanMichael Q ZhangRam S ManiPublished in: Genome biology (2024)
The three-dimensional genome organization influences diverse nuclear processes. Here we present Chromatin Interaction Predictor (ChIPr), a suite of regression models based on deep neural networks, random forest, and gradient boosting to predict cohesin-mediated chromatin interaction strength between any two loci in the genome. The predictions of ChIPr correlate well with ChIA-PET data in four cell lines. The standard ChIPr model requires three experimental inputs: ChIP-Seq signals for RAD21, H3K27ac, and H3K27me3 but works well with just RAD21 signal. Integrative analysis reveals novel insights into the role of CTCF motif, its orientation, and CTCF binding on cohesin-mediated chromatin interactions.
Keyphrases
- genome wide
- dna damage
- dna methylation
- neural network
- gene expression
- transcription factor
- dna repair
- oxidative stress
- computed tomography
- electronic health record
- positron emission tomography
- rna seq
- machine learning
- high throughput
- pet ct
- binding protein
- mass spectrometry
- pet imaging
- data analysis
- network analysis
- genome wide association study