Single-cell multi-ome regression models identify functional and disease-associated enhancers and enable chromatin potential analysis.
Sneha MitraRohan MalikWilfred WongAfsana RahmanAlexander J HarteminkYuri PritykinKushal K DeyChristina S LesliePublished in: Nature genetics (2024)
We present a gene-level regulatory model, single-cell ATAC + RNA linking (SCARlink), which predicts single-cell gene expression and links enhancers to target genes using multi-ome (scRNA-seq and scATAC-seq co-assay) sequencing data. The approach uses regularized Poisson regression on tile-level accessibility data to jointly model all regulatory effects at a gene locus, avoiding the limitations of pairwise gene-peak correlations and dependence on peak calling. SCARlink outperformed existing gene scoring methods for imputing gene expression from chromatin accessibility across high-coverage multi-ome datasets while giving comparable to improved performance on low-coverage datasets. Shapley value analysis on trained models identified cell-type-specific gene enhancers that are validated by promoter capture Hi-C and are 11× to 15× and 5× to 12× enriched in fine-mapped eQTLs and fine-mapped genome-wide association study (GWAS) variants, respectively. We further show that SCARlink-predicted and observed gene expression vectors provide a robust way to compute a chromatin potential vector field to enable developmental trajectory analysis.
Keyphrases
- gene expression
- genome wide
- single cell
- dna methylation
- rna seq
- copy number
- transcription factor
- genome wide identification
- genome wide association study
- high throughput
- air pollution
- dna damage
- healthcare
- big data
- electronic health record
- genome wide analysis
- oxidative stress
- machine learning
- artificial intelligence
- data analysis
- deep learning