Single-cell biological network inference using a heterogeneous graph transformer.
Anjun MaXiaoying WangJingxian LiCankun WangTong XiaoYuntao LiuHao ChengJuexin WangYang LiYuzhou ChangJinpu LiDuolin WangYuexu JiangLi SuGang XinShaopeng GuZihai LiBingqiang LiuDong XuQin MaPublished in: Nature communications (2023)
Single-cell multi-omics (scMulti-omics) allows the quantification of multiple modalities simultaneously to capture the intricacy of complex molecular mechanisms and cellular heterogeneity. Existing tools cannot effectively infer the active biological networks in diverse cell types and the response of these networks to external stimuli. Here we present DeepMAPS for biological network inference from scMulti-omics. It models scMulti-omics in a heterogeneous graph and learns relations among cells and genes within both local and global contexts in a robust manner using a multi-head graph transformer. Benchmarking results indicate DeepMAPS performs better than existing tools in cell clustering and biological network construction. It also showcases competitive capability in deriving cell-type-specific biological networks in lung tumor leukocyte CITE-seq data and matched diffuse small lymphocytic lymphoma scRNA-seq and scATAC-seq data. In addition, we deploy a DeepMAPS webserver equipped with multiple functionalities and visualizations to improve the usability and reproducibility of scMulti-omics data analysis.
Keyphrases
- single cell
- rna seq
- data analysis
- high throughput
- electronic health record
- induced apoptosis
- convolutional neural network
- big data
- stem cells
- cell death
- mesenchymal stem cells
- peripheral blood
- diffuse large b cell lymphoma
- gene expression
- deep learning
- dna methylation
- neural network
- cell cycle arrest
- oxidative stress
- endoplasmic reticulum stress
- network analysis
- artificial intelligence
- optic nerve
- health information