MarsGT: Multi-omics analysis for rare population inference using single-cell graph transformer.
Xiaoying WangMaoteng DuanJingxian LiAnjun MaGang XinDong XuZihai LiBingqiang LiuQin MaPublished in: Nature communications (2024)
Rare cell populations are key in neoplastic progression and therapeutic response, offering potential intervention targets. However, their computational identification and analysis often lag behind major cell types. To fill this gap, we introduce MarsGT: Multi-omics Analysis for Rare population inference using a Single-cell Graph Transformer. It identifies rare cell populations using a probability-based heterogeneous graph transformer on single-cell multi-omics data. MarsGT outperforms existing tools in identifying rare cells across 550 simulated and four real human datasets. In mouse retina data, it reveals unique subpopulations of rare bipolar cells and a Müller glia cell subpopulation. In human lymph node data, MarsGT detects an intermediate B cell population potentially acting as lymphoma precursors. In human melanoma data, it identifies a rare MAIT-like population impacted by a high IFN-I response and reveals the mechanism of immunotherapy. Hence, MarsGT offers biological insights and suggests potential strategies for early detection and therapeutic intervention of disease.
Keyphrases
- single cell
- rna seq
- high throughput
- endothelial cells
- lymph node
- electronic health record
- randomized controlled trial
- induced apoptosis
- big data
- stem cells
- genome wide
- cell cycle arrest
- convolutional neural network
- induced pluripotent stem cells
- squamous cell carcinoma
- machine learning
- cell therapy
- data analysis
- signaling pathway
- bone marrow
- dna methylation
- diffuse large b cell lymphoma
- neural network
- artificial intelligence
- mesenchymal stem cells
- rectal cancer
- bipolar disorder
- diabetic retinopathy