Spatial transition tensor of single cells.
Peijie ZhouFederico BocciTiejun LiQing NiePublished in: Nature methods (2024)
Spatial transcriptomics and messenger RNA splicing encode extensive spatiotemporal information for cell states and transitions. The current lineage-inference methods either lack spatial dynamics for state transition or cannot capture different dynamics associated with multiple cell states and transition paths. Here we present spatial transition tensor (STT), a method that uses messenger RNA splicing and spatial transcriptomes through a multiscale dynamical model to characterize multistability in space. By learning a four-dimensional transition tensor and spatial-constrained random walk, STT reconstructs cell-state-specific dynamics and spatial state transitions via both short-time local tensor streamlines between cells and long-time transition paths among attractors. Benchmarking and applications of STT on several transcriptome datasets via multiple technologies on epithelial-mesenchymal transitions, blood development, spatially resolved mouse brain and chicken heart development, indicate STT's capability in recovering cell-state-specific dynamics and their associated genes not seen using existing methods. Overall, STT provides a consistent multiscale description of single-cell transcriptome data across multiple spatiotemporal scales.
Keyphrases
- single cell
- rna seq
- high throughput
- induced apoptosis
- heart failure
- gene expression
- stem cells
- healthcare
- cell cycle arrest
- genome wide
- social media
- dna methylation
- machine learning
- cell death
- molecular dynamics
- cell proliferation
- mesenchymal stem cells
- deep learning
- endoplasmic reticulum stress
- density functional theory
- neural network
- atrial fibrillation