Inferring pattern-driving intercellular flows from single-cell and spatial transcriptomics.
Axel A AlmetYuan-Chen TsaiMomoko WatanabeQing NiePublished in: Nature methods (2024)
From single-cell RNA-sequencing (scRNA-seq) and spatial transcriptomics (ST), one can extract high-dimensional gene expression patterns that can be described by intercellular communication networks or decoupled gene modules. These two descriptions of information flow are often assumed to occur independently. However, intercellular communication drives directed flows of information that are mediated by intracellular gene modules, in turn triggering outflows of other signals. Methodologies to describe such intercellular flows are lacking. We present FlowSig, a method that infers communication-driven intercellular flows from scRNA-seq or ST data using graphical causal modeling and conditional independence. We benchmark FlowSig using newly generated experimental cortical organoid data and synthetic data generated from mathematical modeling. We demonstrate FlowSig's utility by applying it to various studies, showing that FlowSig can capture stimulation-induced changes to paracrine signaling in pancreatic islets, demonstrate shifts in intercellular flows due to increasing COVID-19 severity and reconstruct morphogen-driven activator-inhibitor patterns in mouse embryogenesis.
Keyphrases
- single cell
- rna seq
- cell adhesion
- gene expression
- high throughput
- electronic health record
- genome wide
- big data
- coronavirus disease
- sars cov
- oxidative stress
- copy number
- healthcare
- diabetic rats
- genome wide identification
- health information
- immune response
- inflammatory response
- data analysis
- network analysis
- high glucose
- respiratory syndrome coronavirus
- anti inflammatory
- toll like receptor
- deep learning