Dissection and integration of bursty transcriptional dynamics for complex systems.
Cheng Frank GaoSuriyanarayanan VaikuntanathanSamantha J RiesenfeldPublished in: Proceedings of the National Academy of Sciences of the United States of America (2024)
RNA velocity estimation is a potentially powerful tool to reveal the directionality of transcriptional changes in single-cell RNA-sequencing data, but it lacks accuracy, absent advanced metabolic labeling techniques. We developed an approach, TopicVelo , that disentangles simultaneous, yet distinct, dynamics by using a probabilistic topic model, a highly interpretable form of latent space factorization, to infer cells and genes associated with individual processes, thereby capturing cellular pluripotency or multifaceted functionality. Focusing on process-associated cells and genes enables accurate estimation of process-specific velocities via a master equation for a transcriptional burst model accounting for intrinsic stochasticity. The method obtains a global transition matrix by leveraging cell topic weights to integrate process-specific signals. In challenging systems, this method accurately recovers complex transitions and terminal states, while our use of first-passage time analysis provides insights into transient transitions. These results expand the limits of RNA velocity, empowering future studies of cell fate and functional responses.
Keyphrases
- single cell
- induced apoptosis
- cell fate
- rna seq
- gene expression
- cell cycle arrest
- transcription factor
- genome wide
- high throughput
- blood flow
- heat shock
- oxidative stress
- endoplasmic reticulum stress
- cell death
- signaling pathway
- high frequency
- high resolution
- machine learning
- stem cells
- big data
- dna methylation
- brain injury
- artificial intelligence
- cerebral ischemia
- deep learning
- genome wide identification