scVelo - RNA velocity generalized through dynamical modeling
scVelo is a scalable toolkit for RNA velocity analysis in single cells; RNA velocity
enables the recovery of directed dynamic information by leveraging splicing kinetics
1. scVelo collects different
methods for inferring RNA velocity using an expectation-maximization framework
2, deep generative modeling
3,
or metabolically labeled transcripts4.
scVelo’s key applications
estimate RNA velocity to study cellular dynamics.
identify putative driver genes and regimes of regulatory changes.
infer a latent time to reconstruct the temporal sequence of transcriptomic events.
estimate reaction rates of transcription, splicing and degradation.
use statistical tests, e.g., to detect different kinetics regimes.
Citing scVelo
If you include or rely on scVelo when publishing research, please adhere to the
following citation guide:
EM and steady-state model
If you use the EM (dynamical) or steady-state model, cite
@article{Bergen2020,
title = {Generalizing RNA velocity to transient cell states through dynamical modeling},
volume = {38},
ISSN = {1546-1696},
url = {http://dx.doi.org/10.1038/s41587-020-0591-3},
DOI = {10.1038/s41587-020-0591-3},
number = {12},
journal = {Nature Biotechnology},
publisher = {Springer Science and Business Media LLC},
author = {Bergen, Volker and Lange, Marius and Peidli, Stefan and Wolf, F. Alexander and Theis, Fabian J.},
year = {2020},
month = aug,
pages = {1408–1414}
}
RNA velocity inference through metabolic labeling information
If you use the implemented method for estimating RNA velocity from metabolic labeling
information, cite
@article{Weiler2024,
author = {Weiler, Philipp and Lange, Marius and Klein, Michal and Pe'er, Dana and Theis, Fabian},
publisher = {Springer Science and Business Media LLC},
url = {http://dx.doi.org/10.1038/s41592-024-02303-9},
doi = {10.1038/s41592-024-02303-9},
issn = {1548-7105},
journal = {Nature Methods},
month = jun,
number = {7},
pages = {1196--1205},
title = {CellRank 2: unified fate mapping in multiview single-cell data},
volume = {21},
year = {2024},
}
Support
Found a bug or would like to see a feature implemented? Feel free to submit an
issue.
Have a question or would like to start a new discussion? Head over to
GitHub discussions.
Your help to improve scVelo is highly appreciated.
For further information visit scvelo.org.
scVelo - RNA velocity generalized through dynamical modeling
scVelo is a scalable toolkit for RNA velocity analysis in single cells; RNA velocity enables the recovery of directed dynamic information by leveraging splicing kinetics 1. scVelo collects different methods for inferring RNA velocity using an expectation-maximization framework 2, deep generative modeling 3, or metabolically labeled transcripts4.
scVelo’s key applications
Citing scVelo
If you include or rely on scVelo when publishing research, please adhere to the following citation guide:
EM and steady-state model
If you use the EM (dynamical) or steady-state model, cite
RNA velocity inference through metabolic labeling information
If you use the implemented method for estimating RNA velocity from metabolic labeling information, cite
Support
Found a bug or would like to see a feature implemented? Feel free to submit an issue. Have a question or would like to start a new discussion? Head over to GitHub discussions. Your help to improve scVelo is highly appreciated. For further information visit scvelo.org.