footprint-tools: de novo genomic footprint detection
May 17, 2024 ยท View on GitHub
footprint-tools is a python module for de novo detection of genomic footprints from DNase I data by simulating expected cleavage rates using a 6-mer DNase I cleavage preference model combined with density smoothing. Statistical significance of per-nucleotide cleavages are computed from a series of emperically fit negative binomial distribution.
Caution
There is a massive bug in the posterior footprint caller in versions 1.2.0 to 1.3.7. Please pull the lastest code from the master branch.
Requirements
footprint-tools requires Python 3.6+
We also recommend these non-Python analysis tools:
Installation
To install the latest release, type:
pip install footprint-tools
If you run into errors, try installing footprint-tools in a conda environment (using the YAML file provided):
# Clone repository
git clone https://github.com/jvierstra/footprint-tools.git
# Create conda enviroment from config YAML file
cd footprint-tools
conda env create -f conda-env.yml
# Activate conda environment
conda activate footprint-tools
# Run commands
ftd --version
ftd {commands}
Documentation & usage
User manual, API and examples can be found here
Citation
Vierstra2020 Vierstra, J., Lazar, J., Sandstrom, R. et al. Global reference mapping of human transcription factor footprints. Nature 583, 729โ736 (2020)