A scalable python-based framework for gene regulatory network inference using tree-based ensemble regressors.
-
Updated
Apr 5, 2024 - Jupyter Notebook
A scalable python-based framework for gene regulatory network inference using tree-based ensemble regressors.
Code for the paper "Integrating regulatory DNA sequence and gene expression to predict genome-wide chromatin accessibility across cellular contexts"
Detecting Regulatory Elements using GRO-seq and PRO-seq
Single-cell RNA-seq data-based inference of multilayer inter- and intra-cellular signaling networks
pyJASPAR: A Pythonic interface to JASPAR transcription factor motifs
Fast Inference of Networks from Directed Regulations
Co-accessibility network from single-cell ATAC-seq data. Python code, based on Cicero package (R).
An R package for multi-dimensional pathway enrichment analysis
Code and data used to create the JASPAR UCSC Genome Browser tracks data hub
A “data light” TF-network mapping algorithm using only gene expression and genome sequence data.
Code and data used by the JASPAR profile inference tool
Crosstalk between codon optimality and 3' UTR cis-elements dictates mRNA stability
Analysis of regulatory impacts of autism-associated SNPs on biological pathways in the fetal and adult cortex.
A powerful abstraction of gene databases
Depicting pseudotime-lagged causality for accurate gene-regulatory inference
target: An R Package to Predict Combined Function of Transcription Factors
CREST-seq peak calling.
Meta-analysis of DNA methylation in ART
Scanning sample-specific miRNA regulation from bulk and single-cell RNA-sequencing data
Add a description, image, and links to the gene-regulation topic page so that developers can more easily learn about it.
To associate your repository with the gene-regulation topic, visit your repo's landing page and select "manage topics."