PyWGCNA is a Python package designed to do Weighted Gene Correlation Network analysis (WGCNA)
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Updated
Nov 5, 2024 - Jupyter Notebook
PyWGCNA is a Python package designed to do Weighted Gene Correlation Network analysis (WGCNA)
Hierarchical, iterative clustering for analysis of transcriptomics data in R
A step-by-step tutorial for Weighted correlation network analysis (WGCNA)
An R package for weighted region comethylation network analysis
This repository contains a Script for WGCNA based on the Tutorial of WGCNA page
GWAS of Postmortem Brain Samples Sheds Light on the Development of Schizophrenia and Bipolar Disorder
Code for Walker, Saunders, Rai et al., (2021).
Online app for WGCNA Analysis
Algorithms for NCBI, SRA, EBI datasets recommendation and how to get around with comparing your own Datasets. Recommender systems | Bio-NLP
Construction of Gene Expression Network across 3 brain regions in the presence of Ethanol using WGCNA in R
Weighted Gene Co-expression Network Analysis;
Differential Expression Analysis of protein, Gene set enrichment analysis, Multi-omic factor analysis, Pathway analysis, WGCNA
Wrapper R scripts for performing a weighted-gene co-expression network analysis (WGCNA)
Gene expression and network analysis for multiple RNA-seq datasets associated with heat-stress in abalone
Repository for all R scripts and results associated with my research dissertation for the MSc Bioinformatics and Computational Biology degree in University College Cork, 2022.
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