502 results for “topic:gene-expression”
Community-curated list of software packages and data resources for single-cell, including RNA-seq, ATAC-seq, etc.
🐟 🍣 🍱 Highly-accurate & wicked fast transcript-level quantification from RNA-seq reads using selective alignment
NicheNet: predict active ligand-target links between interacting cells
One-step to Cluster and Visualize Gene Expression Matrix
Spatial alignment of single cell transcriptomic data.
R/shiny interface for interactive visualization of data in SummarizedExperiment objects
CodonTransformer (1M+ Downloads); The tool for codon optimization, optimizing DNA for protein expression
A framework for state-of-the-art pre-trained bio foundation models on genomics and transcriptomics modalities.
Training and evaluating a variational autoencoder for pan-cancer gene expression data
R package to access DoRothEA's regulons
Deep learning for gene expression inference
😎 A curated list of software and resources for exploring and visualizing (browsing) expression data 😎
Python3 binding to mRMR Feature Selection algorithm (currently not maintained)
Building classifiers using cancer transcriptomes across 33 different cancer-types
Power analysis is essential to optimize the design of RNA-seq experiments and to assess and compare the power to detect differentially expressed genes. PowsimR is a flexible tool to simulate and evaluate differential expression from bulk and especially single-cell RNA-seq data making it suitable for a priori and posterior power analyses.
characterizing spatial gene expression heterogeneity in spatially resolved single-cell transcriptomics data with nonuniform cellular densities
BASiCS: Bayesian Analysis of Single-Cell Sequencing Data. This is an unstable experimental version. Please see http://bioconductor.org/packages/BASiCS/ for the official release version
integrated RNA-seq Analysis Pipeline
Repository for the R package EPIC, to Estimate the Proportion of Immune and Cancer cells from bulk gene expression data.
Enjoy your transcriptomic data and analysis responsibly - like sipping a cocktail
Fast visualization tool for large-scale and high dimensional single-cell data
BioBombe: Sequentially compressed gene expression features enhances biological signatures
DeepSpot: Deep learning model for predicting spatial transcriptomics from H&E histopathology images. Supports spot-level (Visium) and single-cell (Xenium) resolution.
Convert Counts to Fragments per Kilobase of Transcript per Million (FPKM)
Data and code related to the paper "ADAGE-Based Integration of Publicly Available Pseudomonas aeruginosa..." Jie Tan, et al · mSystems · 2016
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Single cell Nanopore sequencing data for Genotype and Phenotype
GREIN : GEO RNA-seq Experiments Interactive Navigator
Evolutionary Transcriptomics with R
Haystack: Epigenetic Variability and Transcription Factor Motifs Analysis Pipeline