Characterize gene dynamics over trajectories using GLMs, GEEs, & GLMMs.
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Updated
Sep 20, 2024 - R
Characterize gene dynamics over trajectories using GLMs, GEEs, & GLMMs.
Finding surprising needles (=genes) in haystacks (=single cell transcriptome data).
my_RNA_seq_pipelines
Toolkit for highly memory efficient analysis of single-cell RNA-Seq, scATAC-Seq and CITE-Seq data. Analyze atlas scale datasets with millions of cells on laptop.
Implementation of MaSigPro for scRNA-Seq Data
This script utilizes Monocle3 for inferring pseudotime and employs gradient boosting machine learning (xgboost) to identify genes predictive of pseudotime. Subsequently, it fits a regression model using these newly identified genes.
Single (i) Cell R package (iCellR) is an interactive R package to work with high-throughput single cell sequencing technologies (i.e scRNA-seq, scVDJ-seq, scATAC-seq, CITE-Seq and Spatial Transcriptomics (ST)).
a scalable python suite for tree inference and advanced pseudotime analysis from scRNAseq data.
Bioinfo scripts for the analyses described in EXPERIMENTAL PROCEDURES section of "Structured wound angiogenesis instructs mesenchymal barrier compartments in the regenerating nerve" manuscript
Pseudotime analysis for time-series single-cell sequencing and imaging data
Scripts for analysis of transcriptomic data of the developing cornea
A composite regression neural network for latent timing prediction of single-cell RNA-seq data
A deep learning architecture for robust inference and accurate prediction of cellular dynamics
TENET refined
MiCV is a python dash-based web-application that enables researchers to upload raw scRNA-seq data and perform filtering, analysis, and manual annotation.
Repository for benchmarking study of scRNA-Seq datasets for clustering and trajectory inference
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