An ensemble approach to accurately detect somatic mutations using SomaticSeq
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Updated
May 30, 2024 - Python
An ensemble approach to accurately detect somatic mutations using SomaticSeq
Personalized Genomics and Proteomics. Main diet: Ensembl, side dishes: SNPs
SigProfilerExtractor allows de novo extraction of mutational signatures from data generated in a matrix format. The tool identifies the number of operative mutational signatures, their activities in each sample, and the probability for each signature to cause a specific mutation type in a cancer sample. The tool makes use of SigProfilerMatrixGen…
Snakemake-based workflow for detecting structural variants in genomic data
SigProfilerMatrixGenerator creates mutational matrices for all types of somatic mutations. It allows downsizing the generated mutations only to parts for the genome (e.g., exome or a custom BED file). The tool seamlessly integrates with other SigProfiler tools.
A quickstart tool for AmpliconArchitect. Performs all preliminary steps (alignment, CNV calling, seed interval detection) required prior to running AmpliconArchitect. Previously called PrepareAA.
Python package to annotate and visualize gene fusions.
SigProfilerPlotting provides a standard tool for displaying all types of mutational signatures as well as all types of mutational patterns in cancer genomes. The tool seamlessly integrates with other SigProfiler tools.
Tools for producing pseudo-cgh of next-generation sequencing data
Prognostically Relevant Subtypes and Survival Prediction for Breast Cancer Based on Multimodal Genomics Data
Predictive models and analysis of cancer prognosis and drug response using primary tumor microbial abundances derived from WGS and RNA-seq sequencing data for 32 TCGA cancers (Poore et al. Nature 2020), including equivalent models using TCGA RNA-seq gene expression and combined microbial abundance and gene expression for comparison.
🐍 DRAGEN Tumor/Normal workflow post-processing
Visualize cancer genomes with FAIR single-cell RNA-seq data
Reconstructs complex variation using Bionano optical mapping data and breakpoint graph data
A unified downloader+preprocessor for cancer genomics datasets
The first GANs-based omics-to-omics translation framework
A Platypus-based workflow for indel calling
Microsatellite Instability Classification using Multiple Instance Learning
SigProfilerSimulator allows realistic simulations of mutational patterns and mutational signatures in cancer genomes. The tool can be used to simulate signatures of single point mutations, double point mutations, and insertion/deletions. Further, the tool makes use of SigProfilerMatrixGenerator and SigProfilerPlotting.
A Graph Neural Network Model for prediction of the effectiveness of a drug on a given cancer cell lines
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