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/_/ /      / / /____\/ /       \ \_\\ \/___/ /
\_\/       \/_________/         \/_/ \_____\/

Enter the query into the form above. You can look for specific version of a package by using @ symbol like this: gcc@10.

API method:

GET /api/packages?search=hello&page=1&limit=20

where search is your query, page is a page number and limit is a number of items on a single page. Pagination information (such as a number of pages and etc) is returned in response headers.

If you'd like to join our channel search send a patch to ~whereiseveryone/toys@lists.sr.ht adding your channel as an entry in channels.scm.


r-grndata 1.42.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/grndata
Licenses: GPL 3
Build system: r
Synopsis: Synthetic Expression Data for Gene Regulatory Network Inference
Description:

Simulated expression data for five large Gene Regulatory Networks from different simulators.

r-genarise 1.86.0
Propagated dependencies: r-xtable@1.8-4 r-tkrplot@0.0-30 r-locfit@1.5-9.12
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: http://www.ifc.unam.mx/genarise
Licenses: FSDG-compatible
Build system: r
Synopsis: Microarray Analysis tool
Description:

genArise is an easy to use tool for dual color microarray data. Its GUI-Tk based environment let any non-experienced user performs a basic, but not simple, data analysis just following a wizard. In addition it provides some tools for the developer.

r-ga4ghclient 1.34.0
Propagated dependencies: r-variantannotation@1.56.0 r-seqinfo@1.0.0 r-s4vectors@0.48.0 r-jsonlite@2.0.0 r-iranges@2.44.0 r-httr@1.4.7 r-genomicranges@1.62.0 r-dplyr@1.1.4 r-biostrings@2.78.0 r-biocgenerics@0.56.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://github.com/labbcb/GA4GHclient
Licenses: GPL 2+
Build system: r
Synopsis: Bioconductor package for accessing GA4GH API data servers
Description:

GA4GHclient provides an easy way to access public data servers through Global Alliance for Genomics and Health (GA4GH) genomics API. It provides low-level access to GA4GH API and translates response data into Bioconductor-based class objects.

r-geneclassifiers 1.34.0
Propagated dependencies: r-biocgenerics@0.56.0 r-biobase@2.70.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://doi.org/doi:10.18129/B9.bioc.geneClassifiers
Licenses: GPL 2
Build system: r
Synopsis: Application of gene classifiers
Description:

This packages aims for easy accessible application of classifiers which have been published in literature using an ExpressionSet as input.

r-gdrimport 1.8.1
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://github.com/gdrplatform/gDRimport
Licenses: Artistic License 2.0
Build system: r
Synopsis: Package for handling the import of dose-response data
Description:

The package is a part of the gDR suite. It helps to prepare raw drug response data for downstream processing. It mainly contains helper functions for importing/loading/validating dose-response data provided in different file formats.

r-gnet2 1.26.0
Propagated dependencies: r-xgboost@1.7.11.1 r-summarizedexperiment@1.40.0 r-reshape2@1.4.5 r-rcpp@1.1.0 r-matrixstats@1.5.0 r-igraph@2.2.1 r-ggplot2@4.0.1 r-dplyr@1.1.4 r-diagrammer@1.0.12
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://github.com/chrischen1/GNET2
Licenses: ASL 2.0
Build system: r
Synopsis: Constructing gene regulatory networks from expression data through functional module inference
Description:

Cluster genes to functional groups with E-M process. Iteratively perform TF assigning and Gene assigning, until the assignment of genes did not change, or max number of iterations is reached.

r-gdr 1.8.0
Propagated dependencies: r-gdrutils@1.8.0 r-gdrimport@1.8.1 r-gdrcore@1.8.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://github.com/gdrplatform/gDR
Licenses: Artistic License 2.0
Build system: r
Synopsis: Umbrella package for R packages in the gDR suite
Description:

Package is a part of the gDR suite. It reexports functions from other packages in the gDR suite that contain critical processing functions and utilities. The vignette walks through the full processing pipeline for drug response analyses that the gDR suite offers.

r-gaschyhs 1.48.0
Propagated dependencies: r-biobase@2.70.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: http://genome-www.stanford.edu/yeast_stress/data/rawdata/complete_dataset.txt
Licenses: Artistic License 2.0
Build system: r
Synopsis: ExpressionSet for response of yeast to heat shock and other environmental stresses
Description:

Data from PMID 11102521.

r-gedi 1.6.1
Propagated dependencies: r-wordcloud2@0.2.1 r-visnetwork@2.1.4 r-tm@0.7-16 r-stringdb@2.22.0 r-simona@1.8.0 r-shinywidgets@0.9.1 r-shinycssloaders@1.1.0 r-shinybs@0.61.1 r-shiny@1.11.1 r-scales@1.4.0 r-rintrojs@0.3.4 r-readxl@1.4.5 r-rcolorbrewer@1.1-3 r-proxyc@0.5.2 r-plotly@4.11.0 r-matrix@1.7-4 r-igraph@2.2.1 r-ggplot2@4.0.1 r-ggdendro@0.2.0 r-fontawesome@0.5.3 r-expm@1.0-0 r-dt@0.34.0 r-dplyr@1.1.4 r-complexheatmap@2.26.0 r-cluster@2.1.8.1 r-circlize@0.4.16 r-bs4dash@2.3.5 r-biocparallel@1.44.0 r-biocneighbors@2.4.0 r-biocfilecache@3.0.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://github.com/AnnekathrinSilvia/GeDi
Licenses: Expat
Build system: r
Synopsis: Defining and visualizing the distances between different genesets
Description:

The package provides different distances measurements to calculate the difference between genesets. Based on these scores the genesets are clustered and visualized as graph. This is all presented in an interactive Shiny application for easy usage.

r-globalseq 1.38.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://github.com/rauschenberger/globalSeq
Licenses: GPL 3
Build system: r
Synopsis: Global Test for Counts
Description:

The method may be conceptualised as a test of overall significance in regression analysis, where the response variable is overdispersed and the number of explanatory variables exceeds the sample size. Useful for testing for association between RNA-Seq and high-dimensional data.

r-gigseadata 1.28.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/GIGSEAdata
Licenses: LGPL 3
Build system: r
Synopsis: Gene set collections for the GIGSEA package
Description:

The gene set collection used for the GIGSEA package.

r-gse159526 1.16.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://github.com/wvictor14/GSE159526
Licenses: Expat
Build system: r
Synopsis: Placental cell DNA methylation data from GEO accession GSE159526
Description:

19 term and 9 first trimester placental chorionic villi and matched cell-sorted samples ran on Illumina HumanMethylationEPIC DNA methylation microarrays. This data was made available on GEO accession [GSE159526](https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE159526). Both the raw and processed data has been made available on \codeExperimentHub. Raw unprocessed data formatted as an RGChannelSet object for integration and normalization using minfi and other existing Bioconductor packages. Processed normalized data is also available as a DNA methylation \codematrix, with a corresponding phenotype information as a \codedata.frame object.

r-generecommender 1.82.0
Propagated dependencies: r-biobase@2.70.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/geneRecommender
Licenses: GPL 2+
Build system: r
Synopsis: gene recommender algorithm to identify genes coexpressed with a query set of genes
Description:

This package contains a targeted clustering algorithm for the analysis of microarray data. The algorithm can aid in the discovery of new genes with similar functions to a given list of genes already known to have closely related functions.

r-geneplast 1.36.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/geneplast
Licenses: GPL 2+
Build system: r
Synopsis: Evolutionary and plasticity analysis of orthologous groups
Description:

Geneplast is designed for evolutionary and plasticity analysis based on orthologous groups distribution in a given species tree. It uses Shannon information theory and orthologs abundance to estimate the Evolutionary Plasticity Index. Additionally, it implements the Bridge algorithm to determine the evolutionary root of a given gene based on its orthologs distribution.

r-geosubmission 1.62.0
Propagated dependencies: r-biobase@2.70.0 r-affy@1.88.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/GEOsubmission
Licenses: GPL 2+
Build system: r
Synopsis: Prepares microarray data for submission to GEO
Description:

Helps to easily submit a microarray dataset and the associated sample information to GEO by preparing a single file for upload (direct deposit).

r-gigsea 1.28.0
Propagated dependencies: r-matrix@1.7-4 r-mass@7.3-65 r-locfdr@1.1-8
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/GIGSEA
Licenses: LGPL 3
Build system: r
Synopsis: Genotype Imputed Gene Set Enrichment Analysis
Description:

We presented the Genotype-imputed Gene Set Enrichment Analysis (GIGSEA), a novel method that uses GWAS-and-eQTL-imputed trait-associated differential gene expression to interrogate gene set enrichment for the trait-associated SNPs. By incorporating eQTL from large gene expression studies, e.g. GTEx, GIGSEA appropriately addresses such challenges for SNP enrichment as gene size, gene boundary, SNP distal regulation, and multiple-marker regulation. The weighted linear regression model, taking as weights both imputation accuracy and model completeness, was used to perform the enrichment test, properly adjusting the bias due to redundancy in different gene sets. The permutation test, furthermore, is used to evaluate the significance of enrichment, whose efficiency can be largely elevated by expressing the computational intensive part in terms of large matrix operation. We have shown the appropriate type I error rates for GIGSEA (<5%), and the preliminary results also demonstrate its good performance to uncover the real signal.

r-gcatest 2.10.0
Propagated dependencies: r-lfa@2.10.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://github.com/StoreyLab/gcatest
Licenses: GPL 3+
Build system: r
Synopsis: Genotype Conditional Association TEST
Description:

GCAT is an association test for genome wide association studies that controls for population structure under a general class of trait models. This test conditions on the trait, which makes it immune to confounding by unmodeled environmental factors. Population structure is modeled via logistic factors, which are estimated using the `lfa` package.

r-genproseq 1.14.0
Propagated dependencies: r-word2vec@0.4.1 r-ttgsea@1.18.0 r-tensorflow@2.20.0 r-reticulate@1.44.1 r-mclust@6.1.2 r-keras@2.16.1 r-deeppincs@1.18.0 r-catencoders@0.1.1
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/GenProSeq
Licenses: Artistic License 2.0
Build system: r
Synopsis: Generating Protein Sequences with Deep Generative Models
Description:

Generative modeling for protein engineering is key to solving fundamental problems in synthetic biology, medicine, and material science. Machine learning has enabled us to generate useful protein sequences on a variety of scales. Generative models are machine learning methods which seek to model the distribution underlying the data, allowing for the generation of novel samples with similar properties to those on which the model was trained. Generative models of proteins can learn biologically meaningful representations helpful for a variety of downstream tasks. Furthermore, they can learn to generate protein sequences that have not been observed before and to assign higher probability to protein sequences that satisfy desired criteria. In this package, common deep generative models for protein sequences, such as variational autoencoder (VAE), generative adversarial networks (GAN), and autoregressive models are available. In the VAE and GAN, the Word2vec is used for embedding. The transformer encoder is applied to protein sequences for the autoregressive model.

r-gsar 1.44.0
Propagated dependencies: r-igraph@2.2.1
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/GSAR
Licenses: FSDG-compatible
Build system: r
Synopsis: Gene Set Analysis in R
Description:

Gene set analysis using specific alternative hypotheses. Tests for differential expression, scale and net correlation structure.

r-ggmanh 1.14.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/ggmanh
Licenses: Expat
Build system: r
Synopsis: Visualization Tool for GWAS Result
Description:

Manhattan plot and QQ Plot are commonly used to visualize the end result of Genome Wide Association Study. The "ggmanh" package aims to keep the generation of these plots simple while maintaining customizability. Main functions include manhattan_plot, qqunif, and thinPoints.

r-gemini 1.24.0
Propagated dependencies: r-scales@1.4.0 r-pbmcapply@1.5.1 r-mixtools@2.0.0.1 r-magrittr@2.0.4 r-ggplot2@4.0.1 r-dplyr@1.1.4
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/gemini
Licenses: Modified BSD
Build system: r
Synopsis: GEMINI: Variational inference approach to infer genetic interactions from pairwise CRISPR screens
Description:

GEMINI uses log-fold changes to model sample-dependent and independent effects, and uses a variational Bayes approach to infer these effects. The inferred effects are used to score and identify genetic interactions, such as lethality and recovery. More details can be found in Zamanighomi et al. 2019 (in press).

r-gseamining 1.20.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/GSEAmining
Licenses: GPL 3 FSDG-compatible
Build system: r
Synopsis: Make Biological Sense of Gene Set Enrichment Analysis Outputs
Description:

Gene Set Enrichment Analysis is a very powerful and interesting computational method that allows an easy correlation between differential expressed genes and biological processes. Unfortunately, although it was designed to help researchers to interpret gene expression data it can generate huge amounts of results whose biological meaning can be difficult to interpret. Many available tools rely on the hierarchically structured Gene Ontology (GO) classification to reduce reundandcy in the results. However, due to the popularity of GSEA many more gene set collections, such as those in the Molecular Signatures Database are emerging. Since these collections are not organized as those in GO, their usage for GSEA do not always give a straightforward answer or, in other words, getting all the meaninful information can be challenging with the currently available tools. For these reasons, GSEAmining was born to be an easy tool to create reproducible reports to help researchers make biological sense of GSEA outputs. Given the results of GSEA, GSEAmining clusters the different gene sets collections based on the presence of the same genes in the leadind edge (core) subset. Leading edge subsets are those genes that contribute most to the enrichment score of each collection of genes or gene sets. For this reason, gene sets that participate in similar biological processes should share genes in common and in turn cluster together. After that, GSEAmining is able to identify and represent for each cluster: - The most enriched terms in the names of gene sets (as wordclouds) - The most enriched genes in the leading edge subsets (as bar plots). In each case, positive and negative enrichments are shown in different colors so it is easy to distinguish biological processes or genes that may be of interest in that particular study.

r-geofastq 1.18.0
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://bioconductor.org/packages/GEOfastq
Licenses: Expat
Build system: r
Synopsis: Downloads ENA Fastqs With GEO Accessions
Description:

GEOfastq is used to download fastq files from the European Nucleotide Archive (ENA) starting with an accession from the Gene Expression Omnibus (GEO). To do this, sample metadata is retrieved from GEO and the Sequence Read Archive (SRA). SRA run accessions are then used to construct FTP and aspera download links for fastq files generated by the ENA.

r-genomicplot 1.8.1
Channel: guix-bioc
Location: guix-bioc/packages/g.scm (guix-bioc packages g)
Home page: https://github.com/shuye2009/GenomicPlot
Licenses: GPL 2
Build system: r
Synopsis: Plot profiles of next generation sequencing data in genomic features
Description:

Visualization of next generation sequencing (NGS) data is essential for interpreting high-throughput genomics experiment results. GenomicPlot facilitates plotting of NGS data in various formats (bam, bed, wig and bigwig); both coverage and enrichment over input can be computed and displayed with respect to genomic features (such as UTR, CDS, enhancer), and user defined genomic loci or regions. Statistical tests on signal intensity within user defined regions of interest can be performed and represented as boxplots or bar graphs. Parallel processing is used to speed up computation on multicore platforms. In addition to genomic plots which is suitable for displaying of coverage of genomic DNA (such as ChIPseq data), metagenomic (without introns) plots can also be made for RNAseq or CLIPseq data as well.

Total packages: 69239