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http://cuke.hort.ncsu.edu/cucurbit/wehner/software.html
THIS RESOURCE IS NO LONGER IN SERVICE. Documented on May 24,2023. SAS software program to estimate genetic effects and heritabilities of quantitative traits in breeding populations consisting of six related generations (entry from Genetic Analysis Software)
Proper citation: SASQUANT (RRID:SCR_013122) Copy
http://www.aps.uoguelph.ca/~msargol/qmsim/
Software application designed to simulate a wide range of genetic architectures and population structures in livestock. Large scale genotyping data and complex pedigrees can be efficiently simulated. QMSim is a family based simulator, which can also take into account predefined evolutionary features, such as LD, mutation, bottlenecks and expansions. The simulation is basically carried out in two steps: In the first step, a historical population is simulated to establish mutation-drift equilibrium and, in the second step, recent population structures are generated, which can be complex. QMSim allows for a wide range of parameters to be incorporated in the simulation models in order to produce appropriate simulated data. (entry from Genetic Analysis Software)
Proper citation: QMSIM (RRID:SCR_013123) Copy
https://github.com/HMPNK/CSA2.6
Software pipeline for high-throughput chromosome level vertebrate genome assembly. Pipeline, which after contig assembly performs post assembly improvements by ordering assembly and closing gaps, as well as splitting of low supported regions.
Proper citation: Chromosome Scale Assembler (RRID:SCR_017960) Copy
https://github.com/dmis-lab/biobert
Pre-trained biomedical language representation model for biomedical text mining. This repository provides fine-tuning codes of BioBERT, language representation model for biomedical domain, especially designed for biomedical text mining tasks such as biomedical named entity recognition, relation extraction, question answering, etc.
Proper citation: BioBERT (RRID:SCR_017547) Copy
https://github.com/OpenMendel/MendelIHT.jl
Software Julia package that implements iterative hard thresholding as multiple regression model for GWAS. Built-in support for handling PLINK and VCF files, parallel computing, fits a variety of GLM models, and handles grouping/weighting SNPs.
Proper citation: MendelIHT.jl (RRID:SCR_018292) Copy
Software distribution management for life sciences. Channel for Conda package manager specializing in bioinformatics software. Consists of repository of recipes hosted on GitHub, build system turning these recipes into conda packages, repository of packages containing bioinformatics packages ready to use with conda install.
Proper citation: BioConda (RRID:SCR_018316) Copy
https://github.com/mridulaprasad/CorrDrugTumorMSI
Software R pipeline to correlate drug distribution with tumor tissue types in mass spectrometry imaging data.
Proper citation: CorrDrugTumorMSI (RRID:SCR_018962) Copy
https://github.com/cobilab/geco3/
Software tool as DNA compressor that uses neural network to do mixing of experts.
Proper citation: GeCo3 (RRID:SCR_018877) Copy
https://github.com/liqiwei2000/BayesEpiModels
Software tool for accessing performance of different epidemiological models, including both growth and compartmental models, in Bayesian framework.
Proper citation: BayesEpiModels (RRID:SCR_019291) Copy
http://www.microbesonline.org/fasttree/
Source code that infers approximately-maximum-likelihood phylogenetic trees from alignments of nucleotide or protein sequences. It uses the Jukes-Cantor or generalized time-reversible (GTR) models of nucleotide evolution and the JTT, WAG, or LG models of amino acid evolution.
Proper citation: FastTree (RRID:SCR_015501) Copy
https://cran.r-project.org/web/packages/lme4/index.html
Software R package. Fit linear and generalized linear mixed-effects models. The models and their components are represented using S4 classes and methods. The core computational algorithms are implemented using the 'Eigen' C++ library for numerical linear algebra and 'RcppEigen' "glue."
Proper citation: lme4 (RRID:SCR_015654) Copy
Resource for experimentally validated human and mouse noncoding fragments with gene enhancer activity as assessed in transgenic mice. Most of these noncoding elements were selected for testing based on their extreme conservation in other vertebrates or epigenomic evidence (ChIP-Seq) of putative enhancer marks. Central public database of experimentally validated human and mouse noncoding fragments with gene enhancer activity as assessed in transgenic mice. Users can retrieve elements near single genes of interest, search for enhancers that target reporter gene expression to particular tissue, or download entire collections of enhancers with defined tissue specificity or conservation depth.
Proper citation: VISTA Enhancer Browser (RRID:SCR_007973) Copy
https://www.ncbi.nlm.nih.gov/genbank/dbest/
Database as a division of GenBank that contains sequence data and other information on single-pass cDNA sequences, or Expressed Sequence Tags, from a number of organisms.
Proper citation: dbEST (RRID:SCR_008132) Copy
THIS RESOURCE IS NO LONGER IN SERVICE. Documented on August 26,2019. In October 2016, T1DBase has merged with its sister site ImmunoBase (https://immunobase.org). Documented on March 2020, ImmunoBase ownership has been transferred to Open Targets (https://www.opentargets.org). Results for all studies can be explored using Open Targets Genetics (https://genetics.opentargets.org). Database focused on genetics and genomics of type 1 diabetes susceptibility providing a curated and integrated set of datasets and tools, across multiple species, to support and promote research in this area. The current data scope includes annotated genomic sequences for suspected T1D susceptibility regions; genetic data; microarray data; and global datasets, generally from the literature, that are useful for genetics and systems biology studies. The site also includes software tools for analyzing the data.
Proper citation: T1DBase (RRID:SCR_007959) Copy
http://www.baderlab.org/Software/ActiveDriver
A statistical method for interpreting variations in protein sequence (e.g. coding SNPs in the population, SNVs in cancer genomes) in the context of protein post-translational signaling modifications.
Proper citation: ActiveDriver (RRID:SCR_008104) Copy
Griffin (G-protein-receptor interacting feature finding instrument) is a high-throughput system to predict GPCR - G-protein coupling selectively with the input of GPCR sequence and ligand molecular weight. This system consists of two parts: 1) HMM section using family specific multiple alignment of GPCRs, 2) SVM section using physico-chemical feature vectors in GPCR sequence. G-protein coupled receptors (GPCR), which is composed of seven transmembrane helices, play a role as interface of signal transduction. The external stimulation for GPCR, induce the coupling with G-protein (Gi/o, Gq/11, Gs, G12/13) followed by different kinds of signal transduction to inner cell. About half of distributed drugs are intending to control this GPCR - G-protein binding system, and therefore this system is important research target for the development of effective drug. For this purpose, it is necessary to monitor, effectively and comprehensively, of the activation of G-protein by identifying ligand combined with GPCR. Since, at present, it is difficult to construct such biochemical experiment system, if the answers for experimental results can be prepared beforehand by using bioinformatics techniques, large progress is brought to G-protein related drug design. Previous works for predicting GPCR-G protein coupling selectivity are using sequence pattern search, statistical models, and HMM representations showed high sensitivity of predictions. However, there are still no works that can predict with both high sensitivity and specificity. In this work we extracted comprehensively the physico-chemical parameters of each part of ligand, GPCR and G-protein, and choose the parameters which have strong correlation with the coupling selectivity of G-protein. These parameters were put as a feature vector, used for GPCR classification based on SVM.
Proper citation: G protein receptor interaction feature finding instrument (RRID:SCR_008343) Copy
https://cgwb.nci.nih.gov/goldenPath/bamview/documentation/index.html
A variant detector and graphical alignment viewer for next-generation sequencing data in the SAM/BAM format, which is capable of pooling data from multiple source files. Bambino may be launched online via Java Web Start or downloaded and run locally.
Proper citation: Bambino (RRID:SCR_005649) Copy
http://pellegrini.mcdb.ucla.edu/BS_Seeker/BS_Seeker.html
Software which performs accurate and fast mapping of bisulfite-treated short reads. Supplementary information and examples are provided on the site.
Proper citation: BS Seeker (RRID:SCR_005641) Copy
http://www.ebi.ac.uk/Tools/pfa/iprscan/
Software package for functional analysis of sequences by classifying them into families and predicting presence of domains and sites. Scans sequences against InterPro's signatures. Characterizes nucleotide or protein function by matching it with models from several different databases. Used in large scale analysis of whole proteomes, genomes and metagenomes. Available as Web based version and standalone Perl version and SOAP Web Service.
Proper citation: InterProScan (RRID:SCR_005829) Copy
ToppGene Suite is a one-stop portal for gene list enrichment analysis and candidate gene prioritization based on functional annotations and protein interactions network. ToppGene Suite is a one-stop portal for (i) gene list functional enrichment, (ii) candidate gene prioritization using either functional annotations or network analysis and (iii) identification and prioritization of novel disease candidate genes in the interactome. Functional annotation-based disease candidate gene prioritization uses a fuzzy-based similarity measure to compute the similarity between any two genes based on semantic annotations. The similarity scores from individual features are combined into an overall score using statistical meta-analysis.
Proper citation: ToppGene Suite (RRID:SCR_005726) Copy
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