Result for 1AC7747EDC9AE65EAA1FC9C9E37C28E48C70B9DD

Query result

Key Value
FileName./usr/lib64/R/library/graphsim/help/paths.rds
FileSize287
MD57D3FB78906D9432DB902A3615F58A9AF
SHA-11AC7747EDC9AE65EAA1FC9C9E37C28E48C70B9DD
SHA-25674F0DAA026785E9E45FDE0C8DE33CECC850C54E319E673E93B74EF81E8EBD0C9
SSDEEP6:Xt4iot+0nKceFTfpBMz95gY1aU7LVdtUtRGxqLl//:X9cWhB+/gVU75daXX
TLSHT1C3D0E74849F3C1DF8303C9331E3704D691CC94539174F54EDD24153C1A04143C155080
hashlookup:parent-total4
hashlookup:trust70

Network graph view

Parents (Total: 4)

The searched file hash is included in 4 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD532C7DAF4C7EAA60583D37A75770CAE20
PackageArchx86_64
PackageDescriptionFunctions to develop simulated continuous data (e.g., gene expression) from a sigma covariance matrix derived from a graph structure in 'igraph' objects. Intended to extend 'mvtnorm' to take 'igraph' structures rather than sigma matrices as input. This allows the use of simulated data that correctly accounts for pathway relationships and correlations. This allows the use of simulated data that correctly accounts for pathway relationships and correlations. Here we present a versatile statistical framework to simulate correlated gene expression data from biological pathways, by sampling from a multivariate normal distribution derived from a graph structure. This package allows the simulation of biological pathways from a graph structure based on a statistical model of gene expression. For example methods to infer biological pathways and gene regulatory networks from gene expression data can be tested on simulated datasets using this framework. This also allows for pathway structures to be considered as a confounding variable when simulating gene expression data to test the performance of genomic analyses.
PackageNameR-graphsim
PackageReleaselp152.1.3
PackageVersion1.0.2
SHA-1DDEACC9479C4F423DA61A8D098CEDB0256EF180A
SHA-256DAF154FC3FD7CF18733CBDB1BFAB5A3B47E39615C26A27BA291DDB2BE587C148
Key Value
MD50C2439F973AB6D7D9984044D9286F1B4
PackageArchx86_64
PackageDescriptionFunctions to develop simulated continuous data (e.g., gene expression) from a sigma covariance matrix derived from a graph structure in 'igraph' objects. Intended to extend 'mvtnorm' to take 'igraph' structures rather than sigma matrices as input. This allows the use of simulated data that correctly accounts for pathway relationships and correlations. This allows the use of simulated data that correctly accounts for pathway relationships and correlations. Here we present a versatile statistical framework to simulate correlated gene expression data from biological pathways, by sampling from a multivariate normal distribution derived from a graph structure. This package allows the simulation of biological pathways from a graph structure based on a statistical model of gene expression. For example methods to infer biological pathways and gene regulatory networks from gene expression data can be tested on simulated datasets using this framework. This also allows for pathway structures to be considered as a confounding variable when simulating gene expression data to test the performance of genomic analyses.
PackageNameR-graphsim
PackageReleaselp153.1.2
PackageVersion1.0.2
SHA-1849B5CAD637A371B66D037F41D88B3123B9307E3
SHA-2562FECEEAFE5441BB50D67ADDD47B1495F613340D694E04E8C6B5C8EFFBC9B75E9
Key Value
MD5528B8D301D6C7AF1A876C709477EA9F9
PackageArchx86_64
PackageDescriptionFunctions to develop simulated continuous data (e.g., gene expression) from a sigma covariance matrix derived from a graph structure in 'igraph' objects. Intended to extend 'mvtnorm' to take 'igraph' structures rather than sigma matrices as input. This allows the use of simulated data that correctly accounts for pathway relationships and correlations. This allows the use of simulated data that correctly accounts for pathway relationships and correlations. Here we present a versatile statistical framework to simulate correlated gene expression data from biological pathways, by sampling from a multivariate normal distribution derived from a graph structure. This package allows the simulation of biological pathways from a graph structure based on a statistical model of gene expression. For example methods to infer biological pathways and gene regulatory networks from gene expression data can be tested on simulated datasets using this framework. This also allows for pathway structures to be considered as a confounding variable when simulating gene expression data to test the performance of genomic analyses.
PackageNameR-graphsim
PackageRelease1.17
PackageVersion1.0.2
SHA-19B95E441C9AB215A57F7BE2E84077CF00303BD8F
SHA-2568F79DD9369C6571176CBAD81C216263CA8BF9CE6F075DE8D12314D49B81D896D
Key Value
MD52DC1A03C990D83BF25F4AEC278DCB9E9
PackageArchx86_64
PackageDescriptionFunctions to develop simulated continuous data (e.g., gene expression) from a sigma covariance matrix derived from a graph structure in 'igraph' objects. Intended to extend 'mvtnorm' to take 'igraph' structures rather than sigma matrices as input. This allows the use of simulated data that correctly accounts for pathway relationships and correlations. This allows the use of simulated data that correctly accounts for pathway relationships and correlations. Here we present a versatile statistical framework to simulate correlated gene expression data from biological pathways, by sampling from a multivariate normal distribution derived from a graph structure. This package allows the simulation of biological pathways from a graph structure based on a statistical model of gene expression. For example methods to infer biological pathways and gene regulatory networks from gene expression data can be tested on simulated datasets using this framework. This also allows for pathway structures to be considered as a confounding variable when simulating gene expression data to test the performance of genomic analyses.
PackageNameR-graphsim
PackageReleaselp154.1.1
PackageVersion1.0.2
SHA-1070A1D138D8B2EC9EAFFA7E4686506A4F6F96ADD
SHA-25657E9A2DA5C777D3A70FC9A0C253E2FBA35ECF3EE8A8609EDC2C4ED115754EBAF