Result for 064991679FF8C689EC0ED236662F266986B0BF50

Query result

Key Value
FileName./usr/lib64/R/library/qtl/data/locations.RData
FileSize546
MD5E0B510FA75E2880A48516349D486FEA9
SHA-1064991679FF8C689EC0ED236662F266986B0BF50
SHA-2566FB240AC967710BBFAD668F5A290CB8DF979F75D18ECC85652BF4E34010C149A
SSDEEP12:XL7Fja/Ig47jX1yitnkJxIsKFSyQ8t3VLYo9iE:XL7FOFAjXBknIsKQyQ8tlx9h
TLSHT1A1F0200670C85642C3107C35462E1782E4C7E007E28868EAD3364BB2AFE8A504DE2B2B
hashlookup:parent-total5
hashlookup:trust75

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Parents (Total: 5)

The searched file hash is included in 5 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD59750DF82F0E4D027717DADD269E8C88E
PackageArchppc64
PackageDescriptionR-qtl is an extensible, interactive environment for mapping quantitative trait loci (QTLs) in experimental crosses. Our goal is to make complex QTL mapping methods widely accessible and allow users to focus on modeling rather than computing. A key component of computational methods for QTL mapping is the hidden Markov model (HMM) technology for dealing with missing genotype data. We have implemented the main HMM algorithms, with allowance for the presence of genotyping errors, for backcrosses, intercrosses, and phase-known four-way crosses. The current version of R-qtl includes facilities for estimating genetic maps, identifying genotyping errors, and performing single-QTL genome scans and two-QTL, two-dimensional genome scans, by interval mapping (with the EM algorithm), Haley-Knott regression, and multiple imputation. All of this may be done in the presence of covariates (such as sex, age or treatment). One may also fit higher-order QTL models by multiple imputation and Haley-Knott regression.
PackageMaintainerFedora Project
PackageNameR-qtl
PackageRelease1.fc22
PackageVersion1.36.6
SHA-11C0CEA23687BC14326460A77AF3D88F8C2BDE609
SHA-25687A88C4D92F5E4F30692F4BD15B168527AC40F3BD927399BE316E074D396F6CB
Key Value
MD5E2A5A43ECF84FEED28FE225C7B708963
PackageArchppc64le
PackageDescriptionR-qtl is an extensible, interactive environment for mapping quantitative trait loci (QTLs) in experimental crosses. Our goal is to make complex QTL mapping methods widely accessible and allow users to focus on modeling rather than computing. A key component of computational methods for QTL mapping is the hidden Markov model (HMM) technology for dealing with missing genotype data. We have implemented the main HMM algorithms, with allowance for the presence of genotyping errors, for backcrosses, intercrosses, and phase-known four-way crosses. The current version of R-qtl includes facilities for estimating genetic maps, identifying genotyping errors, and performing single-QTL genome scans and two-QTL, two-dimensional genome scans, by interval mapping (with the EM algorithm), Haley-Knott regression, and multiple imputation. All of this may be done in the presence of covariates (such as sex, age or treatment). One may also fit higher-order QTL models by multiple imputation and Haley-Knott regression.
PackageMaintainerFedora Project
PackageNameR-qtl
PackageRelease1.fc22
PackageVersion1.36.6
SHA-13EDC80508691A877637BDF1132F5B379DCD1268E
SHA-256018DCC308D3C372F43464E22D00ADAF2DB425B8F116745B419E54EAD2B6BAF0A
Key Value
MD560AC3E387267984135BF4800A5AABF7D
PackageArchaarch64
PackageDescriptionR-qtl is an extensible, interactive environment for mapping quantitative trait loci (QTLs) in experimental crosses. Our goal is to make complex QTL mapping methods widely accessible and allow users to focus on modeling rather than computing. A key component of computational methods for QTL mapping is the hidden Markov model (HMM) technology for dealing with missing genotype data. We have implemented the main HMM algorithms, with allowance for the presence of genotyping errors, for backcrosses, intercrosses, and phase-known four-way crosses. The current version of R-qtl includes facilities for estimating genetic maps, identifying genotyping errors, and performing single-QTL genome scans and two-QTL, two-dimensional genome scans, by interval mapping (with the EM algorithm), Haley-Knott regression, and multiple imputation. All of this may be done in the presence of covariates (such as sex, age or treatment). One may also fit higher-order QTL models by multiple imputation and Haley-Knott regression.
PackageMaintainerFedora Project
PackageNameR-qtl
PackageRelease1.fc22
PackageVersion1.36.6
SHA-1693E788EE056EE9AC13A3E4372FAE4F2200238C4
SHA-256741EC4F306B6E179FAC5CF7341625AAB857FFFA616ED6D8E782D65C603EFB9B6
Key Value
MD5836D1AF0BEF1C97B58A2BA5DFB707F39
PackageArchs390
PackageDescriptionR-qtl is an extensible, interactive environment for mapping quantitative trait loci (QTLs) in experimental crosses. Our goal is to make complex QTL mapping methods widely accessible and allow users to focus on modeling rather than computing. A key component of computational methods for QTL mapping is the hidden Markov model (HMM) technology for dealing with missing genotype data. We have implemented the main HMM algorithms, with allowance for the presence of genotyping errors, for backcrosses, intercrosses, and phase-known four-way crosses. The current version of R-qtl includes facilities for estimating genetic maps, identifying genotyping errors, and performing single-QTL genome scans and two-QTL, two-dimensional genome scans, by interval mapping (with the EM algorithm), Haley-Knott regression, and multiple imputation. All of this may be done in the presence of covariates (such as sex, age or treatment). One may also fit higher-order QTL models by multiple imputation and Haley-Knott regression.
PackageMaintainerFedora Project
PackageNameR-qtl
PackageRelease1.fc22
PackageVersion1.36.6
SHA-13D48627A31F41CFE34E79A75D112353D19EEA6E8
SHA-25644E717E2D55EA8B122C1F3D9741E5D4601D38E8BEA7C4FC563CBEE143E2CD88A
Key Value
MD56E3CEF82264DC24946BEEB23CA710B6D
PackageArchs390x
PackageDescriptionR-qtl is an extensible, interactive environment for mapping quantitative trait loci (QTLs) in experimental crosses. Our goal is to make complex QTL mapping methods widely accessible and allow users to focus on modeling rather than computing. A key component of computational methods for QTL mapping is the hidden Markov model (HMM) technology for dealing with missing genotype data. We have implemented the main HMM algorithms, with allowance for the presence of genotyping errors, for backcrosses, intercrosses, and phase-known four-way crosses. The current version of R-qtl includes facilities for estimating genetic maps, identifying genotyping errors, and performing single-QTL genome scans and two-QTL, two-dimensional genome scans, by interval mapping (with the EM algorithm), Haley-Knott regression, and multiple imputation. All of this may be done in the presence of covariates (such as sex, age or treatment). One may also fit higher-order QTL models by multiple imputation and Haley-Knott regression.
PackageMaintainerFedora Project
PackageNameR-qtl
PackageRelease1.fc22
PackageVersion1.36.6
SHA-179460C900B6A8FE78D24943B7B84AB1F7D77BD88
SHA-2560D11C606B01D523043C64F3A88894FD331AF0992FB2750594D1EBE11145BE290