Result for 3ABEF2FC93E16CEE8F6AC0D5321919107C331E80

Query result

Key Value
FileName./usr/lib64/R/library/Rsolid/Meta/Rd.rds
FileSize303
MD583055CF3C52D8F9FB2A6E15CA286E89E
SHA-13ABEF2FC93E16CEE8F6AC0D5321919107C331E80
SHA-2561073BAB8F1606B820B93AC584BD48763CE289AC229ABE290A2752DD4A5514B72
SSDEEP6:XtzuD1WLOh03fcjfLNrHH38xKZxIVHHQIVmP2QMU4AByvhDzM/:XWMFUlHHYAIVHHQIaFMlmUDK
TLSHT1A8E07DA64910F068FC2D9466345A11A1A4F406C80B1800222184CB304DE516045DA18E
hashlookup:parent-total4
hashlookup:trust70

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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
MD589052B20BB17EA642C2E36E5228DB7F0
PackageArchaarch64
PackageDescription Rsolid is an R package for normalizing fluorescent intensity data from ABI/SOLiD second generation sequencing platform. It has been observed that the color-calls provided by factory software contain technical artifacts, where the proportions of colors called are extremely variable across sequencing cycles. Under the random DNA fragmentation assumption, these proportions should be equal across sequencing cycles and proportional to the dinucleotide frequencies of the sample. Rsolid implements a version of the quantile normalization algorithm that transforms the intensity values before calling colors. Results show that after normalization, the total number of mappable reads increases by around 5%, and number of perfectly mapped reads increases by 10%. Moreover a 2-5% reduction in overall error rates is observed, with a 2-6% reduction in the rate of valid adjacent color mis-matches. The latter is important, since it leads to a decrease in false-positive SNP calls. The normalization algorithm is computationally efficient. In a test we are able to process 300 million reads in 2 hours using 10 computer cluster nodes. The engine functions of the package are written in C for better performance.
PackageMaintainerFedora Project
PackageNameR-Rsolid
PackageRelease34.fc34
PackageVersion0.9.31
SHA-16A14484E0BA3E782153B690A3219FE83714EE5BA
SHA-256742FEFA9FD3CD1D036951E25ADF07BCF79AA15032613247F9A945F91A7C27FBE
Key Value
MD504B61CF68EB545F8F45F8B760C570777
PackageArchi686
PackageDescription Rsolid is an R package for normalizing fluorescent intensity data from ABI/SOLiD second generation sequencing platform. It has been observed that the color-calls provided by factory software contain technical artifacts, where the proportions of colors called are extremely variable across sequencing cycles. Under the random DNA fragmentation assumption, these proportions should be equal across sequencing cycles and proportional to the dinucleotide frequencies of the sample. Rsolid implements a version of the quantile normalization algorithm that transforms the intensity values before calling colors. Results show that after normalization, the total number of mappable reads increases by around 5%, and number of perfectly mapped reads increases by 10%. Moreover a 2-5% reduction in overall error rates is observed, with a 2-6% reduction in the rate of valid adjacent color mis-matches. The latter is important, since it leads to a decrease in false-positive SNP calls. The normalization algorithm is computationally efficient. In a test we are able to process 300 million reads in 2 hours using 10 computer cluster nodes. The engine functions of the package are written in C for better performance.
PackageMaintainerFedora Project
PackageNameR-Rsolid
PackageRelease34.fc34
PackageVersion0.9.31
SHA-1B78615444BEC23063C167EE73D42A139C26AD366
SHA-25601010C289BAFA840DD98F66CAE3EB66195D71DBEB3569E23D04A4A0BA0E86905
Key Value
MD5E7E9516AD910ED713DCD6B5B9C43BB89
PackageArcharmv7hl
PackageDescription Rsolid is an R package for normalizing fluorescent intensity data from ABI/SOLiD second generation sequencing platform. It has been observed that the color-calls provided by factory software contain technical artifacts, where the proportions of colors called are extremely variable across sequencing cycles. Under the random DNA fragmentation assumption, these proportions should be equal across sequencing cycles and proportional to the dinucleotide frequencies of the sample. Rsolid implements a version of the quantile normalization algorithm that transforms the intensity values before calling colors. Results show that after normalization, the total number of mappable reads increases by around 5%, and number of perfectly mapped reads increases by 10%. Moreover a 2-5% reduction in overall error rates is observed, with a 2-6% reduction in the rate of valid adjacent color mis-matches. The latter is important, since it leads to a decrease in false-positive SNP calls. The normalization algorithm is computationally efficient. In a test we are able to process 300 million reads in 2 hours using 10 computer cluster nodes. The engine functions of the package are written in C for better performance.
PackageMaintainerFedora Project
PackageNameR-Rsolid
PackageRelease34.fc34
PackageVersion0.9.31
SHA-10B618871A0FA5C41AEF3EBACAA7D44AAD7743F90
SHA-2569E888B7F60B2F54B8F681BD529A32428C571F201FAD480A8A2EEC0CD0ED58F36
Key Value
MD528FD23D01BF4AC152F48544B6152CFBF
PackageArchx86_64
PackageDescription Rsolid is an R package for normalizing fluorescent intensity data from ABI/SOLiD second generation sequencing platform. It has been observed that the color-calls provided by factory software contain technical artifacts, where the proportions of colors called are extremely variable across sequencing cycles. Under the random DNA fragmentation assumption, these proportions should be equal across sequencing cycles and proportional to the dinucleotide frequencies of the sample. Rsolid implements a version of the quantile normalization algorithm that transforms the intensity values before calling colors. Results show that after normalization, the total number of mappable reads increases by around 5%, and number of perfectly mapped reads increases by 10%. Moreover a 2-5% reduction in overall error rates is observed, with a 2-6% reduction in the rate of valid adjacent color mis-matches. The latter is important, since it leads to a decrease in false-positive SNP calls. The normalization algorithm is computationally efficient. In a test we are able to process 300 million reads in 2 hours using 10 computer cluster nodes. The engine functions of the package are written in C for better performance.
PackageMaintainerFedora Project
PackageNameR-Rsolid
PackageRelease34.fc34
PackageVersion0.9.31
SHA-18942C13A17F8EE5498E31AD72E595AF40F6A494C
SHA-25662B91621A9BE6D4647D21DC4BB209DF30C5B2CEA6E9A3160D8DD335E80CB25BB