Result for 21DB352EA8483A96F298B0D3B6DEB58D4C5E2FB3

Query result

Key Value
FileName./usr/lib64/R/library/Rsolid/help/Rsolid.rdx
FileSize145
MD505BEE4DCC93CD613EC0510FFE2B0419A
SHA-121DB352EA8483A96F298B0D3B6DEB58D4C5E2FB3
SHA-25635CE994F7AA686837814F278CD8C865464964FE408928119B440D8B28B1E33C5
SSDEEP3:FttVFH2igLx9x0AULZYvxCJaLRjGjrLG/JP9HVsGBxufI:XtVFWB9ULCUaLRjGXy/BRBkfI
TLSHT12CC02BE7D245E827E97E53BC34945F75250F81510B00698E9460C2270F4CD58E40B114
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
MD5747AE4A3E2E4020DB9C78B29A6B16E12
PackageArchs390x
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
PackageRelease2.fc15
PackageVersion0.9.31
SHA-14E7CDA8226D4E74589BF772D5D4A7ADB3BC75611
SHA-2560BEE7E6EB53DCAAC2F7E424F7F87A090439BB092C7E94D77368B08E6155B0ECD
Key Value
MD5C2EAD84C9A369FFE6B863D81A6C6FEA3
PackageArchppc
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.
PackageMaintainerKoji
PackageNameR-Rsolid
PackageRelease2.fc15
PackageVersion0.9.31
SHA-1E0A5B98730133AEE3F118FD5FE9A87B427543D15
SHA-256058ADDF5FF534083F1EB218FE815A501C16F79D124DD8A20BEC7E462CF954922
Key Value
MD5A1133F9DFD7C56B702A31F5418AA8453
PackageArchs390
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
PackageRelease2.fc15
PackageVersion0.9.31
SHA-1546CB9159F9F7CA179E25A5BD9AD32DA5AAACEA9
SHA-256FD223D299ECA01983190B354E23856224868586DC6C9B1CC9C89CE719BBDC269
Key Value
MD599F1515439FB770832FCAC4E146D54BC
PackageArchppc64
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.
PackageMaintainerKoji
PackageNameR-Rsolid
PackageRelease2.fc15
PackageVersion0.9.31
SHA-1127A332F6AF2528338AAC6A336713504A98F46A6
SHA-256E88E40D877A66C4D2C6435B97196C0D69492145F322D82313B9C3376056144DC