Result for A052D9A725DB5CC8F5979D315E29EBB91AC4BD38

Query result

Key Value
FileName./usr/lib64/R/library/Rsolid/Meta/hsearch.rds
FileSize296
MD57036D7E966018620B4D2E08375F992E7
SHA-1A052D9A725DB5CC8F5979D315E29EBB91AC4BD38
SHA-25651C5F21A69DACD5E5763D305C64A53B0203E8AF1B084BB567456D769821D1304
SSDEEP6:XtVSlASeBuRqYUC9XV5JQ7XNL5luyBRVS0CwN2CZOteMqjbRv5yeyCl:XylAFBJf45JQ9LxkhMMqj5rl
TLSHT16EE07D5957611598C4310031CC189338B3E90CCF520AEC5C8B915450D86EC443CC16C4
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
MD507D03817C5A0F7D98FF502A11B09C45B
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
PackageRelease4.fc16
PackageVersion0.9.31
SHA-1851BC563A172BD2F5E15F88811445F9C8F4F42F2
SHA-256AE2ADED22886E36313678292A9853C4AC728D98317BDC0B57D44E243FBF0C116
Key Value
MD517B2DDB7902A4C570297C28AA74B17EC
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
PackageRelease4.fc16
PackageVersion0.9.31
SHA-1FC94E0733238B23E222CEBD88494266C1BAC251B
SHA-2561F1BD6C8F7287999FC846A44C643941386018570831F2BEA01FDC954653797F4
Key Value
MD55A0BB7817D54A5BC71937147EF7A4D06
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.
PackageMaintainerFedora Project
PackageNameR-Rsolid
PackageRelease4.fc16
PackageVersion0.9.31
SHA-175DC9AAB22CD2CD9196997EC1AF53E965DA9C491
SHA-256DE77BEC0F01AF922047EC9054672515BB53154F3872C9EF2DADD5482D365F27B
Key Value
MD5ECE88130BC0A2DDADD99249A04C32468
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.
PackageMaintainerFedora Project
PackageNameR-Rsolid
PackageRelease4.fc16
PackageVersion0.9.31
SHA-10E4462C11DF634B5682307B9D081A9B0A981E50B
SHA-256271BCFA223446AAC286457BA9EAA071AF398F50D542D246F793AC7AF0E3C6DE9