Universal Count Correction for High-Throughput Sequencing
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https://figshare.com/articles/dataset/_Universal_Count_Correction_for_High_Throughput_Sequencing_/954644
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资源简介:
We show that existing RNA-seq, DNase-seq, and ChIP-seq data exhibit overdispersed per-base read count distributions that are not matched to existing computational method assumptions. To compensate for this overdispersion we introduce a nonparametric and universal method for processing per-base sequencing read count data called Fixseq. We demonstrate that Fixseq substantially improves the performance of existing RNA-seq, DNase-seq, and ChIP-seq analysis tools when compared with existing alternatives.
创建时间:
2014-03-06



