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  • kobeho24
    Member
    • Apr 2015
    • 32

    Single-cell RNA-seq normalization with ERCC

    Hi everyone,
    Does anyone have any recommendation on the single-cell rna-seq data normalization methods? I would like to do normalization across a mix population of cells, in particular, transcript-level analysis is demanded. I know there are a whole bunch of methods doing well on gene-level, just wonder how can we do the similar thing on isoform-level with ERCC as spike-ins.

    BTW, I intended to use alighment-free quantification programs such as kallisto or salmon, since I have a hugh dataset and they are much faster and require less computational resources.

    Thanks in advance!

    Wish you all a merry Christmas and a happy new year

    Gary
    Last edited by kobeho24; 12-03-2016, 01:41 AM.

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