Dear Zhe,
On Thu, July 1, 2010 1:58 pm, ?? wrote:
> Dear Gordon,
>
> I tryed plotMDS.dge function and got good results. But I have two
questions:
>
> 1. What do "Dimension 1" and "Dimension 2" represent, respectively?
Think of it as if you were arranging the samples on the floor so that
distance apart represents
the degree of differential expression between each two samples.
Dimension 1 is simply the
direction in which the sample are most different, and dimension 2 is
the next direction. The
dimensions don't have any simple interpretation in terms of metagenes
etc. A unit of one on the
axis represents a coefficient of variation of 1 between the samples.
> 2. I have 12 different samples which were collected from 3 different
positions of an organ from 2
> species at 2 stages (3*2*2=12 samples). I did RNA-seq and sequenced
them in 12 lanes,
> respectively. I want to see the similarity of the 12 samples by
clustering and analyze DE between
> different species and between different species. Can I separate the
12 samples to 2 groups by the
> stage or by the species? I'm not sure if I can consider the samples
I grouped as "replicates" and
> use edgeR to do these tasks.
Just look at the plot and see where the samples fall. Do samples of
the same stage tend to group
together? Do samples of the same species tend to group together? If
they do, then the answer to
your question is yes.
Best wishes
Gordon
> Thanks,
> Zhe
>
>
>
> Dear Zhe,
>
> To do clustering of RNA-seq profiles using the edgeR packages, you
can use the plotMDS.dge
> function. See the User's Guide for examples. This function is
already designed for RNA-seq data,
> so there is no need to worry about normalization factors or variance
stabilizing transformations
> etc.
>
> Best wishes
> Gordon
>
>
> [BioC] edgeR normalization factors
> zhedianyou at yahoo.cn
> Mon Jun 28 05:19:19 CEST 2010
>
> Hello,
>
> I have a question about using TMM normalization factors. I want to
modify the count for each gene
> after normalization. Should I just need to divide the count of each
gene by the normalization
> factor for its library? Then, I may use the normalized data for DE
analysis and other further
> analysis (e.g. clustering).
>
> Thanks a lot,
> Zhe
______________________________________________________________________
The information in this email is confidential and
intend...{{dropped:4}}
Dear Gordon,
Â
Thank you very much. Your answers help me a lot.
Best wishes,
Zhe
Dear Zhe,
On Thu, July 1, 2010 1:58 pm, ?? wrote:
> Dear Gordon,
>
> I tryed plotMDS.dge function and got good results. But I have two
questions:
>
> 1. What do "Dimension 1" and "Dimension 2" represent, respectively?
Think of it as if you were arranging the samples on the floor so that
distance apart represents
the degree of differential expression between each two samples.Â
Dimension 1 is simply the
direction in which the sample are most different, and dimension 2 is
the next direction. The
dimensions don't have any simple interpretation in terms of metagenes
etc. A unit of one on the
axis represents a coefficient of variation of 1 between the samples.
> 2. I have 12 different samples which were collected from 3 different
positions of an organ from 2
> species at 2 stages (3*2*2=12 samples). I did RNA-seq and sequenced
them in 12 lanes,
> respectively. I want to see the similarity of the 12 samples by
clustering and analyze DE between
> different species and between different species. Can I separate the
12 samples to 2 groups by the
> stage or by the species? I'm not sure if I can consider the samples
I grouped as "replicates" and
> use edgeR to do these tasks.
Just look at the plot and see where the samples fall. Do samples of
the same stage tend to group
together? Do samples of the same species tend to group together?Â
If they do, then the answer to
your question is yes.
Best wishes
Gordon
> Thanks,
> Zhe
>
>
>
> Dear Zhe,
>
> To do clustering of RNA-seq profiles using the edgeR packages, you
can use the plotMDS.dge
> function. See the User's Guide for examples. This function is
already designed for RNA-seq data,
> so there is no need to worry about normalization factors or variance
stabilizing transformations
> etc.
>
> Best wishes
> Gordon
>
>
> [BioC] edgeR normalization factors
> zhedianyou at yahoo.cn
> Mon Jun 28 05:19:19 CEST 2010
>
> Hello,
>
> I have a question about using TMM normalization factors. I want to
modify the count for each gene
> after normalization. Should I just need to divide the count of each
gene by the normalization
> factor for its library? Then, I may use the normalized data for DE
analysis and other further
> analysis (e.g. clustering).
>
> Thanks a lot,
> Zhe
______________________________________________________________________
The information in this email is confidential and
intend...{{dropped:12}}