Hi Giuliano,
ComBat should work fine, just be cautious about outlier genes and
samples, because these could influence the results. Outliers are
usually less of a problem in microarray studies because there are so
many genes, but in your case outliers could have more influence. To
check this, look for abnormalities in the heatmap and also look for
gross violations from normality in the prior plots generated by
ComBat.
Thanks!
Evan
On May 22, 2014, at 4:33 AM, Giuliano Stirparo <giulianostirparo at="" gmail.com=""> wrote:
> Dear All
> I am trying to use combat to perform batch correction of RT-PCR
data. In particular I have around 40 genes and 59 samples.
> The samples are divided in two categories (resistant on a particular
treatment and sensitive) and they come from different batch (6 samples
+ 19 samples + 24 samples).
> To perform batch correction I used the default parameter. I was
wondering if it is possible use ComBat for this kind of analysis or if
I have to try with different tools.
> If you need more details please do not hesitate to contact me.
>
> Best
>
> Giuliano Stirparo
Dear All
I am trying to use combat to perform batch correction of RT-PCR data.
In
particular I have around 40 genes and 59 samples.
The samples are divided in two categories (resistant on a particular
treatment and sensitive) and they come from different batch (6 samples
+ 19
samples + 24 samples).
To perform batch correction I used the default parameter. I was
wondering
if it is possible use ComBat for this kind of analysis or if I have to
try
with different tools.
If you need more details please do not hesitate to contact me.
Best
Giuliano Stirparo
[[alternative HTML version deleted]]
Dear Evan,
I have a similar question for a long time. For different platform
(rtPCR
vs. high-throughput array/sequencing), the number of genes vs. the
number
of samples, which one is a more important issue for ComBat, for
example,
here are two data I have:
1. a rtPCR data with 100 genes, but 2000 samples from 30 batches
2. a RNA-seq data with >25,000 genes, but only 14 samples from 2
different
batches, is ComBat an optimal tool to correct batch effect comparing
to
removeBatchEffect() in edgeR?
Many thanks,
Shirley
On Thu, May 22, 2014 at 7:07 AM, Johnson, William Evan <wej@bu.edu>
wrote:
> Hi Giuliano,
>
> ComBat should work fine, just be cautious about outlier genes and
samples,
> because these could influence the results. Outliers are usually less
of a
> problem in microarray studies because there are so many genes, but
in your
> case outliers could have more influence. To check this, look for
> abnormalities in the heatmap and also look for gross violations from
> normality in the prior plots generated by ComBat.
>
> Thanks!
>
> Evan
>
>
> On May 22, 2014, at 4:33 AM, Giuliano Stirparo
<giulianostirparo@gmail.com>
> wrote:
>
> > Dear All
> > I am trying to use combat to perform batch correction of RT-PCR
data. In
> particular I have around 40 genes and 59 samples.
> > The samples are divided in two categories (resistant on a
particular
> treatment and sensitive) and they come from different batch (6
samples + 19
> samples + 24 samples).
> > To perform batch correction I used the default parameter. I was
> wondering if it is possible use ComBat for this kind of analysis or
if I
> have to try with different tools.
> > If you need more details please do not hesitate to contact me.
> >
> > Best
> >
> > Giuliano Stirparo
>
> _______________________________________________
> Bioconductor mailing list
> Bioconductor@r-project.org
> https://stat.ethz.ch/mailman/listinfo/bioconductor
> Search the archives:
> http://news.gmane.org/gmane.science.biology.informatics.conductor
>
[[alternative HTML version deleted]]
Thanks a lot!
Inviato da iPhone
> Il giorno 22/mag/2014, alle ore 13:07, "Johnson, William Evan" <wej at="" bu.edu=""> ha scritto:
>
> Hi Giuliano,
>
> ComBat should work fine, just be cautious about outlier genes and
samples, because these could influence the results. Outliers are
usually less of a problem in microarray studies because there are so
many genes, but in your case outliers could have more influence. To
check this, look for abnormalities in the heatmap and also look for
gross violations from normality in the prior plots generated by
ComBat.
>
> Thanks!
>
> Evan
>
>
>> On May 22, 2014, at 4:33 AM, Giuliano Stirparo <giulianostirparo at="" gmail.com=""> wrote:
>>
>> Dear All
>> I am trying to use combat to perform batch correction of RT-PCR
data. In particular I have around 40 genes and 59 samples.
>> The samples are divided in two categories (resistant on a
particular treatment and sensitive) and they come from different batch
(6 samples + 19 samples + 24 samples).
>> To perform batch correction I used the default parameter. I was
wondering if it is possible use ComBat for this kind of analysis or if
I have to try with different tools.
>> If you need more details please do not hesitate to contact me.
>>
>> Best
>>
>> Giuliano Stirparo
>