dear friends
i have situation, where i thought its ok for me not to
do normalisation, i am afraid i may be wrong. i want
your advice in this regard.
we performed a wild type - mutant, dye-swap
experiment.
when we analysed the intensity values, they were
consistant among the two experiment (dye-swap). ie.,
almost same values for mutants in both the experiments
of the dye-swap.
since the values are almost same, i thought there
might not be any dye-bias, so i just went ahead,
averaged the two values, found out their ratio and
filtered genes with 2 fold change.
so i have done this without normalisation.
i am afraid, i might be wrong, my 2 fold chaging genes
might be wrong...
kindly give me your advice in this regard.
i did analyse the data with limma, but the topTable
genes there never correlates with my 2 fold genes.
kindly correct me.
thanks
vijay
graduate student
department of biological sciences
the university of southern mississippi
MS, USA
On Apr 12, 2005, at 1:19 PM, vijayaraj nagarajan wrote:
> dear friends
> i have situation, where i thought its ok for me not to
> do normalisation, i am afraid i may be wrong. i want
> your advice in this regard.
>
> we performed a wild type - mutant, dye-swap
> experiment.
> when we analysed the intensity values, they were
> consistant among the two experiment (dye-swap). ie.,
> almost same values for mutants in both the experiments
> of the dye-swap.
> since the values are almost same, i thought there
> might not be any dye-bias, so i just went ahead,
> averaged the two values, found out their ratio and
> filtered genes with 2 fold change.
>
If you don't normalize, then the "center" of your ratios may be
significantly off, not to mention the fact that the two arrays may
have
different centers. So, at the very least, I think you have to do
within-arrays normalization of some kind.
Sean
Short answer : It is unlikely that you will get a paper published
whose
results were based on unnormalised data.
Long answer : There are many systematic and unsystematic variation in
microarrays and it may be that in your case that some of these cancel
out nicely before normalisation.
To elaborate further on Sean's comments, let me give you an example.
Suppose you did a batch of arrays and its dye-swaps on today with a
particular PMT setting for scanning. 3 months later, you do another
batch of arrays and dye-swaps but with a higher PMT settings.
Assuming that all other experimental conditions are equal and of high
quality, then the dye-swap pairs would be consistent regardless of
batch. But all the intensity values of the 2nd batch would be much
higher than the 1st batch because of the higher PMT settings and thus
the two batches would not be comparable. In other words, the "center"
of
the two batches are different and normalisation would be useful.
Regards, Adai
On Tue, 2005-04-12 at 14:00 -0400, Sean Davis wrote:
> On Apr 12, 2005, at 1:19 PM, vijayaraj nagarajan wrote:
>
> > dear friends
> > i have situation, where i thought its ok for me not to
> > do normalisation, i am afraid i may be wrong. i want
> > your advice in this regard.
> >
> > we performed a wild type - mutant, dye-swap
> > experiment.
> > when we analysed the intensity values, they were
> > consistant among the two experiment (dye-swap). ie.,
> > almost same values for mutants in both the experiments
> > of the dye-swap.
> > since the values are almost same, i thought there
> > might not be any dye-bias, so i just went ahead,
> > averaged the two values, found out their ratio and
> > filtered genes with 2 fold change.
> >
>
> If you don't normalize, then the "center" of your ratios may be
> significantly off, not to mention the fact that the two arrays may
have
> different centers. So, at the very least, I think you have to do
> within-arrays normalization of some kind.
>
> Sean
>
> _______________________________________________
> Bioconductor mailing list
> Bioconductor@stat.math.ethz.ch
> https://stat.ethz.ch/mailman/listinfo/bioconductor
>
Yeah thats all true
And anyway whats to lose?
-----Original Message-----
From: Adaikalavan Ramasamy
To: Sean Davis
Cc: BioConductor mailing list
Sent: 4/13/05 11:26 AM
Subject: Re: [BioC] is-normalisation-really-required
Short answer : It is unlikely that you will get a paper published
whose
results were based on unnormalised data.
Long answer : There are many systematic and unsystematic variation in
microarrays and it may be that in your case that some of these cancel
out nicely before normalisation.
To elaborate further on Sean's comments, let me give you an example.
Suppose you did a batch of arrays and its dye-swaps on today with a
particular PMT setting for scanning. 3 months later, you do another
batch of arrays and dye-swaps but with a higher PMT settings.
Assuming that all other experimental conditions are equal and of high
quality, then the dye-swap pairs would be consistent regardless of
batch. But all the intensity values of the 2nd batch would be much
higher than the 1st batch because of the higher PMT settings and thus
the two batches would not be comparable. In other words, the "center"
of
the two batches are different and normalisation would be useful.
Regards, Adai
On Tue, 2005-04-12 at 14:00 -0400, Sean Davis wrote:
> On Apr 12, 2005, at 1:19 PM, vijayaraj nagarajan wrote:
>
> > dear friends
> > i have situation, where i thought its ok for me not to
> > do normalisation, i am afraid i may be wrong. i want
> > your advice in this regard.
> >
> > we performed a wild type - mutant, dye-swap
> > experiment.
> > when we analysed the intensity values, they were
> > consistant among the two experiment (dye-swap). ie.,
> > almost same values for mutants in both the experiments
> > of the dye-swap.
> > since the values are almost same, i thought there
> > might not be any dye-bias, so i just went ahead,
> > averaged the two values, found out their ratio and
> > filtered genes with 2 fold change.
> >
>
> If you don't normalize, then the "center" of your ratios may be
> significantly off, not to mention the fact that the two arrays may
have
> different centers. So, at the very least, I think you have to do
> within-arrays normalization of some kind.
>
> Sean
>
> _______________________________________________
> Bioconductor mailing list
> Bioconductor@stat.math.ethz.ch
> https://stat.ethz.ch/mailman/listinfo/bioconductor
>
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Hi!
You might try analysis with and without normalization and take
a look at the results. If they say the same thing than I would
say, no it is not necessary to do normalization.
> dear friends
> i have situation, where i thought its ok for me not to
> do normalisation, i am afraid i may be wrong. i want
> your advice in this regard.
>
> we performed a wild type - mutant, dye-swap
> experiment.
> when we analysed the intensity values, they were
> consistant among the two experiment (dye-swap). ie.,
> almost same values for mutants in both the experiments
> of the dye-swap.
> since the values are almost same, i thought there
> might not be any dye-bias, so i just went ahead,
> averaged the two values, found out their ratio and
> filtered genes with 2 fold change.
>
> so i have done this without normalisation.
> i am afraid, i might be wrong, my 2 fold chaging genes
> might be wrong...
> kindly give me your advice in this regard.
> i did analyse the data with limma, but the topTable
> genes there never correlates with my 2 fold genes.
>
> kindly correct me.
> thanks
>
> vijay
> graduate student
> department of biological sciences
> the university of southern mississippi
> MS, USA
--
Lep pozdrav / With regards,
Gregor Gorjanc
----------------------------------------------------------------------
--
University of Ljubljana
Biotechnical Faculty URI: http://www.bfro.uni-lj.si/MR/ggorjan
Zootechnical Department email: gregor.gorjanc <at> bfro.uni-lj.si
Groblje 3 tel: +386 (0)1 72 17 861
SI-1230 Domzale fax: +386 (0)1 72 17 888
Slovenia
On Apr 13, 2005, at 8:03 AM, Gorjanc Gregor wrote:
> Hi!
>
> You might try analysis with and without normalization and take
> a look at the results. If they say the same thing than I would
> say, no it is not necessary to do normalization.
>
So, if the two results agree, then the results with normalization are
correct; if not then the results with normalization are still correct.
Sounds like we are pretty much stuck with normalization....
Sean
>> dear friends
>> i have situation, where i thought its ok for me not to
>> do normalisation, i am afraid i may be wrong. i want
>> your advice in this regard.
>>
>> we performed a wild type - mutant, dye-swap
>> experiment.
>> when we analysed the intensity values, they were
>> consistant among the two experiment (dye-swap). ie.,
>> almost same values for mutants in both the experiments
>> of the dye-swap.
>> since the values are almost same, i thought there
>> might not be any dye-bias, so i just went ahead,
>> averaged the two values, found out their ratio and
>> filtered genes with 2 fold change.
>>
>> so i have done this without normalisation.
>> i am afraid, i might be wrong, my 2 fold chaging genes
>> might be wrong...
>> kindly give me your advice in this regard.
>> i did analyse the data with limma, but the topTable
>> genes there never correlates with my 2 fold genes.
>>
>> kindly correct me.
>> thanks
>>
>> vijay
>> graduate student
>> department of biological sciences
>> the university of southern mississippi
>> MS, USA
>
> --
> Lep pozdrav / With regards,
> Gregor Gorjanc
>
> --------------------------------------------------------------------
---
> -
> University of Ljubljana
> Biotechnical Faculty URI: http://www.bfro.uni-lj.si/MR/ggorjan
> Zootechnical Department email: gregor.gorjanc <at> bfro.uni-lj.si
> Groblje 3 tel: +386 (0)1 72 17 861
> SI-1230 Domzale fax: +386 (0)1 72 17 888
> Slovenia
>
> _______________________________________________
> Bioconductor mailing list
> Bioconductor@stat.math.ethz.ch
> https://stat.ethz.ch/mailman/listinfo/bioconductor
> -----Original Message-----
> From: Sean Davis [mailto:sdavis2@mail.nih.gov]
> Sent: sre 2005-04-13 14:16
> To: Gorjanc Gregor
> Cc: bioconductor@stat.math.ethz.ch
> Subject: Re: [BioC] is-normalisation-really-required
>
> On Apr 13, 2005, at 8:03 AM, Gorjanc Gregor wrote:
>
> > Hi!
> >
> > You might try analysis with and without normalization and take
> > a look at the results. If they say the same thing than I would
> > say, no it is not necessary to do normalization.
> >
>
> So, if the two results agree, then the results with normalization
are
> correct; if not then the results with normalization are still
correct.
> Sounds like we are pretty much stuck with normalization....
>
> Sean
Why should one do normalization if the results aren't different. But,
in
that case it really does not matter and one can do it or not.
>> dear friends
>> i have situation, where i thought its ok for me not to
>> do normalisation, i am afraid i may be wrong. i want
>> your advice in this regard.
>>
>> we performed a wild type - mutant, dye-swap
>> experiment.
>> when we analysed the intensity values, they were
>> consistant among the two experiment (dye-swap). ie.,
>> almost same values for mutants in both the experiments
>> of the dye-swap.
>> since the values are almost same, i thought there
>> might not be any dye-bias, so i just went ahead,
>> averaged the two values, found out their ratio and
>> filtered genes with 2 fold change.
>>
>> so i have done this without normalisation.
>> i am afraid, i might be wrong, my 2 fold chaging genes
>> might be wrong...
>> kindly give me your advice in this regard.
>> i did analyse the data with limma, but the topTable
>> genes there never correlates with my 2 fold genes.
>>
>> kindly correct me.
>> thanks
>>
>> vijay
>> graduate student
>> department of biological sciences
>> the university of southern mississippi
>> MS, USA
>
> --
> Lep pozdrav / With regards,
> Gregor Gorjanc
>
> --------------------------------------------------------------------
---
> -
> University of Ljubljana
> Biotechnical Faculty URI: http://www.bfro.uni-lj.si/MR/ggorjan
> Zootechnical Department email: gregor.gorjanc <at> bfro.uni-lj.si
> Groblje 3 tel: +386 (0)1 72 17 861
> SI-1230 Domzale fax: +386 (0)1 72 17 888
> Slovenia
>
> _______________________________________________
> Bioconductor mailing list
> Bioconductor@stat.math.ethz.ch
> https://stat.ethz.ch/mailman/listinfo/bioconductor
On Wed, 2005-04-13 at 14:29 +0200, Gorjanc Gregor wrote:
<snip>
> > So, if the two results agree, then the results with normalization
are
> > correct; if not then the results with normalization are still
correct.
> > Sounds like we are pretty much stuck with normalization....
> >
> > Sean
> Why should one do normalization if the results aren't different.
But, in
> that case it really does not matter and one can do it or not.
Perhaps for the following reasons :
1) Generalisability and comparison of results with other datasets
2) Ease of programming and automation
3) Publish-ability
4) In case there were other biases that we were not aware of. How do
you
measure the agreement between two arrays may only show some aspects of
the data. For example, the M-A plot can reveal some biases within an
array that correlation between pairs will not.
There are many clever people (most of them on this list) who have
spent
their time improving preprocessing algorithms. There must be a reason
why they have spent their time and effort on normalisation.
Regards, Adai
Gorjanc and Vijay
This is a misconception as to why to normalize the data. It is not so
that we can get "pleasing" results or agreement between analytic
methods but because statistically it is the correct thing to do. If I
use the wrong statistical test on a set of data (e.g. parametric tests
on data that violates all the assumptions) and it gives the same
result as an appropriate non-parametric analysis that does not make it
"right" and ok to do again. It means I got lucky. If the analysis of
non-normalized data is the same as of normalized data you are lucky
not
right. Sean is on target- if they agree normalize; if they do not
agree
normalize. I would add to that why bother analyzing the non-normalized
data.
Gordon
Gordon A. Barr, Ph.D.
Senior Research Scientist
NYS Psychiatric Institute
Columbia College of Physicians and Surgeons
212-543-5694 (V)
212-543-5467 (F)
"There is no flag large enough to cover the shame of killing innocent
people." -- Howard Zinn
_____________________________________________________
This e-mail is confidential and may be privileged. Use or disclosure
of it by anyone other than a designated addressee is unauthorized. If
you are not an intended recipient, please delete this e-mail.
On Apr 13, 2005, at 8:29 AM, Gorjanc Gregor wrote:
>> -----Original Message-----
>> From: Sean Davis [mailto:sdavis2@mail.nih.gov]
>> Sent: sre 2005-04-13 14:16
>> To: Gorjanc Gregor
>> Cc: bioconductor@stat.math.ethz.ch
>> Subject: Re: [BioC] is-normalisation-really-required
>>
>> On Apr 13, 2005, at 8:03 AM, Gorjanc Gregor wrote:
>>
>>> Hi!
>>>
>>> You might try analysis with and without normalization and take
>>> a look at the results. If they say the same thing than I would
>>> say, no it is not necessary to do normalization.
>>>
>>
>> So, if the two results agree, then the results with normalization
are
>> correct; if not then the results with normalization are still
correct.
>> Sounds like we are pretty much stuck with normalization....
>>
>> Sean
> Why should one do normalization if the results aren't different.
But,
> in
> that case it really does not matter and one can do it or not.
>
>
>>> dear friends
>>> i have situation, where i thought its ok for me not to
>>> do normalisation, i am afraid i may be wrong. i want
>>> your advice in this regard.
>>>
>>> we performed a wild type - mutant, dye-swap
>>> experiment.
>>> when we analysed the intensity values, they were
>>> consistant among the two experiment (dye-swap). ie.,
>>> almost same values for mutants in both the experiments
>>> of the dye-swap.
>>> since the values are almost same, i thought there
>>> might not be any dye-bias, so i just went ahead,
>>> averaged the two values, found out their ratio and
>>> filtered genes with 2 fold change.
>>>
>>> so i have done this without normalisation.
>>> i am afraid, i might be wrong, my 2 fold chaging genes
>>> might be wrong...
>>> kindly give me your advice in this regard.
>>> i did analyse the data with limma, but the topTable
>>> genes there never correlates with my 2 fold genes.
>>>
>>> kindly correct me.
>>> thanks
>>>
>>> vijay
>>> graduate student
>>> department of biological sciences
>>> the university of southern mississippi
>>> MS, USA
>>
>> --
>> Lep pozdrav / With regards,
>> Gregor Gorjanc
>>
>>
----------------------------------------------------------------------
>> -
>> -
>> University of Ljubljana
>> Biotechnical Faculty URI: http://www.bfro.uni-
lj.si/MR/ggorjan
>> Zootechnical Department email: gregor.gorjanc <at> bfro.uni-
lj.si
>> Groblje 3 tel: +386 (0)1 72 17 861
>> SI-1230 Domzale fax: +386 (0)1 72 17 888
>> Slovenia
>>
>> _______________________________________________
>> Bioconductor mailing list
>> Bioconductor@stat.math.ethz.ch
>> https://stat.ethz.ch/mailman/listinfo/bioconductor
>
> _______________________________________________
> Bioconductor mailing list
> Bioconductor@stat.math.ethz.ch
> https://stat.ethz.ch/mailman/listinfo/bioconductor
hi friends
i really appreciate the sort of advice and suggestions
that went in to this topic.
thanks a lot for spending your time and thoughts on
this.
i could understand the logic behind both the views.
now, i am going to try as many methods as available
for analysing the quality of our data... from various
aspects.
thank you so much.
vijay