[BioC] Detection calls and LIMMA
Richard Friedman
friedman at cancercenter.columbia.edu
Wed Mar 2 20:14:47 CET 2011
Dear Gordon,
Can you suggest how to define "some modest evidence of expression"
in Affymetrix arrays filtered with RMA
or GCRMA which does not give a presence-or-absence call?
Thanks and best wishes,
Rich
On Mar 1, 2011, at 7:50 PM, Gordon K Smyth wrote:
> Deaer Avhena,
>
> I agree with Wolfgang that filtering is useful. In my lab, the
> standard practice is to filter probes that fail to show some modest
> evidence for expression on at least n arrays, where n is the minimum
> group size. For example, if we compare wt (with 2 replicate arrays)
> to a mutant (with 3 replicate arrays), we filter probes that are
> Present on fewer than 2 arrays.
>
> This is because we want to keep any probe that is expressed in at
> least one of the experimental conditions. If a probe is expressed
> in one of the conditions, then it should appear consistently across
> the replicates for that condition.
>
> Best wishes
> Gordon
>
>> Date: Mon, 28 Feb 2011 11:35:42 -0500
>> From: avehna <avhena at gmail.com>
>> To: whuber at embl.de
>> Cc: bioconductor at r-project.org
>> Subject: Re: [BioC] Detection calls and LIMMA
>>
>> Dear Wolfgang,
>>
>> Thank you for your response, I agree with you. I will read the
>> paper now...
>>
>> Best Regards,
>> Avhena
>>
>> On Mon, Feb 28, 2011 at 4:38 AM, Wolfgang Huber <whuber at embl.de>
>> wrote:
>>
>>> Hi Avhena
>>>
>>> it is not required, but properly applied filtering can increase
>>> detection
>>> power in your experiment while still controlling type-I error (false
>>> positives). The example you mention seems to be one that you want
>>> to keep
>>> though, since it is a good candidate for being up-regulated in the
>>> Treatment
>>> condition. One possibly reasonable criterion would be, e.g., to
>>> filter out
>>> all probesets that are called 'Absent' on all arrays. Some further
>>> discussion on the topic is also here:
>>>
>>> [1] Bourgon, Gentleman and Huber. Independent filtering increases
>>> detection
>>> power for high-throughput experiments. PNAS, 107(21):9546-9551,
>>>
>>> Best wishes
>>> Wolfgang
>>>
>>>
>>> Il Feb/28/11 6:51 AM, avehna ha scritto:
>>>
>>>> Hi All,
>>>>
>>>> I have a basic question. Is it required to filter the microarray
>>>> data
>>>> based
>>>> on the detection calls (A/M/P) before analyzing it with LIMMA?
>>>>
>>>> What if I have the following scenario (for example):
>>>>
>>>> Control Control Control Treatment
>>>> Treatment Treatment
>>>> 1367813_at A A P
>>>> P P P
>>>>
>>>> Please note that this gene is just "present/detected" once in the
>>>> Control,
>>>> but it is present in all the replicates of the treatment. In this
>>>> case:
>>>> what
>>>> would be the right thing to do? To eliminate it from the analysis
>>>> or keep
>>>> it
>>>> and consider it up or down depending on the signal of the
>>>> treatment?
>>>>
>>>> Thank a lot!
>>>> Avhena
>
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