[BioC] Non linear intensities
David martin
vilanew at gmail.com
Fri Jul 24 11:22:00 CEST 2009
Ok thanks,
Kasper Daniel Hansen wrote:
> This is well known and is (one of) the reason(s) for the difficulty with
> analyzing microarrays. Note that if you compute fold change, it looks a
> lot better which is why we use fold change. Also note that
> normalization (hopefully) will help you a bit.
>
> But in the end there will be genes where the fold change is not great
> either (like 'C" in your example), and you will need to learn how to
> live with it.
>
> There are no great way to correct for it, since the correction typically
> depends on the probe used to measure the signal. If you had the money
> and ability to generate a sample in which _all_ genes are expressed and
> you then do a dilution experiment you might be able to estimate this.
> There are attempts at correcting for this computationally, but they are
> typically not very impressive.
>
> For more details, see the 100s of papers on microarray analysis and
> probe effects.
>
> Kasper
>
> On Jul 23, 2009, at 8:25 , David martin wrote:
>
>> Hello,
>> I have a naive question. In my experiment i have computed different
>> standard curves for different genes.
>> I have noticed that my data is not following a linear pattern (sorry
>> i'm not statistician so don't know if this is the word).
>> For e.g
>> GENES [1µg] [2µg] [5µg] [10µg]
>> gene A 500 800 1800 3500
>> gene B 450 650 1700 3400
>> gene C 200 300 600 1300
>>
>> As you can see the intensities are not as I would expect (there is no
>> linear intensity based on the concentration); Since my data shows that
>> there is a bias i would like to correct the data and adjust according.
>> For instance, i think there might be a coeffecient, which based on the
>> intensitiy would help to correct the intenstities. At the end if for a
>> gene X i find an intensity of 500 i could assume that it should higher
>> than that to have a 2 fold change and that it should probably be
>> somewhere around 1000.
>>
>> Thanks for your help ??
>>
>> thanks for your help.
>>
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