Is it sensable to use p-value detection in illumina bead array as present, absent or marginal call
3
1
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@agaz-hussain-wani-7620
Last seen 6.6 years ago
India

I dealt with some Affymetrix data , a part of which is pasted below

ID_REF
VALUE
ABS_CALL
DETECTION P-VALUE
10071_s_at
 3473.6
 P
         0.000219
1053_at 
 643.2
 P
         0.000673
117_at
 564
 P
         0.000322
1255_g_at
 9.4
 A
         0.602006
1294_at
 845.6
 P
         0.000468
1320_at
 94.3
 A
         0.204022
1405_i_at
 6546.2
 M
         0.0631
14312_at
 54.1
 P
         0.003067
1438_at
 461.3
 P
         0.000562

 

Where i easily can decide the calls either Present, Absent or Marginal. 

I have some illumina bead array data also, shown below

ID
ILMN_1681101
Pvalue    Intenstiy
0.27403

6.966361247
ILMN_2094942
0.18961
7.00337736
ILMN_1703142
0
7.600470477
ILMN_2271336
0.37662
6.935459748
ILMN_2337789
0.08312
7.064877464
ILMN_1669592
0.00519
7.24596858
ILMN_1735038
0.05325
7.089582893

Can i use pvalue here to make Present, Absent or Marginal call same as Affymetrix data. Thanks

illumina pvalue • 3.1k views
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@gordon-smyth
Last seen 3 hours ago
WEHI, Melbourne, Australia

Yes. See the Illumina BeadChip case study in Section 17.3 of the edgeR User's Guide, which reads the detection p-values and uses them to filter probes.

You might also find this article interesting: http://www.ncbi.nlm.nih.gov/pubmed/20056656

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svlachavas ▴ 840
@svlachavas-7225
Last seen 13 months ago
Germany/Heidelberg/German Cancer Resear…

 Dear hussainaaghaz,

yes it is sensible and useful to use the DetectionValue in Illumina to determine whether or not a probe is detected above a threshold level in each of the samples in your experiment. Thus, if you use the default detection p-value threshold( < 0.01), you can use the below naive functions to remove a probe from all the samples if is not detected on any of your total number of arrays. So a probe that is detected on at least one sample remains:

present_probes <- detectionCall(lumi_data) # lumi_data your raw data prior normalization

selected_probes <- exprs(norm_data)[present_probes >0, ]

and then you can see how many probes have remained and check your intensity distribution with some plots like histogram or densityPlot

 

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Additionaly if you have preprocessed your data with limma,

you can use 

expressed_probes <- rowSums(norm.data$other$Detection < 0.01) >=N #  N=Number of samples you want to be present and norm.data your normalized set class:"EList"
filtered <- norm.data[expressed,]

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Dear Svlachavas, thanks for your comments.

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@agaz-hussain-wani-7620
Last seen 6.6 years ago
India

Thanks dear Smyth for help and pointing to reference.

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