Help for Affymetrix HTA 2.0 [transcript (gene) version] annotation
1
0
Entering edit mode
Biomed • 0
@biomed-17196
Last seen 6.2 years ago

Hi all,

It's my first-time to analysis Affymetrix HTA 2.0 arrays [transcript (gene) version], data source https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi. As a rookie, I have been bothered by its annotation for a long time, really hoping there would be someone teach me something. Thank you in advance!

The data probes like this: At first sight, there are 5 kinds of probes in this data?Sorry for my weak knowledge of probe sets.

AFFX-r2-P1-cre-5_at
ERCC-00171_st
ERCCmix1step1
ERCC-00002_st
JUC01000985.hg.1

Referring to some experience in Bioconductor, I used hta20transcriptcluster.db package to complete annotation, however, there are so many NA in the last result. I must have missed something. Are there someone so kind to help me understand my faults? 

Thank you very much.

 

hta2.0 annotation transcripts • 2.3k views
ADD COMMENT
0
Entering edit mode
svlachavas ▴ 840
@svlachavas-7225
Last seen 13 months ago
Germany/Heidelberg/German Cancer Resear…

Hi mzcs.csu,

have a detailed check on the following posts, they would be very helpful:

A: Appropriate pre-processing pipeline for Human Transcriptome Array HTA 2.0 with o

A: difference between pd.hugene.2.1.st and hugene21sttranscriptcluster.db

Also, a reproducible code chunk with the exact steps you performed would be very helpful-

Best,

Efstathios

ADD COMMENT
0
Entering edit mode

Thank you! Svlachavas.

Obviously, you are experienced in HTA 2.0. I have some other questions. Can you tell me the correct answer?

Q1, because the oligo can only support the pretreatment process of the oligonucleotide microarray, can I start the analysis directly with the GEO series Metrix files? I just want to filter the DEG. Another, I found that if I read the series Metrix files getGeo(), GEOquery packages, load data without probes (both are NA), of course, fData() is nothing. When I load another HTA 2.0 data, GSE93742 https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi does not display this status. What are the potential reasons? Due to the strange situation above, I loaded the expression data after processing in Excel.

Q2, does the angle of view filter do use LIMMA? I read an article before that LIMMA can only filter probe level differences.

Looking forward to your reply!

 

ADD REPLY
0
Entering edit mode

Please, try to answer in English with a complete reply, i did not understand anything from your above answer !!

ADD REPLY
0
Entering edit mode

I'm so sorry for my careless! It's weird that I really add the reply in English! Apologize again!

Here is my formal answer:

Thank you! Svlachavas.

Obviously, you are experienced in HTA 2.0. I have some other questions. Can you tell me the correct answer?

Q1, because the oligo can only support the pretreatment process of the oligonucleotide microarray, can I start the analysis directly with the GEO series Metrix files? I just want to filter the DEG. Another, I found that if I read the series Metrix files getGeo(), GEOquery packages, load data without probes (both are NA), of course, fData() is nothing. When I load another HTA 2.0 data, GSE93742 https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi does not display this status. What are the potential reasons? Due to the strange situation above, I loaded the expression data after processing in Excel.

Q2, does the angle of view filter do use LIMMA? I read an article before that LIMMA can only filter probe level differences.

Looking forward to your reply!

Thanks for your precious time again.

Best wishes to you!

 

ADD REPLY
0
Entering edit mode

eSet=read.delim("GSE73219_series_matrix.txt")

昏暗(eSet)#[1] 70523 13</font></font>

rownames(eSet)=eSet$ID_REF

eSet=eSet[,-1]

ESET=new("ExpressionSet", exprs=as.matrix(eSet))

##limma DEGs filtering

cell_line=factor(rep(c("Hep3B","Huh1"),each=6))

treat=factor(rep(c("scr","RDBP"),each=3,times=2))

combine=paste(cell_line,treat,sep="_")

design=model.matrix(~0+combine)

design=design[,c(2,1,4,3)]

colnames(design)=c("Hep3B_scr","Hep3B_RDBP","Huh1_scr","Huh1_RDBP")

rownames(design)=rownames(p_data)

cont_matrix=makeContrasts(Diff1=Hep3B_RDBP-Hep3B_scr, Diff2=Huh1_RDBP-Huh1_scr, DIFF=(Hep3B_RDBP-Hep3B_scr)-(Huh1_RDBP-Huh1_scr), levels = design)

fit1=lmFit(eSet,design)

fit2=contrasts.fit(fit1,cont_matrix)

result1=decideTests(fit2)

vennDiagram(vennCounts(result1))

result2=topTableF(fit3,number = Inf,p.value = 0.05)

fit3=eBayes(fit2)

ADD REPLY

Login before adding your answer.

Traffic: 547 users visited in the last hour
Help About
FAQ
Access RSS
API
Stats

Use of this site constitutes acceptance of our User Agreement and Privacy Policy.

Powered by the version 2.3.6