DEXSeq continous variable in model
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@alex-gutteridge-2935
Last seen 9.6 years ago
United States
Hi, I have a time course RNASeq experiment and I'd like to detect DEU between early and late stages. I am trying to use 'Age' as a continuous variable in my design, but I'm getting an error which I suspect is related to this e.g: > summary(sample.data.ipsc[,1:6]) Sample CellType Subtype Donor Age Length:28 iPSC:28 iPSC :28 4555 :28 Min. : 2.000 Class :character HBR : 0 D4721 : 0 1st Qu.: 4.000 Mode :character L2 : 0 D4749 : 0 Median : 8.000 L3 : 0 D6002 : 0 Mean : 7.821 L4 : 0 D6005 : 0 3rd Qu.:10.500 L5 : 0 D6008 : 0 Max. :14.000 (Other): 0 (Other): 0 Passage 42:3 48:7 49:5 52:6 56:7 > dxd = DEXSeqDataSetFromHTSeq(countFiles, sampleData=sample.data.ipsc, design= ~ sample + exon + Age:exon, flattenedfile=flattenedFile) > BPPARAM = MulticoreParam(workers=24) > dxd = estimateSizeFactors(dxd) > dxd = estimateDispersions(dxd, BPPARAM=BPPARAM) > dxd = testForDEU(dxd, BPPARAM=BPPARAM) > dxd = estimateExonFoldChanges(dxd, fitExpToVar="Age", BPPARAM=BPPARAM) Error: 8346 errors; first error: Error in FUN(1:3[[1L]], ...): Non-factor in model frame For more information, use bplasterror(). To resume calculation, re- call the function and set the argument 'BPRESUME' to TRUE or wrap the previous call in bpresume(). First traceback: 31: estimateExonFoldChanges(dxd, fitExpToVar = "Age", BPPARAM = BPPARAM) 30: bplapply(testablegenes, geteffects, BPPARAM = BPPARAM) 29: bplapply(testablegenes, geteffects, BPPARAM = BPPARAM) 28: mclapply(X = X, FUN = FUN, ..., mc.set.seed = BPPARAM$setSeed, mc.silent = !BPPARAM$verbose, mc.cores = bpworkers(BPPARAM), mc.cleanup = if (BPPARAM$cleanup) BPPARAM$cleanupSignal else FALSE) 27: lapply(seq_len(cores), inner.do) 26: lapply(seq_len(cores), inner.do) 25: FUN(1:24[[1L]], ...) 24: sendMaster(try(lapply(X = S, FUN = FUN, ...), silent = TRUE)) 23: parallel:::sendMaster(...) 22: try(lapply(X = S, FUN = FUN, ...), silent = TRUE) 21: tryCatch(expr, error = function(e) Can DEXSeq accept a model with a continuous variable? Does it make sense to do so? (I do the same thing with DESeq2 to detected DE and it works fine). Is this error due to that? Note that all the other steps seem to run fine and I can get results (though I don't have many significant hits - not sure if this is related or not). If not what is best practice? Just split the data set into 'early' and 'late' samples and run that as a factor? Alex Gutteridge > sessionInfo() R version 3.1.0 (2014-04-10) Platform: x86_64-unknown-linux-gnu (64-bit) locale: [1] LC_CTYPE=en_US.UTF-8 LC_NUMERIC=C [3] LC_TIME=en_US.UTF-8 LC_COLLATE=en_US.UTF-8 [5] LC_MONETARY=en_US.UTF-8 LC_MESSAGES=en_US.UTF-8 [7] LC_PAPER=en_US.UTF-8 LC_NAME=C [9] LC_ADDRESS=C LC_TELEPHONE=C [11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C attached base packages: [1] parallel stats graphics grDevices utils datasets methods [8] base other attached packages: [1] stringr_0.6.2 [2] DEXSeq_1.10.8 [3] BiocParallel_0.6.1 [4] reshape_0.8.5 [5] ggplot2_1.0.0 [6] matrixStats_0.10.0 [7] statmod_1.4.20 [8] pcaMethods_1.54.0 [9] Homo.sapiens_1.1.2 [10] TxDb.Hsapiens.UCSC.hg19.knownGene_2.14.0 [11] org.Hs.eg.db_2.14.0 [12] GO.db_2.14.0 [13] RSQLite_0.11.4 [14] DBI_0.2-7 [15] OrganismDbi_1.6.0 [16] GenomicFeatures_1.16.2 [17] AnnotationDbi_1.26.0 [18] Biobase_2.24.0 [19] limma_3.20.8 [20] DESeq2_1.4.5 [21] RcppArmadillo_0.4.320.0 [22] Rcpp_0.11.2 [23] GenomicRanges_1.16.3 [24] GenomeInfoDb_1.0.2 [25] IRanges_1.22.9 [26] BiocGenerics_0.10.0 [27] gplots_2.14.1 [28] RColorBrewer_1.0-5 loaded via a namespace (and not attached): [1] annotate_1.42.1 BatchJobs_1.3 BBmisc_1.7 [4] biomaRt_2.20.0 Biostrings_2.32.1 bitops_1.0-6 [7] brew_1.0-6 BSgenome_1.32.0 caTools_1.17 [10] checkmate_1.2 codetools_0.2-8 colorspace_1.2-4 [13] digest_0.6.4 fail_1.2 foreach_1.4.2 [16] gdata_2.13.3 genefilter_1.46.1 geneplotter_1.42.0 [19] GenomicAlignments_1.0.3 graph_1.42.0 grid_3.1.0 [22] gtable_0.1.2 gtools_3.4.1 hwriter_1.3 [25] iterators_1.0.7 KernSmooth_2.23-12 labeling_0.2 [28] lattice_0.20-29 locfit_1.5-9.1 MASS_7.3-33 [31] munsell_0.4.2 plyr_1.8.1 proto_0.3-10 [34] RBGL_1.40.0 RCurl_1.95-4.1 reshape2_1.4 [37] R.methodsS3_1.6.1 Rsamtools_1.16.1 rtracklayer_1.24.2 [40] scales_0.2.4 sendmailR_1.1-2 splines_3.1.0 [43] stats4_3.1.0 survival_2.37-7 tools_3.1.0 [46] XML_3.98-1.1 xtable_1.7-3 XVector_0.4.0 [49] zlibbioc_1.10.0
RNASeq GO DEXSeq DESeq2 RNASeq GO DEXSeq DESeq2 • 1.3k views
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Entering edit mode
@alex-gutteridge-2935
Last seen 9.6 years ago
United States
On 29-07-2014 10:00, Alex Gutteridge wrote: > Hi, > > I have a time course RNASeq experiment and I'd like to detect DEU > between early and late stages. I am trying to use 'Age' as a > continuous variable in my design, but I'm getting an error which I > suspect is related to this e.g: > >> summary(sample.data.ipsc[,1:6]) > Sample CellType Subtype Donor Age > Length:28 iPSC:28 iPSC :28 4555 :28 Min. : 2.000 > Class :character HBR : 0 D4721 : 0 1st Qu.: 4.000 > Mode :character L2 : 0 D4749 : 0 Median : 8.000 > L3 : 0 D6002 : 0 Mean : 7.821 > L4 : 0 D6005 : 0 3rd Qu.:10.500 > L5 : 0 D6008 : 0 Max. :14.000 > (Other): 0 (Other): 0 > Passage > 42:3 > 48:7 > 49:5 > 52:6 > 56:7 > >> dxd = DEXSeqDataSetFromHTSeq(countFiles, > sampleData=sample.data.ipsc, > design= ~ sample + exon + Age:exon, > flattenedfile=flattenedFile) > >> BPPARAM = MulticoreParam(workers=24) > >> dxd = estimateSizeFactors(dxd) >> dxd = estimateDispersions(dxd, BPPARAM=BPPARAM) >> dxd = testForDEU(dxd, BPPARAM=BPPARAM) >> dxd = estimateExonFoldChanges(dxd, fitExpToVar="Age", BPPARAM=BPPARAM) > Error: 8346 errors; first error: > Error in FUN(1:3[[1L]], ...): Non-factor in model frame > > For more information, use bplasterror(). To resume calculation, re- call > the function and set the argument 'BPRESUME' to TRUE or wrap the > previous call in bpresume(). > > First traceback: > 31: estimateExonFoldChanges(dxd, fitExpToVar = "Age", BPPARAM = > BPPARAM) > 30: bplapply(testablegenes, geteffects, BPPARAM = BPPARAM) > 29: bplapply(testablegenes, geteffects, BPPARAM = BPPARAM) > 28: mclapply(X = X, FUN = FUN, ..., mc.set.seed = BPPARAM$setSeed, > mc.silent = !BPPARAM$verbose, mc.cores = bpworkers(BPPARAM), > mc.cleanup = if (BPPARAM$cleanup) BPPARAM$cleanupSignal else > FALSE) > 27: lapply(seq_len(cores), inner.do) > 26: lapply(seq_len(cores), inner.do) > 25: FUN(1:24[[1L]], ...) > 24: sendMaster(try(lapply(X = S, FUN = FUN, ...), silent = TRUE)) > 23: parallel:::sendMaster(...) > 22: try(lapply(X = S, FUN = FUN, ...), silent = TRUE) > 21: tryCatch(expr, error = function(e) > > Can DEXSeq accept a model with a continuous variable? Does it make > sense to do so? (I do the same thing with DESeq2 to detected DE and it > works fine). Is this error due to that? Note that all the other steps > seem to run fine and I can get results (though I don't have many > significant hits - not sure if this is related or not). If not what is > best practice? Just split the data set into 'early' and 'late' samples > and run that as a factor? > > Alex Gutteridge To sort of answer my own question: cutting the age vector into two bins (early <8 weeks and late >8 weeks) and using that factor seems to work and give many significant hits: > sample.data.ipsc$AgeBin = cut(sample.data.ipsc$Age,2) > dxd = DEXSeqDataSetFromHTSeq(countFiles, sampleData=sample.data.ipsc, design= ~ sample + exon + AgeBin:exon, flattenedfile=flattenedFile) > BPPARAM = MulticoreParam(workers=12) > dxd = estimateSizeFactors(dxd) > dxd = estimateDispersions(dxd, BPPARAM=BPPARAM) > dxd = testForDEU(dxd, BPPARAM=BPPARAM) Which makes me think that DEXSeq wasn't doing what I hoped with the previous analysis (quite apart from the error). Is there any way to rejig the design to cope with a continuous variable as opposed to a factor? I *think* the underlying biological question makes sense: Are there exons showing DEU that correlates with time? Alex Gutteridge
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