DESeq2 iterative size factor normalization did not converge
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couchc • 0
@couchc-13917
Last seen 6.6 years ago

I am attempting to use DESeq2 to model differential abundance in microbiome count data. I have been performing my other analyses in phyloseq, and I used the phyloseq_to_deseq2() conversion prior to attempting differential abundance analysis:

diffAbund = subset_samples(realData, CaptureNumber == 10)

diffAbund = phyloseq_to_deseq2(diffAbund, ~ Sex)

 

No error messages so far. But when I run DESeq, I get the following message:

diffAbund = DESeq(diffAbund, test = "Wald", fitType = "parametric")

estimating size factors

Error in estimateSizeFactorsForMatrix(counts(object), locfunc = locfunc, : every gene contains at least one zero, cannot compute log geometric means

A google search revealed that using estimateSizeFactors with type = "iterate" could solve the problem. However, when I attempt that strategy I get the following error message:

estimateSizeFactors(diffAbund, type = "iterate")
Error in estimateSizeFactorsIterate(object) : 
  iterative size factor normalization did not converge

I have checked the data for NAs to make sure that isn't the source of the problem, and there are none in the dataset. Any suggestions for how to get around this issue would be much appreciated. 

Here is my session info:

R version 3.4.1 (2017-06-30)
Platform: x86_64-w64-mingw32/x64 (64-bit)
Running under: Windows >= 8 x64 (build 9200)

Matrix products: default

locale:
[1] LC_COLLATE=English_United States.1252 
[2] LC_CTYPE=English_United States.1252   
[3] LC_MONETARY=English_United States.1252
[4] LC_NUMERIC=C                          
[5] LC_TIME=English_United States.1252    

attached base packages:
[1] stats4    parallel  stats     graphics  grDevices utils    
[7] datasets  methods   base     

other attached packages:
 [1] DESeq2_1.16.1              SummarizedExperiment_1.6.3
 [3] DelayedArray_0.2.7         matrixStats_0.52.2        
 [5] Biobase_2.36.2             GenomicRanges_1.28.3      
 [7] GenomeInfoDb_1.12.2        IRanges_2.10.2            
 [9] S4Vectors_0.14.3           BiocGenerics_0.22.0       
[11] lmerTest_2.0-33            lme4_1.1-13               
[13] Matrix_1.2-10              reshape2_1.4.2            
[15] vegan_2.4-3                lattice_0.20-35           
[17] permute_0.9-4              dplyr_0.7.1               
[19] ggplot2_2.2.1              phyloseq_1.20.0           
[21] ancom.R_1.1-3              doParallel_1.0.10         
[23] iterators_1.0.8            shiny_1.0.5               
[25] Rcpp_0.12.12               foreach_1.4.3             

loaded via a namespace (and not attached):
 [1] nlme_3.1-131            bitops_1.0-6           
 [3] bit64_0.9-7             RColorBrewer_1.1-2     
 [5] tools_3.4.1             backports_1.1.0        
 [7] R6_2.2.2                DT_0.2                 
 [9] rpart_4.1-11            DBI_0.7                
[11] Hmisc_4.0-3             lazyeval_0.2.0         
[13] mgcv_1.8-17             colorspace_1.3-2       
[15] ade4_1.7-6              nnet_7.3-12            
[17] gridExtra_2.2.1         bit_1.1-12             
[19] compiler_3.4.1          htmlTable_1.9          
[21] exactRankTests_0.8-29   sandwich_2.4-0         
[23] labeling_0.3            scales_0.4.1           
[25] checkmate_1.8.3         mvtnorm_1.0-6          
[27] genefilter_1.58.1       stringr_1.2.0          
[29] digest_0.6.12           foreign_0.8-69         
[31] minqa_1.2.4             XVector_0.16.0         
[33] base64enc_0.1-3         pkgconfig_2.0.1        
[35] htmltools_0.3.6         htmlwidgets_0.9        
[37] rlang_0.1.1             RSQLite_2.0            
[39] bindr_0.1               zoo_1.8-0              
[41] jsonlite_1.5            BiocParallel_1.10.1    
[43] acepack_1.4.1           RCurl_1.95-4.8         
[45] magrittr_1.5            modeltools_0.2-21      
[47] GenomeInfoDbData_0.99.0 Formula_1.2-2          
[49] biomformat_1.4.0        munsell_0.4.3          
[51] ape_4.1                 stringi_1.1.5          
[53] multcomp_1.4-6          MASS_7.3-47            
[55] zlibbioc_1.22.0         rhdf5_2.20.0           
[57] plyr_1.8.4              blob_1.1.0             
[59] grid_3.4.1              Biostrings_2.44.1      
[61] splines_3.4.1           annotate_1.54.0        
[63] multtest_2.32.0         locfit_1.5-9.1         
[65] knitr_1.16              igraph_1.0.1           
[67] geneplotter_1.54.0      codetools_0.2-15       
[69] XML_3.98-1.9            glue_1.1.1             
[71] latticeExtra_0.6-28     data.table_1.10.4      
[73] nloptr_1.0.4            httpuv_1.3.5           
[75] gtable_0.2.0            assertthat_0.2.0       
[77] mime_0.5                coin_1.2-1             
[79] xtable_1.8-2            survival_2.41-3        
[81] tibble_1.3.3            memoise_1.1.0          
[83] AnnotationDbi_1.38.1    bindrcpp_0.2           
[85] cluster_2.0.6           TH.data_1.0-8

 

deseq2 microbiome phyloseq • 3.3k views
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3
Entering edit mode
@mikelove
Last seen 5 hours ago
United States

Can you try the "poscounts" type instead? This solution emerged out of feedback from phyloseq developers and users.

And this was shown in a preprint to perform well for zero inflated NB data:

http://www.biorxiv.org/content/early/2017/06/30/157982

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Entering edit mode

Thank you Michael, that worked perfectly!

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