1 Changelog

202405: Changed excel output directory to match organization scheme in box. Generally this means files go to analyses/transcriptome/{type_of_contrast}/{date}/something_{suffix}.xlsx Where suffix is _table for the full tables and _sig for the significant genes and will include information about whether sva etc was used. 202405: Adding some goseq results.

2 Contrasts

** Note! ** The new definitions of susceptible/resistant are tighter than ever before, as a result there are no longer any ambiguous samples. Thus I removed the ambiguous contrasts in the following block.

zymodeme_keeper <- list(
  "zymodeme" = c("z23", "z22"))
susceptibility_keepers <- list(
  "resistant_sensitive" = c("resistant", "sensitive"))
##    "resistant_ambiguous" = c("resistant", "ambiguous"),
##    "sensitive_ambiguous" = c("sensitive", "ambiguous"))

3 Parasite Ontology data

Just a reminder that in data_structures.Rmd I created lp_go and lp_lengths

3.1 Zymodeme enzyme gene IDs

Najib read me an email listing off the gene names associated with the zymodeme classification. I took those names and cross referenced them against the Leishmania panamensis gene annotations and found the following:

They are:

  1. ALAT: LPAL13_120010900 – alanine aminotransferase
  2. ASAT: LPAL13_340013000 – aspartate aminotransferase
  3. G6PD: LPAL13_000054100 – glucase-6-phosphate 1-dehydrogenase
  4. NH: LPAL13_14006100, LPAL13_180018500 – inosine-guanine nucleoside hydrolase
  5. MPI: LPAL13_320022300 (maybe) – mannose phosphate isomerase (I chose phosphomannose isomerase)

Given these 6 gene IDs (NH has two gene IDs associated with it), I can do some looking for specific differences among the various samples.

3.1.1 Expression levels of zymodeme genes

The following creates a colorspace (red to green) heatmap showing the observed expression of these genes in every sample.

my_genes <- c("LPAL13_120010900", "LPAL13_340013000", "LPAL13_000054100",
              "LPAL13_140006100", "LPAL13_180018500", "LPAL13_320022300",
              "other")
my_names <- c("ALAT", "ASAT", "G6PD", "NHv1", "NHv2", "MPI", "other")

zymo_six_genes <- exclude_genes(lp_two_strains, ids = my_genes, method = "keep")
## Note, I renamed this to subset_genes().
## subset_genes(), before removal, there were 8778 genes, now there are 6.
## There are 93 samples which kept less than 90 percent counts.
## TMRC20001 TMRC20002 TMRC20065 TMRC20004 TMRC20005 TMRC20066 TMRC20039 TMRC20037 
##   0.11877   0.08774   0.12694   0.11685   0.13185   0.10680   0.13447   0.11226 
## TMRC20038 TMRC20067 TMRC20068 TMRC20041 TMRC20015 TMRC20009 TMRC20010 TMRC20016 
##   0.11215   0.10714   0.11141   0.12526   0.10922   0.11134   0.10190   0.10331 
## TMRC20011 TMRC20012 TMRC20013 TMRC20017 TMRC20014 TMRC20018 TMRC20019 TMRC20070 
##   0.10780   0.11506   0.11721   0.10369   0.10397   0.11309   0.11818   0.11052 
## TMRC20020 TMRC20021 TMRC20022 TMRC20024 TMRC20036 TMRC20069 TMRC20033 TMRC20026 
##   0.10912   0.10639   0.12659   0.11237   0.11854   0.11358   0.10945   0.13413 
## TMRC20031 TMRC20076 TMRC20073 TMRC20055 TMRC20079 TMRC20071 TMRC20078 TMRC20094 
##   0.09875   0.12134   0.12195   0.13396   0.12432   0.11838   0.13113   0.11830 
## TMRC20042 TMRC20058 TMRC20072 TMRC20059 TMRC20048 TMRC20057 TMRC20088 TMRC20056 
##   0.13499   0.11714   0.14327   0.10855   0.10534   0.13253   0.12709   0.13211 
## TMRC20060 TMRC20077 TMRC20074 TMRC20063 TMRC20053 TMRC20052 TMRC20064 TMRC20075 
##   0.10701   0.12627   0.12216   0.12028   0.11890   0.11538   0.11880   0.11144 
## TMRC20051 TMRC20050 TMRC20049 TMRC20062 TMRC20110 TMRC20080 TMRC20043 TMRC20083 
##   0.12924   0.11354   0.14115   0.13212   0.13576   0.11954   0.11182   0.12063 
## TMRC20054 TMRC20085 TMRC20046 TMRC20093 TMRC20089 TMRC20047 TMRC20090 TMRC20044 
##   0.12548   0.12165   0.13005   0.13393   0.11746   0.12230   0.11411   0.13446 
## TMRC20045 TMRC20105 TMRC20108 TMRC20109 TMRC20098 TMRC20096 TMRC20101 TMRC20092 
##   0.12583   0.12061   0.11419   0.11505   0.11619   0.11116   0.11628   0.11304 
## TMRC20082 TMRC20102 TMRC20099 TMRC20100 TMRC20091 TMRC20084 TMRC20087 TMRC20103 
##   0.10253   0.11246   0.11740   0.10696   0.12652   0.11096   0.12368   0.13507 
## TMRC20104 TMRC20086 TMRC20107 TMRC20081 TMRC20095 
##   0.11464   0.10615   0.09249   0.10096   0.06536
strain_norm <- normalize(zymo_six_genes, convert = "rpkm", filter = TRUE, transform = "log2",
                         length_column = "cds_length")
## Removing 0 low-count genes (6 remaining).
zymo_heatmap <- plot_sample_heatmap(strain_norm, row_label = my_names)
zymo_heatmap

lp_norm <- normalize(lp_two_strains, filter = TRUE, convert = "cpm",
                     norm = "quant", transform = "log2", length_column = "cds_length")
## Removing 142 low-count genes (8636 remaining).
## transform_counts: Found 86 values equal to 0, adding 1 to the matrix.
zymo_heatmap_all <- plot_sample_heatmap(lp_norm)
zymo_heatmap_all

3.2 Compare to highly expressed, variant genes

I want to compare the above heatmap with one which is comprised of all genes with some ‘significantly high’ expression value and also a not-negligible coefficient of variance.

zymo_high_genes <- normalize(lp_two_strains, filter = "cv", cv_min = 0.9)
## Removing 4731 low-count genes (4047 remaining).
high_strain_norm <- normalize(zymo_high_genes, convert = "rpkm",
                              norm = "quant", transform = "log2", length_column = "cds_length")
## transform_counts: Found 10008 values equal to 0, adding 1 to the matrix.
zymo_heatmap <- plot_sample_heatmap(high_strain_norm, row_label = my_names)
zymo_heatmap

I think this plot suggests that the difference between the two primary strains is not really one of a few specific genes, but instead a global pattern.

4 Zymodeme differential expression

4.1 No attempt at batch estimation

zymo_de_nobatch <- all_pairwise(lp_zymo, filter = TRUE, model_fstring = "~ 0 + condition")
## z2.2 z2.3 
##   42   41
## Removing 150 low-count genes (8628 remaining).
## Basic step 0/3: Normalizing data.
## Basic step 0/3: Converting data.
## I think this is failing? SummarizedExperiment
## Basic step 0/3: Transforming data.
## Setting 4662 entries to zero.
## converting counts to integer mode
## gene-wise dispersion estimates
## mean-dispersion relationship
## final dispersion estimates
## Warning: the 'findbars' function has moved to the reformulas package. Please update your imports, or ask an upstream package maintainer to do so.
## This warning is displayed once per session.
## Warning: the 'nobars' function has moved to the reformulas package. Please update your imports, or ask an upstream package maintainer to do so.
## This warning is displayed once per session.
## conditions
## z22 z23 
##  42  41
## conditions
## z22 z23 
##  42  41
## conditions
## z22 z23 
##  42  41
zymo_de_nobatch
## A pairwise differential expression with results from: basic, deseq, ebseq, edger, limma, noiseq.
## This used a surrogate/batch estimate from: Existing surrogate matrix.
## The primary analysis performed 1 comparisons.
## The logFC agreement among the methods follows:
##                 z23_vs_z22
## basic_vs_deseq      0.8999
## basic_vs_dream      0.9294
## basic_vs_ebseq      0.8635
## basic_vs_edger      0.8933
## basic_vs_noiseq     0.9197
## deseq_vs_dream      0.9860
## deseq_vs_ebseq      0.9905
## deseq_vs_edger      0.9990
## deseq_vs_noiseq     0.9970
## dream_vs_ebseq      0.9689
## dream_vs_edger      0.9833
## dream_vs_noiseq     0.9885
## ebseq_vs_edger      0.9950
## ebseq_vs_noiseq     0.9825
## edger_vs_noiseq     0.9954
## Including the plots causes the rda file to balloon to 3.4Gb in the following invocation.
## Removing them results in... holy crap 2.1Mb
zymo_table_nobatch <- combine_de_tables(
    zymo_de_nobatch, keepers = zymodeme_keeper, label_column = "gene_product",
    rda = glue("rda/zymo_tables_nobatch-v{ver}.rda"),
    excel = glue("{excel_out}/DE_Strain/{ver}/zymo_tables_nobatch-v{ver}.xlsx"))
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Error in `startRow:(startRow + nRows - 1L)`:
## ! argument of length 0
zymo_table_nobatch
## Error:
## ! object 'zymo_table_nobatch' not found
zymo_sig_nobatch <- extract_significant_genes(
    zymo_table_nobatch,
    according_to = "deseq", current_id = "GID", required_id = "GID",
    gmt = glue("excel/zymodeme_nobatch-v{ver}.gmt"),
    excel = glue("{excel_out}/DE_Strain/{ver}/zymo_sig_nobatch_deseq-v{ver}.xlsx"))
## Error:
## ! object 'zymo_table_nobatch' not found
zymo_sig_nobatch
## Error:
## ! object 'zymo_sig_nobatch' not found

4.1.0.1 Gene ontology comparing the strains

There are too few genes at our current stringencies for a meaningful result.

increased_z22 <- zymo_sig_nobatch[["deseq"]][["downs"]][["zymodeme"]]
## Error:
## ! object 'zymo_sig_nobatch' not found
increased_z23 <- zymo_sig_nobatch[["deseq"]][["ups"]][["zymodeme"]]
## Error:
## ! object 'zymo_sig_nobatch' not found
z22_goseq <- simple_goseq(increased_z22, go_db = lp_go, length_db = lp_lengths, min_xref = 10)
## Error:
## ! object 'increased_z22' not found
z23_goseq <- simple_goseq(increased_z23, go_db = lp_go, length_db = lp_lengths, min_xref = 10)
## Error:
## ! object 'increased_z23' not found

4.1.1 Plot DE genes without batch estimation/adjustment

zymo_table_nobatch[["plots"]][["zymodeme"]][["deseq_ma_plots"]]
## Error:
## ! object 'zymo_table_nobatch' not found
zymo_table_nobatch[["plots"]][["zymodeme"]][["deseq_vol_plots"]]
## Error:
## ! object 'zymo_table_nobatch' not found

Log ratio, mean average plot and volcano plot of the comparison of the two primary zymodeme transcriptomes. When the transcriptomes of the two main strains (43 and 41 samples of z2.3 and z2.1) were compared without any attempt at batch/surrogate estimation with DESeq2, 45 and 85 genes were observed as significantly higher in strain z2.3 and z2.2 respectively using a cutoff of 1.0 logFC and 0.05 FDR adjusted p-value. There remain a large number of genes which are likely significantly different between the two strains, but fall below the 2-fold difference required for ‘significance.’ This follows prior observations that the parasite transcriptomes are constituitively expressed.

When the same data was plotted via a volcano plot, the relatively small range of fold changes compared to the large range of adjusted p-values is visible.

4.2 Attempt SVA estimate

zymo_de_sva <- all_pairwise(lp_zymo, filter = TRUE, model_fstring = "~ 0 + condition",
                            model_svs = "svaseq")
## z2.2 z2.3 
##   42   41
## Removing 150 low-count genes (8628 remaining).
## Basic step 0/3: Normalizing data.
## Basic step 0/3: Converting data.
## I think this is failing? SummarizedExperiment
## Basic step 0/3: Transforming data.
## Setting 4662 entries to zero.
## This received a matrix of SVs.
## converting counts to integer mode
## gene-wise dispersion estimates
## mean-dispersion relationship
## final dispersion estimates
## conditions
## z22 z23 
##  42  41
## conditions
## z22 z23 
##  42  41
## conditions
## z22 z23 
##  42  41
zymo_de_sva
## A pairwise differential expression with results from: basic, deseq, ebseq, edger, limma, noiseq.
## This used a surrogate/batch estimate from: svaseq.
## The primary analysis performed 1 comparisons.
## The logFC agreement among the methods follows:
##                 z23_vs_z22
## basic_vs_deseq      0.9033
## basic_vs_dream      0.9309
## basic_vs_ebseq      0.8635
## basic_vs_edger      0.8961
## basic_vs_noiseq     0.9197
## deseq_vs_dream      0.9899
## deseq_vs_ebseq      0.9873
## deseq_vs_edger      0.9993
## deseq_vs_noiseq     0.9948
## dream_vs_ebseq      0.9689
## dream_vs_edger      0.9872
## dream_vs_noiseq     0.9887
## ebseq_vs_edger      0.9918
## ebseq_vs_noiseq     0.9825
## edger_vs_noiseq     0.9928
zymo_table_sva <- combine_de_tables(
    zymo_de_sva, keepers = zymodeme_keeper, label_column = "gene_product",
    rda = glue("rda/zymo_tables_sva-v{ver}.rda"),
    excel = glue("{excel_out}/DE_Strain/{ver}/zymo_tables_sva-v{ver}.xlsx"))
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Error in `startRow:(startRow + nRows - 1L)`:
## ! argument of length 0
zymo_table_sva
## Error:
## ! object 'zymo_table_sva' not found
zymo_sig_sva <- extract_significant_genes(
    zymo_table_sva,
    according_to = "deseq",
    current_id = "GID", required_id = "GID",
    gmt = glue("excel/zymodeme_sva-v{ver}.gmt"),
    excel = glue("{excel_out}/DE_Strain/{ver}/zymo_sig_sva-v{ver}.xlsx"))
## Error:
## ! object 'zymo_table_sva' not found
zymo_sig_sva
## Error:
## ! object 'zymo_sig_sva' not found

4.2.0.1 Gene ontology comparing the strains

There are too few genes at our current stringencies for a meaningful result.

increased_z22 <- zymo_sig_sva[["deseq"]][["downs"]][["zymodeme"]]
## Error:
## ! object 'zymo_sig_sva' not found
increased_z23 <- zymo_sig_sva[["deseq"]][["ups"]][["zymodeme"]]
## Error:
## ! object 'zymo_sig_sva' not found
z22_goseq <- simple_goseq(increased_z22, go_db = lp_go, length_db = lp_lengths)
## Error:
## ! object 'increased_z22' not found
z23_goseq <- simple_goseq(increased_z23, go_db = lp_go, length_db = lp_lengths)
## Error:
## ! object 'increased_z23' not found

4.2.1 Plot zymodeme DE genes with sva batch estimation/adjustment

When estimates from SVA were included in the statistical model used by EdgeR, DESeq2, and limma; a nearly identical view of the data emerged. I think this shows with a high degree of confidence, that sva is not having a significant effect on this dataset.

zymo_table_sva[["plots"]][["zymodeme"]][["deseq_ma_plots"]]
## Error:
## ! object 'zymo_table_sva' not found
zymo_table_sva[["plots"]][["zymodeme"]][["deseq_vol_plots"]]
## Error:
## ! object 'zymo_table_sva' not found

5 Parasite Susceptibility to Drug (Current)

This susceptibility comparison is using the ‘current’ dataset.

Note again: we no longer have any ambiguous samples, so I commented out a portion of the following block.

sus_de_nobatch <- all_pairwise(lp_susceptibility, filter = TRUE, model_fstring = "~ 0 + condition")
## resistant sensitive 
##        46        46
## Removing 149 low-count genes (8629 remaining).
## Basic step 0/3: Normalizing data.
## Basic step 0/3: Converting data.
## I think this is failing? SummarizedExperiment
## Basic step 0/3: Transforming data.
## Setting 5262 entries to zero.
## converting counts to integer mode
## gene-wise dispersion estimates
## mean-dispersion relationship
## final dispersion estimates
## conditions
## resistant sensitive 
##        46        46
## conditions
## resistant sensitive 
##        46        46
## conditions
## resistant sensitive 
##        46        46
sus_de_nobatch
## A pairwise differential expression with results from: basic, deseq, ebseq, edger, limma, noiseq.
## This used a surrogate/batch estimate from: Existing surrogate matrix.
## The primary analysis performed 1 comparisons.
## The logFC agreement among the methods follows:
##                 snstv_vs_r
## basic_vs_deseq      0.8906
## basic_vs_dream      0.9306
## basic_vs_ebseq      0.8898
## basic_vs_edger      0.8923
## basic_vs_noiseq     0.9365
## deseq_vs_dream      0.9140
## deseq_vs_ebseq      0.9978
## deseq_vs_edger      0.9991
## deseq_vs_noiseq     0.9855
## dream_vs_ebseq      0.9116
## dream_vs_edger      0.9141
## dream_vs_noiseq     0.9566
## ebseq_vs_edger      0.9995
## ebseq_vs_noiseq     0.9866
## edger_vs_noiseq     0.9872
sus_table_nobatch <- combine_de_tables(
  sus_de_nobatch, keepers = susceptibility_keepers,
  rda = glue("rda/sus_tables_nobatch-v{ver}.rda"),
  excel = glue("{excel_out}/DE_Susceptibility/{ver}/sus_tables_nobatch-v{ver}.xlsx"))
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Error in `startRow:(startRow + nRows - 1L)`:
## ! argument of length 0
sus_table_nobatch
## Error:
## ! object 'sus_table_nobatch' not found
sus_sig_nobatch <- extract_significant_genes(
  sus_table_nobatch,
  excel = glue("{excel_out}/DE_Susceptibility/{ver}/sus_sig_nobatch-v{ver}.xlsx"))
## Error:
## ! object 'sus_table_nobatch' not found
sus_de_sva <- all_pairwise(lp_susceptibility, filter = TRUE, model_fstring = "~ 0 + condition", model_svs = "svaseq")
## resistant sensitive 
##        46        46
## Removing 149 low-count genes (8629 remaining).
## Basic step 0/3: Normalizing data.
## Basic step 0/3: Converting data.
## I think this is failing? SummarizedExperiment
## Basic step 0/3: Transforming data.
## Setting 5262 entries to zero.
## This received a matrix of SVs.
## converting counts to integer mode
## gene-wise dispersion estimates
## mean-dispersion relationship
## final dispersion estimates
## conditions
## resistant sensitive 
##        46        46
## conditions
## resistant sensitive 
##        46        46
## conditions
## resistant sensitive 
##        46        46
sus_de_sva
## A pairwise differential expression with results from: basic, deseq, ebseq, edger, limma, noiseq.
## This used a surrogate/batch estimate from: svaseq.
## The primary analysis performed 1 comparisons.
## The logFC agreement among the methods follows:
##                 snstv_vs_r
## basic_vs_deseq      0.9051
## basic_vs_dream      0.9328
## basic_vs_ebseq      0.8898
## basic_vs_edger      0.9072
## basic_vs_noiseq     0.9365
## deseq_vs_dream      0.9376
## deseq_vs_ebseq      0.9887
## deseq_vs_edger      0.9999
## deseq_vs_noiseq     0.9870
## dream_vs_ebseq      0.9112
## dream_vs_edger      0.9381
## dream_vs_noiseq     0.9567
## ebseq_vs_edger      0.9898
## ebseq_vs_noiseq     0.9866
## edger_vs_noiseq     0.9884
sus_table_sva <- combine_de_tables(
    sus_de_sva, keepers = susceptibility_keepers,
    rda = glue("rda/sus_tables_sva-v{ver}.rda"),
    excel = glue("{excel_out}/DE_Susceptibility/{ver}/sus_tables_sva-v{ver}.xlsx"))
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in min(new_rows): no non-missing arguments to max; returning -Inf
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Error in `startRow:(startRow + nRows - 1L)`:
## ! argument of length 0
sus_table_sva
## Error:
## ! object 'sus_table_sva' not found
sus_sig_sva <- extract_significant_genes(
  sus_table_sva, according_to = "deseq",
    excel = glue("{excel_out}/DE_Susceptibility/{ver}/sus_sig_sva-v{ver}.xlsx"))
## Error:
## ! object 'sus_table_sva' not found
sus_sig_sva
## Error:
## ! object 'sus_sig_sva' not found
## To get a more true sense of sensitive vs resistant with sva, we kind of need to get rid of the
## unknown samples and perhaps the ambiguous.
## no_ambiguous <- subset_se(lp_susceptibility, subset = "condition!='ambiguous'") %>%
##   subset_se(subset = "condition!='unknown'")
## no_ambiguous_de_sva <- all_pairwise(no_ambiguous, filter = TRUE, model_batch = "svaseq")
## no_ambiguous_de_sva
## Let us see if my keeper code will fail hard or soft with extra contrasts...
## no_ambiguous_table_sva <- combine_de_tables(
##     no_ambiguous_de_sva, keepers = susceptibility_keepers,
##     excel = glue("excel/no_ambiguous_tables_sva-v{ver}.xlsx"))
## no_ambiguous_table_sva
## no_ambiguous_sig_sva <- extract_significant_genes(
##     no_ambiguous_table_sva, according_to = "deseq",
##     excel = glue("excel/no_ambiguous_sig_sva-v{ver}.xlsx"))
## no_ambiguous_sig_sva

5.0.0.1 Gene ontology comparing the susceptibility

sus_sig_sva
## Error:
## ! object 'sus_sig_sva' not found
increased_resistant <- sus_sig_sva[["deseq"]][["ups"]][["resistant_sensitive"]]
## Error:
## ! object 'sus_sig_sva' not found
increased_sensitive <- sus_sig_sva[["deseq"]][["downs"]][["resistant_sensitive"]]
## Error:
## ! object 'sus_sig_sva' not found
resistant_goseq <- simple_goseq(increased_resistant, go_db = lp_go, length_db = lp_lengths)
## Error:
## ! object 'increased_resistant' not found
sensitive_goseq <- simple_goseq(increased_sensitive, go_db = lp_go, length_db = lp_lengths)
## Error:
## ! object 'increased_sensitive' not found

5.0.1 Plot Susceptibility DE genes with sva batch estimation/adjustment

sus_table_nobatch[["plots"]][["resistant_sensitive"]][["deseq_ma_plots"]]
## Error:
## ! object 'sus_table_nobatch' not found
sus_table_nobatch[["plots"]][["resistant_sensitive"]][["deseq_vol_plots"]]
## Error:
## ! object 'sus_table_nobatch' not found
sus_table_sva[["plots"]][["resistant_sensitive"]][["deseq_ma_plots"]]
## Error:
## ! object 'sus_table_sva' not found
sus_table_sva[["plots"]][["resistant_sensitive"]][["deseq_vol_plots"]]
## Error:
## ! object 'sus_table_sva' not found

Given that resistance/sensitivity tends to be correlated with strain, one might expect similar results. One caveat in this context though: there are fewer strains with resistance/sensitivity definitions. This when the analysis was repeated without the ambiguous/unknown samples, a few more genes were observed as significant.

6 Comparing DE results from strain/sensitivity

## zymo_table_sva[["plots"]][["zymodeme"]][["deseq_ma_plots"]][["plot"]]
zy_df <- zymo_table_sva[["data"]][["zymodeme"]]
## Error:
## ! object 'zymo_table_sva' not found
sus_df <- sus_table_sva[["data"]][["resistant_sensitive"]]
## Error:
## ! object 'sus_table_sva' not found
both_df <- merge(zy_df, sus_df, by = "row.names")
## Error in `h()`:
## ! error in evaluating the argument 'x' in selecting a method for function 'merge': object 'zy_df' not found
plot_df <- both_df[, c("deseq_logfc.x", "deseq_logfc.y")]
## Error:
## ! object 'both_df' not found
rownames(plot_df) <- both_df[["Row.names"]]
## Error:
## ! object 'both_df' not found
colnames(plot_df) <- c("z23_vs_z22", "sensitive_vs_resistant")
## Error:
## ! object 'plot_df' not found
compare <- plot_linear_scatter(plot_df)
## Error in `h()`:
## ! error in evaluating the argument 'x' in selecting a method for function 'as.data.frame': object 'plot_df' not found
pp(file = "images/compare_sus_zy.png")
compare$scatter
## Error in `compare$scatter`:
## ! object of type 'closure' is not subsettable
dev.off()
## png 
##   2
compare$scatter
## Error in `compare$scatter`:
## ! object of type 'closure' is not subsettable
compare$cor
## Error in `compare$cor`:
## ! object of type 'closure' is not subsettable

7 Parasite Susceptibility to Drug (Historical)

This susceptibility comparison is using the historical dataset.

sushist_de_nobatch <- all_pairwise(lp_susceptibility_historical, model_fstring = "~ 0 + condition",
                                   filter = TRUE)
## ambiguous resistant sensitive   unknown 
##         5        12        30        45
## Removing 149 low-count genes (8629 remaining).
## Basic step 0/3: Normalizing data.
## Basic step 0/3: Converting data.
## I think this is failing? SummarizedExperiment
## Basic step 0/3: Transforming data.
## Setting 5262 entries to zero.
## converting counts to integer mode
## gene-wise dispersion estimates
## mean-dispersion relationship
## final dispersion estimates
## conditions
## ambiguous resistant sensitive   unknown 
##         5        12        30        45
## conditions
## ambiguous resistant sensitive   unknown 
##         5        12        30        45
## conditions
## ambiguous resistant sensitive   unknown 
##         5        12        30        45

sushist_de_nobatch
## A pairwise differential expression with results from: basic, deseq, ebseq, edger, limma, noiseq.
## This used a surrogate/batch estimate from: Existing surrogate matrix.
## The primary analysis performed 6 comparisons.
sushist_table_nobatch <- combine_de_tables(
  sushist_de_nobatch, keepers = susceptibility_keepers,
  excel = glue("{excel_out}/DE_Susceptibility/sushist_tables_nobatch-v{ver}.xlsx"))
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Error in `startRow:(startRow + nRows - 1L)`:
## ! argument of length 0
sushist_table_nobatch
## Error:
## ! object 'sushist_table_nobatch' not found
sushist_sig_nobatch <- extract_significant_genes(
  sushist_table_nobatch,
  excel = glue("{excel_out}/DE_Susceptibility/sushist_sig_nobatch-v{ver}.xlsx"))
## Error:
## ! object 'sushist_table_nobatch' not found
sushist_sig_nobatch
## Error:
## ! object 'sushist_sig_nobatch' not found
sushist_de_sva <- all_pairwise(lp_susceptibility_historical, filter = TRUE,
                               model_fstring = "~ 0 + condition", model_svs = "svaseq")
## ambiguous resistant sensitive   unknown 
##         5        12        30        45
## Removing 149 low-count genes (8629 remaining).
## Basic step 0/3: Normalizing data.
## Basic step 0/3: Converting data.
## I think this is failing? SummarizedExperiment
## Basic step 0/3: Transforming data.
## Setting 5262 entries to zero.
## This received a matrix of SVs.
## converting counts to integer mode
## gene-wise dispersion estimates
## mean-dispersion relationship
## final dispersion estimates
## conditions
## ambiguous resistant sensitive   unknown 
##         5        12        30        45
## conditions
## ambiguous resistant sensitive   unknown 
##         5        12        30        45
## conditions
## ambiguous resistant sensitive   unknown 
##         5        12        30        45

sushist_de_sva
## A pairwise differential expression with results from: basic, deseq, ebseq, edger, limma, noiseq.
## This used a surrogate/batch estimate from: svaseq.
## The primary analysis performed 6 comparisons.
sushist_table_sva <- combine_de_tables(
  sushist_de_sva, keepers = susceptibility_keepers,
  excel = glue("{excel_out}/DE_Susceptibility/sushist_tables_sva-v{ver}.xlsx"))
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in min(new_rows): no non-missing arguments to max; returning -Inf
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Error in `startRow:(startRow + nRows - 1L)`:
## ! argument of length 0
sushist_table_sva
## Error:
## ! object 'sushist_table_sva' not found
sushist_sig_sva <- extract_significant_genes(
  sushist_table_sva, according_to = "deseq",
  excel = glue("{excel_out}/DE_Susceptibility/sushist_sig_sva-v{ver}.xlsx"))
## Error:
## ! object 'sushist_table_sva' not found
sushist_sig_sva
## Error:
## ! object 'sushist_sig_sva' not found

8 Cure/Fail association

##cf_nb_input <- subset_se(cf_se, subset="condition!='unknown'")
cf_de_nobatch <- all_pairwise(lp_cf_known, filter = TRUE,
                              model_fstring = "~ 0 + condition", model_svs = FALSE)
## cure fail 
##   40   34
## Removing 154 low-count genes (8624 remaining).
## Basic step 0/3: Normalizing data.
## Basic step 0/3: Converting data.
## I think this is failing? SummarizedExperiment
## Basic step 0/3: Transforming data.
## Setting 3817 entries to zero.
## converting counts to integer mode
## gene-wise dispersion estimates
## mean-dispersion relationship
## final dispersion estimates
## conditions
## cure fail 
##   40   34
## conditions
## cure fail 
##   40   34
## conditions
## cure fail 
##   40   34
cf_de_nobatch
## A pairwise differential expression with results from: basic, deseq, ebseq, edger, limma, noiseq.
## This used a surrogate/batch estimate from: Existing surrogate matrix.
## The primary analysis performed 1 comparisons.
## The logFC agreement among the methods follows:
##                 fail_vs_cr
## basic_vs_deseq      0.7784
## basic_vs_dream      0.9502
## basic_vs_ebseq      0.8554
## basic_vs_edger      0.8383
## basic_vs_noiseq     0.7507
## deseq_vs_dream      0.7651
## deseq_vs_ebseq      0.9072
## deseq_vs_edger      0.9652
## deseq_vs_noiseq     0.6022
## dream_vs_ebseq      0.8357
## dream_vs_edger      0.8206
## dream_vs_noiseq     0.8075
## ebseq_vs_edger      0.9792
## ebseq_vs_noiseq     0.6591
## edger_vs_noiseq     0.6464
cf_table_nobatch <- combine_de_tables(
  cf_de_nobatch,
  excel = glue("{excel_out}/DE_Cure_vs_Fail/{ver}/cf_tables_nobatch-v{ver}.xlsx"))
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Error in `startRow:(startRow + nRows - 1L)`:
## ! argument of length 0
cf_table_nobatch
## Error:
## ! object 'cf_table_nobatch' not found
cf_sig_nobatch <- extract_significant_genes(
  cf_table_nobatch,
  excel = glue("{excel_out}/DE_Cure_vs_Fail/{ver}/cf_sig_nobatch-v{ver}.xlsx"))
## Error:
## ! object 'cf_table_nobatch' not found
cf_sig_nobatch
## Error:
## ! object 'cf_sig_nobatch' not found
cf_de <- all_pairwise(lp_cf_known, filter = TRUE,
                      model_fstring = "~ 0 + condition", model_svs = "svaseq")
## cure fail 
##   40   34
## Removing 154 low-count genes (8624 remaining).
## Basic step 0/3: Normalizing data.
## Basic step 0/3: Converting data.
## I think this is failing? SummarizedExperiment
## Basic step 0/3: Transforming data.
## Setting 3817 entries to zero.
## This received a matrix of SVs.
## converting counts to integer mode
## gene-wise dispersion estimates
## mean-dispersion relationship
## final dispersion estimates
## conditions
## cure fail 
##   40   34
## conditions
## cure fail 
##   40   34
## conditions
## cure fail 
##   40   34
cf_de
## A pairwise differential expression with results from: basic, deseq, ebseq, edger, limma, noiseq.
## This used a surrogate/batch estimate from: svaseq.
## The primary analysis performed 1 comparisons.
## The logFC agreement among the methods follows:
##                 fail_vs_cr
## basic_vs_deseq      0.8729
## basic_vs_dream      0.9285
## basic_vs_ebseq      0.8554
## basic_vs_edger      0.8703
## basic_vs_noiseq     0.7507
## deseq_vs_dream      0.9051
## deseq_vs_ebseq      0.9064
## deseq_vs_edger      0.9970
## deseq_vs_noiseq     0.8043
## dream_vs_ebseq      0.8651
## dream_vs_edger      0.8973
## dream_vs_noiseq     0.6988
## ebseq_vs_edger      0.8951
## ebseq_vs_noiseq     0.6591
## edger_vs_noiseq     0.8272
cf_table <- combine_de_tables(
  cf_de,
  excel = glue("{excel_out}/DE_Cure_vs_Fail/{ver}/cf_tables-v{ver}.xlsx"))
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in min(new_rows): no non-missing arguments to max; returning -Inf
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Error in `startRow:(startRow + nRows - 1L)`:
## ! argument of length 0
cf_table
## Error:
## ! object 'cf_table' not found
cf_sig <- extract_significant_genes(
  cf_table,
  excel = glue("{excel_out}/DE_Cure_vs_Fail/{ver}/cf_sig-v{ver}.xlsx"))
## Error:
## ! object 'cf_table' not found
cf_sig
## Error:
## ! object 'cf_sig' not found

I am not going to mess with GO searches for this.

8.1 Cure/Fail DE plots

It is not surprising that few or no genes are deemed significantly differentially expressed across samples which were taken from cure or fail patients.

cf_table_nobatch[["plots"]][["fail_vs_cure"]][["deseq_ma_plots"]]
## Error:
## ! object 'cf_table_nobatch' not found
dev <- pp(file = "images/cf_ma.png")
cf_table[["plots"]][["fail_vs_cure"]][["deseq_ma_plots"]]
## Error:
## ! object 'cf_table' not found
closed <- dev.off()
cf_table[["plots"]][["fail_vs_cure"]][["deseq_ma_plots"]]
## Error:
## ! object 'cf_table' not found

9 Combining the macrophage infected amastigotes with in-vitro promastigotes

One query we have not yet addressed: what are the similarities and differences among the strains used to infect the macrophage samples and the promastigote samples used in the TMRC2 parasite data?

In my container image, this dataset is not currently loaded, so turning this off.

## I just fixed this in the datasets Rmd, but until that propagates just set it manually
annotation(lp_se) <- annotation(lp_macrophage)
## Error:
## ! unable to find an inherited method for function 'annotation<-' for signature 'object = "SummarizedExperiment", value = "NULL"'
tmrc2_macrophage_norm <- normalize(lp_macrophage, transform="log2", convert="cpm",
                                   norm="quant", filter=TRUE)
## Removing 0 low-count genes (8778 remaining).
## transform_counts: Found 3577 values equal to 0, adding 1 to the matrix.
all_tmrc2 <- hpgltools:::combine_se(lp_se, lp_macrophage)

all_nosb <- all_tmrc2
colData(all_nosb)[["stage"]] <- "promastigote"
na_idx <- is.na(colData(all_nosb)[["macrophagetreatment"]])
colData(all_nosb)[na_idx, "macrophagetreatment"] <- "undefined"
all_nosb <- subset_se(all_nosb, subset = "macrophagetreatment!='inf_sb'")
ama_idx <- colData(all_nosb)[["macrophagetreatment"]] == "inf"
colData(all_nosb)[ama_idx, "stage" ] <- "amastigote"
colData(all_nosb)[["batch"]] <- colData(all_nosb)[["stage"]]

I think the above picture is sort of the opposite of what we want to compare in a DE analysis for this set of data, e.g. we want to compare promastigotes from amastigotes?

all_nosb <- set_batches(all_nosb, fact = "condition") %>%
  set_conditions(fact = "stage")
## The number of samples by batch are:
## 
## z2.1 z2.2 z2.3 z2.4 
##    7   56   56    2
## The numbers of samples by condition are:
## 
##   amastigote promastigote 
##           29           92
two_zymo <- subset_se(
  all_nosb,
  subset = "zymodemecategorical=='z22'|zymodemecategorical=='z23'|zymodemecategorical=='unknown'")

pro_ama <- all_pairwise(all_nosb, filter = TRUE,
                        model_fstring = "~ 0 + condition", model_svs = "svaseq")
##   amastigote promastigote 
##           29           92
## Removing 94 low-count genes (8684 remaining).
## Potentially check over the experimental design, there appear to be missing values.
## Warning in plot_pca(data = mtrx, design = design, state = state, plot_colors =
## plot_colors, : There are NA values in the component data.  This can lead to
## weird plotting errors.
## Potentially check over the experimental design, there appear to be missing values.
## Warning in plot_pca(data = mtrx, design = design, state = state, plot_colors =
## plot_colors, : There are NA values in the component data.  This can lead to
## weird plotting errors.
## Basic step 0/3: Normalizing data.
## Basic step 0/3: Converting data.
## I think this is failing? SummarizedExperiment
## Basic step 0/3: Transforming data.
## Setting 13046 entries to zero.
## This received a matrix of SVs.
## converting counts to integer mode
##   the design formula contains one or more numeric variables with integer values,
##   specifying a model with increasing fold change for higher values.
##   did you mean for this to be a factor? if so, first convert
##   this variable to a factor using the factor() function
##   the design formula contains one or more numeric variables with integer values,
##   specifying a model with increasing fold change for higher values.
##   did you mean for this to be a factor? if so, first convert
##   this variable to a factor using the factor() function
## gene-wise dispersion estimates
## mean-dispersion relationship
## final dispersion estimates
## conditions
##   amastigote promastigote 
##           29           92
## conditions
##   amastigote promastigote 
##           29           92
## conditions
##   amastigote promastigote 
##           29           92
pro_ama_table <- combine_de_tables(
  pro_ama,
  excel = glue("{excel_out}/DE_promastigote_amastigote/{ver}/pro_vs_ama_table-v{ver}.xlsx"))
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Warning in min(new_rows): no non-missing arguments to min; returning Inf
## Warning in max(new_rows): no non-missing arguments to max; returning -Inf
## Error in `startRow:(startRow + nRows - 1L)`:
## ! argument of length 0
pro_ama_sig <- extract_significant_genes(
    pro_ama_table,
    excel = glue("{excel_out}/DE_promastigote_amastigote/{ver}/pro_vs_ama_sig-v{ver}.xlsx"))
## Error:
## ! object 'pro_ama_table' not found

9.0.0.1 Gene ontology comparing the life stages

increased_promastigote <- pro_ama_sig[["deseq"]][["ups"]][["promastigote_vs_amastigote"]]
## Error:
## ! object 'pro_ama_sig' not found
increased_amastigote <- pro_ama_sig[["deseq"]][["downs"]][["promastigote_vs_amastigote"]]
## Error:
## ! object 'pro_ama_sig' not found
promastigote_goseq <- simple_goseq(increased_promastigote, go_db = lp_go, length_db = lp_lengths)
## Error:
## ! object 'increased_promastigote' not found
promastigote_goseq
## Error:
## ! object 'promastigote_goseq' not found
amastigote_goseq <- simple_goseq(increased_amastigote, go_db = lp_go,
                                 length_db = lp_lengths, min_xref = 30)
## Error:
## ! object 'increased_amastigote' not found
amastigote_goseq
## Error:
## ! object 'amastigote_goseq' not found
## silly, topgo wants the gene id column to be 'ID', I should fix this.
colnames(lp_go) <- c("ID", "GO")
promastigote_topgo <- simple_topgo(increased_promastigote, go_db = lp_go)
## Error in `h()`:
## ! error in evaluating the argument 'sig_genes' in selecting a method for function 'simple_topgo': object 'increased_promastigote' not found
enrichplot::dotplot(promastigote_topgo$enrich_results$bp)
## Error in `h()`:
## ! error in evaluating the argument 'object' in selecting a method for function 'dotplot': object 'promastigote_topgo' not found
amastigote_topgo <- simple_topgo(increased_amastigote, go_db = lp_go)
## Error in `h()`:
## ! error in evaluating the argument 'sig_genes' in selecting a method for function 'simple_topgo': object 'increased_amastigote' not found
enrichplot::dotplot(amastigote_topgo$enrich_results$bp)
## Error in `h()`:
## ! error in evaluating the argument 'object' in selecting a method for function 'dotplot': object 'amastigote_topgo' not found

9.0.1 Plot promastigote/amastigote DE genes

pro_ama_table[["plots"]][["promastigote_vs_amastigote"]][["deseq_ma_plots"]]
## Error:
## ! object 'pro_ama_table' not found

I am a little surprised by this plot, I somewhat expected there to be few genes which passed the 2-fold difference demarcation line.

pander::pander(sessionInfo())
## Warning: Your system is mis-configured: '/etc/localtime' is not a symlink
## Warning: It is strongly recommended to set envionment variable TZ to
## 'America/New_York' (or equivalent)

R version 4.5.0 (2025-04-11)

Platform: x86_64-pc-linux-gnu

locale: C

attached base packages: stats, graphics, grDevices, utils, datasets, methods and base

other attached packages: ruv(v.0.9.7.1), edgeR(v.4.6.3), hpgltools(v.1.2), testthat(v.3.3.2), glue(v.1.8.0) and Heatplus(v.3.16.0)

loaded via a namespace (and not attached): fs(v.2.0.1), matrixStats(v.1.5.0), bitops(v.1.0-9), enrichplot(v.1.28.4), blockmodeling(v.1.1.8), devtools(v.2.5.0), httr(v.1.4.8), RColorBrewer(v.1.1-3), numDeriv(v.2016.8-1.1), tools(v.4.5.0), backports(v.1.5.0), R6(v.2.6.1), lazyeval(v.0.2.2), mgcv(v.1.9-3), withr(v.3.0.2), gridExtra(v.2.3), preprocessCore(v.1.70.0), cli(v.3.6.5), Biobase(v.2.68.0), labeling(v.0.4.3), EBSeq(v.2.6.0), sass(v.0.4.10), mvtnorm(v.1.3-6), S7(v.0.2.1), genefilter(v.1.90.0), Rsamtools(v.2.24.1), systemfonts(v.1.3.2), yulab.utils(v.0.2.4), gson(v.0.1.0), DOSE(v.4.2.0), R.utils(v.2.13.0), dichromat(v.2.0-0.1), sessioninfo(v.1.2.3), limma(v.3.64.3), rstudioapi(v.0.18.0), RSQLite(v.2.4.6), generics(v.0.1.4), gridGraphics(v.0.5-1), BiocIO(v.1.18.0), gtools(v.3.9.5), zip(v.2.3.3), dplyr(v.1.2.0), GO.db(v.3.21.0), Matrix(v.1.7-3), S4Vectors(v.0.46.0), abind(v.1.4-8), R.methodsS3(v.1.8.2), lifecycle(v.1.0.5), yaml(v.2.3.12), SummarizedExperiment(v.1.38.1), gplots(v.3.3.0), qvalue(v.2.40.0), SparseArray(v.1.8.1), grid(v.4.5.0), blob(v.1.3.0), promises(v.1.5.0), crayon(v.1.5.3), ggtangle(v.0.1.1), lattice(v.0.22-7), cowplot(v.1.2.0), GenomicFeatures(v.1.60.0), annotate(v.1.86.1), KEGGREST(v.1.48.1), pillar(v.1.11.1), knitr(v.1.51), varhandle(v.2.0.6), fgsea(v.1.34.2), GenomicRanges(v.1.60.0), rjson(v.0.2.23), boot(v.1.3-31), corpcor(v.1.6.10), codetools(v.0.2-20), fastmatch(v.1.1-8), ggiraph(v.0.9.6), ggfun(v.0.2.0), fontLiberation(v.0.1.0), data.table(v.1.18.2.1), vctrs(v.0.7.2), png(v.0.1-9), treeio(v.1.32.0), Rdpack(v.2.6.6), gtable(v.0.3.6), cachem(v.1.1.0), openxlsx(v.4.2.8.1), xfun(v.0.57), rbibutils(v.2.4.1), S4Arrays(v.1.8.1), mime(v.0.13), RcppEigen(v.0.3.4.0.2), reformulas(v.0.4.4), survival(v.3.8-3), NOISeq(v.2.52.0), iterators(v.1.0.14), statmod(v.1.5.1), ellipsis(v.0.3.2), nlme(v.3.1-168), pbkrtest(v.0.5.5), ggtree(v.4.1.1.006), usethis(v.3.2.1), bit64(v.4.6.0-1), fontquiver(v.0.2.1), EnvStats(v.3.1.0), GenomeInfoDb(v.1.44.3), rprojroot(v.2.1.1), bslib(v.0.10.0), KernSmooth(v.2.23-26), otel(v.0.2.0), BiocGenerics(v.0.54.1), DBI(v.1.3.0), DESeq2(v.1.48.2), tidyselect(v.1.2.1), bit(v.4.6.0), compiler(v.4.5.0), curl(v.7.0.0), graph(v.1.86.0), desc(v.1.4.3), fontBitstreamVera(v.0.1.1), DelayedArray(v.0.34.1), plotly(v.4.12.0), rtracklayer(v.1.68.0), scales(v.1.4.0), caTools(v.1.18.3), remaCor(v.0.0.20), rappdirs(v.0.3.4), stringr(v.1.6.0), digest(v.0.6.39), minqa(v.1.2.8), variancePartition(v.1.38.1), rmarkdown(v.2.31), aod(v.1.3.3), XVector(v.0.48.0), RhpcBLASctl(v.0.23-42), htmltools(v.0.5.9), pkgconfig(v.2.0.3), lme4(v.2.0-1), MatrixGenerics(v.1.20.0), fastmap(v.1.2.0), rlang(v.1.1.7), htmlwidgets(v.1.6.4), UCSC.utils(v.1.4.0), shiny(v.1.13.0), farver(v.2.1.2), jquerylib(v.0.1.4), jsonlite(v.2.0.0), BiocParallel(v.1.42.2), GOSemSim(v.2.34.0), R.oo(v.1.27.1), RCurl(v.1.98-1.18), magrittr(v.2.0.4), GenomeInfoDbData(v.1.2.14), ggplotify(v.0.1.3), patchwork(v.1.3.2), Rcpp(v.1.1.1), ape(v.5.8-1), gdtools(v.0.5.0), stringi(v.1.8.7), brio(v.1.1.5), MASS(v.7.3-65), plyr(v.1.8.9), pkgbuild(v.1.4.8), parallel(v.4.5.0), ggrepel(v.0.9.8), Biostrings(v.2.76.0), splines(v.4.5.0), pander(v.0.6.6), locfit(v.1.5-9.12), igraph(v.2.2.2), fastcluster(v.1.3.0), reshape2(v.1.4.5), restez(v.2.1.5), stats4(v.4.5.0), pkgload(v.1.5.0), XML(v.3.99-0.23), evaluate(v.1.0.5), BiocManager(v.1.30.27), nloptr(v.2.2.1), PROPER(v.1.40.0), foreach(v.1.5.2), httpuv(v.1.6.17), tidyr(v.1.3.2), purrr(v.1.2.1), ggplot2(v.4.0.2), broom(v.1.0.12), xtable(v.1.8-8), restfulr(v.0.0.16), fANCOVA(v.0.6-1), tidytree(v.0.4.7), later(v.1.4.8), viridisLite(v.0.4.3), tibble(v.3.3.1), lmerTest(v.3.2-1), clusterProfiler(v.4.16.0), aplot(v.0.2.9), memoise(v.2.0.1), AnnotationDbi(v.1.70.0), GenomicAlignments(v.1.44.0), IRanges(v.2.42.0), sva(v.3.56.0) and GSEABase(v.1.70.1)

message(paste0("This is hpgltools commit: ", get_git_commit()))
## If you wish to reproduce this exact build of hpgltools, invoke the following:
## > git clone http://github.com/abelew/hpgltools.git
## > git reset 763f2921cd86e347a7dd8ee05de7d6376f3bcc5b
## This is hpgltools commit: Wed Mar 25 15:27:18 2026 -0400: 763f2921cd86e347a7dd8ee05de7d6376f3bcc5b
## message(paste0("Saving to ", savefile))
## tmp <- sm(saveme(filename = savefile))
tmp <- loadme(filename = savefile)
---
title: "TMRC2 `r Sys.getenv('VERSION')`: Promastigote (mostly) Differential Expression Analyses."
author: "atb abelew@gmail.com"
date: "`r Sys.Date()`"
output:
  html_document:
    code_download: true
    code_folding: show
    fig_caption: true
    fig_height: 7
    fig_width: 7
    highlight: zenburn
    keep_md: false
    mode: selfcontained
    number_sections: true
    self_contained: true
    theme: readable
    toc: true
    toc_float:
      collapsed: false
      smooth_scroll: false
---

<style type="text/css">
body .main-container {
  max-width: 1600px;
}
body, td {
  font-size: 16px;
}
code.r{
  font-size: 16px;
}
pre {
  font-size: 16px
}
</style>

```{r options, include = FALSE}
library(Heatplus)
library(hpgltools)
library(glue)
tt <- try(devtools::load_all("~/hpgltools"))
knitr::opts_knit$set(progress = TRUE, verbose = TRUE, width = 90, echo = TRUE)
knitr::opts_chunk$set(
  error = TRUE, fig.width = 8, fig.height = 8, fig.retina = 2,
  out.width = "100%", dev = "png",
  dev.args = list(png = list(type = "cairo-png")))
old_options <- options(digits = 4, stringsAsFactors = FALSE, knitr.duplicate.label = "allow")
ggplot2::theme_set(ggplot2::theme_bw(base_size = 12))
ver <- Sys.getenv("VERSION")
previous_file <- ""
rundate <- format(Sys.Date(), format = "%Y%m%d")

rmd_file <- "03differential_expression.Rmd"
savefile <- gsub(pattern = "\\.Rmd", replace = "\\.rda\\.xz", x = rmd_file)
loaded <- load(file = glue("rda/tmrc2_data_structures-v{ver}.rda"))
excel_out <- "analyses/transcriptome"
```

# Changelog

202405: Changed excel output directory to match organization scheme in box.
        Generally this means files go to
        analyses/transcriptome/{type_of_contrast}/{date}/something_{suffix}.xlsx
        Where suffix is _table for the full tables and _sig for the significant genes and
        will include information about whether sva etc was used.
202405: Adding some goseq results.

# Contrasts

** Note!  ** The new definitions of susceptible/resistant are tighter
than ever before, as a result there are no longer any ambiguous
samples.  Thus I removed the ambiguous contrasts in the following block.

```{r}
zymodeme_keeper <- list(
  "zymodeme" = c("z23", "z22"))
susceptibility_keepers <- list(
  "resistant_sensitive" = c("resistant", "sensitive"))
##    "resistant_ambiguous" = c("resistant", "ambiguous"),
##    "sensitive_ambiguous" = c("sensitive", "ambiguous"))
```

# Parasite Ontology data

Just a reminder that in data_structures.Rmd I created lp_go and lp_lengths

## Zymodeme enzyme gene IDs

Najib read me an email listing off the gene names associated with the zymodeme
classification.  I took those names and cross referenced them against the
Leishmania panamensis gene annotations and found the following:

They are:

1. ALAT: LPAL13_120010900 -- alanine aminotransferase
2. ASAT: LPAL13_340013000 -- aspartate aminotransferase
3. G6PD: LPAL13_000054100 -- glucase-6-phosphate 1-dehydrogenase
4. NH: LPAL13_14006100, LPAL13_180018500 -- inosine-guanine nucleoside hydrolase
5. MPI: LPAL13_320022300 (maybe) -- mannose phosphate isomerase (I chose phosphomannose isomerase)

Given these 6 gene IDs (NH has two gene IDs associated with it), I can do some
looking for specific differences among the various samples.

### Expression levels of zymodeme genes

The following creates a colorspace (red to green) heatmap showing the observed
expression of these genes in every sample.

```{r}
my_genes <- c("LPAL13_120010900", "LPAL13_340013000", "LPAL13_000054100",
              "LPAL13_140006100", "LPAL13_180018500", "LPAL13_320022300",
              "other")
my_names <- c("ALAT", "ASAT", "G6PD", "NHv1", "NHv2", "MPI", "other")

zymo_six_genes <- exclude_genes(lp_two_strains, ids = my_genes, method = "keep")
strain_norm <- normalize(zymo_six_genes, convert = "rpkm", filter = TRUE, transform = "log2",
                         length_column = "cds_length")

zymo_heatmap <- plot_sample_heatmap(strain_norm, row_label = my_names)
zymo_heatmap

lp_norm <- normalize(lp_two_strains, filter = TRUE, convert = "cpm",
                     norm = "quant", transform = "log2", length_column = "cds_length")
zymo_heatmap_all <- plot_sample_heatmap(lp_norm)
zymo_heatmap_all
```

## Compare to highly expressed, variant genes

I want to compare the above heatmap with one which is comprised of all
genes with some 'significantly high' expression value and also a
not-negligible coefficient of variance.

```{r}
zymo_high_genes <- normalize(lp_two_strains, filter = "cv", cv_min = 0.9)

high_strain_norm <- normalize(zymo_high_genes, convert = "rpkm",
                              norm = "quant", transform = "log2", length_column = "cds_length")
zymo_heatmap <- plot_sample_heatmap(high_strain_norm, row_label = my_names)
zymo_heatmap
```

I think this plot suggests that the difference between the two primary
strains is not really one of a few specific genes, but instead a
global pattern.

# Zymodeme differential expression

## No attempt at batch estimation

```{r}
zymo_de_nobatch <- all_pairwise(lp_zymo, filter = TRUE, model_fstring = "~ 0 + condition")
zymo_de_nobatch
## Including the plots causes the rda file to balloon to 3.4Gb in the following invocation.
## Removing them results in... holy crap 2.1Mb
zymo_table_nobatch <- combine_de_tables(
    zymo_de_nobatch, keepers = zymodeme_keeper, label_column = "gene_product",
    rda = glue("rda/zymo_tables_nobatch-v{ver}.rda"),
    excel = glue("{excel_out}/DE_Strain/{ver}/zymo_tables_nobatch-v{ver}.xlsx"))
zymo_table_nobatch
zymo_sig_nobatch <- extract_significant_genes(
    zymo_table_nobatch,
    according_to = "deseq", current_id = "GID", required_id = "GID",
    gmt = glue("excel/zymodeme_nobatch-v{ver}.gmt"),
    excel = glue("{excel_out}/DE_Strain/{ver}/zymo_sig_nobatch_deseq-v{ver}.xlsx"))
zymo_sig_nobatch
```

#### Gene ontology comparing the strains

There are too few genes at our current stringencies for a meaningful result.

```{r}
increased_z22 <- zymo_sig_nobatch[["deseq"]][["downs"]][["zymodeme"]]
increased_z23 <- zymo_sig_nobatch[["deseq"]][["ups"]][["zymodeme"]]
z22_goseq <- simple_goseq(increased_z22, go_db = lp_go, length_db = lp_lengths, min_xref = 10)
z23_goseq <- simple_goseq(increased_z23, go_db = lp_go, length_db = lp_lengths, min_xref = 10)
```

### Plot DE genes without batch estimation/adjustment

```{r}
zymo_table_nobatch[["plots"]][["zymodeme"]][["deseq_ma_plots"]]
zymo_table_nobatch[["plots"]][["zymodeme"]][["deseq_vol_plots"]]
```

Log ratio, mean average plot and volcano plot of the comparison of the
two primary zymodeme transcriptomes.  When the transcriptomes of the
two main strains (43 and 41 samples of z2.3 and z2.1) were compared
without any attempt at batch/surrogate estimation with DESeq2, 45 and
85 genes were observed as significantly higher in strain z2.3 and z2.2
respectively using a cutoff of 1.0 logFC and 0.05 FDR adjusted
p-value.  There remain a large number of genes which are likely
significantly different between the two strains, but fall below the
2-fold difference required for 'significance.'  This follows prior
observations that the parasite transcriptomes are constituitively
expressed.

When the same data was plotted via a volcano plot, the relatively
small range of fold changes compared to the large range of adjusted
p-values is visible.

## Attempt SVA estimate

```{r}
zymo_de_sva <- all_pairwise(lp_zymo, filter = TRUE, model_fstring = "~ 0 + condition",
                            model_svs = "svaseq")
zymo_de_sva
zymo_table_sva <- combine_de_tables(
    zymo_de_sva, keepers = zymodeme_keeper, label_column = "gene_product",
    rda = glue("rda/zymo_tables_sva-v{ver}.rda"),
    excel = glue("{excel_out}/DE_Strain/{ver}/zymo_tables_sva-v{ver}.xlsx"))
zymo_table_sva
zymo_sig_sva <- extract_significant_genes(
    zymo_table_sva,
    according_to = "deseq",
    current_id = "GID", required_id = "GID",
    gmt = glue("excel/zymodeme_sva-v{ver}.gmt"),
    excel = glue("{excel_out}/DE_Strain/{ver}/zymo_sig_sva-v{ver}.xlsx"))
zymo_sig_sva
```

#### Gene ontology comparing the strains

There are too few genes at our current stringencies for a meaningful result.

```{r}
increased_z22 <- zymo_sig_sva[["deseq"]][["downs"]][["zymodeme"]]
increased_z23 <- zymo_sig_sva[["deseq"]][["ups"]][["zymodeme"]]
z22_goseq <- simple_goseq(increased_z22, go_db = lp_go, length_db = lp_lengths)
z23_goseq <- simple_goseq(increased_z23, go_db = lp_go, length_db = lp_lengths)
```

### Plot zymodeme DE genes with sva batch estimation/adjustment

When estimates from SVA were included in the statistical model used by
EdgeR, DESeq2, and limma; a nearly identical view of the data emerged.
I think this shows with a high degree of confidence, that sva is not
having a significant effect on this dataset.

```{r}
zymo_table_sva[["plots"]][["zymodeme"]][["deseq_ma_plots"]]
zymo_table_sva[["plots"]][["zymodeme"]][["deseq_vol_plots"]]
```

# Parasite Susceptibility to Drug (Current)

This susceptibility comparison is using the 'current' dataset.

Note again: we no longer have any ambiguous samples, so I commented
out a portion of the following block.

```{r}
sus_de_nobatch <- all_pairwise(lp_susceptibility, filter = TRUE, model_fstring = "~ 0 + condition")
sus_de_nobatch
sus_table_nobatch <- combine_de_tables(
  sus_de_nobatch, keepers = susceptibility_keepers,
  rda = glue("rda/sus_tables_nobatch-v{ver}.rda"),
  excel = glue("{excel_out}/DE_Susceptibility/{ver}/sus_tables_nobatch-v{ver}.xlsx"))
sus_table_nobatch
sus_sig_nobatch <- extract_significant_genes(
  sus_table_nobatch,
  excel = glue("{excel_out}/DE_Susceptibility/{ver}/sus_sig_nobatch-v{ver}.xlsx"))

sus_de_sva <- all_pairwise(lp_susceptibility, filter = TRUE, model_fstring = "~ 0 + condition", model_svs = "svaseq")
sus_de_sva
sus_table_sva <- combine_de_tables(
    sus_de_sva, keepers = susceptibility_keepers,
    rda = glue("rda/sus_tables_sva-v{ver}.rda"),
    excel = glue("{excel_out}/DE_Susceptibility/{ver}/sus_tables_sva-v{ver}.xlsx"))
sus_table_sva
sus_sig_sva <- extract_significant_genes(
  sus_table_sva, according_to = "deseq",
    excel = glue("{excel_out}/DE_Susceptibility/{ver}/sus_sig_sva-v{ver}.xlsx"))
sus_sig_sva

## To get a more true sense of sensitive vs resistant with sva, we kind of need to get rid of the
## unknown samples and perhaps the ambiguous.
## no_ambiguous <- subset_se(lp_susceptibility, subset = "condition!='ambiguous'") %>%
##   subset_se(subset = "condition!='unknown'")
## no_ambiguous_de_sva <- all_pairwise(no_ambiguous, filter = TRUE, model_batch = "svaseq")
## no_ambiguous_de_sva
## Let us see if my keeper code will fail hard or soft with extra contrasts...
## no_ambiguous_table_sva <- combine_de_tables(
##     no_ambiguous_de_sva, keepers = susceptibility_keepers,
##     excel = glue("excel/no_ambiguous_tables_sva-v{ver}.xlsx"))
## no_ambiguous_table_sva
## no_ambiguous_sig_sva <- extract_significant_genes(
##     no_ambiguous_table_sva, according_to = "deseq",
##     excel = glue("excel/no_ambiguous_sig_sva-v{ver}.xlsx"))
## no_ambiguous_sig_sva
```

#### Gene ontology comparing the susceptibility

```{r}
sus_sig_sva
increased_resistant <- sus_sig_sva[["deseq"]][["ups"]][["resistant_sensitive"]]
increased_sensitive <- sus_sig_sva[["deseq"]][["downs"]][["resistant_sensitive"]]
resistant_goseq <- simple_goseq(increased_resistant, go_db = lp_go, length_db = lp_lengths)
sensitive_goseq <- simple_goseq(increased_sensitive, go_db = lp_go, length_db = lp_lengths)
```

### Plot Susceptibility DE genes with sva batch estimation/adjustment

```{r}
sus_table_nobatch[["plots"]][["resistant_sensitive"]][["deseq_ma_plots"]]
sus_table_nobatch[["plots"]][["resistant_sensitive"]][["deseq_vol_plots"]]

sus_table_sva[["plots"]][["resistant_sensitive"]][["deseq_ma_plots"]]
sus_table_sva[["plots"]][["resistant_sensitive"]][["deseq_vol_plots"]]
```

Given that resistance/sensitivity tends to be correlated with strain,
one might expect similar results.  One caveat in this context though:
there are fewer strains with resistance/sensitivity definitions.  This
when the analysis was repeated without the ambiguous/unknown samples,
a few more genes were observed as significant.

# Comparing DE results from strain/sensitivity

```{r}
## zymo_table_sva[["plots"]][["zymodeme"]][["deseq_ma_plots"]][["plot"]]
zy_df <- zymo_table_sva[["data"]][["zymodeme"]]
sus_df <- sus_table_sva[["data"]][["resistant_sensitive"]]

both_df <- merge(zy_df, sus_df, by = "row.names")
plot_df <- both_df[, c("deseq_logfc.x", "deseq_logfc.y")]
rownames(plot_df) <- both_df[["Row.names"]]
colnames(plot_df) <- c("z23_vs_z22", "sensitive_vs_resistant")

compare <- plot_linear_scatter(plot_df)
pp(file = "images/compare_sus_zy.png")
compare$scatter
dev.off()
compare$scatter
compare$cor
```

# Parasite Susceptibility to Drug (Historical)

This susceptibility comparison is using the historical dataset.

```{r}
sushist_de_nobatch <- all_pairwise(lp_susceptibility_historical, model_fstring = "~ 0 + condition",
                                   filter = TRUE)
sushist_de_nobatch
sushist_table_nobatch <- combine_de_tables(
  sushist_de_nobatch, keepers = susceptibility_keepers,
  excel = glue("{excel_out}/DE_Susceptibility/sushist_tables_nobatch-v{ver}.xlsx"))
sushist_table_nobatch
sushist_sig_nobatch <- extract_significant_genes(
  sushist_table_nobatch,
  excel = glue("{excel_out}/DE_Susceptibility/sushist_sig_nobatch-v{ver}.xlsx"))
sushist_sig_nobatch

sushist_de_sva <- all_pairwise(lp_susceptibility_historical, filter = TRUE,
                               model_fstring = "~ 0 + condition", model_svs = "svaseq")
sushist_de_sva
sushist_table_sva <- combine_de_tables(
  sushist_de_sva, keepers = susceptibility_keepers,
  excel = glue("{excel_out}/DE_Susceptibility/sushist_tables_sva-v{ver}.xlsx"))
sushist_table_sva
sushist_sig_sva <- extract_significant_genes(
  sushist_table_sva, according_to = "deseq",
  excel = glue("{excel_out}/DE_Susceptibility/sushist_sig_sva-v{ver}.xlsx"))
sushist_sig_sva
```

# Cure/Fail association

```{r}
##cf_nb_input <- subset_se(cf_se, subset="condition!='unknown'")
cf_de_nobatch <- all_pairwise(lp_cf_known, filter = TRUE,
                              model_fstring = "~ 0 + condition", model_svs = FALSE)
cf_de_nobatch
cf_table_nobatch <- combine_de_tables(
  cf_de_nobatch,
  excel = glue("{excel_out}/DE_Cure_vs_Fail/{ver}/cf_tables_nobatch-v{ver}.xlsx"))
cf_table_nobatch
cf_sig_nobatch <- extract_significant_genes(
  cf_table_nobatch,
  excel = glue("{excel_out}/DE_Cure_vs_Fail/{ver}/cf_sig_nobatch-v{ver}.xlsx"))
cf_sig_nobatch

cf_de <- all_pairwise(lp_cf_known, filter = TRUE,
                      model_fstring = "~ 0 + condition", model_svs = "svaseq")
cf_de
cf_table <- combine_de_tables(
  cf_de,
  excel = glue("{excel_out}/DE_Cure_vs_Fail/{ver}/cf_tables-v{ver}.xlsx"))
cf_table
cf_sig <- extract_significant_genes(
  cf_table,
  excel = glue("{excel_out}/DE_Cure_vs_Fail/{ver}/cf_sig-v{ver}.xlsx"))
cf_sig
```

I am not going to mess with GO searches for this.

## Cure/Fail DE plots

It is not surprising that few or no genes are deemed significantly
differentially expressed across samples which were taken from cure or
fail patients.

```{r}
cf_table_nobatch[["plots"]][["fail_vs_cure"]][["deseq_ma_plots"]]

dev <- pp(file = "images/cf_ma.png")
cf_table[["plots"]][["fail_vs_cure"]][["deseq_ma_plots"]]
closed <- dev.off()
cf_table[["plots"]][["fail_vs_cure"]][["deseq_ma_plots"]]
```

# Combining the macrophage infected amastigotes with in-vitro promastigotes

One query we have not yet addressed: what are the similarities and
differences among the strains used to infect the macrophage samples
and the promastigote samples used in the TMRC2 parasite data?

In my container image, this dataset is not currently loaded, so turning this off.

```{r}
## I just fixed this in the datasets Rmd, but until that propagates just set it manually
annotation(lp_se) <- annotation(lp_macrophage)
tmrc2_macrophage_norm <- normalize(lp_macrophage, transform="log2", convert="cpm",
                                   norm="quant", filter=TRUE)
all_tmrc2 <- hpgltools:::combine_se(lp_se, lp_macrophage)

all_nosb <- all_tmrc2
colData(all_nosb)[["stage"]] <- "promastigote"
na_idx <- is.na(colData(all_nosb)[["macrophagetreatment"]])
colData(all_nosb)[na_idx, "macrophagetreatment"] <- "undefined"
all_nosb <- subset_se(all_nosb, subset = "macrophagetreatment!='inf_sb'")
ama_idx <- colData(all_nosb)[["macrophagetreatment"]] == "inf"
colData(all_nosb)[ama_idx, "stage" ] <- "amastigote"
colData(all_nosb)[["batch"]] <- colData(all_nosb)[["stage"]]
```

I think the above picture is sort of the opposite of what we want to
compare in a DE analysis for this set of data, e.g. we want to compare
promastigotes from amastigotes?

```{r}
all_nosb <- set_batches(all_nosb, fact = "condition") %>%
  set_conditions(fact = "stage")
two_zymo <- subset_se(
  all_nosb,
  subset = "zymodemecategorical=='z22'|zymodemecategorical=='z23'|zymodemecategorical=='unknown'")

pro_ama <- all_pairwise(all_nosb, filter = TRUE,
                        model_fstring = "~ 0 + condition", model_svs = "svaseq")
pro_ama_table <- combine_de_tables(
  pro_ama,
  excel = glue("{excel_out}/DE_promastigote_amastigote/{ver}/pro_vs_ama_table-v{ver}.xlsx"))
pro_ama_sig <- extract_significant_genes(
    pro_ama_table,
    excel = glue("{excel_out}/DE_promastigote_amastigote/{ver}/pro_vs_ama_sig-v{ver}.xlsx"))
```

#### Gene ontology comparing the life stages

```{r}
increased_promastigote <- pro_ama_sig[["deseq"]][["ups"]][["promastigote_vs_amastigote"]]
increased_amastigote <- pro_ama_sig[["deseq"]][["downs"]][["promastigote_vs_amastigote"]]
promastigote_goseq <- simple_goseq(increased_promastigote, go_db = lp_go, length_db = lp_lengths)
promastigote_goseq
amastigote_goseq <- simple_goseq(increased_amastigote, go_db = lp_go,
                                 length_db = lp_lengths, min_xref = 30)
amastigote_goseq

## silly, topgo wants the gene id column to be 'ID', I should fix this.
colnames(lp_go) <- c("ID", "GO")
promastigote_topgo <- simple_topgo(increased_promastigote, go_db = lp_go)
enrichplot::dotplot(promastigote_topgo$enrich_results$bp)

amastigote_topgo <- simple_topgo(increased_amastigote, go_db = lp_go)
enrichplot::dotplot(amastigote_topgo$enrich_results$bp)
```

### Plot promastigote/amastigote DE genes

```{r}
pro_ama_table[["plots"]][["promastigote_vs_amastigote"]][["deseq_ma_plots"]]
```

I am a little surprised by this plot, I somewhat expected there to be
few genes which passed the 2-fold difference demarcation line.

```{r}
pander::pander(sessionInfo())
message(paste0("This is hpgltools commit: ", get_git_commit()))
## message(paste0("Saving to ", savefile))
## tmp <- sm(saveme(filename = savefile))
```

```{r, eval=FALSE}
tmp <- loadme(filename = savefile)
```
