RNAmodR: RiboMethSeq

BiocStyle::markdown(css.files = c('custom.css'))


Among the various post-transcriptional RNA modifications, 2'-O methylations are commonly found in rRNA and tRNA. They promote the endo conformation of the ribose and confere resistance to alkaline degradation by preventing a nucleophilic attack on the 3'-phosphate especially in flexible RNA, which is fascilitated by high pH conditions. This property can be queried using a method called RiboMethSeq [@Birkedal.2015] for which RNA is treated in alkaline conditions and RNA fragments are used to prepare a sequencing library [@Marchand.2017].

At position containing a 2'-O methylations, read ends are less frequent, which is used to detect and score the 2'-O methylations.

The ModRiboMethSeq class uses the the ProtectedEndSequenceData class to store and aggregate data along the transcripts. The calculated scores follow the nomenclature of [@Birkedal.2015;@Galvanin.2019] with the names scoreRMS (default), scoreA, scoreB and scoreMean.


Example workflow

The example workflow is limited to two 2'-O methylated position on 5.8S rRNA, since the size of the raw data is limited. For annotation data either a gff file or a TxDb object and for sequence data a fasta file or a BSgenome object can be used. The data is provided as bam files.

annotation <- GFF3File(RNAmodR.Data.example.RMS.gff3())
sequences <- RNAmodR.Data.example.RMS.fasta()
files <- list("Sample1" = c(treated = RNAmodR.Data.example.RMS.1()),
              "Sample2" = c(treated = RNAmodR.Data.example.RMS.2()))

Analysis of data

The analysis is triggered by the construction of a ModSetRiboMethSeq object. Internally parallelization is used via the BiocParallel package, which would allow optimization depending on number/size of input files (number of samples, number of replicates, number of transcripts, etc).

msrms <- ModSetRiboMethSeq(files, annotation = annotation, sequences = sequences)

Visualizing the results

To compare samples, we need to know, which positions should be part of the comparison. This can either be done by aggregating the detect over all samples and use the union or intersect or by using publish data. We want to assemble a GRanges object from the latter by utilising the infomation from the snoRNAdb [@Lestrade.2006].

In this specific example only information for the 5.8S RNA is used, since the example data would be to big otherwise. The information regarding the parent and seqname must match the information used as the annotation data. Check that it matches the output of ranges() on a SequenceData, Modifier oder ModifierSet object.

table <- read.csv2(RNAmodR.Data.snoRNAdb(), stringsAsFactors = FALSE)
table <- table[table$hgnc_id == "53533",] # Subset to RNA5.8S
# keep only the current coordinates
table <- table[,1L:7L]
snoRNAdb <- GRanges(seqnames = "chr1",
              ranges = IRanges(start = table$position,
                               width = 1),
              strand = "+",
              type = "RNAMOD",
              mod = table$modification,
              Parent = "1", #this is the transcript id
              Activity = IRanges::CharacterList(strsplit(table$guide,",")))
coord <- split(snoRNAdb,snoRNAdb$Parent)

In addition to the coordinates of published, we also want to include more meaningful names for the transcripts. For this we provide a data.frame with two columns, tx_id and name. All values in the first column have to match transcript IDs.

alias <- data.frame(tx_id = "1", name = "5.8S rRNA", stringsAsFactors = FALSE)
plotCompareByCoord(msrms[c(2L,1L)], coord, alias = alias)

Results can also be compared on a sequence level, by selecting specific coordinates to compare.

singleCoord <- coord[[1L]][1L,]
plotDataByCoord(msrms, singleCoord)

By default only the RiboMethSeq score and the ScoreMean are shown. The raw sequence data can be inspected as well

singleCoord <- coord[[1L]][1L,]
plotDataByCoord(msrms, singleCoord, showSequenceData = TRUE)


To access the performance of the method in combination with samples used, use the plotROC function.


The example given here should be regarded as a proof of concept. Based on the results, minimal scores for calling modified positions can be adjusted to the individual requirements.

settings(msrms) <- list(minScoreMean = 0.7)

As the warning suggested, after modifying the settings the results should be updated by running modify(x,force = TRUE).

msrms2 <- modify(msrms,force = TRUE)

Session info



Try the RNAmodR.RiboMethSeq package in your browser

Any scripts or data that you put into this service are public.

RNAmodR.RiboMethSeq documentation built on Nov. 8, 2020, 5:45 p.m.