ProActive
automatically detects regions of gapped and elevated read
coverage using a 2D pattern-matching algorithm. ProActive
detects,
characterizes and visualizes read coverage patterns in both genomes and
metagenomes. Optionally, users may provide gene annotations associated
with their genome or metagenome in the form of a .gff file. In this
case, ProActive
will generate an additional output table containing
the gene annotations found within the detected regions of gapped and
elevated read coverage. Additionally, users can search for gene
annotations of interest in the output read coverage plots.
Visualizing read coverage data is important because gaps and elevations in coverage can be indicators of a variety of biological and non-biological scenarios, for example-
- Elevations and gaps in read coverage may be caused by some types of structural variants. Deletions can cause gaps while duplications can cause elevations in read coverage [1].
- Highly active and/or abundant mobile genetic elements, like transposable elements [2] and prophage [3] for example, can create elevations in read coverage at their respective integration sites.
- Genetic regions with high mutation rates and/or high variability within the population can generate gaps in read coverage [4].
- Poor quality sequencing reads and chimeric reference sequences may cause gaps and elevations in read coverage.
Since the cause for gaps and elevations in read coverage can be ambiguous, ProActive is best used as a screening method to identify genetic regions for further investigation with other tools!
References:
- Tattini L., D’Aurizio R., & Magi A. (2015). Detection of Genomic Structural Variants from Next-Generation Sequencing Data. Frontiers in bioengineering and biotechnology, 3, 92. https://doi.org/10.3389/fbioe.2015.00092
- Kleiner M., Bushnell B., Sanderson K.E. et al. (2020) Transductomics: sequencing-based detection and analysis of transduced DNA in pure cultures and microbial communities. Microbiome 8, 158. https://doi.org/10.1186/s40168-020-00935-5
- Kieft K., Anantharaman K. (2022). Deciphering Active Prophages from Metagenomes. mSystems 7:e00084-22. https://doi.org/10.1128/msystems.00084-22
- Fogarty E., Moore R. (2019). Visualizing contig coverages to better understand microbial population structure. https://merenlab.org/2019/11/25/visualizing-coverages/
ProActive detects read coverage patterns using a pattern-matching algorithm that operates on pileup files. A pileup file is a file format where each row summarizes the ‘pileup’ of reads at specific genomic locations. Pileup files can be used to generate a rolling mean of read coverages and associated base pair positions which reduces data size while preserving read coverage patterns. ProActive requires that input pileups files be generated using a 100 bp window/bin size.
Pileup files can be generated by mapping sequencing reads to a
metagenome or genome fasta. Read mapping should be performed using a
high minimum identity (0.97 or higher) and random mapping of
ambiguous reads. The pileup files needed for ProActive are generated
using the .bam files produced during read mapping. Some read mappers,
like
BBMap,
allow for the generation of pileup files in the
bbmap.sh
command with use of the bincov
output with the covbinsize=100
parameter/argument. Otherwise, BBMap’s
pileup.sh
can convert .bam files produced by any read mapper to pileup files
compatible with ProActive using the bincov
output with
binsize=100
.
NOTE: For detailed information on input file format, please see the vignette. Users may also use the ‘sampleMetagenomePileup’ and ‘sampleGenomePileup’ files that come pre-loaded with ProActive as a reference.
ProActive optionally accepts a .gff file as input. The .gff file must be associated with the same metagenome or genome used to create your pileup file. The .gff file should be a TSV and should follow the same general format described here.
Install ProActive from CRAN with:
install.packages("ProActive")
library(ProActive)
Install the development version of ProActive from GitHub with:
if (!require("devtools", quietly = TRUE)) {
install.packages("devtools")
}
devtools::install_github("jlmaier12/ProActive")
library(ProActive)
library(ProActive)
## Metagenome mode
MetagenomeProActive <- ProActiveDetect(
pileup = sampleMetagenomePileup,
mode = "metagenome",
gffTSV = sampleMetagenomegffTSV
)
#> Preparing input file for pattern-matching...
#> Starting pattern-matching...
#> A quarter of the way done with pattern-matching
#> Half of the way done with pattern-matching
#> Almost done with pattern-matching!
#> Summarizing pattern-matching results
#> Finding gene predictions in elevated or gapped regions of read coverage...
#> Finalizing output
#> Execution time: 2.09secs
#> 0 contigs were filtered out based on low read coverage
#> 0 contigs were filtered out based on length (< minContigLength)
#>
#> Elevation Gap NoPattern
#> 3 3 1
MetagenomePlots <- plotProActiveResults(pileup = sampleMetagenomePileup,
ProActiveResults = MetagenomeProActive)
MetagenomeGeneMatches <- geneAnnotationSearch(ProActiveResults = MetagenomeProActive,
pileup = sampleMetagenomePileup,
gffTSV = sampleMetagenomegffTSV,
geneOrProduct = "product",
keyWords = c("transport", "chemotaxis"))
#> Cleaning gff file...
#> Cleaning pileup file...
#> Searching for matching annotations...
#> 3 contigs/chunks have gene annotations that match one or more of the provided keyWords
## Genome mode
GenomeProActive <- ProActiveDetect(
pileup = sampleGenomePileup,
mode = "genome",
gffTSV = sampleGenomegffTSV
)
#> Preparing input file for pattern-matching...
#> Starting pattern-matching...
#> A quarter of the way done with pattern-matching
#> Half of the way done with pattern-matching
#> Almost done with pattern-matching!
#> Summarizing pattern-matching results
#> Finding gene predictions in elevated or gapped regions of read coverage...
#> Finalizing output
#> Execution time: 29.7secs
#> 0 contigs were filtered out based on low read coverage
#> 0 contigs were filtered out based on length (< minContigLength)
#>
#> Elevation Gap NoPattern
#> 25 3 21
GenomePlots <- plotProActiveResults(pileup = sampleGenomePileup,
ProActiveResults = GenomeProActive)
GenomeGeneMatches <- geneAnnotationSearch(ProActiveResults = GenomeProActive,
pileup = sampleGenomePileup,
gffTSV = sampleGenomegffTSV,
geneOrProduct = "product",
keyWords = c("ribosomal"),
inGapOrElev = TRUE,
bpRange = 5000)
#> Cleaning gff file...
#> Cleaning pileup file...
#> Searching for matching annotations...
#> 8 contigs/chunks have gene annotations that match one or more of the provided keyWords