The DeepBlue Epigenomic Data Server is an online application that allows researchers to access data from various epigenomic mapping consortia such as DEEP, BLUEPRINT, ENCODE, or ROADMAP. DeepBlue can be accessed through a web interface or programmatically via its API. The usage of the API is documented with examples, use cases, and a user manual. While the description of the API is language agnostic, the examples and use cases shown online are focused on the python language. However, the R package presented here also enables access to the DeepBlue API directly within the R statistical environment and provides convenient functionality for triggering operations on the DeepBlue server as well as for data retrievel using R functions. In the following, we give a brief introduction to the package and subsequently show how python examples from the online documentation can be reproduced with it.
A wealth of epigenomic data has been collected over the past decade by large epigenomic mapping consortia. Event though most of these data are publicly available, the task of identifiying, downloading and processing data from various experiments is challenging. Recognizing that these tedious steps need to be tackled programmatically, we developed the DeepBlue epigenomic data server. Epigenome data from the different epigenome mapping consortia are accessible with standardized metadata. An experiment is the most important entity in DeepBlue and typically encompasses a single file (usually a bed or wig file) with a set of mandatory metadata: name, genome assembly, epigenetic mark, biosource, sample, technique, and project. For the sake of organization, all metadata fields are part of controlled vocabularies, some of which are imported from ontologies (CL, EFO, and UBERON, to name a few). DeepBlue also contains annotations, i.e. auxiliary data that is helpful in epigenomic analysis, such as, for example, CpG Islands, promoter regions, and genes. DeepBlue provides different types of commands, such as listing and searching commands as well as commands for data retrieval. A typical work-flow for the latter is to select, filter, transform, and finally download the selected data. For a more thorough description of DeepBlue we refer to the DeepBlue publication in the 2016 NAR webserver issue. If you find DeepBlue useful and use it in your project consider citing this paper.
Important note: With the exception of data aggregation tasks, DeepBlue does not alter the imported data, i.e. it remains exactly as provided by the epigenome mapping consortia.
Installation of DeepBlueR and its companion packages can be performed using the Bioconductor installer:
source("https://bioconductor.org/biocLite.R")
biocLite("DeepBlueR")
The package name is DeepBlueR
and it can be loaded via:
library(DeepBlueR)
You can test your installation and connectivity by saying hello to the DeepBlue server:
deepblue_info("me")
DeepBlue provides a comprehensive programmatic interface for finding, selecting, filtering, summarizing and downloading annotated genomic region sets. Downloaded region sets are stored using the GenomicRanges R package, which allows for downloaded region sets to be further processed, visualized and analyzed with existing R packages such as LOLA or GViz.
A list of all commands available by DeepBlue is provided in its API page. The vast majority of these commands is also available through this R package and can be listed as follows:
help(package="DeepBlueR")
In the following we listed the most frequently used DeepBlue commands. The full list of commands is available here. Note that each command in the following two tables has the prefix ’deepblue_*’, e.g. deepblue_select_genes.
Category | Command | Description |
---|---|---|
Information | info | Information about an entity |
List and search | list_genomes | List registered genomes |
list_biosources | List registered biosources | |
list_samples | List registered samples | |
list_epigenetic marks | List registered epigenetic marks | |
list_experiments | List available experiments | |
list_annotations | List available annotations | |
search | Perform a full-text search | |
Selection | select_regions | Select regions from experiments |
select_experiments | Select regions from experiments | |
select_annotations | Select regions from annotations | |
select_genes | Select genes as regions | |
select_expressions | Select expression data | |
tiling_regions | Generate tiling regions | |
input_regions | Upload and use a small region-set | |
Operation | aggregate | Aggregate and summarize regions |
filter_regions | Filter regions by theirs attributes | |
flank | Generate flanking regions | |
intersection | Filter for intersecting regions | |
overlap | Filter for regions overlapping by at least a specific size | |
merge_queries | Merge two regions set | |
Result | count_regions | Count selected regions |
score_matrix | Request a score matrix | |
get_regions | Request the selected regions | |
binning | Bin results according to counts | |
Request | get_request data | Obtain the requested data |
In addition, this package provides a set of convenience functions not part of the DeepBlue API, such as:
Category | Command | Description |
---|---|---|
Request | batch_export_results | Download the results for a list of requests |
download_request_data | Download and convert the requested data (blocking) | |
export_meta_data | Export metadata to a tab delimited file | |
export_tab | Export any result as tab delimited file | |
export_bed | Export GenomicRanges results as BED file |
In the following we give a number of increasingly complex examples illustrating what DeepBlue can achieve in your epigenomic data analysis work-flow. We go beyond the online description of these examples by showing how the retrieved information can be further used in R.
One of the first tasks in DeepBlue is finding the data of interest. This can be achieved in three ways:
deepblue_search
commanddeepblue_list_{experiments, annotations, ...}
commandsIn this example, we use the command deepblue_search
to find experiments that contain the keywords ‘H3k27AC’, ‘blood’, and ‘peaks’ in their metadata. We put the names in single quotes to show that these names must be in the metadata.
# We are selecting the experiments with terms 'H3k27AC', 'blood', and
# 'peak' in the metadata.
experiments_found = deepblue_search(
keyword="'H3k27AC' 'blood' 'peak'", type="experiments")
custom_table = do.call("rbind", apply(experiments_found, 1, function(experiment){
experiment_id = experiment[1]
# Obtain the information about the experiment_id
info = deepblue_info(experiment_id)
# Print the experiment name, project, biosource, and epigenetic mark.
with(info, { data.frame(name = name, project = project,
biosource = sample_info$biosource_name, epigenetic_mark = epigenetic_mark)
})
}))
head(custom_table)
## name project biosource
## 1 E038-H3K27ac.narrowPeak.bed Roadmap Epigenomics BLOOD
## 2 E047-H3K27ac.narrowPeak.bed Roadmap Epigenomics BLOOD
## 3 E048-H3K27ac.narrowPeak.bed Roadmap Epigenomics BLOOD
## 4 E037-H3K27ac.narrowPeak.bed Roadmap Epigenomics BLOOD
## 5 E045-H3K27ac.narrowPeak.bed Roadmap Epigenomics BLOOD
## 6 E040-H3K27ac.narrowPeak.bed Roadmap Epigenomics BLOOD
## epigenetic_mark
## 1 H3K27ac
## 2 H3K27ac
## 3 H3K27ac
## 4 H3K27ac
## 5 H3K27ac
## 6 H3K27ac
We use the deepblue_list_experiments
command to list all experiments with the corresponding values in their metadata.
experiments = deepblue_list_experiments(type="peaks", epigenetic_mark="H3K4me3",
biosource=c("inflammatory macrophage", "macrophage"),
project="BLUEPRINT Epigenome")
The extra-metadata is important because it contains information that is not stored in the mandatory metadata fields. We use the deepblue_info
command to access an experiment’s metadata- and extra-metadata fields. The following example prints the file_url
attribute that is contained in the data imported from the ENCODE project.
info = deepblue_info("e30000")
print(info$extra_metadata$file_url)
## [1] "https://www.encodeproject.org/files/ENCFF001YBB/"
We use the deepblue_select_experiments
command to select all genomic regions from the two informed experiments. We use the deepblue_count_regions
command with the query_id
value returned by the deepblue_select_experiments
command.
The deepblue_count_regions
command is executed asynchronously. This means that the user receives a request_id
and should check the status of this request. In contrast to the command deepblue_get_request_data
, the DeepBlueR package-specific command deepblue_download_request_data
will wait for the processing to finish, before downloading the data. Moreover, this command will convert any regions to a GRanges object.
query_id = deepblue_select_experiments(
experiment_name=c("BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed",
"S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed"))
# Count how many regions where selected
request_id = deepblue_count_regions(query_id=query_id)
# Download the request data as soon as processing is finished
requested_data = deepblue_download_request_data(request_id=request_id)
print(paste("The selected experiments have", requested_data, "regions."))
## [1] "The selected experiments have 115347 regions."
We use the deepblue_select_experiments
command to select genomic regions from the experiments that are in chromosome 1, position 0 to 50,000,000.
We then use the deepblue_get_regions
command with the query_id
value returned by the deepblue_select_experiments
command to request the regions with the selected columns. Selecting the columns @NAME
and @BIOSOURCE
represent the experiment name and the experiment biosource.
The deepblue_get_regions
command is executed asynchronously. This means that the user receives a request_id
to be able to check for the status of this request. In contrast to the command deepblue_get_request_data
, the DeepBlueR package-specific command deepblue_download_request_data
will wait for the processing to finish, before downloading the data. Moreover, this command will convert any regions to a GRanges object.
query_id = deepblue_select_experiments (
experiment_name = c("BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed",
"S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed"),
chromosome="chr1", start=0, end=50000000)
# Retrieve the experiments data (The @NAME meta-column is used to include the
# experiment name and @BIOSOURCE for experiment's biosource
request_id = deepblue_get_regions(query_id=query_id,
output_format="CHROMOSOME,START,END,SIGNAL_VALUE,PEAK,@NAME,@BIOSOURCE")
regions = deepblue_download_request_data(request_id=request_id)
regions
## GRanges object with 3783 ranges and 4 metadata columns:
## seqnames ranges strand | SIGNAL_VALUE PEAK
## <Rle> <IRanges> <Rle> | <character> <integer>
## [1] chr1 270668-270987 * | 6.5758 39
## [2] chr1 271277-271468 * | 6.2148 136
## [3] chr1 273768-274209 * | 14.1567 164
## [4] chr1 778377-778676 * | 8.0198 154
## [5] chr1 778409-778678 * | 4.5767 123
## ... ... ... ... . ... ...
## [3779] chr1 47437420-47437621 * | 3.7686 147
## [3780] chr1 47437751-47438038 * | 9.6553 149
## [3781] chr1 48245368-48245867 * | 4.7708 346
## [3782] chr1 48542755-48543280 * | 7.3002 152
## [3783] chr1 48793649-48793986 * | 5.1974 108
## @NAME @BIOSOURCE
## <character> <character>
## [1] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [2] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [3] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [4] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [5] BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed BL-2
## ... ... ...
## [3779] BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed BL-2
## [3780] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [3781] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [3782] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [3783] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## -------
## seqinfo: 1 sequence from an unspecified genome; no seqlengths
We use the deepblue_list_samples
command to obtain all samples with the biosource ‘myeloid cell’ from the BLUEPRINT project. The deepblue_list_samples
returns a list of samples with their IDs and content. We extract the sample IDs from this list and use it in the deepblue_select_regions
command to selects genomic regions that are in chromosome 1, position 0 to 50,000.
Then, we use the deepblue_get_regions
command with the parameter query_id
returned by the deepblue_select_regions
command and the columns @NAME
, SAMPLE_ID
, and @BIOSOURCE
representing the experiment name, the sample ID, and the experiment biosource.
The deepblue_get_regions
command is executed asynchronously. This means that the user receives a request_id
to be able to check for the status of this request. In contrast to the command deepblue_get_request_data
, the DeepBlueR package-specific command deepblue_download_request_data
will wait for the processing to finish, before downloading the data. Moreover, this command will convert any regions to a GRanges object.
samples = deepblue_list_samples(
biosource="myeloid cell",
extra_metadata = list("source" = "BLUEPRINT Epigenome"))
samples_ids = deepblue_extract_ids(samples)
query_id = deepblue_select_regions(genome="GRCh38", sample=samples_ids,
chromosome="chr1", start=0, end=50000)
request_id = deepblue_get_regions(query_id=query_id,
output_format="CHROMOSOME,START,END,@NAME,@SAMPLE_ID,@BIOSOURCE")
regions = deepblue_download_request_data(request_id=request_id)
head(regions,1)
## GRanges object with 1 range and 3 metadata columns:
## seqnames ranges strand |
## <Rle> <IRanges> <Rle> |
## [1] chr1 0-10000 * |
## @NAME @SAMPLE_ID
## <character> <character>
## [1] S00Q7NH1_12_12_Blueprint_release_201608_segments.bed s8797
## @BIOSOURCE
## <character>
## [1] myeloid cell
## -------
## seqinfo: 1 sequence from an unspecified genome; no seqlengths
We use the deepblue_select_experiments
command for selecting genomic regions from two specific experiments that are in chromosome 1, position 0 to 50,000,000. Then, we filter these for regions with SIGNAL_VALUE
> 10 and PEAK
> 1000.
Then, we use the deepblue_get_regions
command with the parameter query_id
returned by the deepblue_select_regions
command and the columns @NAME
and @BIOSOURCE
representing the experiment name and the experiment biosource.
The deepblue_get_regions
command is executed asynchronously. This means that the user receives a request_id
to be able to check for the status of this request. In contrast to the command deepblue_get_request_data
, the DeepBlueR package-specific command deepblue_download_request_data
will wait for the processing to finish, before downloading the data. Moreover, this command will convert any regions to a GRanges object.
query_id = deepblue_select_experiments(
experiment_name = c("BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed",
"S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed"),
chromosome="chr1", start=0, end=50000000)
query_id_filter_signal = deepblue_filter_regions(
query_id=query_id, field="SIGNAL_VALUE", operation=">",
value="10", type="number")
query_id_filters = deepblue_filter_regions(
query_id=query_id_filter_signal, field="PEAK", operation=">",
value="1000", type="number")
request_id = deepblue_get_regions(query_id=query_id_filters,
output_format="CHROMOSOME,START,END,SIGNAL_VALUE,PEAK,@NAME,@BIOSOURCE")
regions = deepblue_download_request_data(request_id=request_id)
regions
## GRanges object with 161 ranges and 4 metadata columns:
## seqnames ranges strand | SIGNAL_VALUE PEAK
## <Rle> <IRanges> <Rle> | <character> <integer>
## [1] chr1 1142428-1144001 * | 10.9313 1275
## [2] chr1 1573400-1575582 * | 17.8805 1094
## [3] chr1 1612814-1616174 * | 32.2064 2802
## [4] chr1 1668761-1670450 * | 20.2936 1017
## [5] chr1 1778583-1783797 * | 35.4277 1293
## ... ... ... ... . ... ...
## [157] chr1 44774644-44776655 * | 16.3227 1160
## [158] chr1 44806139-44811000 * | 22.8156 1381
## [159] chr1 46301112-46304262 * | 19.8041 2397
## [160] chr1 46579227-46582046 * | 15.9613 1824
## [161] chr1 46593677-46595181 * | 11.8798 1304
## @NAME @BIOSOURCE
## <character> <character>
## [1] BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed BL-2
## [2] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [3] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [4] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [5] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## ... ... ...
## [157] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [158] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [159] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [160] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [161] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## -------
## seqinfo: 1 sequence from an unspecified genome; no seqlengths
We use the deepblue_select_experiments
command for selecting genomic regions from two specific experiments that are in chromosome 1, position 0 to 50,000,000. Then, we filter these for regions with SIGNAL_VALUE
> 10 and PEAK
> 1000.
The command deepblue_intersection
filters for all regions of the query_id
that intersect with at least one region in promoters_id
.
Then, we use the deepblue_get_regions
command with the parameter query_id
returned by the deepblue_select_regions
command and the columns @NAME
and @BIOSOURCE
representing the experiment name and the experiment biosource.
The deepblue_get_regions
command is executed asynchronously. This means that the user receives a request_id
to be able to check for the status of this request. In contrast to the command deepblue_get_request_data
, the DeepBlueR package-specific command deepblue_download_request_data
will wait for the processing to finish, before downloading the data. Moreover, this command will convert any regions to a GRanges object.
query_id = deepblue_select_experiments(
experiment_name = c("BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed",
"S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed"),
chromosome="chr1", start=0, end=50000000)
promoters_id = deepblue_select_annotations(annotation_name="promoters",
genome="GRCh38", chromosome="chr1")
intersect_id = deepblue_intersection(
query_data_id=query_id, query_filter_id=promoters_id)
request_id = deepblue_get_regions(
query_id=intersect_id,
output_format="CHROMOSOME,START,END,SIGNAL_VALUE,PEAK,@NAME,@BIOSOURCE")
regions = deepblue_download_request_data(request_id=request_id)
regions
## GRanges object with 608 ranges and 4 metadata columns:
## seqnames ranges strand | SIGNAL_VALUE PEAK
## <Rle> <IRanges> <Rle> | <character> <integer>
## [1] chr1 903997-904177 * | 4.7708 89
## [2] chr1 904302-905111 * | 5.4928 560
## [3] chr1 910269-910975 * | 4.7201 136
## [4] chr1 911973-913915 * | 17.0446 624
## [5] chr1 923976-924329 * | 4.7201 109
## ... ... ... ... . ... ...
## [604] chr1 46718435-46719027 * | 6.2499 230
## [605] chr1 47313340-47313980 * | 6.8711 174
## [606] chr1 47313412-47313588 * | 4.8558 120
## [607] chr1 47313632-47314141 * | 10.2801 371
## [608] chr1 47333183-47335172 * | 18.9772 857
## @NAME @BIOSOURCE
## <character> <character>
## [1] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [2] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [3] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [4] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [5] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## ... ... ...
## [604] BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed BL-2
## [605] BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed BL-2
## [606] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [607] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [608] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## -------
## seqinfo: 1 sequence from an unspecified genome; no seqlengths
library(Gviz)
atrack <- AnnotationTrack(regions, name = "Intersecting regions",
group = regions$`@BIOSOURCE`, genome="hg38")
gtrack <- GenomeAxisTrack()
itrack <- IdeogramTrack(genome = "hg38", chromosome = "chr1")
plotTracks(list(itrack, atrack, gtrack), groupAnnotation="group", fontsize=18,
background.panel = "#FFFEDB", background.title = "darkblue")
The meta-column @LENGTH
contains the genomic region length, and we filter the genomic regions where this value is smaller than 2,000.
The meta-column @SEQUENCE
includes the DNA Sequence in the genomic region output.
The deepblue_get_regions
command is executed asynchronously. This means that the user receives a request_id
to be able to check for the status of this request. In contrast to the command deepblue_get_request_data
, the DeepBlueR package-specific command deepblue_download_request_data
will wait for the processing to finish, before downloading the data. Moreover, this command will convert any regions to a GRanges object.
query_id = deepblue_select_experiments(
experiment_name = c("BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed",
"S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed"),
chromosome="chr1", start=0, end=50000000)
query_id_filter_signal = deepblue_filter_regions(query_id=query_id,
field="SIGNAL_VALUE", operation=">", value="10", type="number")
query_id_filters = deepblue_filter_regions(query_id=query_id_filter_signal,
field="PEAK", operation=">", value="1000", type="number")
query_id_filter_length = deepblue_filter_regions (query_id=query_id_filters,
field="@LENGTH", operation="<", value="2000", type="number")
request_id = deepblue_get_regions(query_id=query_id_filter_length,
output_format="CHROMOSOME,START,END,@NAME,@BIOSOURCE,@LENGTH,@SEQUENCE")
regions = deepblue_download_request_data(request_id=request_id)
head(regions, 1)
## GRanges object with 1 range and 4 metadata columns:
## seqnames ranges strand |
## <Rle> <IRanges> <Rle> |
## [1] chr1 1142428-1144001 * |
## @NAME @BIOSOURCE
## <character> <character>
## [1] BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed BL-2
## @LENGTH
## <integer>
## [1] 1573
## @SEQUENCE
## <character>
## [1] CCAGGCTGGTCTCAAACTCCTGACCTCAAATGATCCGCCCACCTCGGCCTCCCACAGTGCTGGGATTACAGGCGTGAGTCACTGTGCCCGACCCCGTCCCCGTCTTTCAGTCAAGACCGTCCTCCCCACAGCACCCCTGCACTGCCGCCCTCTCAGCCTCCCGTTTAGCAAAACGGTTCCCCCACTGCCTCCTGCCACGACCCCAGCCTCCCCTCGGCCTCTGAAGGCAGCCGGGACCCCTGCTGTCCTCCCACCTCCCCACCTGCACGCTCTGCTCCTCCTACCTTCTAAAAGGATCTTCCTTCTCCAGGCACATGGTCACCCTGCACGTCAGGGGCCGGCTCACCCCTGATATTAGCAACCCCAAGCGTCTTGGCGCAGGGAGGGATCCCCGTCAGCCAGGTCCCCACGCAGCTCCAGGCAGCGCCAGCGTCCACCAGGGAGCAGGGGCAGCAGAGCCCTTCTCCCCAGACACCCTTGTGTCTTCGGAAAATGCCAGGTCCCCCCCCAGCTGCTGTTCTCGTCTTTGGAGGACCCGGCTTTACTGGTGCCACATGCCTGCTGCGGGCTGTGCCATGGAGGGCGGCACCTGCCTCTTCTCACGTGGCAGCTCTGGCACCGGGAACTTCAGAGACCCCAGCTGGGCTGAGCCACCCCGGGCTGAGGCCTTGTGGGTCGCCTCAAATTCAAGCCTCATGGGCCCGGCCTCCCGCCCTAACGGTCGCTGAAGTGTCCTGCTCTCATACGAACTTGTGTCTAAAACTGTGGTCTTTGCTTTTCTCCCAAACCCGCCTCCCCGCGCTGCCTACCTCAGGCCTGGGGGCTCCCCCGACTTGTTCTCTATTCCCCCAGCCCCTCACTGCCTGGGGGCTCCCCCGACTCACTCTCTAGGCCCCCAGCCCCACACTGCCTGGGGGCTCCCCCGACCCTCTCTCTATTCTCCCAGCCCCGCACTGCCTGGGGGCTCCCCCGACCCTCTCTCTATTCTCCCAGCCCTGCACTGCCTGGGGACTCGCCTGACTCGCTCTCTATTCCCCCAGCCCCACACTGCATCTCGGGAGCAGTTCCAGGCCGACCTCTGCTCTCCACGGCCGGGAGGTGTCCAGGTGTGGACAGAGCCCCGGCTCTCCATCAGGGCACCCAGCCGCCCCACGCTCAGCCCTGCGTGGCTTCTCCCGTCCTTCCTGGGCATCCCCTGAGGGTGTGGCCCTGTTGCTGGGCCCCCTCCTGCCCCCTTGCCCTGCCAGTTCCTAGAGCCTAGGCTGAGGGCAGGGCCATTGCTGTGAACAAACTGGACAGGCTCCGCGGGAGCTCAGAGCTGCCCCGTGTCTGAGGGCGCGGCTGTGTGGAGTGGGGTCCCCTCGGCCAGGCGGGAAAGGCCCTGGATCGTGTGTGTGACCCTGGTACTGGGCAACCCCTGGGACAGGCAAGTCCGTGGAGACAGAACGGGGCGGTGGCTGCAGCCTGGGAGCTCGGCCTCCCTCGGGGTGACGGAATGTTCTGGACCTTGATATAGGTGGTGGATACTCAGCCCTGTGAGTGCAATAAATGCCACCAAATTCTCACTTCAAAA
## -------
## seqinfo: 1 sequence from an unspecified genome; no seqlengths
We use the deepblue_find_motif
command to find all position of a given pattern in the genome. An example is finding all locations of ‘TATAA’ in genome assembly GRCh38.
We use the deepblue_select_experiments
command to select genomic regions that are in chromosome 1, position 0 to 50,000,000 from the selected experiments.
The command deepblue_intersect
selects all regions of the query_id
that intersect with at least one tataa_regions
region.
tataa_regions = deepblue_find_motif(motif="TATAAA", genome="GRCh38", chromosomes="chr1")
query_id = deepblue_select_experiments(
experiment_name= c("BL-2_c01.ERX297416.H3K27ac.bwa.GRCh38.20150527.bed",
"S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed"),
chromosome="chr1", start=0, end=50000000)
overlapped = deepblue_intersection(query_data_id=query_id,
query_filter_id=tataa_regions)
request_id=deepblue_get_regions(overlapped,
"CHROMOSOME,START,END,SIGNAL_VALUE,PEAK,@NAME,@BIOSOURCE,@LENGTH,@SEQUENCE,@PROJECT")
regions = deepblue_download_request_data(request_id=request_id)
head(regions, 3)
## GRanges object with 3 ranges and 7 metadata columns:
## seqnames ranges strand | SIGNAL_VALUE PEAK
## <Rle> <IRanges> <Rle> | <character> <integer>
## [1] chr1 273768-274209 * | 14.1567 164
## [2] chr1 911203-911477 * | 4.8558 105
## [3] chr1 916813-917682 * | 10.5467 183
## @NAME @BIOSOURCE
## <character> <character>
## [1] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [2] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## [3] S008SGH1.ERX406923.H3K27ac.bwa.GRCh38.20150728.bed myeloid cell
## @LENGTH
## <integer>
## [1] 441
## [2] 274
## [3] 869
## @SEQUENCE
## <character>
## [1] AGCCAAAGGTGATATTTTCATGATAACATCCTGTGATTGCTTTGTTCTTCGTCTTGTATGTTCTTCCTAGATGGGCTCAGAACATACAAGAATTAAGTACACATCTTATTTTCCAGTGATAATGCTACCGGCAAATTCTGTTGTTTGTATAAACATCAGCCAAGTTTATATAACTAAACTAGTGTTTTGTTTTGTCAATTCAGCAAGAAATTAGACCAAATGGTGGCTTAATGCTGCATTGATTTGACTATCAATTTGTTTTCACTTTTCTGCAAAATAATTAATACATTATTAAATTGAGTTATGCTGATGCCACAGTTGTTCTTATCTCAAGTGTCTTAAAATTCATTTAATTTGTTTTTCCTTTGGTTTCATTATTCAGATTTTAACTTCAGTTCTCAAGATTTTATCTGATGGAAGAGATGGAGTCCATTACTAAGG
## [2] ATAAACAGGCAGGAGTCTTCCTTCCAGCCTCCCTCTGGGGCGGGCAGGCAGCACGGCGATCACCTGCCCCCACTCCCTCATCTATCACCCTGAACTGTGTTCACGGTAAAATTACTCATCCTCAGCCAGTGATAAATGGCATCAGTCTAGAGCCAGCCCGCGGCAGGGGGTGGGGCTCCCTGCTCAGGGTTCCCAGGCCTGGGCCAGATAAACCTGGTGAGCTGCGCCTTTGTGCTCACACGCAGCTGGCAATGGCAAGTCAGTGGATTTGTAC
## [3] TTTATTGCACAAATTATTAACGACCAGAGAATGAATGACTCTGTAATCAGATCAGGTTGCCAGCACTTTTCATTGCATTTATTTGTATAAATTCTGAAGTCGGGGTCTGCCCTAAGCTCAGCAAGCCAGCGTCGTGCTGGCTGGGCGCCCAGGCCCCCACCCAGAAGGAACACCCGTCCCTCACCCTGCCCACGGGTTCCAGAGGACAGAGGGCTCAGGAAGGGGTGCAGGGAACTGCTCTGAGCCAGAAGCCGAGTTCATAGGCACCCAAAGCAGCCCTGGGCCAGGGTCAGAGCTCTGTCCTTGAACCTGCCTCAGGGAAGATTCCCAACTGTCCTCAGAGCCAGGGGCACCCAGGGCTTGGGAGCTGAAGGGGGGTGGGTCTGAGACCAGGAGAAGGCTCCCCAGCCCTGAGGGAACCCTCATCACCCCCCTGCTCTCCTCGATCCAGGAACCGTCCCAGGGTTGCCCCAGGCCTCCTGGCTCTCCCGCCTCCATCCCGTGGGCTTCCCGGGAGCCCCAGGCTGGTCTCCCACCTGCCCCCTCCTTTTCTGGTCTTGCCTGGGCTGGGCCCAGGGGCTCTGGCTGTGGGTTTTCTGTGCAGCACCTCGCAGTGAGCCTGACGCTGGTCCTCTCCTGAGCCCCCGTTTAATCTTATTGACCTCTCGTTACGCTACAGAGCGTAAATTCAGATTTAGAGATCTTATGTTCCATCATAAATTGGGCTGGCAGACTTCCGATCAACAAGATAAAGCTGTCTTCCGTGAGGCTGGTGTTTTATTAGTCTTGGTCCCAGTGCTGCAGGTGTGGGCTGGGGAGTGCCTGAGGGAGGGGCCTCTGCTTGGGACCCTTCCTGCCTGGGCGAGGGG
## @PROJECT
## <character>
## [1] BLUEPRINT Epigenome
## [2] BLUEPRINT Epigenome
## [3] BLUEPRINT Epigenome
## -------
## seqinfo: 1 sequence from an unspecified genome; no seqlengths
The meta column @COUNT.MOTIF()
allows for counting how many times a motif appears in the selected genomic region. For example, the following code return the experiment regions with the DNA sequence length, the counts of G
, CG
, GC
, and the DNA sequence itself.
experiment_data = deepblue_select_experiments(
"DG-75_c01.ERX297417.H3K27ac.bwa.GRCh38.20150527.bed")
fmt = "CHROMOSOME,START,END,@LENGTH,@COUNT.MOTIF(C),@COUNT.MOTIF(G),@COUNT.MOTIF(CG),@COUNT.MOTIF(GC),@SEQUENCE"
request_id=deepblue_get_regions(experiment_data, fmt)
regions = deepblue_download_request_data(request_id=request_id)
head(regions, 3)
## GRanges object with 3 ranges and 6 metadata columns:
## seqnames ranges strand | @LENGTH @COUNT.MOTIF(C)
## <Rle> <IRanges> <Rle> | <integer> <character>
## [1] chr1 779094-779379 * | 285 83
## [2] chr1 826755-827064 * | 309 109
## [3] chr1 958700-959105 * | 405 121
## @COUNT.MOTIF(G) @COUNT.MOTIF(CG) @COUNT.MOTIF(GC)
## <character> <character> <character>
## [1] 85 15 24
## [2] 78 15 18
## [3] 124 29 32
## @SEQUENCE
## <character>
## [1] ACGTGCGCTCCACAACGCCTCCCCCAGCCAGGGCCCGGGGATCCCCGGGAGCGTCCCCGGCTACCTGGCGCCGCTCATCCTGGGTAGGGTCGGCCCCCTGAGGCTGCCCGGCATGAGGGAGTTGCACCCCTGAGCTTGACCTCTGACGGTCCTTTGTAATAGCATTAAGTCTTTGAAACTTGTAGCGGGGTAGAAGGGGCTAGGAAATGAAGAAAACATCTTTTTAAAAATATAAGCAGTCGGCTGGGCGAGGTGGCCCACACCTGTAATCCCAGCACTTTGGGA
## [2] ACCCATCCACTTCCCATCTAAACTTCCCTCCCCTTTTCTCGCTCGTTGGCTCTACCTCCCTCCTCTCTGTTTTCTCCTCACTCTCCTGCCCCACCTCGACATCCACAGCGAGGCAATGAAGAAGCCCCTGCCAAGGAGGAGCCCGCTTCTCAGTGGGACACCGGGAAGGTAGACACCCAACAGTCACCGCTAGTGGGAGGCGATTGTGCAGAAGCACGAGGGTTGTTACAGGATCGGGCAGGTCCCCTACCCCAGTCTCGGACTCAGGGTCCTGTCTGAGGCGGCCACCCCGAAGCGTGGGGTTTGCGG
## [3] GAGATTTTTGCACAACTCACCAACATACGCTCCCTGCCTAGGACAGAGTTTGGCACGGAACAGGAGCTCAGTAAACATCGGATGAAAGAGTAAGTTAAGCTGAAAGGACTGGGGGGCAGAGGTCGGCGATCCTTAGGCCTTGGCCCTGAGACCCCAGGCGAGGTCAGCAACCCAACCGGGGTGGGACAGGACGAGCAAGAGGTTCTGCTCACGCATGTCCCCACTAACCTGGCCGAGGGGCTCCCGCCCGGCTTATCCGGACTCCGGGCAGCCTCGCGTGCTTCCCGTGTCTCCGCTTGTGGAGAATTTTCGGACTCGGATTCGGACTCGGAGTCAAAGCCCGAAGCTAGGAACTCGTCCACCGTCAGCTCCGCCAGGCGCCTGCGGGTCACGCAGGAGTCACAG
## -------
## seqinfo: 36 sequences from an unspecified genome; no seqlengths
We use the deepblue_select_genes
command to select the gene RP11-34P13
from GENCODE v23.
The selected genes behave like a regular genomic region, which, for example, can be filtered by their attributes. We use the @GENE_ATTRIBUTE
meta-column to select the genomic regions that are annotated as lincRNAs.
q_genes = deepblue_select_genes(genes="RP11-34P13", gene_model="gencode v23")
q_filter = deepblue_filter_regions(query_id=q_genes,
field="@GENE_ATTRIBUTE(gene_type)", operation="==",
value="lincRNA", type="string")
request_id=deepblue_get_regions(q_filter, "CHROMOSOME,START,END,GTF_ATTRIBUTES")
regions = deepblue_download_request_data(request_id=request_id)
regions
The command deepblue_aggregate
summarizes the query_id
regions using the cpg_islands
regions defined by the corresponding annotation as boundaries.
The aggregated values can be accessed through the @AGG.*
meta-columns.
query_id = deepblue_select_experiments (
experiment=c("GC_T14_10.CPG_methylation_calls.bs_call.GRCh38.20160531.wig"),
chromosome="chr1", start=0, end=50000000)
cpg_islands = deepblue_select_annotations(annotation_name="CpG Islands",
genome="GRCh38", chromosome="chr1", start=0, end=50000000)
# Aggregate
overlapped = deepblue_aggregate (data_id=query_id, ranges_id=cpg_islands,
column="VALUE" )
# Retrieve the experiments data (The @NAME meta-column is used to include
# the experiment name and @BIOSOURCE for experiment's biosource
request_id = deepblue_get_regions(query_id=overlapped,
output_format=
"CHROMOSOME,START,END,@AGG.MIN,@AGG.MAX,@AGG.MEAN,@AGG.VAR")
regions = deepblue_download_request_data(request_id=request_id)
In the following example we obtain the gene expression levels of three genes, i.e., NOX3, NOXA1, and NOX4 from all biosources related to the hematopoietic stem cell
biosource from the BLUEPRINT project. With related we refer to children of this biosource term in the ontologies used by DeepBlue.
hsc_children = deepblue_get_biosource_children("hematopoietic stem cell")
hsc_children_name = deepblue_extract_names(hsc_children)
hsc_children_samples = deepblue_list_samples(
biosource = hsc_children_name,
extra_metadata = list(source="BLUEPRINT Epigenome"))
hsc_samples_ids = deepblue_extract_ids(hsc_children_samples)
# Note that BLUEPRINT uses Ensembl Gene IDs
gene_exprs_query = deepblue_select_expressions(
expression_type = "gene",
sample_ids = hsc_samples_ids,
identifiers = c("ENSG00000074771.3", "ENSG00000188747.7", "ENSG00000086991.11"),
gene_model = "gencode v22")
request_id = deepblue_get_regions(
query_id = gene_exprs_query,
output_format ="@GENE_NAME(gencode v22),CHROMOSOME,START,END,FPKM,@BIOSOURCE")
regions = deepblue_download_request_data(request_id = request_id)
regions
## GRanges object with 679 ranges and 3 metadata columns:
## seqnames ranges strand | @GENE_NAME(gencode v22)
## <Rle> <IRanges> <Rle> | <character>
## [1] chr9 137423350-137434406 * | NOXA1
## [2] chr9 137423350-137434406 * | NOXA1
## [3] chr9 137423350-137434406 * | NOXA1
## [4] chr9 137423350-137434406 * | NOXA1
## [5] chr9 137423350-137434406 * | NOXA1
## ... ... ... ... . ...
## [675] chr6 155395370-155455903 * | NOX3
## [676] chr6 155395370-155455903 * | NOX3
## [677] chr6 155395370-155455903 * | NOX3
## [678] chr6 155395370-155455903 * | NOX3
## [679] chr6 155395370-155455903 * | NOX3
## FPKM
## <character>
## [1] 0.0100
## [2] 0.3900
## [3] 3.1400
## [4] 2.1800
## [5] 0.9800
## ... ...
## [675] 0.0000
## [676] 0.0000
## [677] 0.0000
## [678] 0.0000
## [679] 0.0000
## @BIOSOURCE
## <character>
## [1] hematopoietic multipotent progenitor cell
## [2] CD34-negative, CD41-positive, CD42-positive megakaryocyte cell
## [3] myeloid cell
## [4] CD14-positive, CD16-negative classical monocyte
## [5] myeloid cell
## ... ...
## [675] myeloid cell
## [676] mature neutrophil
## [677] naive B cell
## [678] central memory CD4-positive, alpha-beta T cell
## [679] myeloid cell
## -------
## seqinfo: 3 sequences from an unspecified genome; no seqlengths
We use the deepblue_tiling_regions
command to generate a set of consecutive genomic regions of size 100,000 from chromosome 1 of the genome assembly GRCh38.
The command deepblue_aggregate
summarizes the query_id
regions using the column VALUE
and the cpg_islands
regions as boundaries.
# Selecting the data from 2 experiments:
# GC_T14_10.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
# As we already know the experiments names, we keep all others fields empty.
# We are selecting all regions of chromosome 1
query_id = deepblue_select_experiments(
experiment=c("GC_T14_10.CPG_methylation_calls.bs_call.GRCh38.20160531.wig"),
chromosome="chr1")
# Tiling regions of 100.000 base pairs
tiling_id = deepblue_tiling_regions(size=100000,
genome="GRCh38", chromosome="chr1")
# Aggregate
overlapped = deepblue_aggregate (data_id=query_id,
ranges_id=tiling_id, column="VALUE")
# Retrieve the experiments data (The @NAME meta-column is used to include the
# experiment name and @BIOSOURCE for experiment's biosource
request_id = deepblue_get_regions(query_id=overlapped,
output_format="CHROMOSOME,START,END,@AGG.MEAN,@AGG.SD")
regions = deepblue_download_request_data(request_id=request_id)
regions
## GRanges object with 2489 ranges and 2 metadata columns:
## seqnames ranges strand | @AGG.MEAN @AGG.SD
## <Rle> <IRanges> <Rle> | <numeric> <numeric>
## [1] chr1 0-100000 * | 0.6677 0.3639
## [2] chr1 100000-200000 * | 0.8358 0.2414
## [3] chr1 200000-300000 * | 0.7714 0.2512
## [4] chr1 300000-400000 * | 0.7595 0.2477
## [5] chr1 400000-500000 * | 0.8512 0.1877
## ... ... ... ... . ... ...
## [2485] chr1 248400000-248500000 * | 0.8348 0.188
## [2486] chr1 248500000-248600000 * | 0.8576 0.1561
## [2487] chr1 248600000-248700000 * | 0.8664 0.1786
## [2488] chr1 248700000-248800000 * | 0.8425 0.1846
## [2489] chr1 248800000-248900000 * | 0.6572 0.4079
## -------
## seqinfo: 1 sequence from an unspecified genome; no seqlengths
Such data can now be plotted using any of the common R plotting mechanisms and packages. An example is shown here:
library(ggplot2)
plot_data <- as.data.frame(regions)
plot_data[,grepl("X.", colnames(plot_data))] <-
apply(plot_data[,grepl("X.", colnames(plot_data))], 2, as.numeric)
AGG.plot <- ggplot(plot_data, aes(start)) +
geom_ribbon(aes(ymin = X.AGG.MEAN - (X.AGG.SD / 2),
ymax = X.AGG.MEAN + (X.AGG.SD / 2)), fill = "grey70") +
geom_line(aes(y = X.AGG.MEAN))
print(AGG.plot)
We use the deepblue_select_genes
command to generate a set of genes from the gene model GENCODE v19.
The deepblue_flank
command derives flanking regions from existing regions. First, we derive regions that start 2500bp before the initially selected regions with a length of 2000bp. Next, we derive the regions that start 1500 base pairs after the initially selected regions with 500 base pairs length. For each region, we consider the DNA strand.
The deepblue_merge_queries
command merges the region sets defined by two query IDs. Here, we merge the two flanking regions sets we created based on the initially selected genes.
# Select the RP11-34P13 gene locations from gencode v23
q_genes = deepblue_select_genes(
genes=
c("RNU6-1100P", "CICP7", "MRPL20", "ANKRD65",
"HES2", "ACOT7", "HES3", "ICMT"), gene_model="gencode v19")
# Obtain the regions that starts 2500 bases pair before the regions start and
# have 2000 base pairs.
# The 4th argument inform that DeepBlue must consider the region strand
# (column STRAND) to calculate the new region
before_flank_id = deepblue_flank(query_id=q_genes,
start=-2500, length=2000, use_strand=TRUE)
# Obtain the regions that starts 1500 bases pair after the
# regions end and have 500 base pairs.
# The 4th argument inform that DeepBlue must consider the
# region strand (column STRAND) to calculate the new region
after_flank_id = deepblue_flank(query_id=q_genes,
start=1500, length=500, use_strand=TRUE)
# Merge both flanking regions set and genes set
flank_merge_id = deepblue_merge_queries(
query_a_id =before_flank_id, query_b_id=after_flank_id)
all_merge_id = deepblue_merge_queries(
query_a_id=q_genes, query_b_id=flank_merge_id)
# Request the regions
request_id = deepblue_get_regions(query_id=all_merge_id,
output_format="CHROMOSOME,START,END,STRAND,@LENGTH")
regions = deepblue_download_request_data(request_id=request_id)
regions
## GRanges object with 24 ranges and 1 metadata column:
## seqnames ranges strand | @LENGTH
## <Rle> <IRanges> <Rle> | <integer>
## [1] chr1 155784-156284 - | 500
## [2] chr1 157784-157887 - | 103
## [3] chr1 160387-162387 - | 2000
## [4] chr1 327431-327931 - | 500
## [5] chr1 329431-332236 - | 2805
## ... ... ... ... . ...
## [20] chr1 6324329-6454451 - | 130122
## [21] chr1 6456951-6458951 - | 2000
## [22] chr1 6470478-6470978 - | 500
## [23] chr1 6472478-6484730 - | 12252
## [24] chr1 6487230-6489230 - | 2000
## -------
## seqinfo: 1 sequence from an unspecified genome; no seqlengths
Here, we summarize DNA methylation levels for CpG islands of a specific experiment. Next, we remove those CpG islands for which no values were found using @AGG.COUNT
> 0.
We use the @CALCULATED
meta-column to transform the @AGG.MEAN
value to log scale.
# Select the RP11-34P13 gene locations from gencode v23
# Selecting the data from 2 experiments:
# GC_T14_10.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
# As we already know the experiments names, we keep all others fields empty.
# We are selecting all regions of chromosome 1
query_id = deepblue_select_experiments(
experiment="GC_T14_10.CPG_methylation_calls.bs_call.GRCh38.20160531.wig",
chromosome="chr1")
# Select the CpG Islands annotation from GRCh38
cpg_islands = deepblue_select_annotations(
annotation="CpG Islands", genome="GRCh38", chromosome="chr1")
# Aggregate
overlapped = deepblue_aggregate(
data_id=query_id, ranges_id=cpg_islands, column="VALUE")
# Select the aggregated regions that aggregated at least one region from the
# selected experiments (@AGG.COUNT > 0)
filtered = deepblue_filter_regions(query_id=overlapped,
field="@AGG.COUNT", operation=">", value="0", type="number")
# We remove all regions where the aggregation mean is zero.
filtered_zeros = deepblue_filter_regions(query_id=filtered,
field="@AGG.MEAN", operation="!=", value="0.0", type="number")
# Retrieve the experiments data (The @NAME meta-column is used to include the
# experiment name and @BIOSOURCE for experiment's biosource
request_id = deepblue_get_regions(query_id=filtered_zeros,
output_format=
"CHROMOSOME,START,END,@CALCULATED(return math.log(value_of('@AGG.MEAN'))),@AGG.MEAN,@AGG.COUNT")
regions = deepblue_download_request_data(request_id=request_id)
# We have to perform a manual conversion because the
# package can't know the type for calculated columns
regions$`@CALCULATED(return math.log(value_of('@AGG.MEAN')))` =
as.numeric(regions$`@CALCULATED(return math.log(value_of('@AGG.MEAN')))`)
head(regions, 5)
## GRanges object with 5 ranges and 3 metadata columns:
## seqnames ranges strand |
## <Rle> <IRanges> <Rle> |
## [1] chr1 28735-29737 * |
## [2] chr1 135124-135563 * |
## [3] chr1 368792-370063 * |
## [4] chr1 381172-382185 * |
## [5] chr1 491107-491546 * |
## @CALCULATED(return math.log(value_of('@AGG.MEAN'))) @AGG.MEAN
## <numeric> <numeric>
## [1] -7.600902 5e-04
## [2] -0.083708 0.9197
## [3] 0 1
## [4] -0.04343 0.9575
## [5] -0.046044 0.955
## @AGG.COUNT
## <integer>
## [1] 64
## [2] 30
## [3] 2
## [4] 12
## [5] 21
## -------
## seqinfo: 1 sequence from an unspecified genome; no seqlengths
Any numerical values returned by DeepBlue can also be conveniently displayed using, for example, the DataTrack feature of the GViz Bioconductor package as shown here:
library(Gviz)
atrack <- AnnotationTrack(regions,
name = "CpGs", group = regions$`@BIOSOURCE`, genome="hg38")
gtrack <- GenomeAxisTrack()
itrack <- IdeogramTrack(genome = "hg38", chromosome = "chr1")
dtrack <- DataTrack(regions,
data="@AGG.MEAN", name = "Log of average methylation value")
plotTracks(list(itrack, atrack, dtrack, gtrack), type="histogram", fontsize=18,
background.panel = "#FFFEDB", background.title = "darkblue")
Here, we select a small number of experiments for which we want to build a score matrix based on the column VALUE
.
We use CpG islands as aggregated regions boundaries.
The deepblue_score_matrix
command expects a named list with the experiments names and columns that will be used for aggregation, the regions’ boundaries, and the operation that will be performed (min, max, mean, var, sd, median, count).
The deepblue_score_matrix
command is executed asynchronously. The command download_request_data
will return a matrix in which the first three columns correspond to the chromosome, start position and end position. The remaining columns will carry the names of the experiments and hold the corresponding aggregated values.
experiments =
c("GC_T14_10.CPG_methylation_calls.bs_call.GRCh38.20160531.wig",
"C003N351.CPG_methylation_calls.bs_call.GRCh38.20160531.wig",
"C005VG51.CPG_methylation_calls.bs_call.GRCh38.20160531.wig",
"S002R551.CPG_methylation_calls.bs_call.GRCh38.20160531.wig",
"NBC_NC11_41.CPG_methylation_calls.bs_call.GRCh38.20160531.wig",
"bmPCs-V156.CPG_methylation_calls.bs_call.GRCh38.20160531.wig",
"S00BS451.CPG_methylation_calls.bs_call.GRCh38.20160531.wig",
"S00D1DA1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig",
"S00D39A1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig")
experiments_columns = list()
for (experiment_name in experiments) {
experiments_columns[[experiment_name]] = "VALUE"
}
cpgs = deepblue_select_annotations(
annotation_name="Cpg Islands",
chromosome="chr22", start=0, end=18000000, genome="GRCh38")
request_id = deepblue_score_matrix(
experiments_columns=experiments_columns,
aggregation_function="mean", aggregation_regions_id=cpgs)
score_matrix = deepblue_download_request_data(request_id=request_id)
head(score_matrix, 5)
## CHROMOSOME START END
## 1: chr22 10525486 10527570
## 2: chr22 10571557 10572827
## 3: chr22 10698820 10699961
## 4: chr22 10741251 10742442
## 5: chr22 10961033 10961845
## C003N351.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 1: 0.857122
## 2: 0.828355
## 3: 0.808320
## 4: 0.843160
## 5: 0.800338
## C005VG51.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 1: 0.778357
## 2: 0.738182
## 3: 0.703945
## 4: 0.746307
## 5: 0.759357
## GC_T14_10.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 1: 0.833500
## 2: 0.716731
## 3: 0.696682
## 4: 0.794902
## 5: 0.761813
## NBC_NC11_41.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 1: 0.827071
## 2: 0.758961
## 3: 0.734734
## 4: 0.808850
## 5: 0.802136
## S002R551.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 1: 0.682948
## 2: 0.702769
## 3: 0.612965
## 4: 0.706021
## 5: 0.625343
## S00BS451.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 1: 0.770962
## 2: 0.697014
## 3: 0.691263
## 4: 0.733138
## 5: 0.712093
## S00D1DA1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 1: 0.874383
## 2: 0.909507
## 3: 0.844588
## 4: 0.888926
## 5: 0.800359
## S00D39A1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 1: 1.000000
## 2: 0.848455
## 3: 0.781879
## 4: 0.885500
## 5: 0.860836
## bmPCs-V156.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 1: 0.912981
## 2: 0.850633
## 3: 0.812516
## 4: 0.876366
## 5: 0.768347
library(ggplot2)
score_matrix_plot = tidyr::gather(score_matrix,
"experiment", "methylation", -CHROMOSOME, -START, -END)
score_matrix_plot$START <- as.factor(score_matrix_plot$START)
ggplot(score_matrix_plot, aes(x=START, y=experiment, fill=methylation)) +
geom_tile() +
theme(axis.text.x=element_text(angle=-90))
DeepBlueR allows you to conveniently save results to disk. Any result can be saved as tab delimited file using deepblue_export_tab
. For example, we can save the score matrix generated in the above example:
deepblue_export_tab(score_matrix, file.name = "my_score_matrix")
Results obtained with deepblue_get_regions
are of type GenomicRanges and can be exported as tab delimited files preserving all columns or as BED files, where a specific column can optionally be selected to populate the ‘score’ column of the BED file. To demonstrate this, we use the result from the tiling regions example further above:
request_id = deepblue_get_regions(query_id=overlapped,
output_format="CHROMOSOME,START,END,@AGG.MEAN,@AGG.SD")
regions = deepblue_download_request_data(request_id=request_id)
deepblue_export_bed(regions,
file.name = "my_tiling_regions",
score.field = "@AGG.MEAN")
Furthermore, metadata associated with any id can be stored locally using the deepblue_export_meta_data
command. To this end, we first obtain the experiment id of the file we used in the tiling regions example.
exp_id <- deepblue_name_to_id(
"GC_T14_10.CPG_methylation_calls.bs_call.GRCh38.20160531.wig",
collection = "experiments")$id
deepblue_export_meta_data(exp_id, file.name = "GC_T14")
This command can also handle lists of ids, for instance:
deepblue_export_meta_data(list("e30035", "e30036"),
file.name = "test_export")
In some cases, users will perform a series of requests. We provide the command deepblue_batch_export
to save these results and their associated metadata to disk in one go. This method will save each file as it becomes available, i.e. it will be saved once the request is successfully processed by DeepBlue:
experiments = deepblue_list_experiments(type="peaks", epigenetic_mark="H3K4me3",
biosource=c("inflammatory macrophage", "macrophage"),
project="BLUEPRINT Epigenome")
experiment_names = deepblue_extract_names(experiments)
request_ids = foreach(experiment = experiment_names) %do%{
query_id = deepblue_select_experiments(experiment_name = experiment,
chromosome = "chr21")
request_id = deepblue_get_regions(query_id =query_id,
output_format = "CHROMOSOME,START,END")
}
request_data = deepblue_batch_export_results(request_ids,
target.directory = "BLUEPRINT macrophages chr21")
DeepBlueR comes with default options that can be changed by the user. To list the current options use the following command:
deepblue_options()
## $url
## [1] "http://deepblue.mpi-inf.mpg.de/xmlrpc"
##
## $user_key
## [1] "anonymous_key"
##
## $do_not_cache
## [1] FALSE
##
## $force_download
## [1] FALSE
##
## $debug
## [1] FALSE
url
This is the URL of the DeepBlue application server and should not be changeduser_key
This option can be replaced by the personal key of the user after successful registration at http://deepblue.mpi-inf.mpg.de. The key can be found by logging into the web application and clicking on the user name in the top left corner. Registered users have access to advanced features of DeepBlue, e.g. they can review previous requests.do_not_cache
Allows users to switch off the caching functionality of DeepBlueR. See Caching.force_download
If the users wishes to overwrite cached results for the following requests, this option can be switched on. See Caching.debug
Switching on this option enables verbose output only useful for debugging.Changing an option works as follows:
deepblue_options(do_not_cache = TRUE)
Another example (replace ‘my_user_key’ with the actual key):
deepblue_options(user_key = "my_user_key")
In case you wish to restore the default options simply call
deepblue_reset_options()
DeepBlueR by default creates a file ‘DeepBlueR.cache’ in the current working directory. Downloaded results / regions are stored there and can be instantly retrieved, which is particularly useful for users with limited network bandwith. However, in case caching is not desired it can be switched off (see Options)
To check the status of the cache you can use the following command:
deepblue_cache_status()
This will report the cache size and the number of requests currently stored. Alternatively, users can list the request ids for which results are available:
deepblue_list_cached_requests()
Over time, the cache can quickly grow in size. It is possible to remove individual requests from the cache if the request id is known:
deepblue_delete_request_from_cache("r123")
In most cases it will be simpler to simply delete the cache:
deepblue_clear_cache()
DeepBlue has a memory limit on individual requests. As a consequence, some operations may not be executed successfully by the DeepBlue web server. To avoid this, large requests should be split by chromosomes. This has another advantage: if each chromosome is a different request, processing will be parallelized on DeepBlue and finish in a fraction of the time (depending on the queing status) compared to the same operation without splitting. Here is an example for obtaining a score matrix for each chromosome individually:
library(foreach)
chromosomes_mm10 <- deepblue_extract_ids(deepblue_chromosomes(genome = "mm10"))
request_ids <- foreach(chromosome = chromosomes_mm10, .combine = c) %do% {
tiling_regions = deepblue_tiling_regions(
size=100000, genome="mm10", chromosome=chromosome)
deepblue_score_matrix(
experiments_columns = list(ENCFF721EKA="VALUE", ENCFF781VVH="VALUE"),
aggregation_function = "mean",
aggregation_regions_id = tiling_regions
)
}
Now each chromosome is processed individually and efficiently by DeepBlue. We can use the deepblue_batch_export function to download the individual matrices
list_of_score_matrices <- deepblue_batch_export_results(request_ids)
Next, we can simple merge them to obtain the final matrix
library(data.table)
genome_wide_score_matrix <- data.table::rbindlist(list_of_score_matrices,
use.names = TRUE)
genome_wide_score_matrix
## CHROMOSOME START END ENCFF721EKA ENCFF781VVH
## 1: chr1 0 100000 NA NA
## 2: chr1 100000 200000 NA NA
## 3: chr1 200000 300000 NA NA
## 4: chr1 300000 400000 NA NA
## 5: chr1 400000 500000 NA NA
## ---
## 27278: chrY_JH584300_random 0 100000 NA NA
## 27279: chrY_JH584301_random 0 100000 NA NA
## 27280: chrY_JH584301_random 100000 200000 NA NA
## 27281: chrY_JH584302_random 0 100000 NA NA
## 27282: chrY_JH584303_random 0 100000 NA NA
Here, we will show how DeepBlueR can be used to generate an overview heatmap of variable positions in more than 200 BLUEPRINT DNA methylation experiments. The amount of data considered here would normally be too huge to be processed on a local R installation. However, using DeepBlue and server-side processing of the data, we can facilitate this large-scale analysis easily.
In the first step, we load the DeepBlueR package, as well as packages for data retrieval, matrix operations and plotting.
library(DeepBlueR)
library(gplots)
library(RColorBrewer)
library(matrixStats)
library(stringr)
Next, we list all available BLUEPRINT DNA methylation experiments. (412 files that match the required metadata were available during the edition of this vignette.)
blueprint_DNA_meth <- deepblue_list_experiments(genome = "GRCh38",
epigenetic_mark = "DNA Methylation",
technique = "Bisulfite-Seq",
project = "BLUEPRINT EPIGENOME")
blueprint_DNA_meth
## id name
## 1: e93372 S00B2JA1.CPG_methylation_calls.bs_cov.GRCh38.20160531.wig
## 2: e93367 S00B2JA1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 3: e93356 C003VO56.CPG_methylation_calls.bs_cov.GRCh38.20160531.wig
## 4: e93353 C003VO56.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 5: e93346 C0010KA2bs.CPG_methylation_calls.bs_cov.GRCh38.20160531.wig
## ---
## 820: e95479 S016KWU1.CPG_methylation_calls.bs_cov.GRCh38.20160531.wig
## 821: e95527 S00D39A1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 822: e95528 S00D39A1.CPG_methylation_calls.bs_cov.GRCh38.20160531.wig
## 823: e95550 S013SSA1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 824: e95551 S013SSA1.CPG_methylation_calls.bs_cov.GRCh38.20160531.wig
We are only interested in a subset of those files and filter for call files (opposed to coverage files).
blueprint_DNA_meth <- blueprint_DNA_meth[grep("CPG_methylation_calls.bs_call",
deepblue_extract_names(blueprint_DNA_meth)),]
blueprint_DNA_meth
## id name
## 1: e93367 S00B2JA1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 2: e93353 C003VO56.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 3: e93342 C003VO55.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 4: e93341 C0010KA2bs.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 5: e93332 P581.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## ---
## 202: e95397 S00D2BA1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 203: e95436 S00Y05A1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 204: e95478 S016KWU1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 205: e95527 S00D39A1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 206: e95550 S013SSA1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
Each of these files has a column, named VALUE
, that holds the DNA methylation beta values. There are two possibilities to select this column across several files.
First, we assume that the column in question has a different name in each file. We thus have to create a list that holds the column name for each of them. Such a list can be generated using standard R commands:
exp_columns <- list(nrow(blueprint_DNA_meth))
for(i in 1:nrow(blueprint_DNA_meth)){
exp_columns[[i]] <- "VALUE"
}
names(exp_columns) <- deepblue_extract_names(blueprint_DNA_meth)
In most cases, the same column name will apply for each file. We thus implemented a short hand function for generating the above list with a single column name for all files.
exp_columns <- deepblue_select_column(blueprint_DNA_meth, "VALUE")
In the next operation, we consider that not all methylation sites will be informative for clustering the data. We thus filter for those regions that are part of the BLUEPRINT regulatory build, a modified version of the ENSEMBL regulatory build that contains promoters, promoter flanking regions, enhancers, CTCF binding sites, transcription factor binding sites and open chromatin regions. As we can see in this example, DeepBlueR returns a vector of query ids (one for each chromosome) which we store for later use.
#list all available chromosomes in GRCh38
chromosomes_GRCh38 <- deepblue_extract_ids(
deepblue_chromosomes(genome = "GRCh38")
)
#keep only the essential ones
chromosomes_GRCh38 <-
grep(pattern = "chr([0-9]{1,2}|X)$", chromosomes_GRCh38, value = TRUE)
#we split the request by chromosome to avoid hitting the memory limit of
#DeepBlue
blueprint_regulatory_regions <-
foreach(chr = chromosomes_GRCh38, .combine = c) %do%
deepblue_select_annotations(
annotation_name = "Blueprint Ensembl Regulatory Build",
chromosome = chr,
genome = "GRCh38"
)
blueprint_regulatory_regions
## [1] "q984392" "q984393" "q984394" "q984395" "q984396" "q984397" "q984398"
## [8] "q984399" "q984400" "q984401" "q984402" "q984403" "q984404" "q984405"
## [15] "q984406" "q984407" "q984408" "q984409" "q984410" "q984411" "q984412"
## [22] "q984413" "q984414"
DeepBlue has several annotations that can be used to filter for informative sites. We could, for example, also filter for CpG islands.
deepblue_select_annotations(annotation_name = "Cpg Islands",
genome = "GRCh38")
A list of all annotations currently available for a genome is given by the following command.
deepblue_list_annotations(genome = "GRCh38")
## id name
## 1: a49 Chromosomes size for GRCh38
## 2: a132 promoters
## 3: a164 Cpg Islands
## 4: a249 Blueprint Ensembl Regulatory Build
New annotations may be included upon users request.
In case we want to include the entire genome in an aggregated version DeepBlue supports the concept of tiling regions. In this process, the genomic range of interest will be binned into tiles of a given size (here 5kb).
tiling_regions <- deepblue_tiling_regions(size=5000,
genome="GRCh38")
In the above step we have defined a set of regions of interest that we want to interrogate in R to, for example, cluster samples. To this end, DeepBlue can build a score matrix, in which the selected genomic regions are aggregated on the server to reduce the complexity and size of the data. We request such a score matrix in which regulatory regions are aggregated by the mean as follows. Note that we use the variables ‘exp_columns’ and ‘blueprint_regulatory_regions’ that we have defined above. Since we had to split our request by chromosome, we need to make multiple requests.
request_ids <- foreach(query_id = blueprint_regulatory_regions,
.combine = c) %do%
deepblue_score_matrix(
experiments_columns = exp_columns,
aggregation_function = "mean",
aggregation_regions_id = query_id)
request_ids
## [1] "r821753" "r821754" "r821755" "r821756" "r821757" "r821758" "r821759"
## [8] "r821760" "r821761" "r821762" "r821763" "r821764" "r821765" "r821766"
## [15] "r821767" "r821768" "r821769" "r821770" "r821771" "r821772" "r821773"
## [22] "r821774" "r821775"
After triggering this function, DeepBlue queues our task and will execute it when resources become available. We also observe that DeepBlue returns a request id, which we can use to query the status of the operation.
foreach(info = deepblue_info(request_ids), .combine = c) %do% info$state
## [1] "done" "done" "done" "done" "done" "done" "done" "done" "done" "done"
## [11] "done" "done" "done" "done" "done" "done" "done" "done" "done" "done"
## [21] "done" "done" "done"
When the operation is finished, we can download the score matrix and store it in a local variable. For DeepBlueR, we implemented several strategies to improve the performance of data retrieval. For instance, we modified the existing XML-RPC package to be more efficient in the context of DeepBlue when it comes to parsing nested XML data. Moreover, we retrieve tabular data directly in a tab separated file format, which can be processed much faster in R. Finally, we also compress data on the server side to reduce download time. Here, we only show the first five columns out of 215.
score_matrix <- data.table::rbindlist(
deepblue_batch_export_results(request_ids),
use.names = TRUE)
##
Read 79.5% of 25153 rows
Read 25153 rows and 209 (of 209) columns from 0.035 GB file in 00:00:03
##
Read 88.7% of 45092 rows
Read 45092 rows and 209 (of 209) columns from 0.062 GB file in 00:00:03
score_matrix[,1:5, with=FALSE]
## CHROMOSOME START END
## 1: chr1 16047 30847
## 2: chr1 19599 20609
## 3: chr1 20892 21536
## 4: chr1 24567 24911
## 5: chr1 25804 26294
## ---
## 528243: chrX 156023842 156024442
## 528244: chrX 156024218 156024915
## 528245: chrX 156024974 156025400
## 528246: chrX 156026242 156028242
## 528247: chrX 156026442 156028042
## C000S5A1bs.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 1: 0.581450
## 2: 0.946625
## 3: 0.750000
## 4: 0.922500
## 5: 1.000000
## ---
## 528243: 0.854437
## 528244: 0.873444
## 528245: 0.622000
## 528246: 0.844286
## 528247: 0.914824
## C000S5A2bs.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 1: 0.681173
## 2: 0.936800
## 3: NA
## 4: NA
## 5: 1.000000
## ---
## 528243: 0.705000
## 528244: 0.830529
## 528245: 0.596308
## 528246: 0.700850
## 528247: 0.761688
The download is 212.8 MB in size. The size of the data we handled on DeepBlue to extract this information is roughly 212 x ~450 MB ~= 95 GB and thus more than can be handled in R on most desktop computers. We next show how this score matrix can be used to plot a heatmap where samples are clustered by the Pearson correlation coefficient, revealing that samples originating from the same cell type are more similar in DNA methylation.
In preparation of the heatmap plot, we need to generate an RColorBrewer palette. This allows us to create a color palette for more than 9 colors.
getPalette <- colorRampPalette(brewer.pal(9, "Set1"))
For each experiment, we collect metadata.
experiments_info <- deepblue_info(deepblue_extract_ids(blueprint_DNA_meth))
All metadata is parsed to a nested R list. We refer to the DeepBlue paper for a description of available metadata. Here, we show the metadata associated with just one of the samples.
head(experiments_info[[1]], 10)
## $type
## [1] "experiment"
##
## $`_id`
## [1] "e93367"
##
## $data_type
## [1] "signal"
##
## $description
## [1] ""
##
## $epigenetic_mark
## [1] "dna methylation"
##
## $format
## [1] "CHROMOSOME,START,END,VALUE"
##
## $genome
## [1] "GRCh38"
##
## $name
## [1] "S00B2JA1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig"
##
## $project
## [1] "BLUEPRINT Epigenome"
##
## $sample_id
## [1] "s10726"
For this analysis, we are only interested in the biosource name, i.e. the cell type. We can retrieve this information using standard R syntax. Note that we show only the first 6 entries here.
biosource <- unlist(lapply(experiments_info, function(x){ x$sample_info$biosource_name}))
head(biosource)
## [1] "venous blood"
## [2] "central memory CD8-positive, alpha-beta T cell"
## [3] "CD8-positive, alpha-beta T cell"
## [4] "CD14-positive, CD16-negative classical monocyte"
## [5] "CD4-positive, alpha-beta T cell"
## [6] "germinal center B cell"
To save some space on the plot, we replace positive with + and negative with -.
biosource <- str_replace_all(biosource, "-positive", "+")
biosource <- str_replace_all(biosource, "-negative", "-")
For the same reason, we remove the words ‘terminally differentiated’ from one of the cell types.
biosource <- str_replace(biosource, ", terminally differentiated", "")
Using above color palette, we can now assign a unique color to each cell type.
color_map <- data.frame(biosource = unique(biosource),
color = getPalette(length(unique(biosource))))
head(color_map)
## biosource color
## 1 venous blood #E41A1C
## 2 central memory CD8+, alpha-beta T cell #C52B37
## 3 CD8+, alpha-beta T cell #A63D53
## 4 CD14+, CD16- classical monocyte #874F6F
## 5 CD4+, alpha-beta T cell #68618A
## 6 germinal center B cell #4A72A6
Using above table, we can now assign the colors to each experiment according to its cell type / biosource.
exp_names <- unlist(lapply(experiments_info, function(x){ x$name}))
biosource_colors <- data.frame(name = exp_names, biosource = biosource)
biosource_colors <- dplyr::left_join(biosource_colors, color_map, by = "biosource")
head(biosource_colors)
## name
## 1 S00B2JA1.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 2 C003VO56.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 3 C003VO55.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 4 C0010KA2bs.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 5 P581.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## 6 G201.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## biosource color
## 1 venous blood #E41A1C
## 2 central memory CD8+, alpha-beta T cell #C52B37
## 3 CD8+, alpha-beta T cell #A63D53
## 4 CD14+, CD16- classical monocyte #874F6F
## 5 CD4+, alpha-beta T cell #68618A
## 6 germinal center B cell #4A72A6
Finally, we transform this data frame into a vector that is compatible with the heatmap function.
color_vector <- as.character(biosource_colors$color)
names(color_vector) <- biosource_colors$biosource
head(color_vector)
## venous blood
## "#E41A1C"
## central memory CD8+, alpha-beta T cell
## "#C52B37"
## CD8+, alpha-beta T cell
## "#A63D53"
## CD14+, CD16- classical monocyte
## "#874F6F"
## CD4+, alpha-beta T cell
## "#68618A"
## germinal center B cell
## "#4A72A6"
We remove the first three columns (CHROMOSOME, START, END) and convert the data frame to a numeric matrix.
filtered_score_matrix <- as.matrix(score_matrix[,-c(1:3), with=FALSE])
head(filtered_score_matrix[,1:3])
## C000S5A1bs.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## [1,] 0.5814500
## [2,] 0.9466250
## [3,] 0.7500000
## [4,] 0.9225000
## [5,] 1.0000000
## [6,] 0.0903333
## C000S5A2bs.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## [1,] 0.681173
## [2,] 0.936800
## [3,] NA
## [4,] NA
## [5,] 1.000000
## [6,] 0.191537
## C0010KA1bs.CPG_methylation_calls.bs_call.GRCh38.20160531.wig
## [1,] 0.5392500
## [2,] 0.9498670
## [3,] NA
## [4,] 0.9666670
## [5,] 0.6845000
## [6,] 0.0970745
Next, we compute the variance of each row and retain only genomic regions with variance > 0.05 for plotting. Plotting all regions would consume too much memory and more importantly, regions that do not show variance also do not allow us to spot differences between cell types in the heatmap.
message("regions before: ", nrow(filtered_score_matrix))
filtered_score_matrix_rowVars <- rowVars(filtered_score_matrix, na.rm = TRUE)
filtered_score_matrix <- filtered_score_matrix[which(filtered_score_matrix_rowVars > 0.05),]
message("regions after: ", nrow(filtered_score_matrix))
To be able to cluster samples, we remove regions that have missing values in at least one of the experiments.
message("regions before: ", nrow(filtered_score_matrix))
filtered_score_matrix <- filtered_score_matrix[which(complete.cases(filtered_score_matrix)),]
message("regions after: ", nrow(filtered_score_matrix))
IMPORTANT: The order of columns in the score matrix is not the same as in the exp_columns list used in the request. We thus have to order the matrix by the experiment names in the color map. This is crucial to make sure we assign the correct cell type to each sample!
filtered_score_matrix <- filtered_score_matrix[,exp_names]
We plot a heatmap in which the variable regions are shown across all samples. On top of the columns, we create a dendrogram based on Pearson correlation More precisely, we convert the Pearson correlation, a similarity measure, to a distance, such that it can be used with hierarchical clustering.
heatmap.2(filtered_score_matrix,labRow = NA, labCol = NA,
trace = "none", ColSideColors = color_vector,
hclust=function(x) hclust(x,method="complete"),
distfun=function(x) as.dist(1-cor(t(x), method = "pearson")),
Rowv = TRUE, dendrogram = "column",
key.xlab = "beta value", denscol = "black", keysize = 1.5,
key.title = NA)
plot.new()
legend(x = 0, y = 1,
legend = color_map$biosource,
col = as.character(color_map$color),
text.width = 0.6,
lty= 1,
lwd = 6,
cex = 0.7,
y.intersp = 0.7,
x.intersp = 0.7,
inset=c(-0.21,-0.11))
To obtain a general overview of DeepBlue, we recommend starting with the DeepBlue publication and a list of all DeepBlue commands is available in its API page.
You can have a look at the other use cases included in the R package and list them with
demo(package = "DeepBlueR")
Individual use cases can be triggered with
demo("use_case1", package = "DeepBlueR")
Note that the example presented here corresponds to use case 4 in the R package.
Finally, we encourage you to try to reproduce Python examples in R and to read the DeepBlue manual.
Finally, we want to highlight the possibility to browse and access existing data in DeepBlue conveniently in the web interface. The web interface also allows you to select experiments in a grid like view.
Should you encounter any problems with DeepBlueR, we kindly ask you to create an issue in the BioConductor DeepBlueR support page.
The R code in the DeepBlueR package is under the GPLv3 license and we welcome contributions of other developers. Finally, we would like to thank the Bioconductor team for its support in making DeepBlueR available to a wide audience of users.