Package: Spectra
Authors: RforMassSpectrometry Package Maintainer [cre],
Laurent Gatto [aut] (https://orcid.org/0000-0002-1520-2268),
Johannes Rainer [aut] (https://orcid.org/0000-0002-6977-7147),
Sebastian Gibb [aut] (https://orcid.org/0000-0001-7406-4443),
Jan Stanstrup [ctb] (https://orcid.org/0000-0003-0541-7369)
Last modified: 2022-11-01 15:15:58
Compiled: Wed Mar 22 18:28:19 2023
The Spectra
package provides a scalable and flexible infrastructure to
represent, retrieve and handle mass spectrometry (MS) data. The Spectra
object
provides the user with a single standardized interface to access and manipulate
MS data while supporting, through the concept of exchangeable backends, a
large variety of different ways to store and retrieve mass spectrometry
data. Such backends range from mzML/mzXML/CDF files, simple flat files, or
database systems.
This vignette provides general examples and descriptions for the Spectra
package. Additional information and tutorials are available, such as
SpectraTutorials,
MetaboAnnotationTutorials,
or also in (Rainer et al. 2022).
The package can be installed with the BiocManager
package. To
install BiocManager
use install.packages("BiocManager")
and, after that,
BiocManager::install("Spectra")
to install Spectra
.
Mass spectrometry data in Spectra
objects can be thought of as a list of
individual spectra, with each spectrum having a set of variables associated with
it. Besides core spectra variables (such as MS level or retention time)
an arbitrary number of optional variables can be assigned to a spectrum. The
core spectra variables all have their own accessor method and it is
guaranteed that a value is returned by it (or NA
if the information is not
available). The core variables and their data type are (alphabetically
ordered):
integer(1)
: the index of acquisition of a spectrum during a
MS run.logical(1)
: whether the spectrum is in profile or centroid
mode.numeric(1)
: collision energy used to create an MSn
spectrum.character(1)
: the origin of the spectrum’s data, e.g. the
mzML file from which it was read.character(1)
: the (current) storage location of the spectrum
data. This value depends on the backend used to handle and provide the
data. For an in-memory backend like the MsBackendDataFrame
this will be
"<memory>"
, for an on-disk backend such as the MsBackendHdf5Peaks
it will
be the name of the HDF5 file where the spectrum’s peak data is stored.numeric
: intensity values for the spectrum’s peaks.numeric(1)
: lower m/z for the isolation window in
which the (MSn) spectrum was measured.numeric(1)
: the target m/z for the isolation
window in which the (MSn) spectrum was measured.numeric(1)
: upper m/z for the isolation window in
which the (MSn) spectrum was measured.integer(1)
: the MS level of the spectrum.numeric
: the m/z values for the spectrum’s peaks.integer(1)
: the polarity of the spectrum (0
and 1
representing negative and positive polarity, respectively).integer(1)
: the scan (acquisition) number of the precursor for
an MSn spectrum.integer(1)
: the charge of the precursor of an MSn
spectrum.numeric(1)
: the intensity of the precursor of an MSn
spectrum.numeric(1)
: the m/z of the precursor of an MSn spectrum.numeric(1)
: the retention time of a spectrum.integer(1)
: the index of a spectrum within a (raw) file.logical(1)
: whether the spectrum was smoothed.For details on the individual variables and their getter/setter function see the
help for Spectra
(?Spectra
). Also note that these variables are suggested,
but not required to characterize a spectrum. Also, some only make sense for MSn,
but not for MS1 spectra.
Spectra
objectsThe simplest way to create a Spectra
object is by defining a DataFrame
with
the corresponding spectra data (using the corresponding spectra variable names
as column names) and passing that to the Spectra
constructor function. Below
we create such an object for a set of 3 spectra providing their MS level,
polarity but also additional annotations such as their ID in
HMDB (human metabolome database) and their name. The m/z and
intensity values for each spectrum have to be provided as a list
of numeric
values.
library(Spectra)
spd <- DataFrame(
msLevel = c(2L, 2L, 2L),
polarity = c(1L, 1L, 1L),
id = c("HMDB0000001", "HMDB0000001", "HMDB0001847"),
name = c("1-Methylhistidine", "1-Methylhistidine", "Caffeine"))
## Assign m/z and intensity values.
spd$mz <- list(
c(109.2, 124.2, 124.5, 170.16, 170.52),
c(83.1, 96.12, 97.14, 109.14, 124.08, 125.1, 170.16),
c(56.0494, 69.0447, 83.0603, 109.0395, 110.0712,
111.0551, 123.0429, 138.0662, 195.0876))
spd$intensity <- list(
c(3.407, 47.494, 3.094, 100.0, 13.240),
c(6.685, 4.381, 3.022, 16.708, 100.0, 4.565, 40.643),
c(0.459, 2.585, 2.446, 0.508, 8.968, 0.524, 0.974, 100.0, 40.994))
sps <- Spectra(spd)
sps
## MSn data (Spectra) with 3 spectra in a MsBackendMemory backend:
## msLevel rtime scanIndex
## <integer> <numeric> <integer>
## 1 2 NA NA
## 2 2 NA NA
## 3 2 NA NA
## ... 18 more variables/columns.
Alternatively, it is possible to import spectra data from mass spectrometry raw
files in mzML/mzXML or CDF format. Below we create a Spectra
object from two
mzML files and define to use a MsBackendMzR
backend to store the data (note
that this requires the mzR package to be installed). This
backend, specifically designed for raw MS data, keeps only a subset of spectra
variables in memory while reading the m/z and intensity values from the original
data files only on demand. See section Backends for more details
on backends and their properties.
fls <- dir(system.file("sciex", package = "msdata"), full.names = TRUE)
sps_sciex <- Spectra(fls, source = MsBackendMzR())
sps_sciex
## MSn data (Spectra) with 1862 spectra in a MsBackendMzR backend:
## msLevel rtime scanIndex
## <integer> <numeric> <integer>
## 1 1 0.280 1
## 2 1 0.559 2
## 3 1 0.838 3
## 4 1 1.117 4
## 5 1 1.396 5
## ... ... ... ...
## 1858 1 258.636 927
## 1859 1 258.915 928
## 1860 1 259.194 929
## 1861 1 259.473 930
## 1862 1 259.752 931
## ... 33 more variables/columns.
##
## file(s):
## 20171016_POOL_POS_1_105-134.mzML
## 20171016_POOL_POS_3_105-134.mzML
The Spectra
object sps_sciex
allows now to access spectra data from 1862 MS1
spectra and uses MsBackendMzR
as backend (the Spectra
object sps
created
in the previous code block uses the default MsBackendMemory
).
As detailed above Spectra
objects can contain an arbitrary number of
properties of a spectrum (so called spectra variables). The available
variables can be listed with the spectraVariables
method:
spectraVariables(sps)
## [1] "msLevel" "rtime"
## [3] "acquisitionNum" "scanIndex"
## [5] "dataStorage" "dataOrigin"
## [7] "centroided" "smoothed"
## [9] "polarity" "precScanNum"
## [11] "precursorMz" "precursorIntensity"
## [13] "precursorCharge" "collisionEnergy"
## [15] "isolationWindowLowerMz" "isolationWindowTargetMz"
## [17] "isolationWindowUpperMz" "id"
## [19] "name"
spectraVariables(sps_sciex)
## [1] "msLevel" "rtime"
## [3] "acquisitionNum" "scanIndex"
## [5] "dataStorage" "dataOrigin"
## [7] "centroided" "smoothed"
## [9] "polarity" "precScanNum"
## [11] "precursorMz" "precursorIntensity"
## [13] "precursorCharge" "collisionEnergy"
## [15] "isolationWindowLowerMz" "isolationWindowTargetMz"
## [17] "isolationWindowUpperMz" "peaksCount"
## [19] "totIonCurrent" "basePeakMZ"
## [21] "basePeakIntensity" "ionisationEnergy"
## [23] "lowMZ" "highMZ"
## [25] "mergedScan" "mergedResultScanNum"
## [27] "mergedResultStartScanNum" "mergedResultEndScanNum"
## [29] "injectionTime" "filterString"
## [31] "spectrumId" "ionMobilityDriftTime"
## [33] "scanWindowLowerLimit" "scanWindowUpperLimit"
The two Spectra
contain a different set of variables: besides "msLevel"
,
"polarity"
, "id"
and "name"
, that were specified for the Spectra
object
sps
, it contains more variables such as "rtime"
, "acquisitionNum"
and
"scanIndex"
. These are part of the core variables defining a spectrum and
for all of these accessor methods exist. Below we use msLevel
and rtime
to
access the MS levels and retention times for the spectra in sps
.
msLevel(sps)
## [1] 2 2 2
rtime(sps)
## [1] NA NA NA
We did not specify retention times for the spectra in sps
thus NA
is
returned for them. The Spectra
object sps_sciex
contains many more
variables, all of which were extracted from the mzML files. Below we extract the
retention times for the first spectra in the object.
head(rtime(sps_sciex))
## [1] 0.280 0.559 0.838 1.117 1.396 1.675
Note that in addition to the accessor functions it is also possible to use $
to extract a specific spectra variable. To extract the name of the compounds in
sps
we can use sps$name
, or, to extract the MS levels sps$msLevel
.
sps$name
## [1] "1-Methylhistidine" "1-Methylhistidine" "Caffeine"
sps$msLevel
## [1] 2 2 2
We could also replace specific spectra variables using either the dedicated
method or $
. Below we specify that all spectra in sps
represent centroided
data.
sps$centroided <- TRUE
centroided(sps)
## [1] TRUE TRUE TRUE
The $
operator can also be used to add arbitrary new spectra variables to a
Spectra
object. Below we add the SPLASH key to each of the spectra.
sps$splash <- c(
"splash10-00di-0900000000-037d24a7d65676b7e356",
"splash10-00di-0900000000-03e99316bd6c098f5d11",
"splash10-000i-0900000000-9af60e39c843cb715435")
This new spectra variable will now be listed as an additional variable in the
result of the spectraVariables
function and we can directly access its
content with sps$splash
.
Each spectrum can have a different number of mass peaks, each consisting of a
mass-to-charge (m/z) and associated intensity value. These can be extracted with
the mz
or intensity
functions, each of which return a list
of numeric
values.
mz(sps)
## NumericList of length 3
## [[1]] 109.2 124.2 124.5 170.16 170.52
## [[2]] 83.1 96.12 97.14 109.14 124.08 125.1 170.16
## [[3]] 56.0494 69.0447 83.0603 109.0395 110.0712 111.0551 123.0429 138.0662 195.0876
intensity(sps)
## NumericList of length 3
## [[1]] 3.407 47.494 3.094 100 13.24
## [[2]] 6.685 4.381 3.022 16.708 100 4.565 40.643
## [[3]] 0.459 2.585 2.446 0.508 8.968 0.524 0.974 100 40.994
Peak data can also be extracted with the peaksData
function that returns a
list of numerical matrices with peak variables such as m/z and intensity
values. Which peak variables are available in a Spectra
object can be
determined with the peaksVariables
function.
peaksVariables(sps)
## [1] "mz" "intensity"
These can be passed to the peaksData
function with parameter columns
to
extract the peak variables of interest. By default peaksData
extracts m/z and
intensity values.
pks <- peaksData(sps)
pks[[1]]
## mz intensity
## [1,] 109.20 3.407
## [2,] 124.20 47.494
## [3,] 124.50 3.094
## [4,] 170.16 100.000
## [5,] 170.52 13.240
Note that we would get the same result by using the as
method to coerce a
Spectra
object to a list
or SimpleList
:
as(sps, "SimpleList")
## List of length 3
Certain backends (such as the MsBackendMemory
) support also additional peaks
variables. Below we define peak annotations for each individual peak in the
peak matrices and assign that to a variable called peak_anno
to the Spectra
object. Importantly, for peak variables, a value needs to be assigned to each
peak, even if it is NA
or empty
. In the example below we define a list
of
character
vectors with arbitrary IDs/names for each peak.
sps2 <- sps
sps2$peak_anno <- list(c("a", NA_character_, "b", "c", "d"),
c("a", "b", "c", "d", "e", "f", "g"),
c("a", "b", "c", "d", "e", "f", "g", "h", "i"))
peaksVariables(sps2)
## [1] "mz" "intensity" "peak_anno"
We can use the peaksData
to extract the values for these additional peak
variable.
## Peak annotations for the first spectrum
peaksData(sps2, "peak_anno")[[1L]]
## peak_anno
## [1,] "a"
## [2,] NA
## [3,] "b"
## [4,] "c"
## [5,] "d"
## Peak annotations for the second spectrum
peaksData(sps2, "peak_anno")[[2L]]
## peak_anno
## [1,] "a"
## [2,] "b"
## [3,] "c"
## [4,] "d"
## [5,] "e"
## [6,] "f"
## [7,] "g"
This works however only for Spectra
that use a MsBackendMemory
backend.
The spectraData
function returns a DataFrame
with the full data for each
spectrum (except m/z and intensity values), or with selected spectra variables
(which can be specified with the columns
parameter). Below we extract the
spectra data for variables "msLevel"
, "id"
and "name"
.
spectraData(sps, columns = c("msLevel", "id", "name"))
## DataFrame with 3 rows and 3 columns
## msLevel id name
## <integer> <character> <character>
## 1 2 HMDB0000001 1-Methylhistidine
## 2 2 HMDB0000001 1-Methylhistidine
## 3 2 HMDB0001847 Caffeine
Spectra
are one-dimensional objects storing spectra, even from different files
or samples, in a single list. Specific variables have thus to be used to define
the originating file from which they were extracted or the sample in which they
were measured. The data origin of each spectrum can be extracted with the
dataOrigin
function. For sps
, the Spectra
created from a DataFrame
, this
will be NA
because we did not specify the data origin:
dataOrigin(sps)
## [1] NA NA NA
dataOrigin
for sps_sciex
, the Spectra
which was initialized with data
from mzML files, in contrast, returns the originating file names:
head(basename(dataOrigin(sps_sciex)))
## [1] "20171016_POOL_POS_1_105-134.mzML" "20171016_POOL_POS_1_105-134.mzML"
## [3] "20171016_POOL_POS_1_105-134.mzML" "20171016_POOL_POS_1_105-134.mzML"
## [5] "20171016_POOL_POS_1_105-134.mzML" "20171016_POOL_POS_1_105-134.mzML"
The current data storage location of a spectrum can be retrieved with the
dataStorage
variable, which will return an arbitrary string for Spectra
that
use an in-memory backend or the file where the data is stored for on-disk
backends:
dataStorage(sps)
## [1] "<memory>" "<memory>" "<memory>"
head(basename(dataStorage(sps_sciex)))
## [1] "20171016_POOL_POS_1_105-134.mzML" "20171016_POOL_POS_1_105-134.mzML"
## [3] "20171016_POOL_POS_1_105-134.mzML" "20171016_POOL_POS_1_105-134.mzML"
## [5] "20171016_POOL_POS_1_105-134.mzML" "20171016_POOL_POS_1_105-134.mzML"
Apart from classical subsetting operations such as [
and split
, a set of
filter functions are defined for Spectra
objects (for detailed help please see
the ?Spectra
help):
filterAcquisitionNum
: retain spectra with certain acquisition numbers.filterDataOrigin
: subset to spectra from specific origins.filterDataStorage
: subset to spectra from certain data storage files.filterEmptySpectra
: remove spectra without mass peaks.filterMzRange
: subset spectra keeping only peaks with an m/z within the
provided m/z range.filterMzValues
: subset spectra keeping or removing peaks matching provided
m/z value(s).filterIsolationWindow
: keep spectra with the provided mz
in their
isolation window (m/z range).filterMsLevel
: filter by MS level.filterPolarity
: filter by polarity.filterPrecursorMzRange
: retain (MSn) spectra with a precursor m/z within the
provided m/z range.filterPrecursorMzValues
: retain (MSn) spectra with precursor m/z value
matching the provided value(s) considering also a tolerance
and ppm
.filterPrecursorCharge
: retain (MSn) spectra with speified
precursor charge(s).filterPrecursorScan
: retain (parent and children) scans of an acquisition
number.filterRt
: filter based on retention time ranges.In the example below we select all spectra measured in the second mzML file and subsequently filter them to retain spectra measured between 175 and 189 seconds in the measurement run.
fls <- unique(dataOrigin(sps_sciex))
file_2 <- filterDataOrigin(sps_sciex, dataOrigin = fls[2])
length(file_2)
## [1] 931
sps_sub <- filterRt(file_2, rt = c(175, 189))
length(sps_sub)
## [1] 50
In addition, Spectra
support also subsetting with [
. Below we perform the
filtering above with [
-based subsetting.
sps_sciex[sps_sciex$dataOrigin == fls[2] &
sps_sciex$rtime >= 175 &
sps_sciex$rtime <= 189]
## MSn data (Spectra) with 50 spectra in a MsBackendMzR backend:
## msLevel rtime scanIndex
## <integer> <numeric> <integer>
## 1 1 175.212 628
## 2 1 175.491 629
## 3 1 175.770 630
## 4 1 176.049 631
## 5 1 176.328 632
## ... ... ... ...
## 46 1 187.768 673
## 47 1 188.047 674
## 48 1 188.326 675
## 49 1 188.605 676
## 50 1 188.884 677
## ... 33 more variables/columns.
##
## file(s):
## 20171016_POOL_POS_3_105-134.mzML
The equivalent using filter function is shown below, with the added benefit that the filtering is recorded in the processing slot.
sps_sciex |>
filterDataOrigin(fls[2]) |>
filterRt(c(175, 189))
## MSn data (Spectra) with 50 spectra in a MsBackendMzR backend:
## msLevel rtime scanIndex
## <integer> <numeric> <integer>
## 1 1 175.212 628
## 2 1 175.491 629
## 3 1 175.770 630
## 4 1 176.049 631
## 5 1 176.328 632
## ... ... ... ...
## 46 1 187.768 673
## 47 1 188.047 674
## 48 1 188.326 675
## 49 1 188.605 676
## 50 1 188.884 677
## ... 33 more variables/columns.
##
## file(s):
## 20171016_POOL_POS_3_105-134.mzML
## Processing:
## Filter: select data origin(s) /home/biocbuild/bbs-3.16-bioc/R/site-library/msdata/sciex/20171016_POOL_POS_3_105-134.mzML [Wed Mar 22 18:28:23 2023]
## Filter: select retention time [175..189] on MS level(s) 1 [Wed Mar 22 18:28:23 2023]
Note that the use of the filter functions might be more efficient for some backends, depending on their implementation, (e.g. database-based backends could translate the filter function into a SQL condition to perform the subsetting already within the database).
Multiple Spectra
objects can also be combined into a single Spectra
with the
c
or the concatenateSpectra
function. The resulting Spectra
object will
contain an union of the spectra variables of the individual objects. Below we
combine the Spectra
object sps
with an additional object containing another
MS2 spectrum for Caffeine.
caf_df <- DataFrame(msLevel = 2L, name = "Caffeine",
id = "HMDB0001847",
instrument = "Agilent 1200 RRLC; Agilent 6520 QTOF",
splash = "splash10-0002-0900000000-413259091ba7edc46b87",
centroided = TRUE)
caf_df$mz <- list(c(110.0710, 138.0655, 138.1057, 138.1742, 195.9864))
caf_df$intensity <- list(c(3.837, 32.341, 0.84, 0.534, 100))
caf <- Spectra(caf_df)
Next we combine the two objects.
sps <- concatenateSpectra(sps, caf)
sps
## MSn data (Spectra) with 4 spectra in a MsBackendMemory backend:
## msLevel rtime scanIndex
## <integer> <numeric> <integer>
## 1 2 NA NA
## 2 2 NA NA
## 3 2 NA NA
## 4 2 NA NA
## ... 20 more variables/columns.
## Processing:
## Merge 2 Spectra into one [Wed Mar 22 18:28:23 2023]
The resulting object contains now the data for all 4 MS2 spectra and an union of all spectra variables from both objects.
spectraVariables(sps)
## [1] "msLevel" "rtime"
## [3] "acquisitionNum" "scanIndex"
## [5] "dataStorage" "dataOrigin"
## [7] "centroided" "smoothed"
## [9] "polarity" "precScanNum"
## [11] "precursorMz" "precursorIntensity"
## [13] "precursorCharge" "collisionEnergy"
## [15] "isolationWindowLowerMz" "isolationWindowTargetMz"
## [17] "isolationWindowUpperMz" "id"
## [19] "name" "splash"
## [21] "instrument"
The second object had an additional spectra variable instrument that was not
present in sps
and all the spectra in this object will thus get a value of
NA
for this variable.
sps$instrument
## [1] NA
## [2] NA
## [3] NA
## [4] "Agilent 1200 RRLC; Agilent 6520 QTOF"
Sometimes not all spectra variables might be required (e.g. also because many of
them are empty). This might be specifically interesting also for Spectra
containing the data from very large experiments, because it can significantly
reduce the object’s size in memory. In such cases the selectSpectraVariables
function can be used to retain only specified spectra variables.
Some analyses require manipulation of the mass peak data (i.e. the m/z and/or
intensity values). One example would be to remove all peaks from a spectrum that
have an intensity lower than a certain threshold. Below we perform such an
operation with the replaceIntensitiesBelow
function to replace peak
intensities below 10 in each spectrum in sps
with a value of 0.
sps_rep <- replaceIntensitiesBelow(sps, threshold = 10, value = 0)
As a result intensities below 10 were set to 0 for all peaks.
intensity(sps_rep)
## NumericList of length 4
## [[1]] 0 47.494 0 100 13.24
## [[2]] 0 0 0 16.708 100 0 40.643
## [[3]] 0 0 0 0 0 0 0 100 40.994
## [[4]] 0 32.341 0 0 100
Zero-intensity peaks (and peaks with missing intensities) can then be removed
with the filterIntensity
function specifying a lower required intensity level
or optionally also an upper intensity limit.
sps_rep <- filterIntensity(sps_rep, intensity = c(0.1, Inf))
intensity(sps_rep)
## NumericList of length 4
## [[1]] 47.494 100 13.24
## [[2]] 16.708 100 40.643
## [[3]] 100 40.994
## [[4]] 32.341 100
The filterIntensity
supports also a user-provided function to be passed with
parameter intensity
which would allow e.g. to remove peaks smaller than the
median peak intensity of a spectrum. See examples in the ?filterIntensity
help
page for details.
Note that any data manipulations on Spectra
objects are not immediately
applied to the peak data. They are added to a so called processing queue which
is applied each time peak data is accessed (with the peaksData
, mz
or
intensity
functions). Thanks to this processing queue data manipulation
operations are also possible for read-only backends (e.g. mzML-file based
backends or database-based backends). The information about the number of such
processing steps can be seen below (next to Lazy evaluation queue).
sps_rep
## MSn data (Spectra) with 4 spectra in a MsBackendMemory backend:
## msLevel rtime scanIndex
## <integer> <numeric> <integer>
## 1 2 NA NA
## 2 2 NA NA
## 3 2 NA NA
## 4 2 NA NA
## ... 20 more variables/columns.
## Lazy evaluation queue: 2 processing step(s)
## Processing:
## Merge 2 Spectra into one [Wed Mar 22 18:28:23 2023]
## Signal <= 10 in MS level(s) 2 set to 0 [Wed Mar 22 18:28:23 2023]
## Remove peaks with intensities outside [0.1, Inf] in spectra of MS level(s) 2. [Wed Mar 22 18:28:23 2023]
It is possible to add also custom functions to the processing queue of a
Spectra
object. Such a function must take a peaks matrix as its first
argument, have ...
in the function definition and must return a peaks matrix
(a peaks matrix is a numeric two-column matrix with the first column containing
the peaks’ m/z values and the second the corresponding intensities). Below we
define a function that divides the intensities of each peak by a value which can
be passed with argument y
.
## Define a function that takes a matrix as input, divides the second
## column by parameter y and returns it. Note that ... is required in
## the function's definition.
divide_intensities <- function(x, y, ...) {
x[, 2] <- x[, 2] / y
x
}
## Add the function to the procesing queue
sps_2 <- addProcessing(sps_rep, divide_intensities, y = 2)
sps_2
## MSn data (Spectra) with 4 spectra in a MsBackendMemory backend:
## msLevel rtime scanIndex
## <integer> <numeric> <integer>
## 1 2 NA NA
## 2 2 NA NA
## 3 2 NA NA
## 4 2 NA NA
## ... 20 more variables/columns.
## Lazy evaluation queue: 3 processing step(s)
## Processing:
## Merge 2 Spectra into one [Wed Mar 22 18:28:23 2023]
## Signal <= 10 in MS level(s) 2 set to 0 [Wed Mar 22 18:28:23 2023]
## Remove peaks with intensities outside [0.1, Inf] in spectra of MS level(s) 2. [Wed Mar 22 18:28:23 2023]
Object sps_2
has now 3 processing steps in its lazy evaluation queue. Calling
intensity
on this object will now return intensities that are half of the
intensities of the original objects sps
.
intensity(sps_2)
## NumericList of length 4
## [[1]] 23.747 50 6.62
## [[2]] 8.354 50 20.3215
## [[3]] 50 20.497
## [[4]] 16.1705 50
intensity(sps_rep)
## NumericList of length 4
## [[1]] 47.494 100 13.24
## [[2]] 16.708 100 40.643
## [[3]] 100 40.994
## [[4]] 32.341 100
Alternatively we could define a function that returns the maximum peak from each
spectrum (note: we use the unname
function to remove any names from the
results):
max_peak <- function(x, ...) {
unname(x[which.max(x[, 2]), , drop = FALSE])
}
sps_2 <- addProcessing(sps_rep, max_peak)
lengths(sps_2)
## [1] 1 1 1 1
intensity(sps_2)
## NumericList of length 4
## [[1]] 100
## [[2]] 100
## [[3]] 100
## [[4]] 100
Each spectrum in sps_2
thus contains only a single peak. The parameter
spectraVariables
of the addProcessing
function allows in addition to define
spectra variables that should be passed (in addition to the peaks matrix) to the
user-provided function. This would enable for example to calculate neutral
loss spectra from a Spectra
by subtracting the precursor m/z from each m/z of
a spectrum (note that there would also be a dedicated neutralLoss
function to
perform this operation more efficiently). Our tool example does not have
precursor m/z values defined, thus we first set them to arbitrary values. Then
we define a function neutral_loss
that calculates the difference between the
precursor m/z and the fragment peak’s m/z. In addition we need to ensure the
peaks in the resulting spectra are ordered by (the delta) m/z values. Note that,
in order to be able to access the precursor m/z of the spectrum within our
function, we have to add a parameter to the function that has the same name as
the spectrum variable we want to access (in our case precursorMz
).
sps_rep$precursorMz <- c(150, 20, 30, 40)
neutral_loss <- function(x, precursorMz, ...) {
x[, "mz"] <- precursorMz - x[, "mz"]
x[order(x[, "mz"]), , drop = FALSE]
}
We have then to call addProcessing
with spectraVariables = "precursorMz"
to
specify that this spectra variable is passed along to our function.
sps_3 <- addProcessing(sps_rep, neutral_loss, spectraVariables = "precursorMz")
mz(sps_rep)
## NumericList of length 4
## [[1]] 124.2 170.16 170.52
## [[2]] 109.14 124.08 170.16
## [[3]] 138.0662 195.0876
## [[4]] 138.0655 195.9864
mz(sps_3)
## NumericList of length 4
## [[1]] -20.52 -20.16 25.8
## [[2]] -150.16 -104.08 -89.14
## [[3]] -165.0876 -108.0662
## [[4]] -155.9864 -98.0655
As we can see, the precursor m/z was subtracted from each m/z of the respective
spectrum. A better version of the function, that only calculates neutral loss
spectra for MS level 2 spectra would be the neutral_loss
function below. Since
we are accessing also the spectrum’s MS level we have to call addProcessing
adding also the spectra variable msLevel
to the spectraVariables
parameter. Note however that the msLevel
spectra variable is by default
renamed to spectrumMsLevel
prior passing it to the function. We have thus to
use a parameter called spectrumMsLevel
in the neutral_loss
function instead
of msLevel
.
neutral_loss <- function(x, spectrumMsLevel, precursorMz, ...) {
if (spectrumMsLevel == 2L) {
x[, "mz"] <- precursorMz - x[, "mz"]
x <- x[order(x[, "mz"]), , drop = FALSE]
}
x
}
sps_3 <- addProcessing(sps_rep, neutral_loss,
spectraVariables = c("msLevel", "precursorMz"))
mz(sps_3)
## NumericList of length 4
## [[1]] -20.52 -20.16 25.8
## [[2]] -150.16 -104.08 -89.14
## [[3]] -165.0876 -108.0662
## [[4]] -155.9864 -98.0655
Using the same concept it would also be possible to provide any
spectrum-specific user-defined value to the processing function. This variable
could simply be added first as a new spectra variable to the Spectra
object
and then this variable could be passed along to the function in the same way we
passed the precursor m/z to our function above.
Since all data manipulations above did not change the original intensity or m/z
values, it is possible to restore the original data. This can be done with the
reset
function which will empty the lazy evaluation queue and call the reset
method on the storage backend. Below we call reset
on the sps_2
object and
hence restore the data to its original state.
sps_2_rest <- reset(sps_2)
intensity(sps_2_rest)
## NumericList of length 4
## [[1]] 3.407 47.494 3.094 100 13.24
## [[2]] 6.685 4.381 3.022 16.708 100 4.565 40.643
## [[3]] 0.459 2.585 2.446 0.508 8.968 0.524 0.974 100 40.994
## [[4]] 3.837 32.341 0.84 0.534 100
intensity(sps)
## NumericList of length 4
## [[1]] 3.407 47.494 3.094 100 13.24
## [[2]] 6.685 4.381 3.022 16.708 100 4.565 40.643
## [[3]] 0.459 2.585 2.446 0.508 8.968 0.524 0.974 100 40.994
## [[4]] 3.837 32.341 0.84 0.534 100
Finally, for Spectra
that use a writeable backend, such as the
MsBackendMemory
, MsBackendDataFrame
or MsBackendHdf5Peaks
, it is possible
to apply the processing queue to the peak data and write that back to the data
storage with the applyProcessing
function. Below we use this to make all data
manipulations on peak data of the sps_rep
object persistent.
length(sps_rep@processingQueue)
## [1] 2
sps_rep <- applyProcessing(sps_rep)
length(sps_rep@processingQueue)
## [1] 0
sps_rep
## MSn data (Spectra) with 4 spectra in a MsBackendMemory backend:
## msLevel rtime scanIndex
## <integer> <numeric> <integer>
## 1 2 NA NA
## 2 2 NA NA
## 3 2 NA NA
## 4 2 NA NA
## ... 20 more variables/columns.
## Processing:
## Merge 2 Spectra into one [Wed Mar 22 18:28:23 2023]
## Signal <= 10 in MS level(s) 2 set to 0 [Wed Mar 22 18:28:23 2023]
## Remove peaks with intensities outside [0.1, Inf] in spectra of MS level(s) 2. [Wed Mar 22 18:28:23 2023]
## ...1 more processings. Use 'processingLog' to list all.
Before applyProcessing
the lazy evaluation queue contained 2 processing steps,
which were then applied to the peak data and written to the data storage. Note
that calling reset
after applyProcessing
can no longer restore the
data.
Spectra
The Spectra
package provides the following functions to visualize spectra
data:
- plotSpectra
: plot each spectrum in Spectra
in its own panel.
- plotSpectraOverlay
: plot multiple spectra into the same plot.
Below we use plotSpectra
to plot the 4 spectra from the sps
object using
their names (as provided in spectra variable "name"
) as plot titles.
plotSpectra(sps, main = sps$name)
It is also possible to label individual peaks in each plot. Below we use the m/z
value of each peak as its label. In the example we define a function that
accesses information from each spectrum (z
) and returns a character
for each
peak with the text that should be used as label. Parameters labelSrt
,
labelPos
and labelOffset
define the rotation of the label text and its
position relative to the x and y coordinates of the peak.
plotSpectra(sps, main = sps$name,
labels = function(z) format(mz(z)[[1L]], digits = 4),
labelSrt = -30, labelPos = 2, labelOffset = 0.1)
These plots are rather busy and for some peaks the m/z values are overplotted. Below we define a label function that will only indicate the m/z of peaks with an intensity higher than 30.
mzLabel <- function(z) {
z <- peaksData(z)[[1L]]
lbls <- format(z[, "mz"], digits = 4)
lbls[z[, "intensity"] < 30] <- ""
lbls
}
plotSpectra(sps, main = sps$name, labels = mzLabel,
labelSrt = -30, labelPos = 2, labelOffset = 0.1)
Sometimes it might be of interest to plot multiple spectra into the same
plot (e.g. to directly compare peaks from multiple spectra). This can be done
with plotSpectraOverlay
which we use below to create an overlay-plot of our
4 example spectra, using a different color for each spectrum.
cols <- c("#E41A1C80", "#377EB880", "#4DAF4A80", "#984EA380")
plotSpectraOverlay(sps, lwd = 2, col = cols)
legend("topleft", col = cols, legend = sps$name, pch = 15)
Lastly, plotSpectraMirror
allows to plot two spectra against each other as a
mirror plot which is ideal to visualize spectra comparison results. Below we
plot a spectrum of 1-Methylhistidine against one of Caffeine.
plotSpectraMirror(sps[1], sps[3])
The upper panel shows the spectrum from 1-Methylhistidine, the lower the one of
Caffeine. None of the peaks of the two spectra match. Below we plot the two
spectra of 1-Methylhistidine and the two of Caffeine against each other matching
peaks with a ppm
of 50.
par(mfrow = c(1, 2))
plotSpectraMirror(sps[1], sps[2], main = "1-Methylhistidine", ppm = 50)
plotSpectraMirror(sps[3], sps[4], main = "Caffeine", ppm = 50)
See also ?plotSpectra
for more plotting options and examples.
The Spectra
package provides the combineSpectra
function that allows to
aggregate multiple spectra into a single one. The main parameters of this
function are f
, which defines the grouping of the spectra, and FUN
which
allows to define the function that performs the actual aggregation. The default
aggregation function is combinePeaks
(see ?combinePeaks
for details) that
combines multiple spectra into a single spectrum with all peaks from all input
spectra (with additional paramter peaks = "union"
), or peaks that are present
in a certain proportion of input spectra (with parameter peaks = "intersect"
;
parameter minProp
allows to define the minimum required proportion of spectra
in which a peak needs to be present. Below we use this function to combine the
spectra for 1-methylhistidine and caffeine into a single spectrum for each
compound. We use the spectra variable $name
, that contains the names of the
compounds, to define which spectra should be grouped together.
sps_agg <- combineSpectra(sps, f = sps$name)
As a result, the 4 spectra got aggregated into two.
plotSpectra(sps_agg, main = sps_agg$name)
By default, all peaks present in all spectra are reported. As an alternative, by
specifying peaks = "intersect"
and minProp = 1
, we could combine the spectra
keeping only peaks that are present in both input spectra.
sps_agg <- combineSpectra(sps, f = sps$name, peaks = "intersect", minProp = 1)
plotSpectra(sps_agg, main = sps_agg$name)
This results thus in a single peak for 1-methylhistidine and none for caffeine -
why? The reason for that is that the difference of the peaks’ m/z values is
larger than the default tolerance used for the peak grouping (the defaults for
combinePeaks
is tolerance = 0
and ppm = 0
). We could however already see
in the previous section that the reported peaks’ m/z values have a larger
measurement error (most likely because the fragment spectra were measured on
different instruments with different precision). Thus, we next increase the
tolerance
and ppm
parameters to group also peaks with a larger difference in
their m/z values.
sps_agg <- combineSpectra(sps, f = sps$name, peaks = "intersect",
minProp = 1, tolerance = 0.2)
plotSpectra(sps_agg, main = sps_agg$name)
Whether in a real analysis we would be OK with such a large tolerance is however
questionable. Note: which m/z and intensity is reported for the aggregated
spectra can be defined with the parameters intensityFun
and mzFun
of
combinePeaks
(see ?combinePeaks
for more information).
While the combinePeaks
function is indeed helpful to combine peaks from
different spectra, the combineSpectra
function would in addition also allow us
to provide our own, custom, peak aggregation function. As a simple example,
instead of combining the spectra, we would like to select one of the input
spectra as representative spectrum for grouped input spectra. combineSpectra
supports any function that takes a list of peak matrices as input and returns a
single peak matrix as output. We thus define below a function that calculates
the total signal (TIC) for each input peak matrix, and returns the one peak
matrix with the largest TIC.
#' function to select and return the peak matrix with the largest tic from
#' the provided list of peak matrices.
maxTic <- function(x, ...) {
tic <- vapply(x, function(z) sum(z[, "intensity"], na.rm = TRUE),
numeric(1))
x[[which.max(tic)]]
}
We can now use this function with combineSpectra
to select for each compound
the spectrum with the largest TIC.
sps_agg <- combineSpectra(sps, f = sps$name, FUN = maxTic)
plotSpectra(sps_agg, main = sps_agg$name)
Spectra can be compared with the compareSpectra
function, that allows to
calculate similarities between spectra using a variety of methods. However,
peaks from the compared spectra have to be first matched before similarities can
be calculated. compareSpectra
uses by default the [joinPeaks()] function from
the MsCoreUtils package but supports also other mapping functions
to be passed with the MAPFUN
parameter (see ?joinPeaks
man page in
MsCoreUtils
for more details). The similarity calculation function can be
specified with the FUN
parameter and defaults to [ndotproduct()], the
normalized dot-product. For more details, see also (Rainer et al. 2022) or the
SpectraTutorials tutorial.
Below we calculate pairwise similarities between all spectra in sps
accepting
a 50 ppm difference of peaks’ m/z values for being considered matching.
compareSpectra(sps, ppm = 50)
## 1 2 3 4
## 1 1.0000000 0.1380817 0.0000000 0.0000000
## 2 0.1380817 1.0000000 0.0000000 0.0000000
## 3 0.0000000 0.0000000 1.0000000 0.1817149
## 4 0.0000000 0.0000000 0.1817149 1.0000000
The resulting matrix represents the result from the pairwise comparison. As expected, the first two and the last two spectra are similar, albeit only moderately while the spectra from 1-Methylhistidine don’t share any similarity with those of Caffeine.
Another way of comparing spectra would be to bin the spectra and to cluster them based on similar intensity values. Spectra binning ensures that the binned m/z values are comparable across all spectra. Below we bin our spectra using a bin size of 0.1 (i.e. all peaks with an m/z smaller than 0.1 are aggregated into one binned peak.
sps_bin <- bin(sps, binSize = 0.1)
All spectra will now have the same number of m/z values.
lengths(sps_bin)
## [1] 1400 1400 1400 1400
Most of the intensity values for these will however be 0 (because in the original spectra no peak for the respective m/z bin was present).
intensity(sps_bin)
## NumericList of length 4
## [[1]] 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0
## [[2]] 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0
## [[3]] 0.459 0 0 0 0 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 40.994 0 0 0 0 0 0 0 0 0
## [[4]] 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 100
We’re next creating an intensity matrix for our Spectra
object, each row being
one spectrum and columns representing the binned m/z values.
intmat <- do.call(rbind, intensity(sps_bin))
We can now identify those columns (m/z bins) with only 0s across all spectra and remove these.
zeros <- colSums(intmat) == 0
intmat <- intmat[, !zeros]
intmat
## [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10] [,11] [,12]
## [1,] 0.000 0.000 0.000 0.000 0.000 0.000 0.000 0.000 3.407 0.000 0.000 0.000
## [2,] 0.000 0.000 0.000 6.685 4.381 3.022 0.000 16.708 0.000 0.000 0.000 0.000
## [3,] 0.459 2.585 2.446 0.000 0.000 0.000 0.508 0.000 0.000 8.968 0.524 0.974
## [4,] 0.000 0.000 0.000 0.000 0.000 0.000 0.000 0.000 0.000 3.837 0.000 0.000
## [,13] [,14] [,15] [,16] [,17] [,18] [,19] [,20] [,21] [,22]
## [1,] 0 47.494 3.094 0.000 0.000 0.000 100.000 13.24 0.000 0
## [2,] 100 0.000 0.000 4.565 0.000 0.000 40.643 0.00 0.000 0
## [3,] 0 0.000 0.000 0.000 100.000 0.000 0.000 0.00 40.994 0
## [4,] 0 0.000 0.000 0.000 32.341 1.374 0.000 0.00 0.000 100
The associated m/z values for the bins can be extracted with mz
from the
binned Spectra
object. Below we use these as column names for the intensity
matrix.
colnames(intmat) <- mz(sps_bin)[[1L]][!zeros]
This intensity matrix could now for example be used to cluster the spectra based on their peak intensities.
heatmap(intmat)
As expected, the first 2 and the last 2 spectra are more similar and are clustered together.
Spectra data can be exported with the export
method. This method takes the
Spectra
that is supposed to be exported and the backend (parameter backend
)
which should be used to export the data and additional parameters for the export
function of this backend. The backend thus defines the format of the exported
file. Note however that not all MsBackend
classes might support data export.
The backend classes currently supporting data export and its format are:
- MsBackendMzR
(Spectra
package): export data in mzML and mzXML
format. Can not export all custom, user specified spectra variables.
- MsBackendMgf
(MsBackendMgf
package): exports data in Mascot Generic Format (mgf). Exports all spectra
variables as individual spectrum fields in the mgf file.
- MsBackendMsp
(MsBackendMsp
):
exports data in NIST MSP format.
- MsBackendMassbank
(MsBackendMassbank
)
exports data in Massbank text file format.
In the example below we use the MsBackendMzR
to export all spectra from the
variable sps
to an mzML file. We thus pass the data, the backend that should
be used for the export and the file name of the result file (a temporary file)
to the export
function (see also the help page of the export,MsBackendMzR
function for additional supported parameters).
fl <- tempfile()
export(sps, MsBackendMzR(), file = fl)
To evaluate which of the spectra variables were exported, we load the exported data again and identify spectra variables in the original file which could not be exported (because they are not defined variables in the mzML standard).
sps_im <- Spectra(backendInitialize(MsBackendMzR(), fl))
spectraVariables(sps)[!spectraVariables(sps) %in% spectraVariables(sps_im)]
## [1] "id" "name" "splash" "instrument"
These additional variables were thus not exported. How data export is performed
and handled depends also on the used backend. The MsBackendMzR
for example
exports all spectra by default to a single file (specified with the file
parameter), but it allows also to specify for each individual spectrum in the
Spectra
to which file it should be exported (parameter file
has thus to be
of length equal to the number of spectra). As an example we export below the
spectrum 1 and 3 to one file and spectra 2 and 4 to another.
fls <- c(tempfile(), tempfile())
export(sps, MsBackendMzR(), file = fls[c(1, 2, 1, 2)])
A more realistic use case for mzML export would be to export MS data after
processing, such as smoothing (using the smooth
function) and centroiding
(using the pickPeaks
function) of raw profile-mode MS data.
In the previous sections we learned already that a Spectra
object can use
different backends for the actual data handling. It is also possible to
change the backend of a Spectra
to a different one with the setBackend
function. We could for example change the (MsBackendMzR
) backend of the
sps_sciex
object to a MsBackendMemory
backend to enable use of the data
even without the need to keep the original mzML files. Below we change the
backend of sps_sciex
to the in-memory MsBackendMemory
backend.
print(object.size(sps_sciex), units = "Mb")
## 0.4 Mb
sps_sciex <- setBackend(sps_sciex, MsBackendMemory())
sps_sciex
## MSn data (Spectra) with 1862 spectra in a MsBackendMemory backend:
## msLevel rtime scanIndex
## <integer> <numeric> <integer>
## 1 1 0.280 1
## 2 1 0.559 2
## 3 1 0.838 3
## 4 1 1.117 4
## 5 1 1.396 5
## ... ... ... ...
## 1858 1 258.636 927
## 1859 1 258.915 928
## 1860 1 259.194 929
## 1861 1 259.473 930
## 1862 1 259.752 931
## ... 33 more variables/columns.
## Processing:
## Switch backend from MsBackendMzR to MsBackendMemory [Wed Mar 22 18:28:30 2023]
With the call the full peak data was imported from the original mzML files into the object. This has obviously an impact on the object’s size, which is now much larger than before.
print(object.size(sps_sciex), units = "Mb")
## 53.2 Mb
The dataStorage
spectrum variable has now changed, while dataOrigin
still
keeps the information about the originating files:
head(dataStorage(sps_sciex))
## [1] "<memory>" "<memory>" "<memory>" "<memory>" "<memory>" "<memory>"
head(basename(dataOrigin(sps_sciex)))
## [1] "20171016_POOL_POS_1_105-134.mzML" "20171016_POOL_POS_1_105-134.mzML"
## [3] "20171016_POOL_POS_1_105-134.mzML" "20171016_POOL_POS_1_105-134.mzML"
## [5] "20171016_POOL_POS_1_105-134.mzML" "20171016_POOL_POS_1_105-134.mzML"
Most functions on Spectra
support (and use) parallel processing out of the
box. Peak data access and manipulation methods perform by default parallel
processing on a per-file basis (i.e. using the dataStorage
variable as
splitting factor). Spectra
uses BiocParallel for
parallel processing and all functions use the default registered parallel
processing setup of that package.
Backends allow to use different backends to store mass spectrometry data while
providing via the Spectra
class a unified interface to use that data. This
is a further abstraction to the on-disk and in-memory data modes from
MSnbase
(Gatto, Gibb, and Rainer 2020). The Spectra
package defines a
set of example backends but any object extending the base MsBackend
class
could be used instead. The default backends are:
MsBackendMemory
: the default backend to store data in memory. Due to its
design the MsBackendMemory
provides fast access to the peaks matrices (using
the peaksData
function) and is also optimized for fast access to spectra
variables and subsetting. Since all data is kept in memory, this backend has a
relatively large memory footprint (depending on the data) and is thus not
suggested for very large MS experiments.
MsBackendDataFrame
: the mass spectrometry data is stored (in-memory) in a
DataFrame
. Keeping the data in memory guarantees high performance but has
also, depending on the number of mass peaks in each spectrum, a much higher
memory footprint.
MsBackendMzR
: this backend keeps only general spectra variables in memory
and relies on the mzR package to read mass peaks (m/z and
intensity values) from the original MS files on-demand.
MsBackendHdf5Peaks
: similar to MsBackendMzR
this backend reads peak data
only on-demand from disk while all other spectra variables are kept in
memory. The peak data are stored in Hdf5 files which guarantees scalability.
All of the above mentioned backends support changing all of their their spectra
variables, except the MsBackendMzR
that does not support changing m/z or
intensity values for the mass peaks.
With the example below we load the data from a single mzML file and use a
MsBackendHdf5Peaks
backend for data storage. The hdf5path
parameter allows
us to specify the storage location of the HDF5 file.
library(msdata)
fl <- proteomics(full.names = TRUE)[5]
sps_tmt <- Spectra(fl, backend = MsBackendHdf5Peaks(), hdf5path = tempdir())
head(basename(dataStorage(sps_tmt)))
## [1] "TMT_Erwinia_1uLSike_Top10HCD_isol2_45stepped_60min_01.mzML.h5"
## [2] "TMT_Erwinia_1uLSike_Top10HCD_isol2_45stepped_60min_01.mzML.h5"
## [3] "TMT_Erwinia_1uLSike_Top10HCD_isol2_45stepped_60min_01.mzML.h5"
## [4] "TMT_Erwinia_1uLSike_Top10HCD_isol2_45stepped_60min_01.mzML.h5"
## [5] "TMT_Erwinia_1uLSike_Top10HCD_isol2_45stepped_60min_01.mzML.h5"
## [6] "TMT_Erwinia_1uLSike_Top10HCD_isol2_45stepped_60min_01.mzML.h5"
A (possibly incomplete) list of R packages providing additional backends that add support for additional data types or storage options is provided below:
sessionInfo()
## R version 4.2.3 (2023-03-15)
## Platform: x86_64-pc-linux-gnu (64-bit)
## Running under: Ubuntu 20.04.6 LTS
##
## Matrix products: default
## BLAS: /home/biocbuild/bbs-3.16-bioc/R/lib/libRblas.so
## LAPACK: /home/biocbuild/bbs-3.16-bioc/R/lib/libRlapack.so
##
## locale:
## [1] LC_CTYPE=en_US.UTF-8 LC_NUMERIC=C
## [3] LC_TIME=en_GB LC_COLLATE=C
## [5] LC_MONETARY=en_US.UTF-8 LC_MESSAGES=en_US.UTF-8
## [7] LC_PAPER=en_US.UTF-8 LC_NAME=C
## [9] LC_ADDRESS=C LC_TELEPHONE=C
## [11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C
##
## attached base packages:
## [1] stats4 stats graphics grDevices utils datasets methods
## [8] base
##
## other attached packages:
## [1] msdata_0.38.0 Spectra_1.8.3 ProtGenerics_1.30.0
## [4] BiocParallel_1.32.6 S4Vectors_0.36.2 BiocGenerics_0.44.0
## [7] BiocStyle_2.26.0
##
## loaded via a namespace (and not attached):
## [1] Rcpp_1.0.10 bslib_0.4.2 compiler_4.2.3
## [4] BiocManager_1.30.20 jquerylib_0.1.4 highr_0.10
## [7] rhdf5filters_1.10.0 tools_4.2.3 ncdf4_1.21
## [10] digest_0.6.31 rhdf5_2.42.0 jsonlite_1.8.4
## [13] evaluate_0.20 clue_0.3-64 rlang_1.1.0
## [16] cli_3.6.0 magick_2.7.4 yaml_2.3.7
## [19] parallel_4.2.3 xfun_0.37 fastmap_1.1.1
## [22] knitr_1.42 cluster_2.1.4 sass_0.4.5
## [25] fs_1.6.1 IRanges_2.32.0 MsCoreUtils_1.10.0
## [28] Biobase_2.58.0 R6_2.5.1 rmarkdown_2.20
## [31] bookdown_0.33 Rhdf5lib_1.20.0 mzR_2.32.0
## [34] magrittr_2.0.3 codetools_0.2-19 htmltools_0.5.4
## [37] MASS_7.3-58.3 cachem_1.0.7
Gatto, Laurent, Sebastian Gibb, and Johannes Rainer. 2020. “MSnbase, Efficient and Elegant R-Based Processing and Visualization of Raw Mass Spectrometry Data.” Journal of Proteome Research, September. https://doi.org/10.1021/acs.jproteome.0c00313.
Rainer, Johannes, Andrea Vicini, Liesa Salzer, Jan Stanstrup, Josep M. Badia, Steffen Neumann, Michael A. Stravs, et al. 2022. “A Modular and Expandable Ecosystem for Metabolomics Data Annotation in R.” Metabolites 12 (2): 173. https://doi.org/10.3390/metabo12020173.