xcms 3.4.2
xcmsThis document describes new functionality and changes to existing functionality
in the xcms package introduced during the update to version 3.
library(xcms)
library(RColorBrewer)
register(SerialParam())
The modernization of the user interface comprises new classes for data
representation and new data analysis methods. In addition, the core logic for
the data processing has been extracted from the old methods and put into a set
of R functions, the so called core API functions (or do_ functions). These
functions take standard R data structures as input and return standard R data
types as result and can hence be easily included in other R packages.
The new user interface aims at simplifying and streamlining the xcms workflow
while guaranteeing data integrity and performance also for large scale
metabolomics experiments. Importantly, a simplified access to the original raw
data should be provided throughout the whole metabolomics data analysis workflow.
The new interface re-uses objects from the MSnbase Bioconductor package, such as
the OnDiskMSnExp object. This object is specifically designed for large scale MS
experiments as it initially reads just the scan header information from the mzML
while the mz-intensity value pairs from all or from selected spectra of a file
are read on demand hence minimizing the memory demand. Also, in contrast to
the old xcmsRaw object, the OnDiskMSnExp contains information from all files of
an experiment. In addition, all data normalization and adjustment methods
implemented in the MSnbase package can be directly applied to the MS data
without the need to re-implement such methods in xcms. Results from xcms
preprocessings, such as chromatographic peak detection or correspondence are
stored into the new XCMSnExp object. This object extends the OnDiskMSnExp object
and inherits thus all of its methods including raw data access.
Class and method/function names follow also a new naming convention trying tp
avoid the partially confusing nomenclature of the original xcms methods (such as
the group method to perform the correspondence of peaks across samples). To
distinguish them from mass peaks, the peaks identified by the peak detection in
an LS/GC-MS experiment are referred to as chromatographic peaks. The respective
method to identify such peaks is hence called findChromPeaks and the identified
peaks can be accessed using the XCMSnExp chromPeaks method. The results from an
correspondence analysis which aims to match and group chromatographic peaks
within and between samples are called features. A feature corresponds to
individual ions with a unique mass-to-charge ratio (mz) and a unique retention
time (rt). The definition of such mz-rt features (i.e. the result from the
groupChromPeaks method) can be accessed via the featureDefinitions method of
the XCMSnExp class. Finally, alignment (retention time correction) can be
performed using the adjustRtime method.
The settings for any of the new analysis methods are bundled in parameter
classes, one class for each method. This encapsulation of the parameters to a
function into a parameter class (such as CentWaveParam) avoids busy function
calls (with many single parameters) and enables saving, reloading and reusing
the settings. In addition, the parameter classes are added, along with other
information to the process history of an XCMSnExp object thus providing a
detailed documentation of each processing step of an analysis, with the
possibility to recall all settings of the performed analyses at any stage. In
addition, validation of the parameters can be performed within the parameter
object and hence is no longer required in the analysis function.
Peaks identified in LC/GC-MS metabolomics are referred to as chromatographic peaks where possible to avoid any misconceptions with mass peaks identified in mz dimension.
Methods for data analysis from the original xcms code have been renamed to avoid
potential confusions:
Chromatographic peak detection: findChromPeaks instead of findPeaks: for new
functions and methods the term peak is avoided as much as possible, as it is
usually used to describe a mass peak in mz dimension. To clearly distinguish
between these peaks and peaks in retention time space, the latter are referred
to as chromatographic peak, or chromPeak.
Correspondence: groupChromPeaks instead of group to clearly indicate what is
being grouped. Group might be a sample group or a peak group, the latter being
referred to also by (mz-rt) feature.
Alignment: adjustRtime instead of retcor for retention time correction. The
word cor in retcor might be easily misinterpreted as correlation instead of
correction.
OnDiskMSnExpThis object is defined and documented in the MSnbase package. In brief, it is a
container for the full raw data from an MS-based experiment. To keep the memory
footprint low the mz and intensity values are only loaded from the raw data
files when required. The OnDiskMSnExp object replaces the xcmsRaw object.
XCMSnExpThe XCMSnExp class extends the OnDiskMSnExp object from the MSnbase package and
represents a container for the xcms-based preprocessing results while (since it
inherits all functionality from its parent class) keeping a direct relation to
the (raw) data on which the processing was performed. An additional slot
.processHistory in the object allows to keep track of all performed processing
steps. Each analysis method, such as findChromPeaks adds an XProcessHistory
object which includes also the parameter class passed to the analysis
method. Hence not only the time and type of the analysis, but its exact settings
are reported within the XCMSnExp object. The XCMSnExp is thus equivalent to the
xcmsSet from the original xcms implementation, but keeps in addition a link to
the raw data on which the preprocessing was performed.
ChromatogramThe Chromatogram class (available in the MSnbase package since version 2.3.8)
allows a data representation that is orthogonal to the Spectrum class (also
defined in MSnbase). The Chromatogram class stores retention time and intensity
duplets and is designed to accommodate most use cases, from total ion
chromatogram, base peak chromatogram to extracted ion chromatogram and SRM/MRM
ion traces.
Chromatogram objects can be extracted from XCMSnExp (and MSnExp and
OnDiskMSnExp) objects using the chromatogram method.
Note that this class is still considered developmental and might thus undergo some changes in the future.
The binning/profile matrix generation functions have been completely
rewritten. The new binYonX function replaces the binning of intensity values
into bins defined by their m/z values implemented in the profBin, profBinLin and
profBinLinBase methods. The binYonX function provides also additional functionality:
Breaks for the bins can be defined based on either the number of desired bins
(nBins) or the size of a bin (binSize). In addition it is possible to provide
a vector with pre-defined breaks. This allows to bin data from multiple files
or scans on the same bin-definition.
The function returns a list with element y containing the binned values and
element x the bin mid-points.
Values in input vector y can be aggregated within each bin with different
methods: max, min, sum and mean.
The index of the largest (or smallest for method being “min”) within each bin
can be returned by setting argument returnIndex to TRUE.
Binning can be performed on single or multiple sub-sets of the input vectors
using the fromIdx and toIdx arguments. This replaces the M methods (such as
profBinM). These sub-sets can be overlapping.
The missing value imputation logic inherently build into the profBinLin and
profBinLinBase methods has been implemented in the imputeLinInterpol function.
The example below illustrates the binning and imputation with the binYtoX and
imputeLinInterpol functions. After binning of the test vectors below some of the
bins have missing values, for which we impute a value using
imputeLinInterpol. By default, binYonX selects the largest value within each
bin, but other aggregation methods are also available (i.e. min, max, mean,
sum).
## Defining the variables:
set.seed(123)
X <- sort(abs(rnorm(30, mean = 20, sd = 25))) ## 10
Y <- abs(rnorm(30, mean = 50, sd = 30))
## Bin the values in Y into 20 bins defined on X
res <- binYonX(X, Y, nBins = 22)
res
## $x
## [1] 3.207154 6.066022 8.924891 11.783759 14.642628 17.501497 20.360365
## [8] 23.219234 26.078102 28.936971 31.795840 34.654708 37.513577 40.372445
## [15] 43.231314 46.090183 48.949051 51.807920 54.666788 57.525657 60.384526
## [22] 63.243394
##
## $y
## [1] 76.85377 76.34400 48.14265 29.15879 43.76248 NA 115.06868
## [8] 86.23886 NA 73.39895 49.14360 NA 91.05807 43.22687
## [15] NA NA NA 95.49412 NA NA 67.53841
## [22] 56.47825
As a result we get a list with the bin mid-points ($x) and the binned y values
($y).
Next we use two different imputation approaches, a simple linear interpolation
and the linear imputation approach that was defined in the profBinLinBase
method. The latter performs linear interpolation only considering a certain
neighborhood of missing values otherwise replacing the NA with a base value.
## Plot the actual data values.
plot(X, Y, pch = 16, ylim = c(0, max(Y)))
## Visualizing the bins
abline(v = breaks_on_nBins(min(X), max(X), nBins = 22), col = "grey")
## Define colors:
point_colors <- paste0(brewer.pal(4, "Set1"), 80)
## Plot the binned values.
points(x = res$x, y = res$y, col = point_colors[1], pch = 15)
## Perform the linear imputation.
res_lin <- imputeLinInterpol(res$y)
points(x = res$x, y = res_lin, col = point_colors[2], type = "b")
## Perform the linear imputation "linbase"
res_linbase <- imputeLinInterpol(res$y, method = "linbase")
points(x = res$x, y = res_linbase, col = point_colors[3], type = "b", lty = 2)
Figure 1: Binning and missing value imputation results
Black points represent the input values, red the results from the binning and blue and green the results from the imputation (with method lin and linbase, respectively).
The difference between the linear interpolation method lin and linbase is that
the latter only performs the linear interpolation in a pre-defined neighborhood
of the bin with the missing value (1 by default). The other missing values are
set to a base value corresponding to half of the smallest bin value. Both
methods thus yield same results, except for bins 15-17 (see Figure above).
The core logic from the chromatographic peak detection methods
findPeaks.centWave, findPeaks.massifquant, findPeaks.matchedFilter and
findPeaks.MSW and from all alignment (group.*) and correspondence (retcor.*)
methods has been extracted and put into functions with the common prefix
do_findChromPeaks, do_adjustRtime and do_groupChromPeaks, respectively, with the
aim, as detailed in issue #30, to separate the core logic from the analysis
methods invoked by the users to enable also the use these methods using base R
parameters (i.e. without specific classes containing the data such as the
xcmsRaw class). This simplifies also the re-use of these functions in other
packages and simplifies the future implementation of the peak detection
algorithms for e.g. the MSnExp or OnDiskMSnExp objects from the MSnbase
Bioconductor package. The implemented functions are:
do_findChromPeaks_centWave: peak density and wavelet based peak detection
for high resolution LC/MS data in centroid mode [1].do_findChromPeaks_matchedFilter: identification of peak in the
chromatographic domain based on matched filtration [2].do_findChromPeaks_massifquant: identification of peaks using Kalman
filters.do_findChromPeaks_MSW: single spectrum, non-chromatographic peak detection.do_adjustRtime_peakGroups: perform sample alignment (retention time
correction) using alignment of well behaved chromatographic peaks that are
present in most samples (and are expected to have the same retention time).do_groupChromPeaks_density: perform chromatographic peak grouping (within
and across samples) based on the density distribution of peaks along the
retention time axis.do_groupChromPeaks_nearest: groups peaks across samples similar to the
method implemented in mzMine.do_groupChromPeaks_mzClust: performs high resolution correspondence on
single spectra samples.One possible drawback from the introduction of this new layer is, that more objects get copied by R which could eventually result in a larger memory demand or performance decrease (while no such was decrease was observed up to now).
[ subsetting method for xcmsRaw objects that enables to subset an xcmsRaw
object to specific scans/spectra.profMat method to extract the profile matrix from the xcmsRaw object. This
method should be used instead of directly accessing the @env$profile slot, as
it will create the profile matrix on the fly if it was not pre-calculated (or
if profile matrix generation settings have been changed).profBinLin).From xcms version 1.51.1 on the new binning functions are used, thus, the bug
described here are fixed.
Two bugs are present in the profBinLin method (reported as issues #46 and #49 on
github) which are fixed in the new binYonX and imputeLinInterpol functions:
profBinLin can be wrong (i.e. not being the
max value within that bin, but the first).The profBinLin method is used in findPeaks.matchedFilter if the profile
method is set to “binlin”.
The example below illustrates both differences.
## Define a vector with empty values at the end.
X <- 1:11
set.seed(123)
Y <- sort(rnorm(11, mean = 20, sd = 10))
Y[9:11] <- NA
nas <- is.na(Y)
## Do interpolation with profBinLin:
resX <- xcms:::profBinLin(X[!nas], Y[!nas], 5, xstart = min(X),
xend = max(X))
## Warning: Use of 'profBinLin' is deprecated! Use 'binYonX' with
## 'imputeLinInterpol' instead.
resX
## [1] 7.349388 15.543380 21.292877 0.000000 0.000000
res <- binYonX(X, Y, nBins = 5L, shiftByHalfBinSize = TRUE)
resM <- imputeLinInterpol(res$y, method = "lin",
noInterpolAtEnds = TRUE)
resM
## [1] 13.13147 15.54338 21.29288 24.60916 0.00000
Plotting the results helps to better compare the differences. The black points
in the figure below represent the actual values of Y and the grey vertical lines
the breaks defining the bins. The blue lines and points represent the result
from the profBinLin method. The bin values for the first and 4th bin are clearly
wrong. The green colored points and lines represent the results from the binYonX
and imputeLinInterpol functions (showing the correct binning and interpolation).
plot(x = X, y = Y, pch = 16, ylim = c(0, max(Y, na.rm = TRUE)),
xlim = c(0, 12))
## Plot the breaks
abline(v = breaks_on_nBins(min(X), max(X), 5L, TRUE), col = "grey")
## Result from profBinLin:
points(x = res$x, y = resX, col = "blue", type = "b")
## Results from imputeLinInterpol
points(x = res$x, y = resM, col = "green", type = "b",
pch = 4, lty = 2)
Figure 2: Illustration of the two bugs in profBinLin
The input values are represented by black points, grey vertical lines indicate the bins. The results from binning and interpolation with profBinLin are shown in blue and those from binYonX in combination with imputeLinInterpol in green.
Note that by default imputeLinInterpol would also interpolate missing values at
the beginning and the end of the provided numeric vector. This can be disabled
(to be compliant with profBinLin) by setting parameter noInterpolAtEnds to
TRUE (like in the example above).
do_findChromPeaks_matchedFilter, respectively findPeaks.matchedFilter.The original findPeaks.matchedFilter (up to version 1.49.7) had several
shortcomings and bugs that have been fixed in the new
do_findChromPeaks_matchedFilter method:
The internal iterative processing of smaller chunks of the full data (also referred to as iterative buffering) could result, for some bin (step) sizes to unstable binning results (discussed in issue #47 on github): calculation of the breaks, or to be precise, the actually used bin size was performed in each iteration and could lead to slightly different sizes between iterations (due to rounding errors caused by floating point number representations in C).
The iterative buffering raises also a conceptual issue when linear interpolation is performed to impute missing values: the linear imputation will only consider values within the actually processed buffer and can thus lead to wrong or inaccurate imputations.
The profBinLin implementation contains two bugs, one that can result in
failing to identify the maximal value in the first and last bin (see issue
#46) and one that fails to assign a value to a bin (issue #49). Both are fixed
in the do_findChromPeaks_matchedFilter implementation.
A detailed description of tests comparing all implementations is available in
issue #52 on github. Note also that in course of these changes also the getEIC
method has been updated to use the new binning and missing value imputation
function.
While it is strongly discouraged, it is still possible to use to old code (from
1.49.7) by calling useOriginalCode(TRUE).
findPeaks.massifquantscanrange was ignored in the original old code (issue #61).matrix if withWave was 0 and a xcmsPeaks object
otherwise. The updated version returns always an xcmsPeaks object (issue #60).Retention time correction using the obiwarp method uses the profile matrix
(i.e. intensities binned in discrete bins along the mz axis). Profile matrix
generation uses now the binYonX method which fixed some problems in the original
binning and linear interpolation methods. Thus results might be slightly
different.
Also, the retcor.obiwarp method reports (un-rounded) adjusted retention times,
but adjusts the retention time of eventually already identified peaks using
rounded adjusted retention times. The new adjustRtime method(s) does adjust
identified peaks using the reported adjusted retention times (not rounded). This
guarantees that e.g. removing retention time adjustment/alignment results from
an object restores the object to its initial state (i.e. the adjusted retention
times of the identified peaks are reverted to the retention times before
alignment).
See issue #122 for more details.
retcor.peaksgroups: change in the way how well behaved peak groups are orderedThe retcor.peakgroups defines first the chromatographic peak groups that are
used for the alignment of all spectra. Once these are identified, the retention
time of the peak with the highest intensity in a sample for a given peak group
is returned and the peak groups are ordered increasingly by retention time
(which is required for the later fitting of either a polynomial or a linear
model to the data). The selection of the retention time of the peak with the
highest intensity within a feature (peak group) and samples, denoted as
representative peak for a given feature in a sample, ensures that only the
retention time of a single peak per sample and feature is selected (note that
multiple chromatographic peaks within the same sample can be assigned to a
feature). In the original code the ordering of the peak groups was however
performed using the median retention time of the complete peak group (which
includes also potential additional peaks per sample). This has been changed and
the features are ordered now by the median retention time across samples of the
representative chromatographic peaks.
scanrange parameter in all findPeaks methodsThe scanrange in the findPeaks methods is supposed to enable the peak detection
only within a user-defined range of scans. This was however not performed in
each method. Due to a bug in findPeaks.matchedFilter’s original code the
argument was ignored, except if the upper scan number of the user defined range
was larger than the total number of available scans (see issue #63). In
findPeaks.massifquant the argument was completely ignored (see issue #61) and,
while the argument was considered in findPeaks.centWave and feature detection
was performed within the specified scan range, but the original @scantime slot
was used throughout the code instead of just the scan times for the specified
scan indices (see issue #64).
These problems have been fixed in version 1.51.1 by first sub-setting the
xcmsRaw object (using the [ method) before actually performing the feature
detection.
fillPeaks (fillChromPeaks) differencesIn the original fillPeaks.MSW, the mz range from which the signal is to be
integrated was defined using
mzarea <- seq(which.min(abs(mzs - peakArea[i, "mzmin"])),
which.min(abs(mzs - peakArea[i, "mzmax"])))
Depending on the data this could lead to the inclusion of signal in the
integration that are just outside of the mz range. In the new fillChromPeaks
method signal is integrated only for mz values >= mzmin and <= mzmax thus
ensuring that only signal is used that is truly within the peak area defined by
columns "mzmin", "mzmax", "rtmin" and "rtmax".
Also, the fillPeaks.chrom method did return "into" and "maxo" values of 0 if no
signal was found in the peak area. The new method does not integrate any signal
in such cases and does not fill in that peak.
See also issue #130 for more information.
These changes and updates will not have any large impact on the day-to-day use of
xcms and are listed here for completeness.
xcms version 1.51.1 on the default methods from the mzR package are used
for data import. Besides ensuring easier maintenance, this enables also data
import from gzipped mzML files.Here we list all of the functions and related files that are deprecated.
xcmsParallelSetup, xcmsPapply, xcmsClusterApply: use BiocParallel package
instead to setup and perform parallel processing, either via the BPPARAM
parameter to function and methods, or by calling register to globally set
parallel processing.
profBin, profBinM, profBinLin, profBinLinM, profBinLinBase, profBinLinBaseM:
replaced by the binYonX and imputeLinInterpol functions. Also, to create or
extract the profile matrix from an xcmsRaw object, the profMat method.
xcmsParallelSetup (Deprecated.R)xcmsPapply (Deprecated.R)xcmsClusterApply (Deprecated.R)profBin (c.R)profBinM (c.R)profBinLin (c.R)profBinLinM (c.R)profBinLinBase (c.R)profBinLinBaseM (c.R)1. Tautenhahn R, Böttcher C, Neumann S: Highly sensitive feature detection for high resolution LC/MS. BMC Bioinformatics 2008, 9:504.
2. Smith CA, Want EJ, O’Maille G, Abagyan R, Siuzdak G: XCMS: processing mass spectrometry data for metabolite profiling using nonlinear peak alignment, matching, and identification. Analytical chemistry 2006, 78:779–787.