This document describes how to use the R-package IPO to
optimize xcms parameters. Code examples on how to use
IPO are provided. Additional to IPO the
R-packages xcms and rsm are required. The
R-package msdata andmtbls2 are recommended.
The optimization process looks as following:
# try http:// if https:// URLs are not supported
if (!requireNamespace("BiocManager", quietly=TRUE))
install.packages("BiocManager")
BiocManager::install("IPO")Installing main suggested packages
xcms handles the file processing hence all files can be
used that can be processed by xcms.
To optimize parameters different values (levels) have to tested for
these parameters. To efficiently test many different levels design of
experiment (DoE) is used. Box-Behnken and central composite designs set
three evenly spaced levels for each parameter. The method
getDefaultXcmsSetStartingParams provides default values for
the lower and upper levels defining a range. Since the levels are evenly
spaced the middle level or center point is calculated automatically. To
edit the starting levels of a parameter set the lower and upper level as
desired. If a parameter should not be optimized, set a single default
value for xcms processing, do not set this parameter to
NULL.
The method getDefaultXcmsSetStartingParams creates a
list with default values for the optimization of the peak picking
methods centWave or matchedFilter. To choose
between these two method set the parameter accordingly.
The method optimizeXcmsSet has the following
parameters:
xcms peak picking methods parameters. A default list is
created by getDefaultXcmsSetStartingParams().BiocParallelParam-object (see
?BiocParallel::BiocParallelParam) to controll the use of
parallelisation of xcms. Defaults to
bpparam().NULL if no rsm’s should be saved.The optimization process starts at the specified levels. After the calculation of the DoE is finished the result is evaluated and the levels automatically set accordingly. Then a new DoE is generated and processed. This continues until an optimum is found.
The result of peak picking optimization is a list consisting of all
calculated DoEs including the used levels, design, response, rsm and
best setting. Additionally the last list item is a list
(\$best_settings) providing the optimized parameters
(\$parameters), an xcmsSet object (\$xset)
calculated with these parameters and the response this
xcms-object gives.
peakpickingParameters <- getDefaultXcmsSetStartingParams('matchedFilter')
#setting levels for step to 0.2 and 0.3 (hence 0.25 is the center point)
peakpickingParameters$step <- c(0.2, 0.3)
peakpickingParameters$fwhm <- c(40, 50)
#setting only one value for steps therefore this parameter is not optimized
peakpickingParameters$steps <- 2
time.xcmsSet <- system.time({ # measuring time
resultPeakpicking <-
optimizeXcmsSet(files = datafiles[1:2],
params = peakpickingParameters,
nSlaves = 1,
subdir = NULL,
plot = TRUE)
})
#>
#> starting new DoE with:
#> fwhm: c(40, 50)
#> snthresh: c(3, 17)
#> step: c(0.2, 0.3)
#> steps: 2
#> sigma: 0
#> max: 5
#> mzdiff: 0
#> index: FALSE
#> 1
#> 2
#> 3
#> 4
#> 5
#> 6
#> 7
#> 8
#> 9
#> 10
#> 11
#> 12
#> 13
#> 14
#> 15
#> 16#>
#> starting new DoE with:
#> fwhm: c(45, 55)
#> snthresh: c(1, 15)
#> step: c(0.22, 0.3)
#> steps: 2
#> sigma: 0
#> max: 5
#> mzdiff: 0
#> index: FALSE
#> 1
#> 2
#> 3
#> 4
#> 5
#> 6
#> 7
#> 8
#> 9
#> 10
#> 11
#> 12
#> 13
#> 14
#> 15
#> 16
#>
#> starting new DoE with:
#> fwhm: c(50, 60)
#> snthresh: c(1, 15)
#> step: c(0.26, 0.34)
#> steps: 2
#> sigma: 0
#> max: 5
#> mzdiff: 0
#> index: FALSE
#> 1
#> 2
#> 3
#> 4
#> 5
#> 6
#> 7
#> 8
#> 9
#> 10
#> 11
#> 12
#> 13
#> 14
#> 15
#> 16
#> no increase, stopping
#> best parameter settings:
#> fwhm: 50
#> snthresh: 3
#> step: 0.26
#> steps: 2
#> sigma: 21.2332257516562
#> max: 5
#> mzdiff: 0.28
#> index: FALSE
resultPeakpicking$best_settings$result
#> ExpId #peaks #NonRP #RP PPS
#> 0.000 3228.000 2264.000 569.000 143.004
optimizedXcmsSetObject <- resultPeakpicking$best_settings$xsetThe response surface models of all optimization steps for the parameter optimization of peak picking are shown above.
Currently the xcms peak picking methods
centWave and matchedFilter are supported. The
parameter peakwidth of the peak picking method
centWave needs two values defining a minimum and maximum
peakwidth. These two values need separate optimization and are therefore
split into min_peakwidth and max_peakwidth in
getDefaultXcmsSetStartingParams. Also for the
centWave parameter prefilter two values have to be set. To
optimize these use set prefilter to optimize the first
value and prefilter_value to optimize the second value
respectively.
Optimization of retention time correction and grouping parameters is
done simultaneously. The method
getDefaultRetGroupStartingParams provides default
optimization levels for the xcms retention time correction
method obiwarp and the grouping method
density. Modifying these levels should be done the same way
done for the peak picking parameter optimization.
The method getDefaultRetGroupStartingParams only
supports one retention time correction method (obiwarp) and
one grouping method (density) at the moment.
The method optimizeRetGroup provides the following
parameter: - xset: an xcmsSet-object used as basis for
retention time correction and grouping. - params: a list consisting of
items named according to xcms retention time correction and
grouping methods parameters. A default list is created by
getDefaultRetGroupStartingParams. - nSlaves: the number of
experiments of an DoE processed in parallel - subdir: a directory where
the response surface models are stored. Can also be NULL if no rsm’s
should be saved.
A list is returned similar to the one returned from peak picking
optimization. The last list item consists of the optimized retention
time correction and grouping parameters
(\$best_settings).
retcorGroupParameters <- getDefaultRetGroupStartingParams()
retcorGroupParameters$profStep <- 1
retcorGroupParameters$gapExtend <- 2.7
time.RetGroup <- system.time({ # measuring time
resultRetcorGroup <-
optimizeRetGroup(xset = optimizedXcmsSetObject,
params = retcorGroupParameters,
nSlaves = 1,
subdir = NULL,
plot = TRUE)
})
#>
#> starting new DoE with:
#> distFunc: cor_opt
#> gapInit: c(0, 0.4)
#> gapExtend: 2.7
#> profStep: 1
#> plottype: none
#> response: 1
#> factorDiag: 2
#> factorGap: 1
#> localAlignment: 0
#> retcorMethod: obiwarp
#> bw: c(22, 38)
#> minfrac: c(0.3, 0.7)
#> mzwid: c(0.015, 0.035)
#> minsamp: 1
#> max: 50
#> center: 2
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ...
#> OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#>
#>
#> starting new DoE with:
#>
#> gapInit: c(0.16, 0.64)
#> bw: c(12.4, 31.6)
#> minfrac: c(0.46, 0.94)
#> mzwid: c(0.023, 0.047)
#> distFunc: cor_opt
#> gapExtend: 2.7
#> profStep: 1
#> plottype: none
#> response: 1
#> factorDiag: 2
#> factorGap: 1
#> localAlignment: 0
#> retcorMethod: obiwarp
#> minsamp: 1
#> max: 50
#> center: 2
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#> profStep or minfrac greater 1, decreasing to 0.54 and 1
#>
#>
#>
#> starting new DoE with:
#>
#> gapInit: c(0.352, 0.928)
#> bw: c(0.879999999999999, 23.92)
#> minfrac: c(0.54, 1)
#> mzwid: c(0.0326, 0.0614)
#> distFunc: cor_opt
#> gapExtend: 2.7
#> profStep: 1
#> plottype: none
#> response: 1
#> factorDiag: 2
#> factorGap: 1
#> localAlignment: 0
#> retcorMethod: obiwarp
#> minsamp: 1
#> max: 50
#> center: 2
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#>
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#> center sample: ko16
#> Processing: ko15
#> Create profile matrix with method 'bin' and step 1 ... OK
#> Create profile matrix with method 'bin' and step 1 ... OK
#> no increase stopping
The response surface models of all optimization steps for the retention time correction and grouping parameters are shown above.
Currently the xcms retention time correction method
obiwarp and grouping method density are
supported.
A script which you can use to process your raw data can be generated
by using the function writeRScript.
writeRScript(resultPeakpicking$best_settings$parameters,
resultRetcorGroup$best_settings)
#> library(xcms)
#> library(Rmpi)
#> xset <- xcmsSet(
#> method = "matchedFilter",
#> fwhm = 50,
#> snthresh = 3,
#> step = 0.26,
#> steps = 2,
#> sigma = 21.2332257516562,
#> max = 5,
#> mzdiff = 0.28,
#> index = FALSE)
#> xset <- retcor(
#> xset,
#> method = "obiwarp",
#> plottype = "none",
#> distFunc = "cor_opt",
#> profStep = 1,
#> center = 2,
#> response = 1,
#> gapInit = 0.64,
#> gapExtend = 2.7,
#> factorDiag = 2,
#> factorGap = 1,
#> localAlignment = 0)
#> xset <- group(
#> xset,
#> method = "density",
#> bw = 12.4,
#> mzwid = 0.047,
#> minfrac = 0.94,
#> minsamp = 1,
#> max = 50)
#> xset <- fillPeaks(xset)Above calculations proceeded with following running times.
time.xcmsSet # time for optimizing peak picking parameters
#> user system elapsed
#> 312.778 68.628 191.238
time.RetGroup # time for optimizing retention time correction and grouping parameters
#> user system elapsed
#> 509.952 1.933 510.831
sessionInfo()
#> R version 4.5.2 (2025-10-31)
#> Platform: x86_64-pc-linux-gnu
#> Running under: Ubuntu 24.04.3 LTS
#>
#> Matrix products: default
#> BLAS: /usr/lib/x86_64-linux-gnu/openblas-pthread/libblas.so.3
#> LAPACK: /usr/lib/x86_64-linux-gnu/openblas-pthread/libopenblasp-r0.3.26.so; LAPACK version 3.12.0
#>
#> locale:
#> [1] LC_CTYPE=en_US.UTF-8 LC_NUMERIC=C
#> [3] LC_TIME=en_US.UTF-8 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
#>
#> time zone: Etc/UTC
#> tzcode source: system (glibc)
#>
#> attached base packages:
#> [1] stats graphics grDevices utils datasets methods base
#>
#> other attached packages:
#> [1] IPO_1.36.0 CAMERA_1.66.0 Biobase_2.70.0
#> [4] BiocGenerics_0.56.0 generics_0.1.4 rsm_2.10.6
#> [7] xcms_4.8.0 BiocParallel_1.44.0 faahKO_1.50.0
#> [10] rmarkdown_2.30
#>
#> loaded via a namespace (and not attached):
#> [1] DBI_1.2.3 RBGL_1.86.0
#> [3] gridExtra_2.3 rlang_1.1.6
#> [5] magrittr_2.0.4 clue_0.3-66
#> [7] MassSpecWavelet_1.76.0 matrixStats_1.5.0
#> [9] compiler_4.5.2 vctrs_0.6.5
#> [11] reshape2_1.4.4 stringr_1.6.0
#> [13] ProtGenerics_1.42.0 crayon_1.5.3
#> [15] pkgconfig_2.0.3 MetaboCoreUtils_1.18.0
#> [17] fastmap_1.2.0 backports_1.5.0
#> [19] XVector_0.50.0 graph_1.88.0
#> [21] preprocessCore_1.72.0 purrr_1.2.0
#> [23] xfun_0.54 MultiAssayExperiment_1.36.0
#> [25] cachem_1.1.0 jsonlite_2.0.0
#> [27] progress_1.2.3 DelayedArray_0.36.0
#> [29] prettyunits_1.2.0 parallel_4.5.2
#> [31] cluster_2.1.8.1 R6_2.6.1
#> [33] bslib_0.9.0 stringi_1.8.7
#> [35] RColorBrewer_1.1-3 limma_3.66.0
#> [37] rpart_4.1.24 GenomicRanges_1.62.0
#> [39] jquerylib_0.1.4 Rcpp_1.1.0
#> [41] Seqinfo_1.0.0 SummarizedExperiment_1.40.0
#> [43] iterators_1.0.14 knitr_1.50
#> [45] base64enc_0.1-3 IRanges_2.44.0
#> [47] BiocBaseUtils_1.12.0 nnet_7.3-20
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#> [51] tidyselect_1.2.1 rstudioapi_0.17.1
#> [53] abind_1.4-8 yaml_2.3.10
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#> [57] affy_1.88.0 lattice_0.22-7
#> [59] tibble_3.3.0 plyr_1.8.9
#> [61] S7_0.2.0 evaluate_1.0.5
#> [63] foreign_0.8-90 Spectra_1.20.0
#> [65] pillar_1.11.1 affyio_1.80.0
#> [67] BiocManager_1.30.26 MatrixGenerics_1.22.0
#> [69] checkmate_2.3.3 foreach_1.5.2
#> [71] stats4_4.5.2 MSnbase_2.36.0
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#> [75] hms_1.1.4 S4Vectors_0.48.0
#> [77] ggplot2_4.0.0 scales_1.4.0
#> [79] MsExperiment_1.12.0 glue_1.8.0
#> [81] Hmisc_5.2-4 MsFeatures_1.18.0
#> [83] lazyeval_0.2.2 maketools_1.3.2
#> [85] tools_4.5.2 mzID_1.48.0
#> [87] sys_3.4.3 data.table_1.17.8
#> [89] QFeatures_1.20.0 vsn_3.78.0
#> [91] mzR_2.44.0 buildtools_1.0.0
#> [93] fs_1.6.6 XML_3.99-0.20
#> [95] grid_4.5.2 impute_1.84.0
#> [97] tidyr_1.3.1 colorspace_2.1-2
#> [99] MsCoreUtils_1.21.0 PSMatch_1.14.0
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#> [103] cli_3.6.5 S4Arrays_1.10.0
#> [105] dplyr_1.1.4 AnnotationFilter_1.34.0
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#> [113] farver_2.1.2 htmltools_0.5.8.1
#> [115] lifecycle_1.0.4 statmod_1.5.1
#> [117] MASS_7.3-65