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gc_peak_df
from
align_peaks
choose_optimal_reference
that always selected
the first sample as a reference. Thanks to Heberto del Rio who pointed
this out on https://github.com/mottensmann/GCalignR/issues/27max_diff_peak2mean = 0
: In this special case there is no
need to use a time-consuming iterative approach but peaks can be sorted
simply based on absolute values. This is implemented in two steps. (1)
Across all samples, unique retention times are extracted, sorted in
increasing temporal order and written to a template data frame. (2) For
each sample, peaks are matched to the corresponding row of the template
data frame.gc_heatmap
.fill = TRUE
as a parameter in
utils::read.table
when reading data from text within
internal functions. Loading GC data with utils::read.table failed in
cases of missing values in a column (i.e. empty). This is the correct
behaviour as missing data should always be coded explicitly by
‘NA’remove_empty
for the main
function align_chromatograms
. If samples are empty (i.e..
no peak) this parameter allows to remove those cases from the dataset to
avoid problems in post-hoc analyses. By default FALSE
,
i.e.. all but the blank samples are kept.permute
for the functions
align_chromatograms
and align_peaks
. This
allows to change the default behaviour of random permutation of samples
during the alignment and might be useful if exact replication is
needed.read_empower2
allows to
import HPLC data that has been generated using the EMPOWER 2
softwareBugfixes
New functions implemented
choose_optimal_reference
offers an automatism to pick
suitable references.draw_chromatograms
allows to represent a peak list in
form of chromatogram.remove_blanks
allows to get rid of peaks that represent
contamination after aligning a datasetremove_singletons
allows to remove single peaks from
the dataset after aligningmerge_redundant_rows
allows to merge rows that were not
recognised as redundant during the alignment by increasing the threshold
value for the evaluation of similarityAlgorithm
pbapply
, we implemented progress bars to inform
the user about the progress and the estimated running time of
intermediate steps in the alignment of peak lists.warning messages
Plots
plot.GCalign
.gc_heatmap
.draw_chromatograms
was added as another
visualisation tool.Vignettes
Documentation
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.