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input_type
is
"ave_cM"
or "male_cM"
(Issue #9)Added dataset grcm39_chrlen
with lengths of GRCm39
chromosomes in basepairs.
Revised mmconvert to give warnings if inferred positions are outside of the range of chromosomes in GRCm39. (Issue #7)
In cross2_to_grcm39()
when using “guess”, only pick
the GM/MM combination if it gives >20 additional markers than either
GM or MM on their own.
Replaced the coxmap
object with a smoothed version
(using the R/qtl2 function smooth_gmap()
with
alpha=0.02
), with intervals with 0 recombination smoothed
out to allow some recombination. The mmconvert()
function
uses this version of the Cox maps, and so gives interpolated positions
that are similarly smoothed. Included a script
smooth_coxmaps.R
that does the work.
Revised the MUGA array datasets to use this “smoothed” version of the Cox maps.
Revised Cox genetic maps, estimated using the original crimap software.
Revised MUGAmaps, using the corrected Cox genetic maps.
Revised cross2_to_grcm39()
so that it will also
consider that markers are from the combination of GigaMUGA and MegaMUGA
arrays (Issue #6).
Added a dataset with the MUGA array annotations for markers on the autosomes or X chromosome, with mouse build GRCm39 positions and the revised Cox Map genetic map locations.
Add function cross2_to_grcm39()
for converting an
R/qtl2 cross2 object to use the new GRCm39 mouse build and the revised
Cox genetic map.
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.
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