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Phenome-Networks system
screenshots
Germplasm lists
Germplasm items
Germplasm details
Generative
Derivative
Pedigree figure
Experiments
Observations
Breeding management
Select lines for
a trial
View
phenotypes,
sort and filter
List of plots
PhenomApp
A methodology for collecting plant phenotypes in
the field using tablets and smart phones
Data
synchronized
from
PhenomApp
Females Males
Filter parental lines; automatic alert if a cross already exist;
Present parent observations (& markers) for each planned
cross for final decision
Crosses field: plan crosses
Crossing field
Parents
candidate
for a cross
Manage planned
crosses.
Manage planned
crosses.
Genetic markers are
automatically calculated for
hybrid
Data analysis
Perform analyses in 3 simple steps
1) Select studies to analyze
2) Select analysis type
3) Put traits in the fields form,
and click OK
Heritability
Combining ability
Parents are displayed according to
their hybrids’ mean phenotypic data
Correlations - multiple
environments and
conditions
Boxplot – multiple
environments and conditions
Analysis of
variance
Genotypes x environment
Correlation across
experiments
Heatmap

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