Contents
- Networks
- Pre-loaded data sets
- Adding your own data sets
- Highlighting factors via ontology associations
- Legend colors and how to adjust them
- Extracting customized subnetworks
Networks
Two networks are available for exploration:
-
The Curated Map gives a comprehensive overview of important pathways in melanoma.
It was layouted and scientifically curated in a manual fashion and is well-suited for exploration.
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The Expanded map was built automatically
from the Curated map
by adding reactions that are described in databases.
The layout in this case follows a gradient of factor connectivity:
factors that participate in many different reactions are located
in the center of the network,
while factors with few reaction partners are situated towards the rim.
Some molecules might appear without connection to the main network,
which is a consequence of the algorithm we used
to create the Expanded map
.
The expanded version is appropriate for online and offline
(see the Downloads section) computer-aided analysis.
The controls for both networks are identical and elaborated below.
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Pre-loaded data sets
You can select from 88 pre-loaded data sets up to four for simultaneous visualization.
The pre-loaded data sets are based on publicly available data,
and the sources for each category are accessible via links behind the category names.
The factors in the network view will morph into pie charts while at least one data set is selected.
The change in epxression for each factor is shown by projecting a log2FC-based color into the pie slices.
Each slice corresponds to one of the selected data sets -
you can see which data set goes into which slice by checking the pie icons that appear to the left of the checkboxes.
With each selected data set, the pie charts will acquire a slice until you exhaust the number of possible slices at four.
For details about the expression change color scale, see the description below.
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Adding your own data sets
You can add your own data to the network for data mining purposes.
Due to the way this is implemented, no data upload to our server is necessary.
Your data is only ever stored in your own browser session.
To successfully add data, you must first prepare a CSV file.
This can be done in a spreadsheet application like LibreOffice or Microsoft Excel.
The spreadsheet should look similar to this one:
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The table must have a header in the first row, and the header of the first column must be "Symbol".
The headers of the remaining columns can be freely chosen,
with each one representing one condition or difference.
Column headers must be unique across all files you upload in one session.
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The first column lists the gene symbols for which you have data.
As the map was set up to permit the analysis of human data,
you need to employ the official HGNC symbols.
Gene symbols can be found in many other databases -
see the below NCBI Gene and UniProt screenshots for eotaxin (CCL11) for reference:
The page will automatically match up your symbols with all the corresponding factors (if there are any).
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All columns after the first list the values you want to project,
with one condition or difference per column.
There is no restriction on the kind of values you use,
apart from them having to be numbers.
The interpretation, of course, is yours to make.
Once you have the spreadsheet prepared, export a file in CSV fomat.
Then click on the very first list entry
Your data (click to add)
and select the exported file.
Your column names will be appended as data sets to the first list entry
and can be selected for visualization from there.
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Highlighting factors via ontology associations
We have associated each factor in the network with the
GO term and
Reactome ontologies.
Ontology terms that were related to at least three genes
in the current network can be selected from the drop-down menu,
and the associated factors will be highlighted with a golden halo.
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Legend colors and how to adjust them
While no data set is selected, the factors in the current map
are colored according to their molecular type.
Some will also have individual shapes.
In this state, the legend shows a color code for reaction and factor types.
On selecting a data set, the legend will adapt to represent
the spectrum of log2FC values that were observed in the selected categories.
Blue represents down-regulation and red up-regulation under the listed conditions.
The log2FC color legend comes with two sliders
that can be used to adjust the colors in the network.
The sliders initially occupy their respective maxima, i.e.,
lowest and highest observed log2FC.
Moving either slider closer to zero will increase the saturation
in all like-colored pie slices, while moving them towards the limits will decrease it.
Note that all factors with absolute log2FC higher than the adjusted slider position
will drop out of the linear color projection range and appear fully saturated.
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Extracting customized subnetworks
You can focus on your molecules of interest
by eliminating all other factors from view.
To do this, first mark all relevant factors via either of two methods:
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Click on a factor in the network view and press the
Mark this factor button.
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Select the factor from the second drop-down menu
below the one for regulatory subnetwork.
No matter which method you use, every marked factor will be added
to the above-mentioned drop-down and shown with a thick black rim
in the network view.
Factors can be unmarked by removing them in the drop-down or by clicking the
Unmark this factor button
after selecting the factor in the network view.
Once you are finished with your selection, click the
Extract button
at the bottom right side.
Its label will change to Restore
and all unmarked factors will be temporarily removed from the network view.
If the ☑ Include connected factors
option above the button is checked,
factors with direct connections to the marked ones will remain visible.
While a customized subnetwork is shown, you cannot mark or unmark factors.
To restore the original network and re-enable factor marking operations,
click the Restore button.
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