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13 changes: 13 additions & 0 deletions docs/prms/allpairs.rst
Original file line number Diff line number Diff line change
Expand Up @@ -8,3 +8,16 @@ with respect to a cartesian product.

All Pairs does not take any arguments. Its source code is at https://github.com/Reed-CompBio/all-pairs-shortest-paths
licensed under MIT.

Dataset Usage
-------------

All Pairs Shortest Paths uses ``sources``, ``targets``, and edge weights.
All Pairs Shortest Paths also considers graph directionality.

Implementation Details
----------------------

When All Pairs Shortest Paths gets passed a mixed graph, it considers the entire graph to be
directed, by converting all undirected edges to two directed edges pointing
opposite of one another.
14 changes: 14 additions & 0 deletions docs/prms/bowtiebuilder.rst
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Expand Up @@ -9,3 +9,17 @@ BowTieBuilder does not take in any arguments.

* Repository: https://github.com/Reed-CompBio/BowTieBuilder-Algorithm
* Paper: https://doi.org/10.1186/1752-0509-3-67

Dataset Usage
-------------

BowTieBuilder uses ``sources``, ``targets``, and edge weights. Input graph
directionality is considered

Implementation Details
----------------------

BowTieBuilder's internal algorithm only takes in directed graphs.
Any pathway inputted into BowTieBuilder gets converted into a directed graph,
where undirected edges get converted into two directed edges pointing opposite of one
another.
10 changes: 8 additions & 2 deletions docs/prms/domino.rst
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Expand Up @@ -9,8 +9,14 @@ DOMINO has two optional parameters:
* slice_threshold: the p-value threshold for considering a slice as relevant
* module_threshold: the p-value threshold for considering a putative module as final module

Wrapper Details
===============
Dataset Usage
-------------

DOMINO requires the `active` column to be set. DOMINO does not consider edge weights,
but DOMINO does consider graph directionality.

Implementation Details
----------------------

If the input dataframe is empty or too 'small' (where no modules are found),
SPRAS will instead emit an empty output file.
6 changes: 6 additions & 0 deletions docs/prms/meo.rst
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Expand Up @@ -12,3 +12,9 @@ MEO takes in three optional parameters:
* local_search: a "Yes"/"No" parameter that enables MEO's local search functionality. See "Improving approximations with local search" in
the associated paper for more information. This should almost always be yes.
* rand_restarts: the number (int) of random restarts to use.

Dataset Usage
-------------

MEO uses ``sources``, ``targets``, and edge weights. MEO also considers
input graph directionality.
13 changes: 13 additions & 0 deletions docs/prms/mincostflow.rst
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Expand Up @@ -11,6 +11,19 @@ MinCostFlow takes two optional parameters:
* flow: (int) the amount of flow going through the graph
* capacity: the (float) max capacity for edges

Dataset Usage
-------------

MinCostFlow uses the input's ``sources``, ``targets``, and edge weights. MinCostFlow also
considers directionality.

Implementation Details
----------------------

MinCostFlow converts all undirected edges into directed edges
where undirected edges get converted into two directed edges
pointing opposite of one another.

External links
++++++++++++++

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9 changes: 9 additions & 0 deletions docs/prms/oi1.rst
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Expand Up @@ -24,3 +24,12 @@ OI1 takes some optional arguments:
* ``all``: connect the dummy node to all nodes in the interactome (i.e. full set of nodes in graph)
* ``others``: connect the dummy node to all nodes that are not terminal nodes (i.e. nodes without prizes)
* ``file``: connect the dummy node to a specific list of nodes provided in a file

Dataset Usage
-------------

OmicsIntegrator1 prefers ``prize``s, but will take the union of ``sources`` and ``targets``
and set their 'prize' to 1 if ``prize`` is not specified. If any ``dummy_nodes`` are specified,
these are passed to OmicsIntegrator1 and can have their behavior configured with ``dummy_mode``.

OmicsIntegrator1 considers graph directionality.
9 changes: 9 additions & 0 deletions docs/prms/oi2.rst
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Expand Up @@ -18,3 +18,12 @@ OI2 takes a few optional arguments:
* "others" = connect to all nodes except for terminals
* "all" = connect to all nodes in the interactome.
* seed: The random seed to use for this run.


Dataset Usage
-------------

OmicsIntegrator2 prefers ``prize``s, but will take the union of ``sources`` and ``targets``
and set their 'prize' to 1 if ``prize`` is not specified.

OmicsIntegrator2 does not consider graph directionality.
15 changes: 15 additions & 0 deletions docs/prms/pathlinker.rst
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Expand Up @@ -10,6 +10,21 @@ PathLinker takes one optional argument:

* k: The number of paths to find (*k* shortest paths).

Dataset Usage
-------------

PathLinker uses ``sources``, ``targets``, and edge weights. PathLinker
considers graph directionality.

Implementation Details
----------------------

PathLinker's internal algorithm only takes in directed graphs.
Any pathway inputted into PathLinker gets converted into a directed graph,
where undirected edges get converted into two directed edges pointing opposite of one
another.


External links
++++++++++++++

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6 changes: 6 additions & 0 deletions docs/prms/prms.rst
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Expand Up @@ -6,6 +6,12 @@ Pathway Reconstruction Methods
there are other sub-types of algorithms that have more specialized capabilities than the rest.
Currently, SPRAS also supports edge orientation algorithms (e.g. MEO) and active module identifiers/disease module mining methods (e.g. DOMINO).

This is the list of SPRAS's supported pathway reconstruction methods. Each subpage comes with a description of the algorithm,
its source code and associated paper (if one exists), and its 'dataset usage,' or parts of a dataset that it will utilize when
running pathway reconstruction. Implementation details are also provided, for users wondering about any
important decisions that differentiate the SPRAS-wrapped version from the original
algorithm.

.. toctree::
:maxdepth: 1
:caption: All Pairs
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14 changes: 14 additions & 0 deletions docs/prms/responsenet.rst
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Expand Up @@ -9,3 +9,17 @@ https://github.com/Reed-CompBio/ResponseNet.
ResponseNet takes one optional parameter:

* gamma: (int) controls the size of the output graph: more gamma means more 'flow' gets passed along starting from the sources.

Dataset Usage
-------------

ResponseNet uses ``sources``, ``targets``, and edge weights. ResponseNet
considers graph directionality.

Implementation Details
----------------------

ResponseNet's internal algorithm only takes in directed graphs.
Any pathway inputted into ResponseNet gets converted into a directed graph,
where undirected edges get converted into two directed edges pointing opposite of one
another.
15 changes: 14 additions & 1 deletion docs/prms/rwr.rst
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@@ -1,5 +1,5 @@
RWR
==========
===

RWR, or random walk with restarts, is a source and target independent pathway reconstruction algorithm
that performs PathRank on the input interactome, using the provided prizes.
Expand All @@ -11,3 +11,16 @@ RWR takes in two parameters:
* alpha: The damping factor of the internal PathRank algorithm. This is the probability that RWR randomly chooses a neighbor instead of restarting.

RWR is implemented at https://github.com/reed-compbio/rwr.

Dataset Usage
-------------

RWR considers the union of ``sources`` and ``targets`` as the
input active nodes.


Implementation Details
----------------------

RWR returns a ranked list of nodes: SPRAS returns the induced subgraph
from the number of nodes corresponding to the user-specified ``threshold``.
15 changes: 13 additions & 2 deletions docs/prms/strwr.rst
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@@ -1,7 +1,7 @@
ST_RWR
==========
======

ST_RWR, or random walk with restarts, is a source and target dependent pathway reconstruction algorithm
ST_RWR, or source-target random walk with restarts, is a source and target dependent pathway reconstruction algorithm
that performs PathRank on the input interactome, using its edge weights, prizes, sources, and targets.

For a random walk with restarts implementation that does not use sources and targets, see RWR.
Expand All @@ -10,3 +10,14 @@ For a random walk with restarts implementation that does not use sources and ta
* alpha: The damping factor of the internal PathRank algorithm. This is the probability that RWR randomly chooses a neighbor instead of restarting.

ST_RWR is implemented at https://github.com/reed-compbio/rwr.

Dataset Usage
-------------

ST_RWR considers ``sources`` and ``targets``.

Implementation Details
----------------------

ST_RWR returns a ranked list of nodes: SPRAS returns the induced subgraph
from the number of nodes corresponding to the user-specified ``threshold``.
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