示例#1
0
def _node_centrality_by_synapse(tree, nodes: Dict, totalOutputs: int,
                                totalInputs: int) -> None:
    """ tree: a DiGraph
        nodes: a dictionary of treenode ID vs Counts instance
        totalOutputs: the total number of output synapses of the tree
        totalInputs: the total number of input synapses of the tree
        Returns nothing, the results are an update to the Counts instance of each treenode entry in nodes, namely the nPossibleIOPaths. """
    # 1. Ensure the root is an end by checking that it has only one child; otherwise reroot at the first end node found

    if 0 == totalOutputs:
        # Not computable
        for counts in nodes.values():
            counts.synapse_centrality = -1
        return

    if len(list(tree.successors(find_root(tree)))) > 1:
        # Reroot at the first end node found
        tree = tree.copy()
        endNode = next(nodeID for nodeID in nodes.keys()
                       if not list(tree.successors(nodeID)))
        reroot(tree, endNode)

    # 2. Partition into sequences, sorted from small to large
    sequences = sorted(partition(tree), key=len)

    # 3. Traverse all partitions counting synapses seen
    for seq in sequences:
        # Each seq runs from an end node towards the root or a branch node
        seenI = 0
        seenO = 0
        for nodeID in seq:
            counts = nodes[nodeID]
            seenI += counts.inputs + counts.seenInputs
            seenO += counts.outputs + counts.seenOutputs
            counts.seenInputs = seenI
            counts.seenOutputs = seenO
            counts.nPossibleIOPaths = counts.seenInputs * (
                totalOutputs - counts.seenOutputs) + counts.seenOutputs * (
                    totalInputs - counts.seenInputs)
            counts.synapse_centrality = counts.nPossibleIOPaths / float(
                totalOutputs)
示例#2
0
文件: graph.py 项目: catmaid/CATMAID
def _node_centrality_by_synapse(tree, nodes, totalOutputs, totalInputs):
    """ tree: a DiGraph
        nodes: a dictionary of treenode ID vs Counts instance
        totalOutputs: the total number of output synapses of the tree
        totalInputs: the total number of input synapses of the tree
        Returns nothing, the results are an update to the Counts instance of each treenode entry in nodes, namely the nPossibleIOPaths. """
    # 1. Ensure the root is an end by checking that it has only one child; otherwise reroot at the first end node found

    if 0 == totalOutputs:
        # Not computable
        for counts in nodes.values():
            counts.synapse_centrality = -1
        return

    if len(tree.successors(find_root(tree))) > 1:
        # Reroot at the first end node found
        tree = tree.copy()
        endNode = next(nodeID for nodeID in nodes.keys() if not tree.successors(nodeID))
        reroot(tree, endNode)

    # 2. Partition into sequences, sorted from small to large
    sequences = sorted(partition(tree), key=len)

    # 3. Traverse all partitions counting synapses seen
    for seq in sequences:
        # Each seq runs from an end node towards the root or a branch node
        seenI = 0
        seenO = 0
        for nodeID in seq:
            counts = nodes[nodeID]
            seenI += counts.inputs + counts.seenInputs
            seenO += counts.outputs + counts.seenOutputs
            counts.seenInputs = seenI
            counts.seenOutputs = seenO
            counts.nPossibleIOPaths = counts.seenInputs * (totalOutputs - counts.seenOutputs) + counts.seenOutputs * (totalInputs - counts.seenInputs)
            counts.synapse_centrality = counts.nPossibleIOPaths / float(totalOutputs)