Slicer3:Python:DemianExamples
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K-Medoids Fiber Clustering
XML = """<?xml version="1.0" encoding="utf-8"?> <executable> <category>Demo Scripted Modules</category> <title>K-Medoids fiber clustering</title> <description> Fiber Clustering simple K-Medoids </description> <version>1.0</version> <documentation-url></documentation-url> <license></license> <contributor>Demian Wassermann</contributor> <parameters> <label>IO</label> <description>Input/output parameters</description> <geometry type = "fiberbundle" > <name>inputFiberBundle</name> <longflag>inputFiberBundle</longflag> <label>Input Fiber Bundle</label> <channel>input</channel> <description>Input bundle</description> </geometry> <geometry > <name>outputFiberBundle</name> <longflag>outputFiberBundle</longflag> <label>Output Fiber Bundle</label> <channel>output</channel> <description>Clustered bundle</description> </geometry> <integer> <name>numberOfClusters</name> <longflag>numberOfClusters</longflag> <label>Number of clusters for K-Medoids</label> <default>5</default> <step>1</step> <channel>input</channel> <constraints> <minimum>2</minimum> <maximum>100</maximum> </constraints> </integer> </parameters> <parameters advanced="true"> <label>Advanced</label> <integer> <name>subsampling</name> <longflag>subsampling</longflag> <label>Number of fiber points to keep</label> <default>15</default> <step>1</step> <channel>input</channel> <constraints> <minimum>2</minimum> <maximum>1000</maximum> </constraints> </integer> <integer> <name>minimumFiberLength</name> <longflag>minimumFiberLength</longflag> <label>minimum fiber length to consider valid</label> <default>15</default> <step>1</step> <channel>input</channel> <constraints> <minimum>2</minimum> <maximum>1000</maximum> </constraints> </integer> </parameters> </executable> """ from Slicer import slicer import numpy # Warning, this example needs the package Pycluster # http://bonsai.ims.u-tokyo.ac.jp/~mdehoon/software/cluster/software.htm#pycluster import Pycluster def Execute (inputFiberBundle="", outputFiberBundle="", numberOfClusters=2, subsampling=15, minimumFiberLength=15 ): scene = slicer.MRMLScene inputFiberBundleNode = scene.GetNodeByID(inputFiberBundle) outputFiberBundleNode = scene.GetNodeByID(outputFiberBundle) #Prepare the output fiber bundle and the Arrays for the atlas labeling and clustering clusters = setupTheOutputNode( inputFiberBundleNode, outputFiberBundleNode ) clusters_array = clusters.ToArray().squeeze() #Get the fibers form the Polydata and susbsample them fibers, lines = fibers_from_vtkPolyData( inputFiberBundleNode.GetPolyData(), minimumFiberLength ) subsampledFibers = [] for fiber in fibers: subsampledFibers.append( fiber[::max( len(fiber)/subsampling, len(fiber) ) ] ) #Generate the distance matrix distanceMatrix = numpy.zeros( (len(fibers),len(fibers)), dtype=float ) for i in xrange( len(fibers) ): for j in xrange( 0, i): distanceMatrix[ i, j ] = dist_hausdorff_min( subsampledFibers[i], subsampledFibers[j] ) distanceMatrix[ j, i ] = distanceMatrix[ i, j ] #Perform the clustering fiberClusters = renumberLabels(Pycluster.kmedoids( distanceMatrix, numberOfClusters, npass=100 )[0]) print fiberClusters clusters_array[:]=0 for i in xrange(len(lines)): clusters_array[ lines[i] ] = fiberClusters[i] clusters.Modified() dist2 = lambda i,j : numpy.sqrt(((i-j)**2).sum(j.ndim-1)) dist_hausdorff_asym_mean = lambda i,j: numpy.apply_along_axis( lambda k: dist2(k,j).min(), 1,i).mean() dist_hausdorff_min = lambda i,j : numpy.min(dist_hausdorff_asym_mean(i,j),dist_hausdorff_asym_mean(j,i)) def fibers_from_vtkPolyData(vtkPolyData, minimumFiberLength): #Fibers and Lines are the same thing lines = vtkPolyData.GetLines().GetData().ToArray().squeeze() points = vtkPolyData.GetPoints().GetData().ToArray() fibersList = [] linesList = [] actualLineIndex = 0 numberOfFibers = vtkPolyData.GetLines().GetNumberOfCells() for l in xrange( numberOfFibers ): if lines[actualLineIndex]>minimumFiberLength: fibersList.append( points[ lines[actualLineIndex+1: actualLineIndex+lines[actualLineIndex]+1] ] ) linesList.append( lines[actualLineIndex+1: actualLineIndex+lines[actualLineIndex]+1] ) actualLineIndex += lines[actualLineIndex]+1 return fibersList, linesList def setupTheOutputNode( inputFiberBundleNode, outputFiberBundleNode ): if ( outputFiberBundleNode.GetPolyData()==[] ): outputFiberBundleNode.SetAndObservePolyData(slicer.vtkPolyData()) outputPolyData = outputFiberBundleNode.GetPolyData() outputPolyData.SetPoints( inputFiberBundleNode.GetPolyData().GetPoints() ) outputPolyData.SetLines( inputFiberBundleNode.GetPolyData().GetLines() ) outputPolyData.Update() clusters = outputFiberBundleNode.GetPolyData().GetPointData().GetScalars('Cluster') if (clusters==[] or clusters.GetNumberOfTuples()!=outputPolyData.GetPoints().GetNumberOfPoints() ): clusters = slicer.vtkUnsignedIntArray() clusters.SetNumberOfComponents(1) clusters.SetNumberOfTuples( outputPolyData.GetPoints().GetNumberOfPoints() ) clusters.SetName('Cluster') outputPolyData.GetPointData().AddArray( clusters ) return clusters def renumberLabels(labelArray): newLabeling=[] for a in labelArray: if not(a in newLabeling): newLabeling.append(a) newLabelArray=labelArray.copy() for i in range(len(labelArray)): newLabelArray[i]=newLabeling.index(labelArray[i])+1 return newLabelArray