diff --git a/Modules/DiffusionImaging/FiberTracking/Algorithms/itkStreamlineTrackingFilter.cpp b/Modules/DiffusionImaging/FiberTracking/Algorithms/itkStreamlineTrackingFilter.cpp index 6510d699ef..608ae7be28 100644 --- a/Modules/DiffusionImaging/FiberTracking/Algorithms/itkStreamlineTrackingFilter.cpp +++ b/Modules/DiffusionImaging/FiberTracking/Algorithms/itkStreamlineTrackingFilter.cpp @@ -1,890 +1,888 @@ /*=================================================================== The Medical Imaging Interaction Toolkit (MITK) Copyright (c) German Cancer Research Center, Division of Medical and Biological Informatics. All rights reserved. This software is distributed WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See LICENSE.txt or http://www.mitk.org for details. ===================================================================*/ #include #include #include #include #include "itkStreamlineTrackingFilter.h" #include #include #include #include #include "itkPointShell.h" #include #include #include #include #include #include #include #include #define _USE_MATH_DEFINES #include namespace itk { StreamlineTrackingFilter ::StreamlineTrackingFilter() : m_PauseTracking(false) , m_AbortTracking(false) , m_BuildFibersFinished(false) , m_BuildFibersReady(0) , m_FiberPolyData(nullptr) , m_Points(nullptr) , m_Cells(nullptr) , m_StoppingRegions(nullptr) , m_TargetRegions(nullptr) , m_SeedImage(nullptr) , m_MaskImage(nullptr) , m_OutputProbabilityMap(nullptr) , m_MinVoxelSize(-1) , m_AngularThresholdDeg(-1) , m_StepSizeVox(-1) , m_SamplingDistanceVox(-1) , m_AngularThreshold(-1) , m_StepSize(0) , m_MaxLength(10000) , m_MinTractLength(20.0) , m_MaxTractLength(400.0) , m_SeedsPerVoxel(1) , m_AvoidStop(true) , m_RandomSampling(false) , m_SamplingDistance(-1) , m_DeflectionMod(1.0) , m_OnlyForwardSamples(true) , m_UseStopVotes(true) , m_NumberOfSamples(30) , m_NumPreviousDirections(1) , m_MaxNumTracts(-1) , m_Verbose(true) , m_LoopCheck(-1) , m_DemoMode(false) , m_Random(true) , m_UseOutputProbabilityMap(false) , m_CurrentTracts(0) , m_Progress(0) , m_StopTracking(false) , m_InterpolateMask(true) , m_TrialsPerSeed(10) { this->SetNumberOfRequiredInputs(0); } std::string StreamlineTrackingFilter::GetStatusText() { std::string status = "Seedpoints processed: " + boost::lexical_cast(m_Progress) + "/" + boost::lexical_cast(m_SeedPoints.size()); if (m_SeedPoints.size()>0) status += " (" + boost::lexical_cast(100*m_Progress/m_SeedPoints.size()) + "%)"; if (m_MaxNumTracts>0) status += "\nFibers accepted: " + boost::lexical_cast(m_CurrentTracts) + "/" + boost::lexical_cast(m_MaxNumTracts); else status += "\nFibers accepted: " + boost::lexical_cast(m_CurrentTracts); return status; } void StreamlineTrackingFilter::BeforeTracking() { m_StopTracking = false; m_TrackingHandler->SetRandom(m_Random); m_TrackingHandler->InitForTracking(); m_FiberPolyData = PolyDataType::New(); m_Points = vtkSmartPointer< vtkPoints >::New(); m_Cells = vtkSmartPointer< vtkCellArray >::New(); itk::Vector< double, 3 > imageSpacing = m_TrackingHandler->GetSpacing(); if(imageSpacing[0]SetAngularThreshold(m_AngularThreshold); if (m_SamplingDistanceVoxGetNumberOfThreads(); i++) { PolyDataType poly = PolyDataType::New(); m_PolyDataContainer.push_back(poly); } if (m_UseOutputProbabilityMap) { m_OutputProbabilityMap = ItkDoubleImgType::New(); m_OutputProbabilityMap->SetSpacing(imageSpacing); m_OutputProbabilityMap->SetOrigin(m_TrackingHandler->GetOrigin()); m_OutputProbabilityMap->SetDirection(m_TrackingHandler->GetDirection()); m_OutputProbabilityMap->SetRegions(m_TrackingHandler->GetLargestPossibleRegion()); m_OutputProbabilityMap->Allocate(); m_OutputProbabilityMap->FillBuffer(0); } m_MaskInterpolator = itk::LinearInterpolateImageFunction< ItkFloatImgType, float >::New(); m_StopInterpolator = itk::LinearInterpolateImageFunction< ItkFloatImgType, float >::New(); m_SeedInterpolator = itk::LinearInterpolateImageFunction< ItkFloatImgType, float >::New(); m_TargetInterpolator = itk::LinearInterpolateImageFunction< ItkFloatImgType, float >::New(); if (m_StoppingRegions.IsNull()) { m_StoppingRegions = ItkFloatImgType::New(); m_StoppingRegions->SetSpacing( imageSpacing ); m_StoppingRegions->SetOrigin( m_TrackingHandler->GetOrigin() ); m_StoppingRegions->SetDirection( m_TrackingHandler->GetDirection() ); m_StoppingRegions->SetRegions( m_TrackingHandler->GetLargestPossibleRegion() ); m_StoppingRegions->Allocate(); m_StoppingRegions->FillBuffer(0); } else std::cout << "StreamlineTracking - Using stopping region image" << std::endl; m_StopInterpolator->SetInputImage(m_StoppingRegions); if (m_TargetRegions.IsNull()) { m_TargetImageSet = false; m_TargetRegions = ItkFloatImgType::New(); m_TargetRegions->SetSpacing( imageSpacing ); m_TargetRegions->SetOrigin( m_TrackingHandler->GetOrigin() ); m_TargetRegions->SetDirection( m_TrackingHandler->GetDirection() ); m_TargetRegions->SetRegions( m_TrackingHandler->GetLargestPossibleRegion() ); m_TargetRegions->Allocate(); m_TargetRegions->FillBuffer(1); } else { m_TargetImageSet = true; m_TargetInterpolator->SetInputImage(m_TargetRegions); std::cout << "StreamlineTracking - Using target region image" << std::endl; } if (m_SeedImage.IsNull()) { m_SeedImageSet = false; m_SeedImage = ItkFloatImgType::New(); m_SeedImage->SetSpacing( imageSpacing ); m_SeedImage->SetOrigin( m_TrackingHandler->GetOrigin() ); m_SeedImage->SetDirection( m_TrackingHandler->GetDirection() ); m_SeedImage->SetRegions( m_TrackingHandler->GetLargestPossibleRegion() ); m_SeedImage->Allocate(); m_SeedImage->FillBuffer(1); } else { m_SeedImageSet = true; std::cout << "StreamlineTracking - Using seed image" << std::endl; } m_SeedInterpolator->SetInputImage(m_SeedImage); if (m_MaskImage.IsNull()) { // initialize mask image m_MaskImage = ItkFloatImgType::New(); m_MaskImage->SetSpacing( imageSpacing ); m_MaskImage->SetOrigin( m_TrackingHandler->GetOrigin() ); m_MaskImage->SetDirection( m_TrackingHandler->GetDirection() ); m_MaskImage->SetRegions( m_TrackingHandler->GetLargestPossibleRegion() ); m_MaskImage->Allocate(); m_MaskImage->FillBuffer(1); } else std::cout << "StreamlineTracking - Using mask image" << std::endl; m_MaskInterpolator->SetInputImage(m_MaskImage); if (m_SeedPoints.empty()) GetSeedPointsFromSeedImage(); m_BuildFibersReady = 0; m_BuildFibersFinished = false; m_Tractogram.clear(); m_SamplingPointset = mitk::PointSet::New(); m_AlternativePointset = mitk::PointSet::New(); m_StopVotePointset = mitk::PointSet::New(); m_StartTime = std::chrono::system_clock::now(); if (m_DemoMode) omp_set_num_threads(1); if (m_TrackingHandler->GetMode()==mitk::TrackingDataHandler::MODE::DETERMINISTIC) std::cout << "StreamlineTracking - Mode: deterministic" << std::endl; else if(m_TrackingHandler->GetMode()==mitk::TrackingDataHandler::MODE::PROBABILISTIC) { std::cout << "StreamlineTracking - Mode: probabilistic" << std::endl; std::cout << "StreamlineTracking - Trials per seed: " << m_TrialsPerSeed << std::endl; } else std::cout << "StreamlineTracking - Mode: ???" << std::endl; std::cout << "StreamlineTracking - Angular threshold: " << m_AngularThreshold << " (" << 180*std::acos( m_AngularThreshold )/M_PI << "°)" << std::endl; std::cout << "StreamlineTracking - Stepsize: " << m_StepSize << "mm (" << m_StepSize/m_MinVoxelSize << "*vox)" << std::endl; std::cout << "StreamlineTracking - Seeds per voxel: " << m_SeedsPerVoxel << std::endl; std::cout << "StreamlineTracking - Max. tract length: " << m_MaxTractLength << "mm" << std::endl; std::cout << "StreamlineTracking - Min. tract length: " << m_MinTractLength << "mm" << std::endl; std::cout << "StreamlineTracking - Max. num. tracts: " << m_MaxNumTracts << std::endl; std::cout << "StreamlineTracking - Loop check: " << m_LoopCheck << "°" << std::endl; std::cout << "StreamlineTracking - Num. neighborhood samples: " << m_NumberOfSamples << std::endl; std::cout << "StreamlineTracking - Max. sampling distance: " << m_SamplingDistance << "mm (" << m_SamplingDistance/m_MinVoxelSize << "*vox)" << std::endl; std::cout << "StreamlineTracking - Deflection modifier: " << m_DeflectionMod << std::endl; std::cout << "StreamlineTracking - Use stop votes: " << m_UseStopVotes << std::endl; std::cout << "StreamlineTracking - Only frontal samples: " << m_OnlyForwardSamples << std::endl; if (m_DemoMode) { std::cout << "StreamlineTracking - Running in demo mode"; std::cout << "StreamlineTracking - Starting streamline tracking using 1 thread" << std::endl; } else std::cout << "StreamlineTracking - Starting streamline tracking using " << omp_get_max_threads() << " threads" << std::endl; } void StreamlineTrackingFilter::CalculateNewPosition(itk::Point& pos, vnl_vector_fixed& dir) { pos[0] += dir[0]*m_StepSize; pos[1] += dir[1]*m_StepSize; pos[2] += dir[2]*m_StepSize; } std::vector< vnl_vector_fixed > StreamlineTrackingFilter::CreateDirections(int NPoints) { std::vector< vnl_vector_fixed > pointshell; if (NPoints<2) return pointshell; std::vector< float > theta; theta.resize(NPoints); std::vector< float > phi; phi.resize(NPoints); float C = sqrt(4*M_PI); phi[0] = 0.0; phi[NPoints-1] = 0.0; for(int i=0; i0 && i d; d[0] = cos(theta[i]) * cos(phi[i]); d[1] = cos(theta[i]) * sin(phi[i]); d[2] = sin(theta[i]); pointshell.push_back(d); } return pointshell; } vnl_vector_fixed StreamlineTrackingFilter::GetNewDirection(itk::Point &pos, std::deque >& olddirs, itk::Index<3> &oldIndex) { if (m_DemoMode) { m_SamplingPointset->Clear(); m_AlternativePointset->Clear(); m_StopVotePointset->Clear(); } vnl_vector_fixed direction; direction.fill(0); if (mitk::imv::IsInsideMask(pos, m_InterpolateMask, m_MaskInterpolator) && !mitk::imv::IsInsideMask(pos, m_InterpolateMask, m_StopInterpolator)) direction = m_TrackingHandler->ProposeDirection(pos, olddirs, oldIndex); // get direction proposal at current streamline position else return direction; vnl_vector_fixed olddir = olddirs.back(); std::vector< vnl_vector_fixed > probeVecs = CreateDirections(m_NumberOfSamples); itk::Point sample_pos; int alternatives = 1; int stop_votes = 0; int possible_stop_votes = 0; for (unsigned int i=0; i d; bool is_stop_voter = false; if (m_Random && m_RandomSampling) { d[0] = m_TrackingHandler->GetRandDouble(-0.5, 0.5); d[1] = m_TrackingHandler->GetRandDouble(-0.5, 0.5); d[2] = m_TrackingHandler->GetRandDouble(-0.5, 0.5); d.normalize(); d *= m_TrackingHandler->GetRandDouble(0,m_SamplingDistance); } else { d = probeVecs.at(i); float dot = dot_product(d, olddir); if (m_UseStopVotes && dot>0.7) { is_stop_voter = true; possible_stop_votes++; } else if (m_OnlyForwardSamples && dot<0) continue; d *= m_SamplingDistance; } sample_pos[0] = pos[0] + d[0]; sample_pos[1] = pos[1] + d[1]; sample_pos[2] = pos[2] + d[2]; vnl_vector_fixed tempDir; tempDir.fill(0.0); if (mitk::imv::IsInsideMask(sample_pos, m_InterpolateMask, m_MaskInterpolator)) tempDir = m_TrackingHandler->ProposeDirection(sample_pos, olddirs, oldIndex); // sample neighborhood if (tempDir.magnitude()>mitk::eps) { direction += tempDir; if(m_DemoMode) m_SamplingPointset->InsertPoint(i, sample_pos); } else if (m_AvoidStop && olddir.magnitude()>0.5) // out of white matter { if (is_stop_voter) stop_votes++; if (m_DemoMode) m_StopVotePointset->InsertPoint(i, sample_pos); float dot = dot_product(d, olddir); if (dot >= 0.0) // in front of plane defined by pos and olddir d = -d + 2*dot*olddir; // reflect else d = -d; // invert // look a bit further into the other direction sample_pos[0] = pos[0] + d[0]; sample_pos[1] = pos[1] + d[1]; sample_pos[2] = pos[2] + d[2]; alternatives++; vnl_vector_fixed tempDir; tempDir.fill(0.0); if (mitk::imv::IsInsideMask(sample_pos, m_InterpolateMask, m_MaskInterpolator)) tempDir = m_TrackingHandler->ProposeDirection(sample_pos, olddirs, oldIndex); // sample neighborhood if (tempDir.magnitude()>mitk::eps) // are we back in the white matter? { direction += d * m_DeflectionMod; // go into the direction of the white matter direction += tempDir; // go into the direction of the white matter direction at this location if(m_DemoMode) m_AlternativePointset->InsertPoint(alternatives, sample_pos); } else { if (m_DemoMode) m_StopVotePointset->InsertPoint(i, sample_pos); } } else { if (m_DemoMode) m_StopVotePointset->InsertPoint(i, sample_pos); if (is_stop_voter) stop_votes++; } } if (direction.magnitude()>0.001 && (possible_stop_votes==0 || (float)stop_votes/possible_stop_votes<0.5) ) direction.normalize(); else direction.fill(0); return direction; } float StreamlineTrackingFilter::FollowStreamline(itk::Point pos, vnl_vector_fixed dir, FiberType* fib, DirectionContainer* container, float tractLength, bool front) { vnl_vector_fixed zero_dir; zero_dir.fill(0.0); std::deque< vnl_vector_fixed > last_dirs; for (unsigned int i=0; i oldIndex; m_TrackingHandler->WorldToIndex(pos, oldIndex); // get new position CalculateNewPosition(pos, dir); // is new position inside of image and mask if (m_AbortTracking) // if not end streamline return tractLength; // if yes, add new point to streamline dir.normalize(); if (front) { fib->push_front(pos); container->push_front(dir); } else { fib->push_back(pos); container->push_back(dir); } tractLength += m_StepSize; if (m_LoopCheck>=0 && CheckCurvature(container, front)>m_LoopCheck) return tractLength; if (tractLength>m_MaxTractLength) return tractLength; if (m_DemoMode && !m_UseOutputProbabilityMap) // CHECK: warum sind die samplingpunkte der streamline in der visualisierung immer einen schritt voras? { #pragma omp critical { m_BuildFibersReady++; m_Tractogram.push_back(*fib); BuildFibers(true); m_Stop = true; while (m_Stop){ } } } last_dirs.push_back(dir); if (last_dirs.size()>m_NumPreviousDirections) last_dirs.pop_front(); dir = GetNewDirection(pos, last_dirs, oldIndex); while (m_PauseTracking){} if (dir.magnitude()<0.0001) return tractLength; } return tractLength; } float StreamlineTrackingFilter::CheckCurvature(DirectionContainer* fib, bool front) { - if (fib->size()<3) + if (fib->size()<8) return 0; - float m_Distance = m_MinVoxelSize*4; + float m_Distance = std::max(m_MinVoxelSize*4, m_StepSize*8); float dist = 0; std::vector< vnl_vector_fixed< float, 3 > > vectors; vnl_vector_fixed< float, 3 > meanV; meanV.fill(0); float dev = 0; if (front) { int c = 0; while(distsize()-1) { dist += m_StepSize; vnl_vector_fixed< float, 3 > v = fib->at(c); vectors.push_back(v); meanV += v; c++; } } else { int c = fib->size()-1; while(dist=0) { dist += m_StepSize; vnl_vector_fixed< float, 3 > v = fib->at(c); vectors.push_back(v); meanV += v; c--; } } meanV.normalize(); for (unsigned int c=0; c1.0) angle = 1.0; - if (angle<-1.0) - angle = -1.0; dev += acos(angle)*180/M_PI; } if (vectors.size()>0) dev /= vectors.size(); return dev; } void StreamlineTrackingFilter::GetSeedPointsFromSeedImage() { MITK_INFO << "StreamlineTracking - Calculating seed points."; m_SeedPoints.clear(); typedef ImageRegionConstIterator< ItkFloatImgType > MaskIteratorType; MaskIteratorType sit(m_SeedImage, m_SeedImage->GetLargestPossibleRegion()); sit.GoToBegin(); while (!sit.IsAtEnd()) { if (sit.Value()>0) { ItkFloatImgType::IndexType index = sit.GetIndex(); itk::ContinuousIndex start; start[0] = index[0]; start[1] = index[1]; start[2] = index[2]; itk::Point worldPos; m_SeedImage->TransformContinuousIndexToPhysicalPoint(start, worldPos); if ( mitk::imv::IsInsideMask(worldPos, m_InterpolateMask, m_MaskInterpolator) ) { m_SeedPoints.push_back(worldPos); for (int s = 1; s < m_SeedsPerVoxel; s++) { start[0] = index[0] + m_TrackingHandler->GetRandDouble(-0.5, 0.5); start[1] = index[1] + m_TrackingHandler->GetRandDouble(-0.5, 0.5); start[2] = index[2] + m_TrackingHandler->GetRandDouble(-0.5, 0.5); itk::Point worldPos; m_SeedImage->TransformContinuousIndexToPhysicalPoint(start, worldPos); m_SeedPoints.push_back(worldPos); } } } ++sit; } } void StreamlineTrackingFilter::GenerateData() { this->BeforeTracking(); if (m_Random) std::random_shuffle(m_SeedPoints.begin(), m_SeedPoints.end()); m_CurrentTracts = 0; int num_seeds = m_SeedPoints.size(); itk::Index<3> zeroIndex; zeroIndex.Fill(0); m_Progress = 0; int i = 0; int print_interval = num_seeds/100; if (print_interval<100) m_Verbose=false; #pragma omp parallel while (i=num_seeds || m_StopTracking) continue; else if (m_Verbose && i%print_interval==0) #pragma omp critical { m_Progress += print_interval; std::cout << " \r"; if (m_MaxNumTracts>0) std::cout << "Tried: " << m_Progress << "/" << num_seeds << " | Accepted: " << m_CurrentTracts << "/" << m_MaxNumTracts << '\r'; else std::cout << "Tried: " << m_Progress << "/" << num_seeds << " | Accepted: " << m_CurrentTracts << '\r'; cout.flush(); } const itk::Point worldPos = m_SeedPoints.at(temp_i); for (unsigned int trials=0; trials dir; dir.fill(0.0); std::deque< vnl_vector_fixed > olddirs; while (olddirs.size() gm_start_dir; // if (m_ControlGmEndings) // { // gm_start_dir[0] = m_GmStubs[temp_i][1][0] - m_GmStubs[temp_i][0][0]; // gm_start_dir[1] = m_GmStubs[temp_i][1][1] - m_GmStubs[temp_i][0][1]; // gm_start_dir[2] = m_GmStubs[temp_i][1][2] - m_GmStubs[temp_i][0][2]; // gm_start_dir.normalize(); // olddirs.pop_back(); // olddirs.push_back(gm_start_dir); // } if (mitk::imv::IsInsideMask(worldPos, m_InterpolateMask, m_MaskInterpolator)) dir = m_TrackingHandler->ProposeDirection(worldPos, olddirs, zeroIndex); bool success = false; if (dir.magnitude()>0.0001) { /// START DIR // if (m_ControlGmEndings) // { // float a = dot_product(gm_start_dir, dir); // if (a<0) // dir = -dir; // } // forward tracking tractLength = FollowStreamline(worldPos, dir, &fib, &direction_container, 0, false); fib.push_front(worldPos); // backward tracking (only if we don't explicitely start in the GM) tractLength = FollowStreamline(worldPos, -dir, &fib, &direction_container, tractLength, true); counter = fib.size(); if (tractLength>=m_MinTractLength && counter>=2) { #pragma omp critical if ( IsValidFiber(&fib) ) { if (!m_StopTracking) { if (!m_UseOutputProbabilityMap) m_Tractogram.push_back(fib); else FiberToProbmap(&fib); m_CurrentTracts++; success = true; } if (m_MaxNumTracts > 0 && m_CurrentTracts>=static_cast(m_MaxNumTracts)) { if (!m_StopTracking) { std::cout << " \r"; MITK_INFO << "Reconstructed maximum number of tracts (" << m_CurrentTracts << "). Stopping tractography."; } m_StopTracking = true; } } } } if (success || m_TrackingHandler->GetMode()!=mitk::TrackingDataHandler::PROBABILISTIC) break; // we only try one seed point multiple times if we use a probabilistic tracker and have not found a valid streamline yet }// trials per seed }// seed points this->AfterTracking(); } bool StreamlineTrackingFilter::IsValidFiber(FiberType* fib) { if (m_TargetImageSet && m_SeedImageSet) { if ( mitk::imv::IsInsideMask(fib->front(), m_InterpolateMask, m_SeedInterpolator) && mitk::imv::IsInsideMask(fib->back(), m_InterpolateMask, m_TargetInterpolator) ) return true; if ( mitk::imv::IsInsideMask(fib->back(), m_InterpolateMask, m_SeedInterpolator) && mitk::imv::IsInsideMask(fib->front(), m_InterpolateMask, m_TargetInterpolator) ) return true; return false; } else if (m_TargetImageSet) { if ( mitk::imv::IsInsideMask(fib->front(), m_InterpolateMask, m_TargetInterpolator) && mitk::imv::IsInsideMask(fib->back(), m_InterpolateMask, m_TargetInterpolator) ) return true; return false; } return true; } void StreamlineTrackingFilter::FiberToProbmap(FiberType* fib) { ItkDoubleImgType::IndexType last_idx; last_idx.Fill(0); for (auto p : *fib) { ItkDoubleImgType::IndexType idx; m_OutputProbabilityMap->TransformPhysicalPointToIndex(p, idx); if (idx != last_idx) { if (m_OutputProbabilityMap->GetLargestPossibleRegion().IsInside(idx)) m_OutputProbabilityMap->SetPixel(idx, m_OutputProbabilityMap->GetPixel(idx)+1); last_idx = idx; } } } void StreamlineTrackingFilter::BuildFibers(bool check) { if (m_BuildFibersReady::New(); vtkSmartPointer vNewLines = vtkSmartPointer::New(); vtkSmartPointer vNewPoints = vtkSmartPointer::New(); for (unsigned int i=0; i container = vtkSmartPointer::New(); FiberType fib = m_Tractogram.at(i); for (FiberType::iterator it = fib.begin(); it!=fib.end(); ++it) { vtkIdType id = vNewPoints->InsertNextPoint((*it).GetDataPointer()); container->GetPointIds()->InsertNextId(id); } vNewLines->InsertNextCell(container); } if (check) for (int i=0; iSetPoints(vNewPoints); m_FiberPolyData->SetLines(vNewLines); m_BuildFibersFinished = true; } void StreamlineTrackingFilter::AfterTracking() { if (m_Verbose) std::cout << " \r"; if (!m_UseOutputProbabilityMap) { MITK_INFO << "Reconstructed " << m_Tractogram.size() << " fibers."; MITK_INFO << "Generating polydata "; BuildFibers(false); } else { itk::RescaleIntensityImageFilter< ItkDoubleImgType, ItkDoubleImgType >::Pointer filter = itk::RescaleIntensityImageFilter< ItkDoubleImgType, ItkDoubleImgType >::New(); filter->SetInput(m_OutputProbabilityMap); filter->SetOutputMaximum(1.0); filter->SetOutputMinimum(0.0); filter->Update(); m_OutputProbabilityMap = filter->GetOutput(); } MITK_INFO << "done"; m_EndTime = std::chrono::system_clock::now(); std::chrono::hours hh = std::chrono::duration_cast(m_EndTime - m_StartTime); std::chrono::minutes mm = std::chrono::duration_cast(m_EndTime - m_StartTime); std::chrono::seconds ss = std::chrono::duration_cast(m_EndTime - m_StartTime); mm %= 60; ss %= 60; MITK_INFO << "Tracking took " << hh.count() << "h, " << mm.count() << "m and " << ss.count() << "s"; m_SeedPoints.clear(); } void StreamlineTrackingFilter::SetDicomProperties(mitk::FiberBundle::Pointer fib) { std::string model_code_value = "-"; std::string model_code_meaning = "-"; std::string algo_code_value = "-"; std::string algo_code_meaning = "-"; if (m_TrackingHandler->GetMode()==mitk::TrackingDataHandler::DETERMINISTIC && dynamic_cast(m_TrackingHandler) && !m_TrackingHandler->GetInterpolate()) { algo_code_value = "sup181_ee04"; algo_code_meaning = "FACT"; } else if (m_TrackingHandler->GetMode()==mitk::TrackingDataHandler::DETERMINISTIC) { algo_code_value = "sup181_ee01"; algo_code_meaning = "Deterministic"; } else if (m_TrackingHandler->GetMode()==mitk::TrackingDataHandler::PROBABILISTIC) { algo_code_value = "sup181_ee02"; algo_code_meaning = "Probabilistic"; } if (dynamic_cast(m_TrackingHandler) || (dynamic_cast(m_TrackingHandler) && dynamic_cast(m_TrackingHandler)->GetIsOdfFromTensor() ) ) { if ( dynamic_cast(m_TrackingHandler) && dynamic_cast(m_TrackingHandler)->GetNumTensorImages()>1 ) { model_code_value = "sup181_bb02"; model_code_meaning = "Multi Tensor"; } else { model_code_value = "sup181_bb01"; model_code_meaning = "Single Tensor"; } } else if (dynamic_cast*>(m_TrackingHandler) || dynamic_cast*>(m_TrackingHandler)) { model_code_value = "sup181_bb03"; model_code_meaning = "Model Free"; } else if (dynamic_cast(m_TrackingHandler)) { model_code_value = "-"; model_code_meaning = "ODF"; } else if (dynamic_cast(m_TrackingHandler)) { model_code_value = "-"; model_code_meaning = "Peaks"; } fib->SetProperty("DICOM.anatomy.value", mitk::StringProperty::New("T-A0095")); fib->SetProperty("DICOM.anatomy.meaning", mitk::StringProperty::New("White matter of brain and spinal cord")); fib->SetProperty("DICOM.algo_code.value", mitk::StringProperty::New(algo_code_value)); fib->SetProperty("DICOM.algo_code.meaning", mitk::StringProperty::New(algo_code_meaning)); fib->SetProperty("DICOM.model_code.value", mitk::StringProperty::New(model_code_value)); fib->SetProperty("DICOM.model_code.meaning", mitk::StringProperty::New(model_code_meaning)); } } diff --git a/Modules/DiffusionImaging/FiberTracking/Algorithms/itkStreamlineTrackingFilter.h b/Modules/DiffusionImaging/FiberTracking/Algorithms/itkStreamlineTrackingFilter.h index d545a62137..b2c0927ab0 100644 --- a/Modules/DiffusionImaging/FiberTracking/Algorithms/itkStreamlineTrackingFilter.h +++ b/Modules/DiffusionImaging/FiberTracking/Algorithms/itkStreamlineTrackingFilter.h @@ -1,228 +1,229 @@ /*=================================================================== The Medical Imaging Interaction Toolkit (MITK) Copyright (c) German Cancer Research Center, Division of Medical and Biological Informatics. All rights reserved. This software is distributed WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See LICENSE.txt or http://www.mitk.org for details. ===================================================================*/ #ifndef __itkMLBSTrackingFilter_h_ #define __itkMLBSTrackingFilter_h_ #include #include #include #include #include #include #include #include #include #include #include #include #include #include #include #include #include #include #include namespace itk{ /** * \brief Performs streamline tracking on the input image. Depending on the tracking handler this can be a tensor, peak or machine learning based tracking. */ class MITKFIBERTRACKING_EXPORT StreamlineTrackingFilter : public ProcessObject { public: typedef StreamlineTrackingFilter Self; typedef SmartPointer Pointer; typedef SmartPointer ConstPointer; typedef ProcessObject Superclass; /** Method for creation through the object factory. */ itkFactorylessNewMacro(Self) itkCloneMacro(Self) /** Runtime information support. */ itkTypeMacro(MLBSTrackingFilter, ImageToImageFilter) typedef itk::Image ItkUcharImgType; typedef itk::Image ItkUintImgType; typedef itk::Image ItkDoubleImgType; typedef itk::Image ItkFloatImgType; typedef vtkSmartPointer< vtkPolyData > PolyDataType; typedef std::deque< vnl_vector_fixed > DirectionContainer; typedef std::deque< itk::Point > FiberType; typedef std::vector< FiberType > BundleType; volatile bool m_PauseTracking; bool m_AbortTracking; bool m_BuildFibersFinished; int m_BuildFibersReady; volatile bool m_Stop; mitk::PointSet::Pointer m_SamplingPointset; mitk::PointSet::Pointer m_StopVotePointset; mitk::PointSet::Pointer m_AlternativePointset; void SetStepSize(float v) ///< Integration step size in voxels, default is 0.5 * voxel { m_StepSizeVox = v; } void SetAngularThreshold(float v) ///< Angular threshold per step (in degree), default is 90deg x stepsize { m_AngularThresholdDeg = v; } void SetSamplingDistance(float v) ///< Maximum distance of sampling points in voxels, default is 0.25 * voxel { m_SamplingDistanceVox = v; } void SetDicomProperties(mitk::FiberBundle::Pointer fib); itkGetMacro( OutputProbabilityMap, ItkDoubleImgType::Pointer) ///< Output probability map itkGetMacro( FiberPolyData, PolyDataType ) ///< Output fibers itkGetMacro( UseOutputProbabilityMap, bool) itkSetMacro( SeedImage, ItkFloatImgType::Pointer) ///< Seeds are only placed inside of this mask. itkSetMacro( MaskImage, ItkFloatImgType::Pointer) ///< Tracking is only performed inside of this mask image. itkSetMacro( SeedsPerVoxel, int) ///< One seed placed in the center of each voxel or multiple seeds randomly placed inside each voxel. itkSetMacro( MinTractLength, float ) ///< Shorter tracts are discarded. itkSetMacro( MaxTractLength, float ) ///< Streamline progression stops if tract is longer than specified. itkSetMacro( UseStopVotes, bool ) ///< Frontal sampling points can vote for stopping the streamline even if the remaining sampling points keep pushing itkSetMacro( OnlyForwardSamples, bool ) ///< Don't use sampling points behind the current position in progression direction itkSetMacro( DeflectionMod, float ) ///< Deflection distance modifier itkSetMacro( StoppingRegions, ItkFloatImgType::Pointer) ///< Streamlines entering a stopping region will stop immediately itkSetMacro( TargetRegions, ItkFloatImgType::Pointer) ///< Only streamline starting and ending in this mask are retained itkSetMacro( DemoMode, bool ) itkSetMacro( NumberOfSamples, unsigned int ) ///< Number of neighborhood sampling points itkSetMacro( LoopCheck, float ) ///< Checks fiber curvature (angular deviation across 5mm) is larger than 30°. If yes, the streamline progression is stopped. itkSetMacro( AvoidStop, bool ) ///< Use additional sampling points to avoid premature streamline termination itkSetMacro( RandomSampling, bool ) ///< If true, the sampling points are distributed randomly around the current position, not sphericall in the specified sampling distance. itkSetMacro( NumPreviousDirections, unsigned int ) ///< How many "old" steps do we want to consider in our decision where to go next? itkSetMacro( MaxNumTracts, int ) ///< Tracking is stopped if the maximum number of tracts is exceeded itkSetMacro( Random, bool ) ///< If true, seedpoints are shuffled randomly before tracking itkSetMacro( Verbose, bool ) ///< If true, output tracking progress (might be slower) itkSetMacro( UseOutputProbabilityMap, bool) ///< If true, no tractogram but a probability map is created as output. itkSetMacro( StopTracking, bool ) itkSetMacro( InterpolateMask, bool ) itkSetMacro( TrialsPerSeed, unsigned int ) ///< When using probabilistic tractography, each seed point is used N times until a valid streamline that is compliant with all thresholds etc. is found + itkGetMacro( MinVoxelSize, float) ///< Use manually defined points in physical space as seed points instead of seed image void SetSeedPoints( const std::vector< itk::Point >& sP) { m_SeedPoints = sP; } void SetTrackingHandler( mitk::TrackingDataHandler* h ) ///< { m_TrackingHandler = h; } virtual void Update() override{ this->GenerateData(); } std::string GetStatusText(); protected: void GenerateData() override; StreamlineTrackingFilter(); ~StreamlineTrackingFilter() {} bool IsValidFiber(FiberType* fib); ///< Check endpoints void FiberToProbmap(FiberType* fib); void GetSeedPointsFromSeedImage(); void CalculateNewPosition(itk::Point& pos, vnl_vector_fixed& dir); ///< Calculate next integration step. float FollowStreamline(itk::Point start_pos, vnl_vector_fixed dir, FiberType* fib, DirectionContainer* container, float tractLength, bool front); ///< Start streamline in one direction. vnl_vector_fixed GetNewDirection(itk::Point& pos, std::deque< vnl_vector_fixed >& olddirs, itk::Index<3>& oldIndex); ///< Determine new direction by sample voting at the current position taking the last progression direction into account. std::vector< vnl_vector_fixed > CreateDirections(int NPoints); void BeforeTracking(); void AfterTracking(); PolyDataType m_FiberPolyData; vtkSmartPointer m_Points; vtkSmartPointer m_Cells; BundleType m_Tractogram; BundleType m_GmStubs; ItkFloatImgType::Pointer m_StoppingRegions; ItkFloatImgType::Pointer m_TargetRegions; ItkFloatImgType::Pointer m_SeedImage; ItkFloatImgType::Pointer m_MaskImage; ItkDoubleImgType::Pointer m_OutputProbabilityMap; float m_MinVoxelSize; float m_AngularThresholdDeg; float m_StepSizeVox; float m_SamplingDistanceVox; float m_AngularThreshold; float m_StepSize; int m_MaxLength; float m_MinTractLength; float m_MaxTractLength; int m_SeedsPerVoxel; bool m_AvoidStop; bool m_RandomSampling; float m_SamplingDistance; float m_DeflectionMod; bool m_OnlyForwardSamples; bool m_UseStopVotes; unsigned int m_NumberOfSamples; unsigned int m_NumPreviousDirections; int m_MaxNumTracts; bool m_Verbose; float m_LoopCheck; bool m_DemoMode; bool m_Random; bool m_UseOutputProbabilityMap; std::vector< itk::Point > m_SeedPoints; unsigned int m_CurrentTracts; unsigned int m_Progress; bool m_StopTracking; bool m_InterpolateMask; unsigned int m_TrialsPerSeed; void BuildFibers(bool check); float CheckCurvature(DirectionContainer *fib, bool front); // decision forest mitk::TrackingDataHandler* m_TrackingHandler; std::vector< PolyDataType > m_PolyDataContainer; std::chrono::time_point m_StartTime; std::chrono::time_point m_EndTime; itk::LinearInterpolateImageFunction< ItkFloatImgType, float >::Pointer m_MaskInterpolator; itk::LinearInterpolateImageFunction< ItkFloatImgType, float >::Pointer m_StopInterpolator; itk::LinearInterpolateImageFunction< ItkFloatImgType, float >::Pointer m_TargetInterpolator; itk::LinearInterpolateImageFunction< ItkFloatImgType, float >::Pointer m_SeedInterpolator; bool m_SeedImageSet; bool m_TargetImageSet; private: }; } //#ifndef ITK_MANUAL_INSTANTIATION //#include "itkMLBSTrackingFilter.cpp" //#endif #endif //__itkMLBSTrackingFilter_h_ diff --git a/Plugins/org.mitk.gui.qt.diffusionimaging.tractography/src/internal/QmitkStreamlineTrackingView.cpp b/Plugins/org.mitk.gui.qt.diffusionimaging.tractography/src/internal/QmitkStreamlineTrackingView.cpp index 57ef470c54..ca5c8c03f1 100644 --- a/Plugins/org.mitk.gui.qt.diffusionimaging.tractography/src/internal/QmitkStreamlineTrackingView.cpp +++ b/Plugins/org.mitk.gui.qt.diffusionimaging.tractography/src/internal/QmitkStreamlineTrackingView.cpp @@ -1,850 +1,855 @@ /*=================================================================== The Medical Imaging Interaction Toolkit (MITK) Copyright (c) German Cancer Research Center, Division of Medical and Biological Informatics. All rights reserved. This software is distributed WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See LICENSE.txt or http://www.mitk.org for details. ===================================================================*/ // Blueberry #include #include #include // Qmitk #include "QmitkStreamlineTrackingView.h" #include "QmitkStdMultiWidget.h" // Qt #include // MITK #include #include #include #include #include #include #include #include #include #include #include #include // VTK #include #include #include #include #include #include #include #include #include const std::string QmitkStreamlineTrackingView::VIEW_ID = "org.mitk.views.streamlinetracking"; const std::string id_DataManager = "org.mitk.views.datamanager"; using namespace berry; QmitkStreamlineTrackingWorker::QmitkStreamlineTrackingWorker(QmitkStreamlineTrackingView* view) : m_View(view) { } void QmitkStreamlineTrackingWorker::run() { m_View->m_Tracker->Update(); m_View->m_TrackingThread.quit(); } QmitkStreamlineTrackingView::QmitkStreamlineTrackingView() : m_TrackingWorker(this) , m_Controls(nullptr) , m_FirstTensorProbRun(true) , m_FirstInteractiveRun(true) , m_TrackingHandler(nullptr) , m_ThreadIsRunning(false) , m_DeleteTrackingHandler(false) { m_TrackingWorker.moveToThread(&m_TrackingThread); connect(&m_TrackingThread, SIGNAL(started()), this, SLOT(BeforeThread())); connect(&m_TrackingThread, SIGNAL(started()), &m_TrackingWorker, SLOT(run())); connect(&m_TrackingThread, SIGNAL(finished()), this, SLOT(AfterThread())); m_TrackingTimer = new QTimer(this); } // Destructor QmitkStreamlineTrackingView::~QmitkStreamlineTrackingView() { if (m_Tracker.IsNull()) return; m_Tracker->SetStopTracking(true); m_TrackingThread.wait(); } void QmitkStreamlineTrackingView::CreateQtPartControl( QWidget *parent ) { if ( !m_Controls ) { // create GUI widgets from the Qt Designer's .ui file m_Controls = new Ui::QmitkStreamlineTrackingViewControls; m_Controls->setupUi( parent ); m_Controls->m_FaImageBox->SetDataStorage(this->GetDataStorage()); m_Controls->m_SeedImageBox->SetDataStorage(this->GetDataStorage()); m_Controls->m_MaskImageBox->SetDataStorage(this->GetDataStorage()); m_Controls->m_TargetImageBox->SetDataStorage(this->GetDataStorage()); m_Controls->m_StopImageBox->SetDataStorage(this->GetDataStorage()); m_Controls->m_ForestBox->SetDataStorage(this->GetDataStorage()); mitk::TNodePredicateDataType::Pointer isImagePredicate = mitk::TNodePredicateDataType::New(); mitk::TNodePredicateDataType::Pointer isTractographyForest = mitk::TNodePredicateDataType::New(); mitk::NodePredicateProperty::Pointer isBinaryPredicate = mitk::NodePredicateProperty::New("binary", mitk::BoolProperty::New(true)); mitk::NodePredicateNot::Pointer isNotBinaryPredicate = mitk::NodePredicateNot::New( isBinaryPredicate ); mitk::NodePredicateAnd::Pointer isNotABinaryImagePredicate = mitk::NodePredicateAnd::New( isImagePredicate, isNotBinaryPredicate ); mitk::NodePredicateDimension::Pointer dimensionPredicate = mitk::NodePredicateDimension::New(3); m_Controls->m_ForestBox->SetPredicate(isTractographyForest); m_Controls->m_FaImageBox->SetPredicate( mitk::NodePredicateAnd::New(isNotABinaryImagePredicate, dimensionPredicate) ); m_Controls->m_FaImageBox->SetZeroEntryText("--"); m_Controls->m_SeedImageBox->SetPredicate( mitk::NodePredicateAnd::New(isImagePredicate, dimensionPredicate) ); m_Controls->m_SeedImageBox->SetZeroEntryText("--"); m_Controls->m_MaskImageBox->SetPredicate( mitk::NodePredicateAnd::New(isImagePredicate, dimensionPredicate) ); m_Controls->m_MaskImageBox->SetZeroEntryText("--"); m_Controls->m_StopImageBox->SetPredicate( mitk::NodePredicateAnd::New(isImagePredicate, dimensionPredicate) ); m_Controls->m_StopImageBox->SetZeroEntryText("--"); m_Controls->m_TargetImageBox->SetPredicate( mitk::NodePredicateAnd::New(isImagePredicate, dimensionPredicate) ); m_Controls->m_TargetImageBox->SetZeroEntryText("--"); connect( m_TrackingTimer, SIGNAL(timeout()), this, SLOT(TimerUpdate()) ); connect( m_Controls->commandLinkButton_2, SIGNAL(clicked()), this, SLOT(StopTractography()) ); connect( m_Controls->commandLinkButton, SIGNAL(clicked()), this, SLOT(DoFiberTracking()) ); connect( m_Controls->m_InteractiveBox, SIGNAL(stateChanged(int)), this, SLOT(ToggleInteractive()) ); connect( m_Controls->m_ModeBox, SIGNAL(currentIndexChanged(int)), this, SLOT(UpdateGui()) ); connect( m_Controls->m_FaImageBox, SIGNAL(currentIndexChanged(int)), this, SLOT(DeleteTrackingHandler()) ); connect( m_Controls->m_ModeBox, SIGNAL(currentIndexChanged(int)), this, SLOT(DeleteTrackingHandler()) ); connect( m_Controls->m_OutputProbMap, SIGNAL(stateChanged(int)), this, SLOT(OutputStyleSwitched()) ); + connect( m_Controls->m_SeedImageBox, SIGNAL(currentIndexChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_ModeBox, SIGNAL(currentIndexChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_StopImageBox, SIGNAL(currentIndexChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_TargetImageBox, SIGNAL(currentIndexChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_MaskImageBox, SIGNAL(currentIndexChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_FaImageBox, SIGNAL(currentIndexChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_ForestBox, SIGNAL(currentIndexChanged(int)), this, SLOT(ForestSwitched()) ); connect( m_Controls->m_ForestBox, SIGNAL(currentIndexChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_SeedsPerVoxelBox, SIGNAL(valueChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_NumFibersBox, SIGNAL(valueChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_ScalarThresholdBox, SIGNAL(valueChanged(double)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_OdfCutoffBox, SIGNAL(valueChanged(double)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_StepSizeBox, SIGNAL(valueChanged(double)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_SamplingDistanceBox, SIGNAL(valueChanged(double)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_AngularThresholdBox, SIGNAL(valueChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_MinTractLengthBox, SIGNAL(valueChanged(double)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_fBox, SIGNAL(valueChanged(double)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_gBox, SIGNAL(valueChanged(double)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_NumSamplesBox, SIGNAL(valueChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_SeedRadiusBox, SIGNAL(valueChanged(double)), this, SLOT(InteractiveSeedChanged()) ); connect( m_Controls->m_NumSeedsBox, SIGNAL(valueChanged(int)), this, SLOT(InteractiveSeedChanged()) ); connect( m_Controls->m_OutputProbMap, SIGNAL(stateChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_SharpenOdfsBox, SIGNAL(stateChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_InterpolationBox, SIGNAL(stateChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_MaskInterpolationBox, SIGNAL(stateChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_FlipXBox, SIGNAL(stateChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_FlipYBox, SIGNAL(stateChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_FlipZBox, SIGNAL(stateChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_FrontalSamplesBox, SIGNAL(stateChanged(int)), this, SLOT(OnParameterChanged()) ); connect( m_Controls->m_StopVotesBox, SIGNAL(stateChanged(int)), this, SLOT(OnParameterChanged()) ); - connect( m_Controls->m_LoopCheckBox, SIGNAL(stateChanged(int)), this, SLOT(OnParameterChanged()) ); - connect( m_Controls->m_TrialsPerSeedBox, SIGNAL(stateChanged(int)), this, SLOT(OnParameterChanged()) ); + connect( m_Controls->m_LoopCheckBox, SIGNAL(valueChanged(int)), this, SLOT(OnParameterChanged()) ); + connect( m_Controls->m_TrialsPerSeedBox, SIGNAL(valueChanged(int)), this, SLOT(OnParameterChanged()) ); StartStopTrackingGui(false); } UpdateGui(); } void QmitkStreamlineTrackingView::StopTractography() { if (m_Tracker.IsNull()) return; m_Tracker->SetStopTracking(true); } void QmitkStreamlineTrackingView::TimerUpdate() { if (m_Tracker.IsNull()) return; QString status_text(m_Tracker->GetStatusText().c_str()); m_Controls->m_StatusTextBox->setText(status_text); } void QmitkStreamlineTrackingView::BeforeThread() { m_TrackingTimer->start(1000); } void QmitkStreamlineTrackingView::AfterThread() { m_TrackingTimer->stop(); if (!m_Tracker->GetUseOutputProbabilityMap()) { vtkSmartPointer fiberBundle = m_Tracker->GetFiberPolyData(); if (!m_Controls->m_InteractiveBox->isChecked() && fiberBundle->GetNumberOfLines() == 0) { QMessageBox warnBox; warnBox.setWindowTitle("Warning"); warnBox.setText("No fiberbundle was generated!"); warnBox.setDetailedText("No fibers were generated using the chosen parameters. Typical reasons are:\n\n- Cutoff too high. Some images feature very low FA/GFA/peak size. Try to lower this parameter.\n- Angular threshold too strict. Try to increase this parameter.\n- A small step sizes also means many steps to go wrong. Especially in the case of probabilistic tractography. Try to adjust the angular threshold."); warnBox.setIcon(QMessageBox::Warning); warnBox.exec(); if (m_InteractivePointSetNode.IsNotNull()) m_InteractivePointSetNode->SetProperty("color", mitk::ColorProperty::New(1,1,1)); StartStopTrackingGui(false); if (m_DeleteTrackingHandler) DeleteTrackingHandler(); UpdateGui(); return; } mitk::FiberBundle::Pointer fib = mitk::FiberBundle::New(fiberBundle); fib->SetReferenceGeometry(dynamic_cast(m_ParentNode->GetData())->GetGeometry()); if (m_Controls->m_ResampleFibersBox->isChecked() && fiberBundle->GetNumberOfLines()>0) fib->Compress(m_Controls->m_FiberErrorBox->value()); fib->ColorFibersByOrientation(); m_Tracker->SetDicomProperties(fib); if (m_Controls->m_InteractiveBox->isChecked()) { if (m_InteractiveNode.IsNull()) { m_InteractiveNode = mitk::DataNode::New(); QString name("Interactive"); m_InteractiveNode->SetName(name.toStdString()); GetDataStorage()->Add(m_InteractiveNode); } m_InteractiveNode->SetData(fib); + m_InteractiveNode->SetFloatProperty("Fiber2DSliceThickness", m_Tracker->GetMinVoxelSize()/2); if (auto renderWindowPart = this->GetRenderWindowPart()) renderWindowPart->RequestUpdate(); } else { mitk::DataNode::Pointer node = mitk::DataNode::New(); node->SetData(fib); QString name("FiberBundle_"); name += m_ParentNode->GetName().c_str(); name += "_Streamline"; node->SetName(name.toStdString()); + node->SetFloatProperty("Fiber2DSliceThickness", m_Tracker->GetMinVoxelSize()/2); GetDataStorage()->Add(node, m_ParentNode); } } else { TrackerType::ItkDoubleImgType::Pointer outImg = m_Tracker->GetOutputProbabilityMap(); mitk::Image::Pointer img = mitk::Image::New(); img->InitializeByItk(outImg.GetPointer()); img->SetVolume(outImg->GetBufferPointer()); if (m_Controls->m_InteractiveBox->isChecked()) { if (m_InteractiveNode.IsNull()) { m_InteractiveNode = mitk::DataNode::New(); QString name("Interactive"); m_InteractiveNode->SetName(name.toStdString()); GetDataStorage()->Add(m_InteractiveNode); } m_InteractiveNode->SetData(img); mitk::LookupTable::Pointer lut = mitk::LookupTable::New(); lut->SetType(mitk::LookupTable::JET_TRANSPARENT); mitk::LookupTableProperty::Pointer lut_prop = mitk::LookupTableProperty::New(); lut_prop->SetLookupTable(lut); m_InteractiveNode->SetProperty("LookupTable", lut_prop); m_InteractiveNode->SetProperty("opacity", mitk::FloatProperty::New(0.5)); + m_InteractiveNode->SetFloatProperty("Fiber2DSliceThickness", m_Tracker->GetMinVoxelSize()/2); if (auto renderWindowPart = this->GetRenderWindowPart()) renderWindowPart->RequestUpdate(); } else { mitk::DataNode::Pointer node = mitk::DataNode::New(); node->SetData(img); QString name("ProbabilityMap_"); name += m_ParentNode->GetName().c_str(); node->SetName(name.toStdString()); mitk::LookupTable::Pointer lut = mitk::LookupTable::New(); lut->SetType(mitk::LookupTable::JET_TRANSPARENT); mitk::LookupTableProperty::Pointer lut_prop = mitk::LookupTableProperty::New(); lut_prop->SetLookupTable(lut); node->SetProperty("LookupTable", lut_prop); node->SetProperty("opacity", mitk::FloatProperty::New(0.5)); GetDataStorage()->Add(node, m_ParentNode); } } if (m_InteractivePointSetNode.IsNotNull()) m_InteractivePointSetNode->SetProperty("color", mitk::ColorProperty::New(1,1,1)); StartStopTrackingGui(false); if (m_DeleteTrackingHandler) DeleteTrackingHandler(); UpdateGui(); } void QmitkStreamlineTrackingView::InteractiveSeedChanged(bool posChanged) { if (m_ThreadIsRunning) return; if (!posChanged && (!m_Controls->m_InteractiveBox->isChecked() || !m_Controls->m_ParamUpdateBox->isChecked())) return; std::srand(std::time(0)); m_SeedPoints.clear(); itk::Point world_pos = this->GetRenderWindowPart()->GetSelectedPosition(); m_SeedPoints.push_back(world_pos); float radius = m_Controls->m_SeedRadiusBox->value(); int num = m_Controls->m_NumSeedsBox->value(); mitk::PointSet::Pointer pointset = mitk::PointSet::New(); pointset->InsertPoint(0, world_pos); m_InteractivePointSetNode->SetProperty("pointsize", mitk::FloatProperty::New(radius*2)); m_InteractivePointSetNode->SetProperty("point 2D size", mitk::FloatProperty::New(radius*2)); m_InteractivePointSetNode->SetData(pointset); for (int i=1; i p; p[0] = rand()%1000-500; p[1] = rand()%1000-500; p[2] = rand()%1000-500; p.Normalize(); p *= radius; m_SeedPoints.push_back(world_pos+p); } m_InteractivePointSetNode->SetProperty("color", mitk::ColorProperty::New(1,0,0)); DoFiberTracking(); } void QmitkStreamlineTrackingView::OnParameterChanged() { + MITK_INFO << "UPDATE"; if (m_Controls->m_InteractiveBox->isChecked() && m_Controls->m_ParamUpdateBox->isChecked()) DoFiberTracking(); } void QmitkStreamlineTrackingView::ToggleInteractive() { UpdateGui(); m_Controls->m_SeedsPerVoxelBox->setEnabled(!m_Controls->m_InteractiveBox->isChecked()); m_Controls->m_SeedsPerVoxelLabel->setEnabled(!m_Controls->m_InteractiveBox->isChecked()); m_Controls->m_SeedImageBox->setEnabled(!m_Controls->m_InteractiveBox->isChecked()); m_Controls->label_6->setEnabled(!m_Controls->m_InteractiveBox->isChecked()); if ( m_Controls->m_InteractiveBox->isChecked() ) { if (m_FirstInteractiveRun) { QMessageBox::information(nullptr, "Information", "Place and move a spherical seed region anywhere in the image by left-clicking and dragging. If the seed region is colored red, tracking is in progress. If the seed region is colored white, tracking is finished.\nPlacing the seed region for the first time in a newly selected dataset might cause a short delay, since the tracker needs to be initialized."); m_FirstInteractiveRun = false; } QApplication::setOverrideCursor(Qt::PointingHandCursor); QApplication::processEvents(); m_InteractivePointSetNode = mitk::DataNode::New(); m_InteractivePointSetNode->SetProperty("color", mitk::ColorProperty::New(1,1,1)); m_InteractivePointSetNode->SetName("InteractiveSeedRegion"); mitk::PointSetShapeProperty::Pointer shape_prop = mitk::PointSetShapeProperty::New(); shape_prop->SetValue(mitk::PointSetShapeProperty::PointSetShape::CIRCLE); m_InteractivePointSetNode->SetProperty("Pointset.2D.shape", shape_prop); GetDataStorage()->Add(m_InteractivePointSetNode); m_SliceChangeListener.RenderWindowPartActivated(this->GetRenderWindowPart()); connect(&m_SliceChangeListener, SIGNAL(SliceChanged()), this, SLOT(OnSliceChanged())); } else { QApplication::restoreOverrideCursor(); QApplication::processEvents(); m_InteractiveNode = nullptr; m_InteractivePointSetNode = nullptr; m_SliceChangeListener.RenderWindowPartActivated(this->GetRenderWindowPart()); disconnect(&m_SliceChangeListener, SIGNAL(SliceChanged()), this, SLOT(OnSliceChanged())); } } void QmitkStreamlineTrackingView::OnSliceChanged() { InteractiveSeedChanged(true); } void QmitkStreamlineTrackingView::SetFocus() { } void QmitkStreamlineTrackingView::DeleteTrackingHandler() { if (!m_ThreadIsRunning && m_TrackingHandler != nullptr) { delete m_TrackingHandler; m_TrackingHandler = nullptr; m_DeleteTrackingHandler = false; } else if (m_ThreadIsRunning) { m_DeleteTrackingHandler = true; } } void QmitkStreamlineTrackingView::ForestSwitched() { DeleteTrackingHandler(); } void QmitkStreamlineTrackingView::OutputStyleSwitched() { if (m_InteractiveNode.IsNotNull()) GetDataStorage()->Remove(m_InteractiveNode); m_InteractiveNode = nullptr; } void QmitkStreamlineTrackingView::OnSelectionChanged( berry::IWorkbenchPart::Pointer , const QList& nodes ) { std::vector< mitk::DataNode::Pointer > last_nodes = m_InputImageNodes; m_InputImageNodes.clear(); m_InputImages.clear(); m_AdditionalInputImages.clear(); bool retrack = false; for( auto node : nodes ) { if( node.IsNotNull() && dynamic_cast(node->GetData()) ) { if( dynamic_cast(node->GetData()) ) { m_InputImageNodes.push_back(node); m_InputImages.push_back(dynamic_cast(node->GetData())); retrack = true; } else if ( dynamic_cast(node->GetData()) ) { m_InputImageNodes.push_back(node); m_InputImages.push_back(dynamic_cast(node->GetData())); retrack = true; } else if ( mitk::DiffusionPropertyHelper::IsDiffusionWeightedImage( dynamic_cast(node->GetData())) ) { m_InputImageNodes.push_back(node); m_InputImages.push_back(dynamic_cast(node->GetData())); retrack = true; } else { mitk::Image* img = dynamic_cast(node->GetData()); if (img!=nullptr) { int dim = img->GetDimension(); unsigned int* dimensions = img->GetDimensions(); if (dim==4 && dimensions[3]%3==0) { m_InputImageNodes.push_back(node); m_InputImages.push_back(dynamic_cast(node->GetData())); retrack = true; } else if (dim==3) { m_AdditionalInputImages.push_back(dynamic_cast(node->GetData())); } } } } } // sometimes the OnSelectionChanged event is sent twice and actually no selection has changed for the first event. We need to catch that. if (last_nodes.size() == m_InputImageNodes.size()) { bool same_nodes = true; for (unsigned int i=0; im_TensorImageLabel->setText("mandatory"); m_Controls->m_fBox->setEnabled(false); m_Controls->m_fLabel->setEnabled(false); m_Controls->m_gBox->setEnabled(false); m_Controls->m_gLabel->setEnabled(false); m_Controls->m_FaImageBox->setEnabled(false); m_Controls->mFaImageLabel->setEnabled(false); m_Controls->m_OdfCutoffBox->setEnabled(false); m_Controls->m_OdfCutoffLabel->setEnabled(false); m_Controls->m_SharpenOdfsBox->setEnabled(false); m_Controls->m_ForestBox->setEnabled(false); m_Controls->m_ForestLabel->setEnabled(false); m_Controls->commandLinkButton->setEnabled(false); m_Controls->m_TrialsPerSeedBox->setEnabled(false); m_Controls->m_TrialsPerSeedLabel->setEnabled(false); // trials per seed are only important for probabilistic tractography if (m_Controls->m_ModeBox->currentIndex()==1) { m_Controls->m_TrialsPerSeedBox->setEnabled(true); m_Controls->m_TrialsPerSeedLabel->setEnabled(true); } if(!m_InputImageNodes.empty()) { if (m_InputImageNodes.size()>1) m_Controls->m_TensorImageLabel->setText( ( std::to_string(m_InputImageNodes.size()) + " images selected").c_str() ); else m_Controls->m_TensorImageLabel->setText(m_InputImageNodes.at(0)->GetName().c_str()); m_Controls->m_InputData->setTitle("Input Data"); m_Controls->commandLinkButton->setEnabled(!m_Controls->m_InteractiveBox->isChecked() && !m_ThreadIsRunning); m_Controls->m_ScalarThresholdBox->setEnabled(true); m_Controls->m_FaThresholdLabel->setEnabled(true); if ( dynamic_cast(m_InputImageNodes.at(0)->GetData()) ) { m_Controls->m_fBox->setEnabled(true); m_Controls->m_fLabel->setEnabled(true); m_Controls->m_gBox->setEnabled(true); m_Controls->m_gLabel->setEnabled(true); m_Controls->mFaImageLabel->setEnabled(true); m_Controls->m_FaImageBox->setEnabled(true); } else if ( dynamic_cast(m_InputImageNodes.at(0)->GetData()) ) { m_Controls->mFaImageLabel->setEnabled(true); m_Controls->m_FaImageBox->setEnabled(true); m_Controls->m_OdfCutoffBox->setEnabled(true); m_Controls->m_OdfCutoffLabel->setEnabled(true); m_Controls->m_SharpenOdfsBox->setEnabled(true); } else if ( mitk::DiffusionPropertyHelper::IsDiffusionWeightedImage( dynamic_cast(m_InputImageNodes.at(0)->GetData())) ) { m_Controls->m_ForestBox->setEnabled(true); m_Controls->m_ForestLabel->setEnabled(true); m_Controls->m_ScalarThresholdBox->setEnabled(false); m_Controls->m_FaThresholdLabel->setEnabled(false); } } else m_Controls->m_InputData->setTitle("Please Select Input Data"); } void QmitkStreamlineTrackingView::StartStopTrackingGui(bool start) { m_ThreadIsRunning = start; if (!m_Controls->m_InteractiveBox->isChecked()) { m_Controls->commandLinkButton_2->setVisible(start); m_Controls->commandLinkButton->setVisible(!start); m_Controls->m_InteractiveBox->setEnabled(!start); m_Controls->m_StatusTextBox->setVisible(start); } } void QmitkStreamlineTrackingView::DoFiberTracking() { if (m_ThreadIsRunning) return; if (m_InputImages.empty()) return; if (m_Controls->m_InteractiveBox->isChecked() && m_SeedPoints.empty()) return; StartStopTrackingGui(true); m_Tracker = TrackerType::New(); if( dynamic_cast(m_InputImageNodes.at(0)->GetData()) ) { typedef mitk::ImageToItk CasterType; if (m_Controls->m_ModeBox->currentIndex()==1) { if (m_InputImages.size()>1) { QMessageBox::information(nullptr, "Information", "Probabilistic tensor tractography is only implemented for single-tensor mode!"); StartStopTrackingGui(false); return; } if (m_FirstTensorProbRun) { QMessageBox::information(nullptr, "Information", "Internally calculating ODF from tensor image and performing probabilistic ODF tractography. ODFs are sharpened (min-max normalized and raised to the power of 4). TEND parameters are ignored."); m_FirstTensorProbRun = false; } if (m_TrackingHandler==nullptr) { typedef mitk::ImageToItk< mitk::TrackingHandlerOdf::ItkOdfImageType > CasterType; m_TrackingHandler = new mitk::TrackingHandlerOdf(); mitk::TensorImage::ItkTensorImageType::Pointer itkImg = mitk::TensorImage::ItkTensorImageType::New(); mitk::CastToItkImage(m_InputImages.at(0), itkImg); typedef itk::TensorImageToOdfImageFilter< float, float > FilterType; FilterType::Pointer filter = FilterType::New(); filter->SetInput( itkImg ); filter->Update(); dynamic_cast(m_TrackingHandler)->SetOdfImage(filter->GetOutput()); if (m_Controls->m_FaImageBox->GetSelectedNode().IsNotNull()) { ItkFloatImageType::Pointer itkImg = ItkFloatImageType::New(); mitk::CastToItkImage(dynamic_cast(m_Controls->m_FaImageBox->GetSelectedNode()->GetData()), itkImg); dynamic_cast(m_TrackingHandler)->SetGfaImage(itkImg); } } dynamic_cast(m_TrackingHandler)->SetGfaThreshold(m_Controls->m_ScalarThresholdBox->value()); dynamic_cast(m_TrackingHandler)->SetOdfThreshold(0); dynamic_cast(m_TrackingHandler)->SetSharpenOdfs(true); dynamic_cast(m_TrackingHandler)->SetIsOdfFromTensor(true); } else { if (m_TrackingHandler==nullptr) { m_TrackingHandler = new mitk::TrackingHandlerTensor(); for (int i=0; i<(int)m_InputImages.size(); i++) { typedef mitk::ImageToItk< mitk::TrackingHandlerTensor::ItkTensorImageType > CasterType; CasterType::Pointer caster = CasterType::New(); caster->SetInput(m_InputImages.at(i)); caster->Update(); mitk::TrackingHandlerTensor::ItkTensorImageType::ConstPointer itkImg = caster->GetOutput(); dynamic_cast(m_TrackingHandler)->AddTensorImage(itkImg); } if (m_Controls->m_FaImageBox->GetSelectedNode().IsNotNull()) { ItkFloatImageType::Pointer itkImg = ItkFloatImageType::New(); mitk::CastToItkImage(dynamic_cast(m_Controls->m_FaImageBox->GetSelectedNode()->GetData()), itkImg); dynamic_cast(m_TrackingHandler)->SetFaImage(itkImg); } } dynamic_cast(m_TrackingHandler)->SetFaThreshold(m_Controls->m_ScalarThresholdBox->value()); dynamic_cast(m_TrackingHandler)->SetF((float)m_Controls->m_fBox->value()); dynamic_cast(m_TrackingHandler)->SetG((float)m_Controls->m_gBox->value()); } } else if ( dynamic_cast(m_InputImageNodes.at(0)->GetData()) ) { if (m_TrackingHandler==nullptr) { typedef mitk::ImageToItk< mitk::TrackingHandlerOdf::ItkOdfImageType > CasterType; m_TrackingHandler = new mitk::TrackingHandlerOdf(); mitk::TrackingHandlerOdf::ItkOdfImageType::Pointer itkImg = mitk::TrackingHandlerOdf::ItkOdfImageType::New(); mitk::CastToItkImage(m_InputImages.at(0), itkImg); dynamic_cast(m_TrackingHandler)->SetOdfImage(itkImg); if (m_Controls->m_FaImageBox->GetSelectedNode().IsNotNull()) { ItkFloatImageType::Pointer itkImg = ItkFloatImageType::New(); mitk::CastToItkImage(dynamic_cast(m_Controls->m_FaImageBox->GetSelectedNode()->GetData()), itkImg); dynamic_cast(m_TrackingHandler)->SetGfaImage(itkImg); } } dynamic_cast(m_TrackingHandler)->SetGfaThreshold(m_Controls->m_ScalarThresholdBox->value()); dynamic_cast(m_TrackingHandler)->SetOdfThreshold(m_Controls->m_OdfCutoffBox->value()); dynamic_cast(m_TrackingHandler)->SetSharpenOdfs(m_Controls->m_SharpenOdfsBox->isChecked()); } else if ( mitk::DiffusionPropertyHelper::IsDiffusionWeightedImage( dynamic_cast(m_InputImageNodes.at(0)->GetData())) ) { if ( m_Controls->m_ForestBox->GetSelectedNode().IsNull() ) { QMessageBox::information(nullptr, "Information", "Not random forest for machine learning based tractography (raw dMRI tractography) selected. Did you accidentally select the raw diffusion-weighted image in the datamanager?"); StartStopTrackingGui(false); return; } if (m_TrackingHandler==nullptr) { mitk::TractographyForest::Pointer forest = dynamic_cast(m_Controls->m_ForestBox->GetSelectedNode()->GetData()); mitk::Image::Pointer dwi = dynamic_cast(m_InputImageNodes.at(0)->GetData()); std::vector< std::vector< ItkFloatImageType::Pointer > > additionalFeatureImages; additionalFeatureImages.push_back(std::vector< ItkFloatImageType::Pointer >()); for (auto img : m_AdditionalInputImages) { ItkFloatImageType::Pointer itkimg = ItkFloatImageType::New(); mitk::CastToItkImage(img, itkimg); additionalFeatureImages.at(0).push_back(itkimg); } bool forest_valid = false; if (forest->GetNumFeatures()>=100) { int num_previous_directions = (forest->GetNumFeatures() - (100 + additionalFeatureImages.at(0).size()))/3; m_TrackingHandler = new mitk::TrackingHandlerRandomForest<6, 100>(); dynamic_cast*>(m_TrackingHandler)->AddDwi(dwi); dynamic_cast*>(m_TrackingHandler)->SetAdditionalFeatureImages(additionalFeatureImages); dynamic_cast*>(m_TrackingHandler)->SetForest(forest); dynamic_cast*>(m_TrackingHandler)->SetNumPreviousDirections(num_previous_directions); forest_valid = dynamic_cast*>(m_TrackingHandler)->IsForestValid(); } else { int num_previous_directions = (forest->GetNumFeatures() - (28 + additionalFeatureImages.at(0).size()))/3; m_TrackingHandler = new mitk::TrackingHandlerRandomForest<6, 28>(); dynamic_cast*>(m_TrackingHandler)->AddDwi(dwi); dynamic_cast*>(m_TrackingHandler)->SetAdditionalFeatureImages(additionalFeatureImages); dynamic_cast*>(m_TrackingHandler)->SetForest(forest); dynamic_cast*>(m_TrackingHandler)->SetNumPreviousDirections(num_previous_directions); forest_valid = dynamic_cast*>(m_TrackingHandler)->IsForestValid(); } if (!forest_valid) { QMessageBox::information(nullptr, "Information", "Random forest is invalid. The forest signatue does not match the parameters of TrackingHandlerRandomForest."); StartStopTrackingGui(false); return; } } } else { if (m_Controls->m_ModeBox->currentIndex()==1) { QMessageBox::information(nullptr, "Information", "Probabilstic tractography is not implemented for peak images."); StartStopTrackingGui(false); return; } try { if (m_TrackingHandler==nullptr) { typedef mitk::ImageToItk< mitk::TrackingHandlerPeaks::PeakImgType > CasterType; CasterType::Pointer caster = CasterType::New(); caster->SetInput(m_InputImages.at(0)); caster->Update(); mitk::TrackingHandlerPeaks::PeakImgType::Pointer itkImg = caster->GetOutput(); m_TrackingHandler = new mitk::TrackingHandlerPeaks(); dynamic_cast(m_TrackingHandler)->SetPeakImage(itkImg); } dynamic_cast(m_TrackingHandler)->SetPeakThreshold(m_Controls->m_ScalarThresholdBox->value()); } catch(...) { QMessageBox::information(nullptr, "Error", "Peak tracker could not be initialized. Is your input image in the correct format (4D float image, peaks in the 4th dimension)?"); StartStopTrackingGui(false); return; } } m_TrackingHandler->SetFlipX(m_Controls->m_FlipXBox->isChecked()); m_TrackingHandler->SetFlipY(m_Controls->m_FlipYBox->isChecked()); m_TrackingHandler->SetFlipZ(m_Controls->m_FlipZBox->isChecked()); m_TrackingHandler->SetInterpolate(m_Controls->m_InterpolationBox->isChecked()); switch (m_Controls->m_ModeBox->currentIndex()) { case 0: m_TrackingHandler->SetMode(mitk::TrackingDataHandler::MODE::DETERMINISTIC); break; case 1: m_TrackingHandler->SetMode(mitk::TrackingDataHandler::MODE::PROBABILISTIC); break; default: m_TrackingHandler->SetMode(mitk::TrackingDataHandler::MODE::DETERMINISTIC); } if (m_Controls->m_InteractiveBox->isChecked()) { m_Tracker->SetSeedPoints(m_SeedPoints); } else if (m_Controls->m_SeedImageBox->GetSelectedNode().IsNotNull()) { ItkFloatImageType::Pointer mask = ItkFloatImageType::New(); mitk::CastToItkImage(dynamic_cast(m_Controls->m_SeedImageBox->GetSelectedNode()->GetData()), mask); m_Tracker->SetSeedImage(mask); } m_Tracker->SetInterpolateMask(false); if (m_Controls->m_MaskImageBox->GetSelectedNode().IsNotNull()) { ItkFloatImageType::Pointer mask = ItkFloatImageType::New(); mitk::CastToItkImage(dynamic_cast(m_Controls->m_MaskImageBox->GetSelectedNode()->GetData()), mask); m_Tracker->SetMaskImage(mask); m_Tracker->SetInterpolateMask(m_Controls->m_MaskInterpolationBox->isChecked()); } if (m_Controls->m_StopImageBox->GetSelectedNode().IsNotNull()) { ItkFloatImageType::Pointer mask = ItkFloatImageType::New(); mitk::CastToItkImage(dynamic_cast(m_Controls->m_StopImageBox->GetSelectedNode()->GetData()), mask); m_Tracker->SetStoppingRegions(mask); } if (m_Controls->m_TargetImageBox->GetSelectedNode().IsNotNull()) { ItkFloatImageType::Pointer mask = ItkFloatImageType::New(); mitk::CastToItkImage(dynamic_cast(m_Controls->m_TargetImageBox->GetSelectedNode()->GetData()), mask); m_Tracker->SetTargetRegions(mask); } m_Tracker->SetVerbose(!m_Controls->m_InteractiveBox->isChecked()); m_Tracker->SetSeedsPerVoxel(m_Controls->m_SeedsPerVoxelBox->value()); m_Tracker->SetStepSize(m_Controls->m_StepSizeBox->value()); m_Tracker->SetSamplingDistance(m_Controls->m_SamplingDistanceBox->value()); m_Tracker->SetUseStopVotes(m_Controls->m_StopVotesBox->isChecked()); m_Tracker->SetOnlyForwardSamples(m_Controls->m_FrontalSamplesBox->isChecked()); m_Tracker->SetTrialsPerSeed(m_Controls->m_TrialsPerSeedBox->value()); m_Tracker->SetMaxNumTracts(m_Controls->m_NumFibersBox->value()); m_Tracker->SetNumberOfSamples(m_Controls->m_NumSamplesBox->value()); m_Tracker->SetTrackingHandler(m_TrackingHandler); m_Tracker->SetLoopCheck(m_Controls->m_LoopCheckBox->value()); m_Tracker->SetAngularThreshold(m_Controls->m_AngularThresholdBox->value()); m_Tracker->SetMinTractLength(m_Controls->m_MinTractLengthBox->value()); m_Tracker->SetUseOutputProbabilityMap(m_Controls->m_OutputProbMap->isChecked()); m_ParentNode = m_InputImageNodes.at(0); m_TrackingThread.start(QThread::LowestPriority); }