MEDIP - Platform independent software system for medical image processing IKTA4-6/2001 The aim of the project is to develop an informatical background.

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Presentation transcript:

MEDIP - Platform independent software system for medical image processing IKTA4-6/2001 The aim of the project is to develop an informatical background to theoretical and applied studies in the field of multi-modal medical image processing, which results may lead to marketable products.

Consortium Department of Information Technology, University of Debrecen PET Center, University of Debrecen Mediso Medical Imaging System Ltd. Developers Department of Orthopedic Surgery, University of Debrecen Faculty of Health Sciences, Chair of Radiotherapy, Semmelweis University Faculty of Medicine Dept. of Radiology and Oncotherapy, Semmelweis University Test partners

finished sessions current session future sessions Sessions and their current status 1.Survey, problem specification 2.Modelling, system plans 3.Implementation 4.Implementation, optimisation 5.Fine tuning, testing, presentation Ses1 Ses2Ses3 Ses4 Ses5 Dependence Feedback Pert diagram

Qt 3.x GUI libray ANSI C++ source code project files Linux Makefiles Visal C++ project files Borland C++ project files CVS Session 1 Platform independent development environment and source code transport Irix Makefiles logical source code transport physical source code transport server client

Session 2 Model specification, system plans, research design Functional layer Graphic layer User interface system plan: functional layer system plan: visualization library system plan: complex development system system plan: demonstration programs image database Image database Demo1Demo2Demo3 complex development system

Finite element modelling for virtual surgery Selection of volume of interest based on image fusion 4D visualization of gated heart and lung inspections Demonstration programs

Dept. of Information Tech., UD Dept. of Orthopaedy, UD Demonstration program 1 Finite element modeling for virtual surgery

Demonstration program 1 FEM surgery planning frame program Login (database opening) Launching (opening new/existing profile) DICOM file import Image manipulation (morphological filtering) Creating geometric model Segmentation (automatic/manual)

Demonstration program 1 Surgery planning (virtual osteotomy) FEM contact 3D visualization, selecting VOI Adjusting parameters

Demonstration program 2 Selection of volume of interest based on image fusion Clinical expectations  Applying image fusion technique by the arbitrary combination of CT, MRI, SPECT and PET inspections  Interactive and automatic contour tracking and correction  2D and 3D visualization PET Center, UD Chair of Radiotherapy, SOTE

CT: reference coordinate system Transforming PET to CT Transforming MRI to CT Demonstration program 2 Image registration, contour tracking

menu toolbarpalette 1palette 2blending axial slice sagittal slice coronal slice montagedrawports Demonstration program 2 User interface, functionality 4 modality VOI plan CT, MRI, PET-FDG, PET-Metionin

Demonstration program 3 4D visualization of gated heart and lung inspection Clinical expectations  Meeting the requirements of the current routine diagnostics  DICOM communication  Parametric image visualization  3D/4D visualization  Automatism Mediso Medical Imaging Systems Ltd. Dept. of Radiology and Oncotherapy, SOTE

4D animation 3D visualization Region analysis DICOM communication 3D reconstruciton Demonstration program 3 4D visualization of gated heart and lung inspections

MEDIP - Platform independent software system for medical image processing IKTA4-6/2001 The End