2014 Summer Project Week:Image To Mesh Conversion for Brain MRI

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Home < 2014 Summer Project Week:Image To Mesh Conversion for Brain MRI

Key Investigators

  • Fotis Drakopoulos (CRTC)
  • Yixun Liu (CRTC)
  • Andrey Fedorov (BWH/SPL)
  • Ron Kikinis (BWH/SPL)
  • Nikos Chrisochoides (CRTC)

Project Description

This project generates a tetrahedral mesh from an input labeled image. The method consists of two components:

  • Body Centric Cubic (BCC) Mesh Generation

This component generates a Body Centric Cubic (BCC) mesh from a labeled image. Initially the generated mesh is homogeneous, that means does not distinguish different tissues. Later the component specifies which tissue each tetrahedron belongs to. Each tissue is capable of automatically adjusting its resolution based on its geometric complexity and the predefined subdivision criterion.

  • Mesh Compression (MC)

This component deforms an input tetrahedral mesh towards the boundaries of the input labeled image. Two point sets are extracted for the mesh deformation. The first (source point set) consists of the exterior and interior surface vertices of the input mesh. The second (target point set) consists of the exterior and interior surface edge points in the input labeled image. Then the input mesh is deformed by registering the source to the target point set using a Physics-Based Non-Rigid Registration method.

Objective

  • Develop an extension that implements the Image-To-Mesh Conversion.
  • The extension consists of two CLI modules: (1) BodyCentricCubic (BCC) mesh and (2) Mesh Compression (MC).

Approach, Plan

  • The current version of the extension supports a single-tissue mesh generation.
  • The future versions will support multi-tissue meshes.

Progress

References

  • Tetrahedral mesh generation for medical imaging.

Fedorov A., Chrisochoides N., Kikinis R., Warfield S. College of William and Mary; Computational Radiology Lab and Surgical Planning Lab, Brigham and Women's Hospital, Harvard Medical School

  • Mesh Deformation-based Multi-tissue Mesh Generation for Brain Images.

Yixun Liu, Panagiotis Foteinos, Andrey Chernikov and Nikos Chrisochoides. Engineering with Computers, Volume 28, pages 305-318, 2012.