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Related Concept Videos

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Graphical Representation of Inequalities

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Updated: Jun 28, 2026

From Voxels to Knowledge: A Practical Guide to the Segmentation of Complex Electron Microscopy 3D-Data
12:08

From Voxels to Knowledge: A Practical Guide to the Segmentation of Complex Electron Microscopy 3D-Data

Published on: August 13, 2014

Model-based segmentation using graph representations.

D Seghers1, J Hermans, D Loeckx

  • 1Katholieke Universiteit Leuven, Faculty of Medicine, Medical Image Computing (Radiology-ESAT/PSI), University Hospital Gasthuisberg, Herestraat 49, B-3000 Leuven, Belgium. dieter.seghers@uz.kuleuven.ac.be

Medical Image Computing and Computer-Assisted Intervention : MICCAI ... International Conference on Medical Image Computing and Computer-Assisted Intervention
|November 5, 2008
PubMed
Summary
This summary is machine-generated.

This study introduces a novel supervised segmentation method using local shape models and landmark intensity descriptors. The approach effectively segments anatomical structures like hand bones and liver in medical images.

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Last Updated: Jun 28, 2026

From Voxels to Knowledge: A Practical Guide to the Segmentation of Complex Electron Microscopy 3D-Data
12:08

From Voxels to Knowledge: A Practical Guide to the Segmentation of Complex Electron Microscopy 3D-Data

Published on: August 13, 2014

Area of Science:

  • Medical image analysis
  • Computer vision
  • Computational anatomy

Background:

  • Accurate segmentation of anatomical structures is crucial for medical diagnosis and treatment planning.
  • Traditional global shape models struggle with complex anatomical variations and require extensive data.
  • Developing a generic and robust segmentation approach remains a significant challenge in medical imaging.

Purpose of the Study:

  • To present a generic supervised segmentation approach utilizing local shape models.
  • To incorporate both shape and landmark intensity information into an objective function.
  • To validate the proposed method on diverse medical imaging datasets.

Main Methods:

  • Representing objects as graphs with landmarks as vertices and relations as edges.
  • Employing a concatenation of local shape models to capture a priori shape information.
  • Formulating the objective function using a maximum a posteriori criterion with localized energies.
  • Discretizing the optimization problem by searching landmark candidates and solving with mean field annealing or dynamic programming.

Main Results:

  • The algorithm demonstrated successful hand bone segmentation from RX (radiography) datasets.
  • The method achieved accurate 3D liver segmentation from contrast-enhanced CT (computed tomography) images.
  • The use of local shape models proved effective in handling anatomical variations.

Conclusions:

  • The proposed generic supervised segmentation approach offers a flexible and robust solution for medical image analysis.
  • The method's ability to integrate local shape and intensity information enhances segmentation accuracy.
  • This technique shows promise for various clinical applications requiring precise anatomical segmentation.