Don M. Tucker’s research while affiliated with Electrical Geodesics Incorporated and other places

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Publications (1)


BrainK GUI.
BrainK architecture.
MRI segmentation workflow.
MRI segmentation. (a) MR image. (b) RT result on the foreground. (c) MRI segmentation result.
MRI segmentation. (a) MR image. (b) RT result on the foreground. (c) MRI segmentation result.

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BrainK for Structural Image Processing: Creating Electrical Models of the Human Head
  • Article
  • Full-text available

May 2016

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195 Reads

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26 Citations

Computational Intelligence and Neuroscience

Kai Li

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Don M. Tucker

BrainK is a set of automated procedures for characterizing the tissues of the human head from MRI, CT, and photogrammetry images. The tissue segmentation and cortical surface extraction support the primary goal of modeling the propagation of electrical currents through head tissues with a finite difference model (FDM) or finite element model (FEM) created from the BrainK geometries. The electrical head model is necessary for accurate source localization of dense array electroencephalographic (dEEG) measures from head surface electrodes. It is also necessary for accurate targeting of cerebral structures with transcranial current injection from those surface electrodes. BrainK must achieve five major tasks: image segmentation, registration of the MRI, CT, and sensor photogrammetry images, cortical surface reconstruction, dipole tessellation of the cortical surface, and Talairach transformation. We describe the approach to each task, and we compare the accuracies for the key tasks of tissue segmentation and cortical surface extraction in relation to existing research tools (FreeSurfer, FSL, SPM, and BrainVisa). BrainK achieves good accuracy with minimal or no user intervention, it deals well with poor quality MR images and tissue abnormalities, and it provides improved computational efficiency over existing research packages.

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Citations (1)


... Figure 13 shows the rst, automated, step in the head conductivity model work ow, which is the registration of the individual's CT with the MRI to provide an accurate characterization of the bone density of the skull, the least conductive tissue of the head. The CT is typically only available in clinical settings; for research studies to avoid ionizing radiation, an atlas CT is registered to the individual's MRI as shown in Fig. 13. Figure 14 shows the automated tissue segmentation and cortical surface extraction with the procedures developed by Kai Li and described by Li and associates [33]. This interface allows visual inspection of the accuracy of segmentation, with options for manual editing to correct errors (which are unusual unless there are tumors, cysts, or previous brain resections as in epilepsy surgery). ...

Reference:

High-Resolution EEG Characterization of Sleep Neurophysiology
BrainK for Structural Image Processing: Creating Electrical Models of the Human Head

Computational Intelligence and Neuroscience