Title :
Segmentation and Tracing of Single Neurons from 3D Confocal Microscope Images
Author :
Basu, Sreetama ; Condron, Barry ; Aksel, A. ; Acton, Scott T.
Author_Institution :
Center for Bioimage Inf., Carnegie Mellon Univ., Pittsburgh, PA, USA
Abstract :
In order to understand the brain, we need to first understand the morphology of neurons. In the neurobiology community, there have been recent pushes to analyze both neuron connectivity and the influence of structure on function. Currently, a technical roadblock that stands in the way of these studies is the inability to automatically trace neuronal structure from microscopy. On the image processing side, proposed tracing algorithms face difficulties in low contrast, indistinct boundaries, clutter, and complex branching structure. To tackle these difficulties, we develop Tree2Tree, a robust automatic neuron segmentation and morphology generation algorithm. Tree2Tree uses a local medial tree generation strategy in combination with a global tree linking to build a maximum likelihood global tree. Recasting the neuron tracing problem in a graph-theoretic context enables Tree2Tree to estimate bifurcations naturally, which is currently a challenge for current neuron tracing algorithms. Tests on cluttered confocal microscopy images of Drosophila neurons give results that correspond to ground truth within a margin of ±2.75% normalized mean absolute error.
Keywords :
bifurcation; biomedical optical imaging; brain; image segmentation; maximum likelihood estimation; medical image processing; neurophysiology; optical microscopy; trees (mathematics); 3D confocal microscope images; Drosophila neurons; Tree2Tree; bifurcations; brain; cluttered confocal microscopy images; complex branching structure; graph-theoretic context; image processing side; local medial tree generation strategy; maximum likelihood global tree; morphology generation algorithm; neurobiology community; neuron connectivity; neuron morphology; neuron tracing algorithms; neuron tracing problem recasting; neuronal structure; robust automatic neuron segmentation; single neuron segmentation; single neuron tracing; Brightness; Clutter; Image edge detection; Image segmentation; Morphology; Neurons; Shape; Neuron image analysis; neuron tracing; segmentation; Algorithms; Animals; Artificial Intelligence; Cytological Techniques; Drosophila; Imaging, Three-Dimensional; Microscopy, Confocal; Neurons;
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/TITB.2012.2209670