Difference between revisions of "2008 Winter Project Week:microslicer 3"

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* The Ohio State University: Kishore Mosaliganti, Raghu Machiraju
 
* The Ohio State University: Kishore Mosaliganti, Raghu Machiraju
 
* Kitware: Brad Davis, Stephen Aylward
 
* Kitware: Brad Davis, Stephen Aylward
* Harvard: Steve Pieper  
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* BWH: Steve Pieper  
  
 
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Latest revision as of 02:32, 27 December 2007

Home < 2008 Winter Project Week:microslicer 3
Mammary Duct of Mouse


Key Investigators

  • The Ohio State University: Kishore Mosaliganti, Raghu Machiraju
  • Kitware: Brad Davis, Stephen Aylward
  • BWH: Steve Pieper

Objective

We have developed techniques to achieve cell/nuclei segmentations in microscopic images. Often, nuclei and cells appear as overlapping structures and splitting them apart is a non-trivial problem in image analysis. The microscopy modalities of interest include light, confocal and phase-contrast microscopy.

We have also work on characterizing biological micro-structure in terms of micro-components. This helps us to perform tissue segmentations, clonal population segmentation and tracking. Once again, we propose to incorporate such techniques borrowed from material science and spatial statistics into the microscopy image analysis workflows.

The objectives of this project are to port the ITK-based cell segmentation and micro-structure characterization code to Slicer3 framework.

Approach, Plan

Our approach is based upon using image tessellations and micro-structure characterization algorithms widely used in the material science community. These algorithms help us understand biological organization in terms of component packing densities, arrangements and spatial distributions. The algorithms are detailed in the references provided below. Our main purpose at the Project Week is to work with our collaborators in order to define the scope of this project, decide upon the details of the microSlicer framework in Slicer3, and implement our current developed code into the Slicer3 framework.

Progress

We have currently implemented the cell segmentation algorithm using Geodesics Active Contours and Image-based Voronoi Tessellations in the ITK framework. We have also implemented the microstructure characterization algorithms using the N-Point Correlation functions in ITK. Currently, we are working on building a cell shape model to use in cell segmentations.



References

  • Tensor Classification of N-point Correlation Function features for Histology Tissue Segmentation. K. Mosaliganti, F. Janoos, O. Irfanoglu, R. Ridgway, R. Machiraju, K. Huang, J. Saltz, Gustavo Leone and M. Ostrowski. In review for the Special Issue on Medical Image Analysis with Applications in Biology, Journal of Medical Image Analysis.
  • Visualization of Cellular Biology Structures from Optical Microscopy Data. K. Mosaliganti, L. Cooper, R. Sharp, R. Machiraju, K. Huang and Gustavo Leone. In review at the IEEE Transactions in Visualization and Computer Graphics.
  • Geometry-driven Visualization of Microscopic Structures in Biology. K. Mosaliganti, R. Machiraju, K. Huang and Gustavo Leone. In review at the Workshop on Knowledge-Assisted Visualization, IEEE Visualization Conference, Sacramento, California, 2007.
  • Automated Quantification of Colony Growth in Clonogenic Assays. K. Mosaliganti, J. Chen, F. Janoos, R. Machiraju, W. Xia, X. Xu, K. Huang. Workshop on Medical Image Analysis with Applications in Biology, 2007, Piscatway, Rutgers, New Jersey, USA.
  • Histology Image Segmentation using the N-Point Correlation Functions. F. Janoos, O. Irfanoglu, K. Mosaliganti, R. Machiraju, K. Huang, P.Wenzel, A. de Bruin, G. Leone. In Proceedings of International Symposium of Biomedical Imaging (ISBI) 2007, Washington DC, USA.