This resubmitted proposal for a phased-innovation award is to improve an algorithm for estimating non-rigid deformable motion, defined as motion where different parts of a biological specimen move at different rates or in different directions. The algorithm, developed by the PI (a computer scientist) and Co-PI (a biologist), is based on novel image processing techniques that combine tensor analysis with robust matching followed by motion interpolation to calculate dense velocity fields from a stack of (nine) successive images treated as a single image volume. Velocities are calculated at all pixels in the image along with an estimate of statistical confidence. The algorithm has been applied by the Co-PI to the deformable motion caused by the expansion of the plant root, and has revealed new insights and unexpected features of that process.
The specific aims of the proposal are: 1) To generalize the algorithm by applying it to other examples, particularly to animal tissue culture cells moving in vitro and to neural crest cells migrating within the embryo. 2) To improve the algorithm computationally and develop adaptive routines with self-tuning parameters so that images having different textural features and motion quality can be handled. 3) To validate and evaluate the algorithm. And 4) To port the software to different platforms and provide a functional user interface, including flexibility to visualize the output graphically. Inspired by NIH-Image, we will make the software available for scientific evaluation (web-based downloads), and provide user driven improvements for biological deformable motion estimation. Software for estimating motion has focused on rigid motion, such as the movement of a car on a highway, or a bead along a microtubule, and algorithms for rigid motion are well known and available commercially. Quantifying the deformable motion typical of cells is difficult because the object changes as it moves. Current work on non-rigid motion is an active research area in computer science with applications in robot vision, computer graphics, and atmospheric science. However, development of non-rigid algorithms for images of relevance to biomedicine have been limited. Deformable motion is a hall-mark of biology, occurring in growth, embryogenesis, wound-healing, and metastasis, as well as in the movement of blood, organs, and whole organisms. Animal cell migration and guidance is the focus of considerable research on physiology and pathology. Quantifying motility algorithmically, at high accuracy, and at essentially every pixel of an image, should enjoy myriad applications throughout biomedicine.

Agency
National Institute of Health (NIH)
Institute
National Institute of Biomedical Imaging and Bioengineering (NIBIB)
Type
Exploratory/Developmental Grants Phase II (R33)
Project #
5R33EB000573-03
Application #
6922077
Study Section
Special Emphasis Panel (ZRG1-SSS-H (90))
Program Officer
Haller, John W
Project Start
2003-07-15
Project End
2008-06-30
Budget Start
2005-07-01
Budget End
2008-06-30
Support Year
3
Fiscal Year
2005
Total Cost
$190,930
Indirect Cost
Name
University of Missouri-Columbia
Department
Biostatistics & Other Math Sci
Type
Schools of Engineering
DUNS #
153890272
City
Columbia
State
MO
Country
United States
Zip Code
65211
Kassim, Yasmin M; Surya Prasath, V B; Pelapur, Rengarajan et al. (2016) Random Forests for Dura Mater Microvasculature Segmentation Using Epifluorescence Images. Conf Proc IEEE Eng Med Biol Soc 2016:2901-2904
Meena, Sachin; Surya Prasath, V B; Kassim, Yasmin M et al. (2016) Multiquadric Spline-Based Interactive Segmentation of Vascular Networks. Conf Proc IEEE Eng Med Biol Soc 2016:5913-5916
Kassim, Yasmin M; Surya Prasath, V B; Glinskii, Olga V et al. (2016) Confocal Vessel Structure Segmentation with Optimized Feature Bank and Random Forests. IEEE Appl Imag Pattern Recognit Workshop 2016:
Thutupalli, Shashi; Sun, Mingzhai; Bunyak, Filiz et al. (2015) Directional reversals enable Myxococcus xanthus cells to produce collective one-dimensional streams during fruiting-body formation. J R Soc Interface 12:20150049
Pelapur, Rengarajan; Prasath, V B Surya; Bunyak, Filiz et al. (2014) Multi-focus image fusion using epifluorescence microscopy for robust vascular segmentation. Conf Proc IEEE Eng Med Biol Soc 2014:4735-8
Jaeger, Stefan; Karargyris, Alexandros; Candemir, Sema et al. (2014) Automatic tuberculosis screening using chest radiographs. IEEE Trans Med Imaging 33:233-45
Hong, Zhongkui; Sun, Zhe; Li, Min et al. (2014) Vasoactive agonists exert dynamic and coordinated effects on vascular smooth muscle cell elasticity, cytoskeletal remodelling and adhesion. J Physiol 592:1249-66
Candemir, Sema; Jaeger, Stefan; Palaniappan, Kannappan et al. (2014) Lung segmentation in chest radiographs using anatomical atlases with nonrigid registration. IEEE Trans Med Imaging 33:577-90
Hong, Zhongkui; Ersoy, Ilker; Sun, Mingzhai et al. (2013) Influence of membrane cholesterol and substrate elasticity on endothelial cell spreading behavior. J Biomed Mater Res A 101:1994-2004
Bunyak, Filiz; Palaniappan, Kannappan (2009) Efficient Segmentation Using Feature-based Graph Partitioning Active Contours. Proc IEEE Int Conf Comput Vis 2009:873-880

Showing the most recent 10 out of 29 publications