DocumentCode
1533790
Title
Identifying Virus-Cell Fusion in Two-Channel Fluorescence Microscopy Image Sequences Based on a Layered Probabilistic Approach
Author
Godinez, W.J. ; Lampe, M. ; Koch, P. ; Eils, R. ; Muller, B. ; Rohr, K.
Author_Institution
Dept. Bioinf. & Functional Genomics, Univ. of Heidelberg, Heidelberg, Germany
Volume
31
Issue
9
fYear
2012
Firstpage
1786
Lastpage
1808
Abstract
The entry process of virus particles into cells is decisive for infection. In this work, we investigate fusion of virus particles with the cell membrane via time-lapse fluorescence microscopy. To automatically identify fusion for single particles based on their intensity over time, we have developed a layered probabilistic approach. The approach decomposes the action of a single particle into three abstractions: the intensity over time, the underlying temporal intensity model, as well as a high level behavior. Each abstraction corresponds to a layer and these layers are represented via stochastic hybrid systems and hidden Markov models. We use a maxbelief strategy to efficiently combine both representations. To compute estimates for the abstractions we use a hybrid particle filter and the Viterbi algorithm. Based on synthetic image sequences, we characterize the performance of the approach as a function of the image noise. We also characterize the performance as a function of the tracking error. We have also successfully applied the approach to real image sequences displaying pseudotyped HIV-1 particles in contact with host cells and compared the experimental results with ground truth obtained by manual analysis.
Keywords
biomedical optical imaging; biomembranes; cellular biophysics; diseases; fluorescence; hidden Markov models; image denoising; image sequences; maximum likelihood estimation; medical image processing; microorganisms; optical microscopy; particle filtering (numerical methods); probability; Viterbi algorithm; cell membrane; hidden Markov models; hybrid particle filter; image noise; infection; layered probabilistic approach; maxbelief strategy; pseudotyped HIV-1 particles; stochastic hybrid systems; synthetic image sequences; temporal intensity model; time-lapse ίuorescence microscopy; tracking error function; two-channel fluorescence microscopy image sequences; virus particles; virus-cell fusion; Approximation methods; Cells (biology); Computational modeling; Hidden Markov models; Microscopy; Predictive models; Stochastic processes; Behavior identification; biomedical imaging; microscopy images; tracking; virus particles; Algorithms; Bayes Theorem; Cell Fusion; Cell Tracking; HIV-1; HeLa Cells; Host-Pathogen Interactions; Humans; Markov Chains; Microscopy, Fluorescence; Models, Biological; Stochastic Processes; Virion; Virus Attachment; Virus Internalization;
fLanguage
English
Journal_Title
Medical Imaging, IEEE Transactions on
Publisher
ieee
ISSN
0278-0062
Type
jour
DOI
10.1109/TMI.2012.2203142
Filename
6213119
Link To Document