DocumentCode
1756456
Title
A Unified Graphical Models Framework for Automated Mitosis Detection in Human Embryos
Author
Moussavi, F. ; Yu Wang ; Lorenzen, P. ; Oakley, J. ; Russakoff, D. ; Gould, Stephen
Author_Institution
Auxogyn, Inc., Menlo Park, CA, USA
Volume
33
Issue
7
fYear
2014
fDate
41821
Firstpage
1551
Lastpage
1562
Abstract
Time lapse microscopy has emerged as an important modality for studying human embryo development, as mitosis events can provide insight into embryo health and fate. Mitosis detection can happen through tracking of embryonic cells (tracking based), or from low level image features and classifiers (tracking free). Tracking based approaches are challenged by high dimensional search space, weak features, outliers, missing data, multiple deformable targets, and weak motion model. Tracking free approaches are data driven and complement tracking based approaches. We pose mitosis detection as augmented simultaneous segmentation and classification in a conditional random field (CRF) framework that combines both approaches. It uses a rich set of discriminative features and their spatiotemporal context. It performs a dual pass approximate inference that addresses the high dimensionality of tracking and combines results from both components. For 312 clinical sequences we measured division events to within 30 min and observed an improvement of 25.6% and a 32.9% improvement over purely tracking based and tracking free approach respectively, and close to an order of magnitude over a traditional particle filter. While our work was motivated by human embryo development, it can be extended to other detection problems in image sequences of evolving cell populations.
Keywords
biomedical optical imaging; cellular biophysics; feature extraction; graph theory; image classification; image segmentation; image sequences; inference mechanisms; medical image processing; object tracking; optical microscopy; random processes; spatiotemporal phenomena; CRF framework; automated mitosis detection; cell population detection problems; cell population evolution; conditional random field framework; dimensionality; discriminative features; division event measurement; dual pass approximate inference; embryo fate; embryo health; embryonic cell tracking; high dimensional search space; human embryo development; image classification; image features; image segmentation; image sequences; missing data; motion model; particle filter; spatiotemporal context; time lapse microscopy; tracking based approaches; tracking free approaches; unified graphical models framework; Computational modeling; Embryo; Feature extraction; Image segmentation; Shape; Target tracking; Data driven Monte Carlo; embryo tracking; graphical models; mitosis detection;
fLanguage
English
Journal_Title
Medical Imaging, IEEE Transactions on
Publisher
ieee
ISSN
0278-0062
Type
jour
DOI
10.1109/TMI.2014.2317836
Filename
6804678
Link To Document