Title :
Automatic Segmentation of Antenatal 3-D Ultrasound Images
Author :
Anquez, J. ; Angelini, E.D. ; Grange, G. ; Bloch, Isabelle
Author_Institution :
Theraclion, Malakoff, France
Abstract :
The development of 3-D ultrasonic probes and 3-D ultrasound (3DUS) imaging offers new functionalities that call for specific image processing developments. In this paper, we propose an original method for the segmentation of the utero-fetal unit (UFU) from 3DUS volumes, acquired during the first trimester of gestation. UFU segmentation is required for a number of tasks, such as precise organ delineation, 3-D modeling, quantitative measurements, and evaluation of the clinical impact of 3-D imaging. The segmentation problem is formulated as the optimization of a partition of the image into two classes of tissues: the amniotic fluid and the fetal tissues. A Bayesian formulation of the partition problem integrates statistical models of the intensity distributions in each tissue class and regularity constraints on the contours. An energy functional is minimized using a level set implementation of a deformable model to identify the optimal partition. We propose to combine Rayleigh, Normal, Exponential, and Gamma distribution models to compute the region homogeneity constraints. We tested the segmentation method on a database of 19 antenatal 3DUS images. Promising results were obtained, showing the flexibility of the level set formulation and the interest of learning the most appropriate statistical models according to the idiosyncrasies of the data and the tissues. The segmentation method was shown to be robust to different types of initialization and to provide accurate results, with an average overlap measure of 0.89 when comparing with manual segmentations.
Keywords :
Bayes methods; biomedical ultrasonics; differential equations; image segmentation; medical image processing; minimisation; obstetrics; statistical distributions; 3D imaging clinical impact evaluation; 3D modeling; 3D ultrasonic probes; 3D ultrasound image automatic segmentation; 3D ultrasound imaging; Bayesian formulation; Gamma distribution model; Rayleigh distribution model; amniotic fluid; antenatal 3D ultrasound images; deformable model level set implementation; energy functional minimisation; exponential distribution model; fetal tissues; gestation first trimester; image processing developments; intensity distribution; normal distribution model; optimal partition; optimization problem; organ delineation; quantitative measurements; region homogeneity constraints; segmentation problem; statistical models; utero-fetal unit segmentation; Computational modeling; Databases; Fetus; Histograms; Image segmentation; Manuals; Ultrasonic imaging; 3-D ultrasonic imaging; Antenatal imaging; biomedical image processing; image segmentation; level sets; Bayes Theorem; Databases, Factual; Female; Humans; Imaging, Three-Dimensional; Models, Biological; Pregnancy; Statistics, Nonparametric; Ultrasonography, Prenatal;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2012.2237400