A Deformable Model for Automatic CT Liver Extraction1
Rationale and Objectives
This study was performed to design an automatic liver region extraction system to facilitate clinical liver size estimation and further serve as a prestage for liver reconstruction and volume estimation.
Materials and Methods
We present a modification of the well-known snakes algorithm for extracting liver regions in noisy CT images. Our modification addresses the issues of selection of the control points on an estimate of the contour and the determination of the weighting coefficients. The weighting coefficients are determined dynamically on the basis of the distance between the control points and the local curvature of the contour.
Results
The proposed method was used in extracting liver regions from 98 cross-sectional abdominal images. The overall performance was estimated by comparisons with original liver regions.
Conclusion
The deformable model method enables an efficient and effective automatic liver region extraction in noisy environments. This approach eliminates human-in-the loop, which is the common practice for the majority of current methods.
Key Words: Computed tomography (CT) , liver , extraction , reconstruction , deformable model , segmentation , energy minimization
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PII: S1076-6332(05)00405-8
doi:10.1016/j.acra.2005.05.005
© 2005 AUR. Published by Elsevier Inc. All rights reserved.
