Purpose: To develop a computerized image analysis method to assess the quantity and distribution of abdominal fat tissues in an obese (ob/ob) mouse model relevant to 7 T magnetic resonance imaging (MRI). Materials and Methods: A novel segmental shape model is presented that separates visceral adipose tissue (VAT) from subcutaneous adipose tissue (SAT). With shape and distance constraints, it deforms a contour inwards from the skin to the muscle wall and separates the connecting adipose tissues in an ob/ob mouse. The fat tissues are segmented by the adaptive fuzzy C means method to compensate for intensity variation in adipose images. The results were obtained by logical operations applied on the extracted fat images and the separated adipose masks. Results: The method was validated by manual segmentations on 109 axial slice images from 7 ob/ob mice. The average correlation coefficients of measured sizes between the automatic and manual results for total adipose tissue (TAT) is 0.907; SAT is 0.944; VAT is 0. 950. The average Dice coefficient of their positions for TAT is 0.941, SAT is 0.935, and VAT is 0.920. Conclusion: The automated results correlate well with manual segmentations and the method can be used to increase laboratory automation. Copyright © 2011 Wiley-Liss, Inc.
CITATION STYLE
Tang, Y., Sharma, P., Nelson, M. D., Simerly, R., & Moats, R. A. (2011). Automatic abdominal fat assessment in obese mice using a segmental shape model. Journal of Magnetic Resonance Imaging, 34(4), 866–873. https://doi.org/10.1002/jmri.22690
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