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Venkatesh, and S.-c. Wang, “A semi-automated method for liver tumor segmentation based on 2D region growing with knowledge-based constraints” , presented at Workshop proceedings of the 11

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Bibliografia

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Venkatesh, and S.-c. Wang, “A semi-automated method for liver tumor segmentation based on 2D region growing with knowledge-based constraints” , presented at Workshop proceedings of the 11

th

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automatic method for liver tumor segmentation based on 2D region growing

with knowledge-based constraints” , 2005

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