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Fully Automatic Liver Volumetry Using 3D Level Set Segmentation for Differentiated Liver Tissue Types in Multiple Contrast MR Datasets

机译:使用3D水平集分割对多个对比MR数据集中的差异化肝组织类型进行全自动肝脏容量测定

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Modern epidemiological studies analyze a high amount of magnetic resonance imaging (MRI) data, which requires fully automatic segmentation methods to assist in organ volumetry. We propose a fully automatic two-step 3D level set algorithm for liver segmentation in MRI data that delineates liver tissue on liver probability maps and uses a distance transform based segmentation refinement method to improve segmentation results. MR intensity distributions in test subjects are extracted in a training phase to obtain prior information on liver, kidney and background tissue types. Probability maps are generated by using linear discriminant analysis and Bayesian methods. The algorithm is able to differentiate between normal liver tissue and fatty liver tissue and generates probability maps for both tissues to improve the segmentation results. The algorithm is embedded in a volumetry framework and yields sufficiently good results for use in epidemiological studies.
机译:现代流行病学研究分析了大量的磁共振成像(MRI)数据,这需要全自动的分割方法来协助器官容积测量。我们提出了一种用于MRI数据中肝脏分割的全自动两步3D水平集算法,该算法可在肝脏概率图上描绘肝脏组织,并使用基于距离变换的分割细化方法来改善分割结果。在训练阶段提取测试对象的MR强度分布,以获得有关肝脏,肾脏和背景组织类型的先验信息。概率图是通过使用线性判别分析和贝叶斯方法生成的。该算法能够区分正常肝组织和脂肪肝组织,并生成两种组织的概率图以改善分割结果。该算法被嵌入到一个体积分析框架中,并产生了足够好的结果,可用于流行病学研究。

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