基于改进C-V模型的肾脏图像分割方法

Hui Yu, Jian Jiao, Yuzhen Cao
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引用次数: 0

摘要

肾脏医学图像分割是相关肾脏疾病医学图像分析和无创计算机辅助诊断系统的关键步骤。在传统Chan-Vese模型的基础上,根据CT序列图像切片间肾脏组织的连续性和冗余性,结合局部统计信息改进曲线演化,结合基于窄带演化曲线的初始轮廓和利用相邻切片生物连续性的终止条件,提出了一种基于能量最小化的肾脏组织分割模型。该模型用于处理24组标准分割测试数据集。分割结果表明,与传统模型相比,平均PRA指数和DSC指数均有提高,分别达到0.961和94.68%,能够高效、准确地定位和分割肾组织。
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Method of Kidney Image Segmentation Based on Improved C-V Model
Kidney medical image segmentation is the key step of medical image analysis and non-invasive computer aided diagnosis system in related kidney diseases. Based on the traditional Chan-Vese model, according to the continuity and redundancy of the kidney tissues between slices in the CT sequence images, combined with local statistical information for improving the curve evolution, combined with the initial contour based on a narrowband evolution curve and the termination conditions by using the biological continuity of adjacent slices, a kidney tissue segmentation model based on energy minimization was proposed. The model was used to process the 24 sets of standard segmentation test data sets. The segmentation results showed that the average PRA and DSC indices have improved over traditional models, reached 0.961 and 94.68%, respectively, the kidney tissue could be located and segmented efficiently and accurately.
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