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Computer-aided detection of initial polyp candidates with level set-based adaptive convolution

机译:基于级别的自适应卷积的计算机辅助检测初始息肉候选

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In order to eliminate or weaken the interference between different topological structures on the colon wall, adaptive and normalized convolution methods were used to compute the first and second order spatial derivatives of computed tomographic colonography images, which is the beginning of various geometric analyses. However, the performance of such methods greatly depends on the single-layer representation of the colon wall, which is called the starting layer (SL) in the following text. In this paper, we introduce a level set-based adaptive convolution (LSAC) method to compute the spatial derivatives, in which the level set method is employed to determine a more reasonable SL. The LSAC was applied to a computer-aided detection (CAD) scheme to detect the initial polyp candidates, and experiments showed that it benefits the CAD scheme in both the detection sensitivity and specificity as compared to our previous work.
机译:为了消除或削弱结肠壁上的不同拓扑结构之间的干扰,使用自适应和归一化的卷积方法来计算计算机断层形成的第一和二阶空间衍生物,这是各种几何分析的开始。然而,这种方法的性能大大取决于结肠壁的单层表示,其称为下文中的起始层(SL)。在本文中,我们介绍基于级别的基于的自适应卷积(LSAC)方法来计算空间衍生物,其中采用电平集方法来确定更合理的SL。将LSAC应用于计算机辅助检测(CAD)方案以检测初始息肉候选者,并且实验表明它与我们之前的工作相比,它有利于检测灵敏度和特异性的CAD方案。

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