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Segmentation of Knee MRI using Structure Enhanced Local Phase Filtering

机译:使用结构增强型局部相位滤波的膝部MRI分割

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The segmentation of bone surfaces from magnetic resonance imaging (MRI) data has applications in the quantitative measurement of knee osteoarthritis, surgery planning for patient specific total knee arthroplasty and its subsequent fabrication of artificial implants. However, due to the problems associated with MRI imaging such as low contrast between bone and surrounding tissues, noise, bias fields, and the partial volume effect, segmentation of bone surfaces continues to be a challenging operation. In this paper, a new framework is presented for the enhancement of knee MRI scans prior to segmentation in order to obtain high contrast bone images. During the first stage, a new contrast enhanced relative total variation (RTV) regularization method is used in order to remove textural noise from the bone structures and surrounding soft tissue interface. This salient bone edge information is further enhanced using a sparse gradient counting method based on L_0 gradient minimization, which globally controls how many non-zero gradients are resulted in order to approximate prominent bone structures in a structure-sparsity-management manner. The last stage of the framework involves incorporation of local phase bone boundary information in order to provide an intensity invariant enhancement of contrast between the bone and surrounding soft tissue. The enhanced images are segmented using a fast random walker algorithm. Validation against expert segmentation was performed on 10 clinical knee MRI images, and achieved a mean dice similarity coefficient (DSC) of 0.975.
机译:从磁共振成像(MRI)数据进行的骨表面分割在膝关节骨关节炎的定量测量,针对患者特定的全膝关节置换术的手术计划及其随后的人工植入物的制造中具有应用。但是,由于与MRI成像相关的问题,例如骨骼与周围组织之间的对比度低,噪声,偏置场和部分体积效应,骨骼表面的分割仍然是一项具有挑战性的操作。在本文中,提出了一种新的框架,用于在分割之前增强膝部MRI扫描,以获得高对比度的骨图像。在第一阶段中,为了消除骨骼结构和周围软组织界面的纹理噪声,使用了一种新的对比度增强的相对总变化(RTV)正则化方法。使用基于L_0梯度最小化的稀疏梯度计数方法可进一步增强该显着的骨边缘信息,该方法可全局控制产生多少个非零梯度,以便以结构稀疏性管理方式近似突出的骨骼结构。框架的最后阶段涉及合并局部相骨边界信息,以在骨骼和周围的软组织之间提供对比度的强度不变的增强。使用快速随机沃克算法对增强图像进行分割。在10幅临床膝部MRI图像上进行了针对专家分割的验证,并获得了0.975的平均骰子相似系数(DSC)。

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