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基于双重优化的三维非刚性磁共振-超声融合配准。

Three-Dimensional Nonrigid MR-TRUS Registration Using Dual Optimization.

出版信息

IEEE Trans Med Imaging. 2015 May;34(5):1085-95. doi: 10.1109/TMI.2014.2375207. Epub 2014 Nov 26.

DOI:10.1109/TMI.2014.2375207
PMID:25438308
Abstract

In this study, we proposed an efficient nonrigid magnetic resonance (MR) to transrectal ultrasound (TRUS) deformable registration method in order to improve the accuracy of targeting suspicious regions during a three dimensional (3-D) TRUS guided prostate biopsy. The proposed deformable registration approach employs the multi-channel modality independent neighborhood descriptor (MIND) as the local similarity feature across the two modalities of MR and TRUS, and a novel and efficient duality-based convex optimization-based algorithmic scheme was introduced to extract the deformations and align the two MIND descriptors. The registration accuracy was evaluated using 20 patient images by calculating the TRE using manually identified corresponding intrinsic fiducials in the whole gland and peripheral zone. Additional performance metrics [Dice similarity coefficient (DSC), mean absolute surface distance (MAD), and maximum absolute surface distance (MAXD)] were also calculated by comparing the MR and TRUS manually segmented prostate surfaces in the registered images. Experimental results showed that the proposed method yielded an overall median TRE of 1.76 mm. The results obtained in terms of DSC showed an average of 80.8±7.8% for the apex of the prostate, 92.0±3.4% for the mid-gland, 81.7±6.4% for the base and 85.7±4.7% for the whole gland. The surface distance calculations showed an overall average of 1.84±0.52 mm for MAD and 6.90±2.07 mm for MAXD.

摘要

在这项研究中,我们提出了一种高效的非刚性磁共振(MR)到经直肠超声(TRUS)变形配准方法,以提高在三维(3-D)TRUS 引导前列腺活检中靶向可疑区域的准确性。所提出的变形配准方法采用多通道模态独立邻域描述符(MIND)作为 MR 和 TRUS 两种模态之间的局部相似性特征,并引入了一种新颖而有效的基于对偶的凸优化算法方案来提取变形并对齐两个 MIND 描述符。通过计算在整个腺体和周围区域中手动识别的内在基准的 TRE,使用 20 个患者图像评估了配准的准确性。还通过比较配准图像中手动分割的 MR 和 TRUS 前列腺表面,计算了其他性能指标[骰子相似系数(DSC)、平均绝对表面距离(MAD)和最大绝对表面距离(MAXD)]。实验结果表明,该方法的总体中位数 TRE 为 1.76mm。DSC 方面的结果显示,前列腺顶点的平均得分分别为 80.8±7.8%,中部为 92.0±3.4%,底部为 81.7±6.4%,整个腺体为 85.7±4.7%。表面距离计算的总体平均值分别为 MAD 的 1.84±0.52mm 和 MAXD 的 6.90±2.07mm。

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