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首页> 外文期刊>IEEE Transactions on Medical Imaging >A Nonlinear Biomechanical Model Based Registration Method for Aligning Prone and Supine MR Breast Images
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A Nonlinear Biomechanical Model Based Registration Method for Aligning Prone and Supine MR Breast Images

机译:基于非线性生物力学模型的俯卧位与仰卧位MR乳腺图像对齐方法

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Preoperative diagnostic magnetic resonance (MR) breast images can provide good contrast between different tissues and 3-D information about suspicious tissues. Aligning preoperative diagnostic MR images with a patient in the theatre during breast conserving surgery could assist surgeons in achieving the complete excision of cancer with sufficient margins. Typically, preoperative diagnostic MR breast images of a patient are obtained in the prone position, while surgery is performed in the supine position. The significant shape change of breasts between these two positions due to gravity loading, external forces and related constraints makes the alignment task extremely difficult. Our previous studies have shown that either nonrigid intensity-based image registration or biomechanical modelling alone are limited in their ability to capture such a large deformation. To tackle this problem, we proposed in this paper a nonlinear biomechanical model-based image registration method with a simultaneous optimization procedure for both the material parameters of breast tissues and the direction of the gravitational force. First, finite element (FE) based biomechanical modelling is used to estimate a physically plausible deformation of the pectoral muscle and the major deformation of breast tissues due to gravity loading. Then, nonrigid intensity-based image registration is employed to recover the remaining deformation that FE analyses do not capture due to the simplifications and approximations of biomechanical models and the uncertainties of external forces and constraints. We assess the registration performance of the proposed method using the target registration error of skin fiducial markers and the Dice similarity coefficient (DSC) of fibroglandular tissues. The registration results on prone and supine MR image pairs are compared with those from two alternative nonrigid registration methods for five breasts. Overall, the proposed algorithm achieved the best registration - erformance on fiducial markers (target registration error, $8.44 pm 5.5$ mm for 45 fiducial markers) and higher overlap rates on segmentation propagation of fibroglandular tissues (DSC value $> 82%$).
机译:术前诊断性磁共振(MR)乳房图像可在不同组织之间以及有关可疑组织的3-D信息之间提供良好的对比度。在保乳手术期间将术前诊断MR图像与剧院中的患者对齐可以帮助外科医生以足够的余量实现癌症的完全切除。通常,在俯卧位获得患者的术前诊断MR乳房图像,而在仰卧位进行手术。由于重力载荷,外力和相关的限制,这两个位置之间的乳房发生了明显的形状变化,这使得对齐任务极为困难。我们以前的研究表明,无论是基于非刚度强度的图像配准还是仅通过生物力学建模,它们都无法捕获如此大的变形。为了解决这个问题,我们在本文中提出了一种基于非线性生物力学模型的图像配准方法,同时对乳腺组织的材料参数和重力方向进行了优化。首先,基于有限元(FE)的生物力学模型用于估计由于重力载荷而引起的胸肌的物理合理变形和乳房组织的主要变形。然后,基于生物力学模型的简化和近似以及外力和约束的不确定性,基于非刚性强度的图像配准可恢复有限元分析无法捕获的剩余变形。我们使用皮肤基准标记的目标配准误差和纤毛组织的Dice相似系数(DSC)来评估该方法的配准性能。将俯卧和仰卧MR图像对的配准结果与来自五个乳房的两种非刚性配准方法的配准结果进行比较。总体而言,所提出的算法实现了最佳的配准-在基准标记上的性能(目标配准误差,对于45个基准标记为$ 8.44 pm / 5.5 $ mm)和在腓肠组织的分割传播上具有更高的重叠率(DSC值$> 82%$)。

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