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A momentum-based diffeomorphic demons framework for deformable MR-CT image registration

机译:基于动力的微集形式恶魔框架可变形MR-CT图像配准

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Neuro-navigated procedures require a high degree of geometric accuracy but are subject to geometric error from complex deformation in the deep braine.g. regions about the ventricles due to egress of cerebrospinal fluid (CSF) upon neuroendoscopic approach or placement of a ventricular shunt. We report a multi-modality, diffeomorphic, deformable registration method using momentum-based acceleration of the Demons algorithm to solve the transformation relating preoperative MRI and intraoperative CT as a basis for high-precision guidance. The registration method (pMI-Demons) extends the mono-modality, diffeomorphic form of the Demons algorithm to multi-modality registration using pointwise mutual information (pMI) as a similarity metric. The method incorporates a preprocessing step to nonlinearly stretch CT image values and incorporates a momentum-based approach to accelerate convergence. Registration performance was evaluated in phantom and patient images: first, the sensitivity of performance to algorithm parameter selection (including update and displacement field smoothing, histogram stretch, and the momentum term) was analyzed in a phantom study over a range of simulated deformations; and second, the algorithm was applied to registration of MR and CT images for four patients undergoing minimally invasive neurosurgery. Performance was compared to two previously reported methods (free-form deformation using mutual information (MI-FFD) and symmetric normalization using mutual information (MI-SyN)) in terms of target registration error (TRE), Jacobian determinant (J), and runtime. The phantom study identified optimal or nominal settings of algorithm parameters for translation to clinical studies. In the phantom study, the pMI-Demons method achieved comparable registration accuracy to the reference methods and strongly reduced outliers in TRE (p < 0.001 in Kolmogorov-Smirnov test). Similarly, in the clinical study: median TRE = 1.54 mm (0.83-1.66 mm interquartile range, IQR) for pMI-Demons compared to 1.40 mm (1.02-1.67 mm IQR) for MI-FFD and 1.64 mm (0.90-1.92 mm IQR) for MI-SyN. The pMI-Demons and MI-SyN methods yielded diffeomorphic transformations (J > 0) that preserved topology, whereas MI-FFD yielded unrealistic (J < 0) deformations subject to tissue folding and tearing. Momentum-based acceleration gave a ~35% speedup of the pMI-Demons method, providing registration runtime of 10.5 min (reduced to 2.2 min on GPU), compared to 15.5 min for MI-FFD and 34.7 min for MI-SyN. The pMI-Demons method achieved registration accuracy comparable to MI-FFD and MI-SyN, maintained diffeomorphic transformation similar to MI-SyN, and accelerated runtime in a manner that facilitates translation to image-guided neurosurgery.
机译:神经导航的程序需要高度的几何精度,但是受到深层脑中复杂变形的几何误差的影响。由于脑脊液(CSF)在神经形态透镜方法中出现的脑室(CSF)的区域或室分流器的放置。我们报告了使用基于动力的DemoNs算法的多种方式,扩散,可变形的登记方法,解决了术前MRI和术中CT的转化为高精度引导的基础。注册方法(PMI-DEMONS)将DEMONS算法的单态,扩散形式形式扩展到使用点互相信息(PMI)作为相似度量的多模态注册。该方法包括预处理步骤,以非线性地拉伸CT图像值并包含基于动量的方法来加速收敛。在幻影和患者图像中评估了注册性能:首先,在一系列模拟变形的体验研究中分析了算法参数选择的性能的敏感性(包括更新和位移场平滑,直方图伸缩和动量术语);其次,将该算法应用于在经历微创神经外科的四名患者的MR和CT图像的登记。在目标登记误差(TRE),Jacobian确定剂(J)方面,将性能与两种先前报告的方法(使用互信息(MI-FFD)和使用互信息(MI-SYN)的对称归一成)进行比较运行。幻影研究确定了算法参数的最佳或标称设置,用于翻译到临床研究。在幻影研究中,PMI-Demons方法对参考方法实现了可比的登记精度,并且在TRE中强烈降低的异常值(Kolmogorov-Smirnov测试中的P <0.001)。同样,在临床研究中:PMI-Demons的中位Tre = 1.54 mm(IQR),用于MI-FFD的1.40 mm(1.02-1.67 mm IQR)和1.64 mm(0.90-1.92 mm IQR )对于mi-syn。 PMI-Demons和MI-SYN方法产生了保存拓扑的散晶变换(J> 0),而MI-FFD产生的不切实际(J <0)变形,受组织折叠和撕裂。动量基础加速度给出了PMI-Demons方法的加速〜35%,提供了10.5分钟的注册运行时间(在GPU上减少到2.2分钟),而MI-FFD的15.5分钟和MI-SYN的34.7分钟。 PMI-Demons方法实现了与MI-FFD和MI-SYN相当的配准精度,保持与MI-SYN类似的扩散晶体变换,并以有助于翻译到图像引导的神经外科的方式加速运行时间。

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