Digital Medical Research Center, School of Basic Medical Science, Fudan University, Shanghai, 200032, China.
Shanghai Key Laboratory of Medical Image Computing and Computer-Assisted Intervention, Shanghai, 200032, China.
Int J Comput Assist Radiol Surg. 2017 Dec;12(12):2157-2167. doi: 10.1007/s11548-017-1661-y. Epub 2017 Aug 31.
Multimodal image registration plays an important role in image-guided interventions/therapy and atlas building, and it is still a challenging task due to the complex intensity variations in different modalities.
The paper addresses the problem and proposes a simple, compact, fast and generally applicable modality-independent binary gradient angle descriptor (BGA) based on the rationale of gradient orientation alignment. The BGA can be easily calculated at each voxel by coding the quadrant in which a local gradient vector falls, and it has an extremely low computational complexity, requiring only three convolutions, two multiplication operations and two comparison operations. Meanwhile, the binarized encoding of the gradient orientation makes the BGA more resistant to image degradations compared with conventional gradient orientation methods. The BGA can extract similar feature descriptors for different modalities and enable the use of simple similarity measures, which makes it applicable within a wide range of optimization frameworks.
The results for pairwise multimodal and monomodal registrations between various images (T1, T2, PD, T1c, Flair) consistently show that the BGA significantly outperforms localized mutual information. The experimental results also confirm that the BGA can be a reliable alternative to the sum of absolute difference in monomodal image registration. The BGA can also achieve an accuracy of [Formula: see text], similar to that of the SSC, for the deformable registration of inhale and exhale CT scans. Specifically, for the highly challenging deformable registration of preoperative MRI and 3D intraoperative ultrasound images, the BGA achieves a similar registration accuracy of [Formula: see text] compared with state-of-the-art approaches, with a computation time of 18.3 s per case.
The BGA improves the registration performance in terms of both accuracy and time efficiency. With further acceleration, the framework has the potential for application in time-sensitive clinical environments, such as for preoperative MRI and intraoperative US image registration for image-guided intervention.
多模态图像配准在图像引导干预/治疗和图谱构建中起着重要作用,但由于不同模态之间复杂的强度变化,它仍然是一项具有挑战性的任务。
本文针对该问题提出了一种简单、紧凑、快速且普遍适用的基于梯度方向对齐原理的模态无关二进制梯度角描述符(BGA)。BGA 可以通过对局部梯度向量所在象限进行编码,很容易地在每个体素上计算,并且具有极低的计算复杂度,只需要三次卷积、两次乘法运算和两次比较运算。同时,梯度方向的二值化编码使 BGA 比传统的梯度方向方法更能抵抗图像退化。BGA 可以为不同的模态提取相似的特征描述符,并使简单的相似性度量得以应用,从而使其适用于广泛的优化框架。
各种图像(T1、T2、PD、T1c、Flair)之间的成对多模态和单模态配准结果均表明,BGA 显著优于局部互信息。实验结果还证实,BGA 可以作为单模态图像配准中绝对差和的可靠替代方法。BGA 还可以实现与 SSC 相似的精度[公式:见正文],用于吸气和呼气 CT 扫描的可变形配准。具体来说,对于术前 MRI 和 3D 术中超声图像的高挑战性可变形配准,BGA 与最先进的方法相比实现了相似的[公式:见正文]配准精度,每个病例的计算时间为 18.3s。
BGA 提高了配准的准确性和时间效率。进一步加速后,该框架有可能应用于对时间敏感的临床环境中,例如用于图像引导干预的术前 MRI 和术中 US 图像配准。