Vanderbilt University, Department of Biomedical Engineering, Nashville, TN, USA; Vanderbilt Institute for Surgery and Engineering, Nashville, TN, USA.
Vanderbilt University, Department of Biomedical Engineering, Nashville, TN, USA; Vanderbilt Institute for Surgery and Engineering, Nashville, TN, USA; Memorial Sloan-Kettering Cancer Center, Department of Surgery, New York, NY, USA.
Med Image Anal. 2024 Aug;96:103221. doi: 10.1016/j.media.2024.103221. Epub 2024 May 26.
Image-guided surgery collocates patient-specific data with the physical environment to facilitate surgical decision making. Unfortunately, these guidance systems commonly become compromised by intraoperative soft-tissue deformations. Nonrigid image-to-physical registration methods have been proposed to compensate for deformations, but clinical utility requires compatibility of these techniques with data sparsity and temporal constraints in the operating room. While finite element models can be effective in sparse data scenarios, computation time remains a limitation to widespread deployment. This paper proposes a registration algorithm that uses regularized Kelvinlets, which are analytical solutions to linear elasticity in an infinite domain, to overcome these barriers. This algorithm is demonstrated and compared to finite element-based registration on two datasets: a phantom liver deformation dataset and an in vivo breast deformation dataset. The regularized Kelvinlets algorithm resulted in a significant reduction in computation time compared to the finite element method. Accuracy as evaluated by target registration error was comparable between methods. Average target registration errors were 4.6 ± 1.0 and 3.2 ± 0.8 mm on the liver dataset and 5.4 ± 1.4 and 6.4 ± 1.5 mm on the breast dataset for the regularized Kelvinlets and finite element method, respectively. Limitations of regularized Kelvinlets include the lack of organ-specific geometry and the assumptions of linear elasticity and infinitesimal strain. Despite limitations, this work demonstrates the generalizability of regularized Kelvinlets registration on two soft-tissue elastic organs. This method may improve and accelerate registration for image-guided surgery, and it shows the potential of using regularized Kelvinlets on medical imaging data.
图像引导手术将患者特定的数据与物理环境进行配准,以辅助手术决策。然而,这些引导系统通常会受到术中软组织变形的影响。已经提出了非刚性图像到物理的配准方法来补偿变形,但临床应用需要这些技术与手术室中数据稀疏和时间约束的兼容性。虽然有限元模型在稀疏数据情况下可以有效,但计算时间仍然是广泛应用的限制因素。本文提出了一种使用正则化 Kelvinlets 的配准算法,它是无限域中线性弹性的解析解,以克服这些障碍。该算法在两个数据集上进行了演示和与基于有限元的配准进行了比较:一个是肝脏变形的 phantom 数据集,另一个是体内乳房变形的数据集。与有限元方法相比,正则化 Kelvinlets 算法的计算时间显著减少。通过目标配准误差评估的准确性在两种方法之间相当。在肝脏数据集上,正则化 Kelvinlets 和有限元方法的平均目标配准误差分别为 4.6 ± 1.0 和 3.2 ± 0.8mm;在乳房数据集上,分别为 5.4 ± 1.4 和 6.4 ± 1.5mm。正则化 Kelvinlets 的局限性包括缺乏器官特异性几何形状以及线性弹性和无穷小应变的假设。尽管存在局限性,但这项工作证明了正则化 Kelvinlets 配准在两个软组织弹性器官上的通用性。该方法可能会改善和加速图像引导手术的配准,并展示了在医学成像数据上使用正则化 Kelvinlets 的潜力。