Wei Ziwen, Wu Xiaolong, Xing Ligang, Yu Jinming, Qian Junchao
Anhui Province Key Laboratory of Medical Physics and Technology, Institute of Health and Medical Technology, Hefei Institutes of Physical Science, Hefei Cancer Hospital, Chinese Academy of Sciences, Hefei, China.
Science Island Branch, Graduate School of University of Science and Technology of China, Hefei, China.
Quant Imaging Med Surg. 2024 Dec 5;14(12):8999-9020. doi: 10.21037/qims-24-596. Epub 2024 Nov 29.
Robust registration of thoracic computed tomography (CT) images is strongly impacted by motion during acquisition, high-density objects, and noise, particularly in lower-dose acquisitions. Despite the enhanced registration speed achieved by popular deep learning (DL) methods, their robustness is often neglected. This study aimed to develop a robust thoracic CT image registration algorithm to address the aforementioned issues.
A novel, anatomical structure-aware hierarchical registration. By this method, employing a divide-and-conquer approach, dissimilarity metrics, and regularization terms are selected for different regions based on their distinct image features and motion patterns. These terms are then innovatively reconstructed using the Welsch's function, which allows control over the penalty distribution on the loss values. Subsequently, a novel Welsch parameter update strategy is designed for the task of thoracic CT image registration, enabling dynamic sparsity in registration from coarse to fine levels to accommodate various levels of noise and sliding motion. Moreover, the majorization-minimization (MM) algorithm is used to handle the Welsch terms by constructing surrogate functions based on the current variable values for variable update, thereby reducing the complexity of optimization.
Experimental results on publicly available deformable image registration lab four-dimensional CT (DIR-Lab 4DCT) and chronic obstructive pulmonary disease (COPD) datasets with and without noise, showed that our proposed method achieves comparable performance to state-of-the-art methods in noise-free scenarios [1.14 and 1.19 mm compared to 1.14 and 1.35 mm target registration errors (TREs)], while demonstrating superior robustness in the presence of noise (1.78 and 2.38 mm compared to 2.00 and 3.31 mm TREs). Ablation studies also validated the effectiveness of each component in the method.
A novel and robust algorithm for thoracic CT image registration has been proposed, which has significant potential for valuable clinical applications, including surgical quantitative imaging.
胸部计算机断层扫描(CT)图像的稳健配准会受到采集过程中的运动、高密度物体和噪声的强烈影响,尤其是在低剂量采集时。尽管流行的深度学习(DL)方法提高了配准速度,但其稳健性往往被忽视。本研究旨在开发一种稳健的胸部CT图像配准算法来解决上述问题。
一种新颖的、具有解剖结构感知的分层配准方法。通过这种方法,采用分而治之的方法,根据不同区域的独特图像特征和运动模式为其选择差异度量和正则化项。然后使用韦尔施函数对这些项进行创新重构,从而可以控制损失值上的惩罚分布。随后,针对胸部CT图像配准任务设计了一种新颖的韦尔施参数更新策略,在从粗到细的配准过程中实现动态稀疏性,以适应各种噪声水平和滑动运动。此外,使用主元最小化(MM)算法通过基于当前变量值构建替代函数来处理韦尔施项以进行变量更新,从而降低优化的复杂性。
在有噪声和无噪声的公开可用的可变形图像配准实验室四维CT(DIR-Lab 4DCT)和慢性阻塞性肺疾病(COPD)数据集上的实验结果表明,我们提出的方法在无噪声场景下与现有最先进方法具有相当的性能(目标配准误差(TRE)分别为1.14和1.19毫米,而现有方法为1.14和1.35毫米),同时在存在噪声时表现出卓越的稳健性(TRE分别为1.78和2.38毫米,而现有方法为2.00和3.31毫米)。消融研究也验证了该方法中每个组件的有效性。
提出了一种新颖且稳健的胸部CT图像配准算法,该算法在包括手术定量成像在内的有价值的临床应用中具有巨大潜力。