Ye Chengze, Schneider Linda-Sophie, Sun Yipeng, Thies Mareike, Mei Siyuan, Maier Andreas
Friedrich-Alexander University Erlangen-Nuremberg, Erlangen, Germany.
Phys Med Biol. 2025 Mar 20;70(7). doi: 10.1088/1361-6560/adbb50.
. This study introduces a novel method for reconstructing cone beam computed tomography (CBCT) images for arbitrary orbits, addressing the computational and memory challenges associated with traditional iterative reconstruction algorithms.. The proposed method employs a differentiable shift-variant filtered backprojection neural network, optimized for arbitrary trajectories. By integrating known operators into the learning model, the approach minimizes the number of trainable parameters while enhancing model interpretability. This framework adapts seamlessly to specific orbit geometries, including non-continuous trajectories such as circular-plus-arc or sinusoidal paths, enabling faster and more accurate CBCT reconstructions.. Experimental validation demonstrates that the method significantly accelerates reconstruction, reducing computation time by over 97% compared to conventional iterative algorithms. It achieves superior or comparable image quality with reduced noise, as evidenced by a 38.6% reduction in mean squared error, a 7.7% increase in peak signal-to-noise ratio, and a 5.0% improvement in the structural similarity index measure. The flexibility and robustness of the approach are confirmed through its ability to handle data from diverse scan geometries.. This method represents a significant advancement in interventional medical imaging, particularly for robotic C-arm CT systems, enabling real-time, high-quality CBCT reconstructions for customized orbits. It offers a transformative solution for clinical applications requiring computational efficiency and precision in imaging.
本研究介绍了一种用于任意轨道锥束计算机断层扫描(CBCT)图像重建的新方法,解决了与传统迭代重建算法相关的计算和内存挑战。所提出的方法采用了一种针对任意轨迹优化的可微移位变体滤波反投影神经网络。通过将已知算子集成到学习模型中,该方法在提高模型可解释性的同时,最大限度地减少了可训练参数的数量。该框架能无缝适应特定的轨道几何形状,包括非连续轨迹,如圆形加弧形或正弦路径,从而实现更快、更准确的CBCT重建。实验验证表明,该方法显著加速了重建过程,与传统迭代算法相比,计算时间减少了97%以上。它在降低噪声的情况下实现了卓越或可比的图像质量,平均平方误差降低了38.6%,峰值信噪比提高了7.7%,结构相似性指数测量提高了5.0%。该方法处理来自不同扫描几何形状数据的能力证实了其灵活性和鲁棒性。这种方法代表了介入医学成像的重大进步,特别是对于机器人C形臂CT系统,能够为定制轨道实现实时、高质量的CBCT重建。它为需要成像计算效率和精度的临床应用提供了变革性解决方案。