Software College, Northeastern University, Shenyang 110819, People's Republic of China.
Key Laboratory of Intelligent Computing in Medical Image, Ministry of Education, Northeastern University, Shenyang 110819, People's Republic of China.
Phys Med Biol. 2022 Sep 26;67(19). doi: 10.1088/1361-6560/ac8fdd.
Minimally invasive surgery has been widely adopted in the treatment of patients with liver tumors. In liver tumor puncture surgery, an image-guided ablation needle for puncture surgery, which first reaches a target tumor along a predetermined path, and then ablates the tumor or injects drugs near the tumor, is often used to reduce patient trauma, improving the safety of surgery operations and avoiding possible damage to large blood vessels and key organs. In this paper, a path planning method for computer tomography (CT) guided ablation needle in liver tumor puncture surgery is proposed.Given a CT volume containing abdominal organs, we first classify voxels and optimize the number of voxels to reduce volume rendering pressure, then we reconstruct a multi-scale 3D model of the liver and hepatic vessels. Secondly, multiple entry points of the surgical path are selected based on the strong and weak constraints of clinical puncture surgery through multi-agent reinforcement learning. We select the optimal needle entry point based on the length measurement. Then, through the incremental training of the double deep Q-learning network (DDQN), the transmission of network parameters from the small-scale environment to the larger-scale environment is accomplished, and the optimal surgical path with more optimized details is obtained.To avoid falling into local optimum in network training, improve both the convergence speed and performance of the network, and maximize the cumulative reward, we train the path planning network on different scales 3D reconstructed organ models, and validate our method on tumor samples from public datasets. The scores of human surgeons verified the clinical relevance of the proposed method.Our method can robustly provide the optimal puncture path of flexible needle for liver tumors, which is expected to provide a reference for surgeons' preoperative planning.
微创手术已广泛应用于肝肿瘤患者的治疗中。在肝肿瘤穿刺手术中,通常使用一种影像引导的消融针进行穿刺手术,该消融针首先沿着预定路径到达目标肿瘤,然后消融肿瘤或在肿瘤附近注射药物,以减少患者创伤,提高手术安全性,并避免对大血管和关键器官造成可能的损伤。本文提出了一种用于计算机断层扫描(CT)引导消融针肝肿瘤穿刺手术的路径规划方法。
给定一个包含腹部器官的 CT 体数据,我们首先对体数据进行体素分类并优化体素数量,以减轻体积渲染压力,然后重建肝脏和肝血管的多尺度 3D 模型。其次,通过多智能体强化学习,根据临床穿刺手术的强、弱约束条件选择手术路径的多个进入点。我们根据长度测量选择最佳的针进入点。然后,通过双深度 Q 学习网络(DDQN)的增量训练,完成从小尺度环境到较大尺度环境的网络参数传输,并获得具有更多优化细节的最佳手术路径。
为避免网络训练陷入局部最优,提高网络的收敛速度和性能,最大化累积奖励,我们在不同尺度的 3D 重建器官模型上训练路径规划网络,并在公共数据集的肿瘤样本上验证我们的方法。人类外科医生的评分验证了所提出方法的临床相关性。
我们的方法可以为肝肿瘤提供灵活针的最优穿刺路径,有望为外科医生的术前规划提供参考。