Cindrič Helena, Miklavčič Damijan, Cornelis Francois H, Kos Bor
Faculty of Electrical Engineering, University of Ljubljana, 1000 Ljubljana, Slovenia.
Memorial Sloan-Kettering Cancer Center, New York, NY 10065, USA.
Cancers (Basel). 2022 Nov 2;14(21):5412. doi: 10.3390/cancers14215412.
Electroporation-based treatments such as electrochemotherapy and irreversible electroporation ablation have sparked interest with respect to their use in medicine. Treatment planning involves determining the best possible electrode positions and voltage amplitudes to ensure treatment of the entire clinical target volume (CTV). This process is mainly performed manually or with computationally intensive genetic algorithms. In this study, an algorithm was developed to optimize electrode positions for the electrochemotherapy of vertebral tumors without using computationally intensive methods. The algorithm considers the electric field distribution in the CTV, identifies undertreated areas, and uses this information to iteratively shift the electrodes from their initial positions to cover the entire CTV. The algorithm performs successfully for different spinal segments, tumor sizes, and positions within the vertebra. The average optimization time was 71 s with an average of 4.9 iterations performed. The algorithm significantly reduces the time and expertise required to create a treatment plan for vertebral tumors. This study serves as a proof of concept that electrode positions can be determined (semi-)automatically based on the spatial information of the electric field distribution in the target tissue. The algorithm is currently designed for the electrochemotherapy of vertebral tumors via a transpedicular approach but could be adapted for other anatomic sites in the future.
基于电穿孔的治疗方法,如电化学疗法和不可逆电穿孔消融术,因其在医学领域的应用而引发了人们的兴趣。治疗计划包括确定最佳的电极位置和电压幅度,以确保对整个临床靶区(CTV)进行治疗。这个过程主要通过手动操作或使用计算量较大的遗传算法来完成。在本研究中,开发了一种算法,无需使用计算量较大的方法即可优化椎体肿瘤电化学疗法的电极位置。该算法考虑CTV中的电场分布,识别治疗不足的区域,并利用这些信息将电极从其初始位置迭代移动,以覆盖整个CTV。该算法在不同的脊柱节段、肿瘤大小和椎体内位置上均能成功运行。平均优化时间为71秒,平均进行4.9次迭代。该算法显著减少了制定椎体肿瘤治疗计划所需的时间和专业知识。本研究证明了基于靶组织中电场分布的空间信息可以(半)自动确定电极位置。该算法目前设计用于经椎弓根途径的椎体肿瘤电化学疗法,但未来可适用于其他解剖部位。