The First Affiliated Hospital of Xi'an Jiaotong University, Xi'an, Shaanxi, People's Republic of China.
Department of Clinical and Experimental Epilepsy, UCL Institute of Neurology, 33 Queen Square, London, WC1E 6BT, UK.
Neurotherapeutics. 2019 Jan;16(1):182-191. doi: 10.1007/s13311-018-00693-1.
Laser interstitial thermal therapy (LITT) is an alternative to open surgery for drug-resistant focal mesial temporal lobe epilepsy (MTLE). Studies suggest maximal ablation of the mesial hippocampal head and amygdalohippocampal complex (AHC) improves seizure freedom rates while better neuropsychological outcomes are associated with sparing of the parahippocampal gyrus (PHG). Optimal trajectories avoid sulci and CSF cavities and maximize distance from vasculature. Computer-assisted planning (CAP) improves these metrics, but the combination of entry and target zones has yet to be determined to maximize ablation of the AHC while sparing the PHG. We apply a machine learning approach to predict entry and target parameters and utilize these for CAP. Ten patients with hippocampal sclerosis were identified from a prospectively managed database. CAP LITT trajectories were generated using entry regions that include the inferior occipital, middle occipital, inferior temporal, and middle temporal gyri. Target points were varied by sequential AHC erosions and transformations of the centroid of the amygdala. A total of 7600 trajectories were generated, and ablation volumes of the AHC and PHG were calculated. Two machine learning approaches (random forest and linear regression) were investigated to predict composite ablation scores and determine entry and target point combinations that maximize ablation of the AHC while sparing the PHG. Random forest and linear regression predictions had a high correlation with the calculated values in the test set (ρ = 0.7) for both methods. Maximal composite ablation scores were associated with entry points around the junction of the inferior occipital, middle occipital, and middle temporal gyri. The optimal target point was the anteromesial amygdala. These parameters were then used with CAP to generate clinically feasible trajectories that optimize safety metrics. Machine learning techniques accurately predict composite ablation score. Prospective studies are required to determine if this improves seizure-free outcome while reducing neuropsychological morbidity following LITT for MTLE.
激光间质热疗(LITT)是一种替代药物难治性局灶性内侧颞叶癫痫(MTLE)开颅手术的方法。研究表明,最大限度地消融内侧海马头部和杏仁-海马复合体(AHC)可以提高无癫痫发作率,而更好的神经心理学结果则与保留旁海马回(PHG)有关。最佳轨迹避免了脑沟和脑脊液腔,并最大限度地远离血管。计算机辅助规划(CAP)改善了这些指标,但尚未确定进入区和目标区的组合,以最大限度地消融 AHC 而保留 PHG。我们应用机器学习方法来预测进入区和目标区参数,并利用这些参数进行 CAP。从一个前瞻性管理的数据库中确定了 10 例海马硬化患者。CAP LITT 轨迹是使用包括下枕叶、中枕叶、下颞叶和中颞叶的进入区生成的。目标点通过 AHC 的连续侵蚀和杏仁核质心的变形而变化。总共生成了 7600 条轨迹,并计算了 AHC 和 PHG 的消融体积。研究了两种机器学习方法(随机森林和线性回归)来预测复合消融评分,并确定进入区和目标点的组合,以最大限度地消融 AHC 而保留 PHG。随机森林和线性回归预测与测试集中的计算值高度相关(ρ=0.7),两种方法均如此。最大复合消融评分与下枕叶、中枕叶和中颞叶交界处周围的进入点有关。最佳目标点是前内侧杏仁核。然后,使用 CAP 生成临床可行的轨迹,优化安全指标。机器学习技术可以准确预测复合消融评分。需要前瞻性研究来确定这是否可以提高无癫痫发作的结果,同时降低 MTLE 患者 LITT 后的神经心理学发病率。