Hutchings Frances, Han Cheol E, Keller Simon S, Weber Bernd, Taylor Peter N, Kaiser Marcus
Interdisciplinary Computing and Complex BioSystems, School of Computing Science, Newcastle University, Newcastle upon Tyne, United Kingdom.
Department of Biomedical Engineering, Korea University, Seoul, Republic of Korea.
PLoS Comput Biol. 2015 Dec 10;11(12):e1004642. doi: 10.1371/journal.pcbi.1004642. eCollection 2015 Dec.
Temporal lobe epilepsy (TLE) is a prevalent neurological disorder resulting in disruptive seizures. In the case of drug resistant epilepsy resective surgery is often considered. This is a procedure hampered by unpredictable success rates, with many patients continuing to have seizures even after surgery. In this study we apply a computational model of epilepsy to patient specific structural connectivity derived from diffusion tensor imaging (DTI) of 22 individuals with left TLE and 39 healthy controls. We validate the model by examining patient-control differences in simulated seizure onset time and network location. We then investigate the potential of the model for surgery prediction by performing in silico surgical resections, removing nodes from patient networks and comparing seizure likelihood post-surgery to pre-surgery simulations. We find that, first, patients tend to transit from non-epileptic to epileptic states more often than controls in the model. Second, regions in the left hemisphere (particularly within temporal and subcortical regions) that are known to be involved in TLE are the most frequent starting points for seizures in patients in the model. In addition, our analysis also implicates regions in the contralateral and frontal locations which may play a role in seizure spreading or surgery resistance. Finally, the model predicts that patient-specific surgery (resection areas chosen on an individual, model-prompted, basis and not following a predefined procedure) may lead to better outcomes than the currently used routine clinical procedure. Taken together this work provides a first step towards patient specific computational modelling of epilepsy surgery in order to inform treatment strategies in individuals.
颞叶癫痫(TLE)是一种常见的神经系统疾病,会导致破坏性癫痫发作。对于耐药性癫痫,通常会考虑进行切除手术。然而,该手术受到成功率不可预测的阻碍,许多患者即使在手术后仍会继续发作。在本研究中,我们将癫痫计算模型应用于22名左侧颞叶癫痫患者和39名健康对照者通过扩散张量成像(DTI)得出的患者特异性结构连接性。我们通过检查模拟癫痫发作起始时间和网络位置的患者与对照差异来验证模型。然后,我们通过进行计算机模拟手术切除,从患者网络中移除节点,并将手术后癫痫发作可能性与手术前模拟进行比较,来研究该模型在手术预测方面的潜力。我们发现,首先,在模型中患者比对照更频繁地从非癫痫状态转变为癫痫状态。其次,已知与颞叶癫痫相关的左半球区域(特别是颞叶和皮质下区域内)是模型中患者癫痫发作最常见的起始点。此外,我们的分析还表明对侧和额叶区域可能在癫痫发作传播或手术耐药性中起作用。最后,该模型预测,患者特异性手术(根据个体情况、由模型提示选择切除区域,而非遵循预定义程序)可能比目前使用的常规临床程序产生更好的结果。综上所述,这项工作为癫痫手术的患者特异性计算建模迈出了第一步,以便为个体的治疗策略提供信息。