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Quantification and Selection of Ictogenic Zones in Epilepsy Surgery

机译:癫痫手术致盲区的量化与选择

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摘要

Network models of brain dynamics provide valuable insight into the healthy functioning of the brain and how this breaks down in disease. A pertinent example is the use of network models to understand seizure generation (ictogenesis) in epilepsy. Recently, computational models have emerged to aid our understanding of seizures and to predict the outcome of surgical perturbations to brain networks. Such approaches provide the opportunity to quantify the effect of removing regions of tissue from brain networks and thereby search for the optimal resection strategy. Here, we use computational models to elucidate how sets of nodes contribute to the ictogenicity of networks. In small networks we fully elucidate the ictogenicity of all possible sets of nodes and demonstrate that the distribution of ictogenicity across sets depends on network topology. However, the full elucidation is a combinatorial problem that becomes intractable for large networks. Therefore, we combine computational models with a genetic algorithm to search for minimal sets of nodes that contribute significantly to ictogenesis. We demonstrate the potential applicability of these methods in practice by identifying optimal sets of nodes to resect in networks derived from 20 individuals who underwent resective surgery for epilepsy. We show that they have the potential to aid epilepsy surgery by suggesting alternative resection sites as well as facilitating the avoidance of brain regions that should not be resected.
机译:大脑动力学的网络模型提供了关于大脑健康功能以及如何分解疾病的宝贵见解。一个相关的例子是使用网络模型来了解癫痫发作的发生(发作)。最近,出现了计算模型,以帮助我们了解癫痫发作并预测外科手术对大脑网络的干扰的结果。这样的方法提供了量化从脑网络中去除组织区域的效果的机会,从而可以找到最佳的切除策略。在这里,我们使用计算模型来阐明节点集如何促进网络的信息性。在小型网络中,我们充分阐明了所有可能的节点集的信息源性,并证明了集间信息源性的分布取决于网络拓扑。但是,完整的说明是一个组合问题,对于大型网络来说这是棘手的。因此,我们将计算模型与遗传算法相结合,以寻找对信息生成有重大贡献的最小节点集。我们通过确定最佳的结节集在网络中进行切除来证明这些方法在实践中的潜在实用性,该网络在从20例接受癫痫手术的个体中衍生而来。我们通过建议替代性切除部位以及促进避免不应切除的大脑区域,表明它们具有帮助癫痫手术的潜力。

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