控制癫痫发作的最佳数据驱动方法

Siavash Shams, Sana Motallebi, M. Yazdanpanah
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摘要

大脑的各个区域可以看作是一个复杂网络中的节点,在这个网络中,信息通过同步动态地传递。同步在学习、情绪和运动中起着重要作用。然而,神经系统疾病,如癫痫,是由大脑同步异常引起的。结合神经学因素的耦合Kuramoto模型是一种合适的脑网络模型。在本文中,我们提出了一种开环数据驱动的控制策略,在模拟癫痫发作期间有效地去同步大脑区域的活动,而无需对大脑的动态进行任何假设。为了量化网络节点的重要性,我们使用了一个基于能量的优化问题。然后,我们用80个区域的真实连接体评估了我们的控制方法,并证明我们的方法显著降低了癫痫发作期间大脑振荡阶段之间的同步性。最后,我们得出结论,可以通过将外部输入应用于选定的最优驱动节点集来控制脑癫痫同步。
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An Optimal Data-Driven Method for Controlling Epileptic Seizures
The regions of the brain may be viewed as nodes in a complex network where information is dynamically transferred through synchronization. Synchronization plays an important role in learning, emotions, and motion. However, neurological disorders such as epilepsy are known to result from abnormal brain synchronization. Coupled Kuramoto model with a little integration of the neurological factors can be a suitable model of the brain network. In this paper, we present an open-loop data-driven control strategy to effectively desynchronize the activity of brain regions during a simulated seizure episode without making any assumptions about the dynamics of the brain. In order to quantify the significance of network nodes, we used an energy-based optimization problem. Then, we evaluated our control methods using a genuine connectome with 80 regions and demonstrated that our approach remarkably decreased synchrony between phases of the oscillations of the brain during the epileptic seizure. Finally, we conclude that brain epilepsy synchronization can be controlled by applying external inputs to the chosen optimal set of driver nodes.
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