de Haan Willem, van Straaten Elisabeth C W, Gouw Alida A, Stam Cornelis J
Department of Clinical Neurophysiology and MEG, VUmc, Amsterdam, The Netherlands.
Alzheimer Center and Department of Neurology, VUmc, Neuroscience Campus Amsterdam, Amsterdam, The Netherlands.
PLoS Comput Biol. 2017 Sep 22;13(9):e1005707. doi: 10.1371/journal.pcbi.1005707. eCollection 2017 Sep.
Neuronal hyperactivity and hyperexcitability of the cerebral cortex and hippocampal region is an increasingly observed phenomenon in preclinical Alzheimer's disease (AD). In later stages, oscillatory slowing and loss of functional connectivity are ubiquitous. Recent evidence suggests that neuronal dynamics have a prominent role in AD pathophysiology, making it a potentially interesting therapeutic target. However, although neuronal activity can be manipulated by various (non-)pharmacological means, intervening in a highly integrated system that depends on complex dynamics can produce counterintuitive and adverse effects. Computational dynamic network modeling may serve as a virtual test ground for developing effective interventions. To explore this approach, a previously introduced large-scale neural mass network with human brain topology was used to simulate the temporal evolution of AD-like, activity-dependent network degeneration. In addition, six defense strategies that either enhanced or diminished neuronal excitability were tested against the degeneration process, targeting excitatory and inhibitory neurons combined or separately. Outcome measures described oscillatory, connectivity and topological features of the damaged networks. Over time, the various interventions produced diverse large-scale network effects. Contrary to our hypothesis, the most successful strategy was a selective stimulation of all excitatory neurons in the network; it substantially prolonged the preservation of network integrity. The results of this study imply that functional network damage due to pathological neuronal activity can be opposed by targeted adjustment of neuronal excitability levels. The present approach may help to explore therapeutic effects aimed at preserving or restoring neuronal network integrity and contribute to better-informed intervention choices in future clinical trials in AD.
在临床前阿尔茨海默病(AD)中,大脑皮层和海马区的神经元活动亢进和兴奋性过高是一种越来越常见的现象。在疾病后期,振荡减慢和功能连接丧失普遍存在。最近的证据表明,神经元动力学在AD病理生理学中起着重要作用,使其成为一个潜在的有趣治疗靶点。然而,尽管神经元活动可以通过各种(非)药理学手段进行调节,但干预一个依赖复杂动力学的高度整合系统可能会产生意想不到的反作用。计算动态网络建模可以作为开发有效干预措施的虚拟试验场。为了探索这种方法,我们使用了一个先前引入的具有人类大脑拓扑结构的大规模神经团网络来模拟类似AD的、活动依赖性网络退化的时间演变。此外,针对退化过程测试了六种增强或减弱神经元兴奋性的防御策略,分别或联合针对兴奋性和抑制性神经元。结果指标描述了受损网络的振荡、连接性和拓扑特征。随着时间的推移,各种干预措施产生了不同的大规模网络效应。与我们的假设相反,最成功的策略是选择性刺激网络中的所有兴奋性神经元;这大大延长了网络完整性的保存时间。这项研究的结果表明,病理性神经元活动导致的功能网络损伤可以通过有针对性地调整神经元兴奋性水平来对抗。目前的方法可能有助于探索旨在保存或恢复神经元网络完整性的治疗效果,并为未来AD临床试验中更明智的干预选择做出贡献。