Marom Anat, Shor Erez, Levenberg Shulamit, Shoham Shy
Department of Biomedical Engineering, Technion - Israel Institute of Technology Haifa, Israel.
Front Neurosci. 2017 Jan 9;10:602. doi: 10.3389/fnins.2016.00602. eCollection 2016.
Sporadic spontaneous network activity emerges during early central nervous system (CNS) development and, as the number of neuronal connections rises, the maturing network displays diverse and complex activity, including various types of synchronized patterns. These activity patterns have major implications on both basic research and the study of neurological disorders, and their interplay with network morphology tightly correlates with developmental events such as neuronal differentiation, migration and establishment of neurotransmitter phenotypes. Although 2D neural cultures models have provided important insights into network activity patterns, these cultures fail to mimic the complex 3D architecture of natural CNS neural networks and its consequences on connectivity and activity. A 3D model mimicking early network development while enabling cellular-resolution observations, could thus significantly advance our understanding of the activity characteristics in the developing CNS. Here, we longitudinally studied the spontaneous activity patterns of developing 3D neural network "optonets," an optically-accessible bioengineered CNS model with multiple cortex-like characteristics. Optonet activity was observed using the genetically encodable calcium indicator GCaMP6m and a 3D imaging solution based on a standard epi-fluorescence microscope equipped with a piezo-electric z-stage and image processing-based deconvolution. Our results show that activity patterns become more complex as the network matures, gradually exhibiting longer-duration events. This report characterizes the patterns over time, and discusses how environmental changes affect the activity patterns. The relatively high degree of similarity between the network's spontaneously generated activity patterns and the reported characteristics of activity, suggests that this is a compelling model system for brain-in-a chip research.
散发性自发网络活动在中枢神经系统(CNS)早期发育过程中出现,随着神经元连接数量的增加,成熟的网络表现出多样而复杂的活动,包括各种类型的同步模式。这些活动模式对基础研究和神经系统疾病研究都具有重要意义,它们与网络形态的相互作用与神经元分化、迁移和神经递质表型建立等发育事件紧密相关。尽管二维神经培养模型为网络活动模式提供了重要见解,但这些培养物无法模拟天然CNS神经网络的复杂三维结构及其对连通性和活动的影响。因此,一个模仿早期网络发育同时能够进行细胞分辨率观察的三维模型,可显著推进我们对发育中的CNS活动特征的理解。在这里,我们纵向研究了发育中的三维神经网络“光控网络”的自发活动模式,这是一种具有多种皮质样特征的光学可及的生物工程CNS模型。使用可遗传编码的钙指示剂GCaMP6m和基于配备压电z轴载物台的标准落射荧光显微镜及基于图像处理的去卷积的三维成像解决方案观察光控网络活动。我们的结果表明,随着网络成熟,活动模式变得更加复杂,逐渐呈现持续时间更长的事件。本报告描述了随时间变化的模式,并讨论了环境变化如何影响活动模式。该网络自发产生的活动模式与所报道的活动特征之间相对较高的相似程度,表明这是一个用于芯片大脑研究的引人注目的模型系统。