Institute of Neuroscience and Medicine (INM-6) Computational and Systems Neuroscience, Institute for Advanced Simulation (IAS-6) Theoretical Neuroscience, and JARA-Institut Brain Structure-Function Relationships (INM-10), Jülich Research Centre, Jülich, Germany.
Institute of Zoology, Faculty of Mathematics and Natural Sciences, University of Cologne, Cologne, Germany.
Adv Exp Med Biol. 2022;1359:201-234. doi: 10.1007/978-3-030-89439-9_9.
For constructing neuronal network models computational neuroscientists have access to wide-ranging anatomical data that nevertheless tend to cover only a fraction of the parameters to be determined. Finding and interpreting the most relevant data, estimating missing values, and combining the data and estimates from various sources into a coherent whole is a daunting task. With this chapter we aim to provide guidance to modelers by describing the main types of anatomical data that may be useful for informing neuronal network models. We further discuss aspects of the underlying experimental techniques relevant to the interpretation of the data, list particularly comprehensive data sets, and describe methods for filling in the gaps in the experimental data. Such methods of "predictive connectomics" estimate connectivity where the data are lacking based on statistical relationships with known quantities. Exploiting organizational principles that link the plethora of data in a unifying framework can be useful for informing computational models. Besides overarching principles, we touch upon the most prominent features of brain organization that are likely to influence predicted neuronal network dynamics, with a focus on the mammalian cerebral cortex. Given the still existing need for modelers to navigate a complex data landscape full of holes and stumbling blocks, it is vital that the field of neuroanatomy is moving toward increasingly systematic data collection, representation, and publication.
为了构建神经元网络模型,计算神经科学家可以访问广泛的解剖学数据,但这些数据往往只涵盖了需要确定的参数的一部分。找到并解释最相关的数据、估计缺失值,并将来自不同来源的数据和估计值组合成一个连贯的整体,这是一项艰巨的任务。通过本章,我们旨在通过描述可能有助于为神经元网络模型提供信息的主要类型的解剖学数据,为建模者提供指导。我们进一步讨论了与数据解释相关的基础实验技术的各个方面,列出了特别全面的数据集,并描述了填补实验数据空白的方法。这种“预测连接组学”的方法基于与已知数量的统计关系,在数据缺失的情况下估计连接性。利用将大量数据链接到统一框架中的组织原则对于为计算模型提供信息可能是有用的。除了总体原则外,我们还触及了大脑组织中最突出的特征,这些特征可能会影响预测的神经元网络动力学,重点是哺乳动物大脑皮层。考虑到建模者仍然需要在充满漏洞和绊脚石的复杂数据环境中进行导航,神经解剖学领域朝着越来越系统的数据收集、表示和发布的方向发展至关重要。