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Modeling and interpreting mesoscale network dynamics

机译:建模和解释Mescle网络动态

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摘要

Recent advances in brain imaging techniques, measurement approaches, and storage capacities have provided an unprecedented supply of high temporal resolution neural data. These data present a remarkable opportunity to gain a mechanistic understanding not just of circuit structure, but also of circuit dynamics, and its role in cognition and disease. Such understanding necessitates a description of the raw observations, and a delineation of computational models and mathematical theories that accurately capture fundamental principles behind the observations. Here we review recent advances in a range of modeling approaches that embrace the temporally-evolving interconnected structure of the brain and summarize that structure in a dynamic graph. We describe recent efforts to model dynamic patterns of connectivity, dynamic patterns of activity, and patterns of activity atop connectivity. In the context of these models, we review important considerations in statistical testing, including parametric and non-parametric approaches. Finally, we offer thoughts on careful and accurate interpretation of dynamic graph architecture, and outline important future directions for method development.
机译:脑成像技术,测量方法和存储容量的最新进展提供了前所未有的高时间分辨率神经数据。这些数据提供了一种非凡的机会,不仅仅是电路结构,还具有电路动态,以及其在认知和疾病中的作用。这种理解需要描述原始观察,以及准确地捕获观察背面的基本原理的计算模型和数学理论的描绘。在这里,我们审查了一系列建模方法的最新进展,这些方法包括在动态图中汇总大脑的时间演化互连结构并总结该结构。我们描述了最近的努力来模拟连通性,动态活动模式的动态模式,以及连接性的活动模式。在这些模型的上下文中,我们在统计测试中审查了重要的考虑因素,包括参数和非参数方法。最后,我们提供关于仔细准确地解释动态图形架构的思考,并概述了方法开发的重要未来方向。

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