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Assessing the state space of the brain with fMRI: an integrative view of current methods.

机译:用功能磁共振成像评估大脑的状态空间:当前方法的综合观点。

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Systems biology has gained substantial benefit from the application of systems modeling in engineering sciences. In general, methods as employed for construction and simulation of technical devices and buildings are applicable to modeling of biological systems. A number of modeling approaches originally derived from different areas such as engineering, econometrics and genetics have been adapted to functional brain imaging datasets in the recent years. However, despite a number of analogies, the complexities of brain systems might be much higher than those observed in technical systems. A dynamical system can be described as a state space in which a certain state of the system is specified by a single point. Varying states of the system over time can be described by a trajectory of states. Different modeling algorithms focus on certain aspects of this state space. The covariance of the state-space variables can be examined by correlational analysis (targeting normalized covariance) and principal component analysis. One of the principle aims in any systems identification approach is to identify parameters of the state matrix, i.e. the rules of transitions between different states of the system. Dynamic approaches with temporal information include the full state space model, vector autoregressive model and dynamic causal modeling. Structural equation modeling focuses on the instantaneous relationship between functional nodes. Directional analysis strategies are available in temporal and frequency domain. Depending on general assumptions as to how neuronal representation is established, the approaches present complementary information about the underlying neuronal interactions. The present article attempts to provide an integrative overview of the most established models and methods which are currently being applied for modeling dynamic brain systems.
机译:系统生物学已从系统建模在工程科学中的应用中获得了可观的收益。通常,用于构造和模拟技术设备和建筑物的方法适用于生物系统的建模。近年来,许多最初来自不同领域的建模方法(例如工程学,计量经济学和遗传学)已经适应了功能性脑成像数据集。然而,尽管有许多类比,大脑系统的复杂性可能比技术系统中观察到的复杂性高得多。动态系统可以描述为一个状态空间,其中系统的某个状态由单个点指定。系统的状态随时间变化可以通过状态轨迹来描述。不同的建模算法关注此状态空间的某些方面。状态空间变量的协方差可以通过相关分析(针对标化的协方差)和主成分分析来检查。任何系统识别方法中的原理目标之一是识别状态矩阵的参数,即系统不同状态之间的转换规则。具有时间信息的动态方法包括完整状态空间模型,向量自回归模型和动态因果模型。结构方程建模着重于功能节点之间的瞬时关系。方向分析策略在时域和频域均可用。根据有关如何建立神经元表示的一般假设,这些方法可提供有关基础神经元相互作用的补充信息。本文试图提供最成熟的模型和方法的综合概述,这些模型和方法目前正在用于动态大脑系统的建模。

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