Vakitbilir Nuray, Sainbhi Amanjyot Singh, Islam Abrar, Gomez Alwyn, Stein Kevin Yuwa, Froese Logan, Bergmann Tobias, McClarty Davis, Raj Rahul, Zeiler Frederick Adam
Biomedical Engineering, Price Faculty of Engineering, University of Manitoba, Winnipeg, MB, Canada.
Section of Neurosurgery, Department of Surgery, Rady Faculty of Health Sciences, University of Manitoba, Winnipeg, MB, Canada.
Front Netw Physiol. 2025 Apr 16;5:1551043. doi: 10.3389/fnetp.2025.1551043. eCollection 2025.
Cerebral physiological signals embody complex neural, vascular, and metabolic processes that provide valuable insight into the brain's dynamic nature. Profound comprehension and analysis of these signals are essential for unraveling cerebral intricacies, enabling precise identification of patterns and anomalies. Therefore, the advancement of computational models in cerebral physiology is pivotal for exploring the links between measurable signals and underlying physiological states. This review provides a detailed explanation of computational models, including their mathematical formulations, and discusses their relevance to the analysis of cerebral physiology dynamics. It emphasizes the importance of linear multivariate statistical models, particularly autoregressive (AR) models and the Kalman filter, in time series modeling and prediction of cerebral processes. The review focuses on the analysis and operational principles of multivariate statistical models such as AR models and the Kalman filter. These models are examined for their ability to capture intricate relationships among cerebral parameters, offering a holistic representation of brain function. The use of multivariate statistical models enables the capturing of complex relationships among cerebral physiological signals. These models provide valuable insights into the dynamic nature of the brain by representing intricate neural, vascular, and metabolic processes. The review highlights the clinical implications of using computational models to understand cerebral physiology, while also acknowledging the inherent limitations, including the need for stationary data, challenges with high dimensionality, computational complexity, and limited forecasting horizons.
大脑生理信号体现了复杂的神经、血管和代谢过程,这些过程为洞察大脑的动态本质提供了有价值的见解。对这些信号进行深入理解和分析对于揭示大脑的复杂性至关重要,有助于精确识别模式和异常情况。因此,大脑生理学计算模型的发展对于探索可测量信号与潜在生理状态之间的联系至关重要。本综述详细解释了计算模型,包括其数学公式,并讨论了它们与大脑生理学动态分析的相关性。它强调了线性多元统计模型,特别是自回归(AR)模型和卡尔曼滤波器,在大脑过程的时间序列建模和预测中的重要性。本综述重点关注多元统计模型如AR模型和卡尔曼滤波器的分析和运行原理。对这些模型捕捉大脑参数之间复杂关系的能力进行了研究,从而提供了对大脑功能的整体表征。多元统计模型的使用能够捕捉大脑生理信号之间的复杂关系。这些模型通过呈现复杂的神经、血管和代谢过程,为大脑的动态本质提供了有价值的见解。本综述强调了使用计算模型理解大脑生理学的临床意义,同时也承认其固有的局限性,包括对平稳数据的需求、高维度挑战、计算复杂性以及有限的预测范围。