Department of Engineering Science and Mechanics, Pennsylvania State University, University Park, Pennsylvania 16802, USA.
Center for Neural Engineering, Pennsylvania State University, University Park, Pennsylvania 16802, USA.
Chaos. 2021 Jan;31(1):013139. doi: 10.1063/5.0024024.
Extensive clinical and experimental evidence links sleep-wake regulation and state of vigilance (SOV) to neurological disorders including schizophrenia and epilepsy. To understand the bidirectional coupling between disease severity and sleep disturbances, we need to investigate the underlying neurophysiological interactions of the sleep-wake regulatory system (SWRS) in normal and pathological brains. We utilized unscented Kalman filter based data assimilation (DA) and physiologically based mathematical models of a sleep-wake regulatory network synchronized with experimental measurements to reconstruct and predict the state of SWRS in chronically implanted animals. Critical to applying this technique to real biological systems is the need to estimate the underlying model parameters. We have developed an estimation method capable of simultaneously fitting and tracking multiple model parameters to optimize the reconstructed system state. We add to this fixed-lag smoothing to improve reconstruction of random input to the system and those that have a delayed effect on the observed dynamics. To demonstrate application of our DA framework, we have experimentally recorded brain activity from freely behaving rodents and classified discrete SOV continuously for many-day long recordings. These discretized observations were then used as the "noisy observables" in the implemented framework to estimate time-dependent model parameters and then to forecast future state and state transitions from out-of-sample recordings.
大量的临床和实验证据将睡眠-觉醒调节和警觉状态(SOV)与包括精神分裂症和癫痫在内的神经紊乱联系起来。为了了解疾病严重程度和睡眠障碍之间的双向耦合,我们需要研究正常和病理性大脑中睡眠-觉醒调节系统(SWRS)的潜在神经生理相互作用。我们利用基于无迹卡尔曼滤波的数据同化(DA)和与实验测量同步的睡眠-觉醒调节网络的基于生理的数学模型,对慢性植入动物的 SWRS 状态进行重建和预测。将该技术应用于真实生物系统的关键是需要估计潜在的模型参数。我们已经开发了一种能够同时拟合和跟踪多个模型参数的估计方法,以优化重建系统的状态。我们还增加了固定滞后平滑,以改善对系统随机输入和对观察到的动态有延迟影响的输入的重建。为了展示我们的 DA 框架的应用,我们从自由活动的啮齿动物中实验记录了大脑活动,并对多天的长时间记录进行了连续的离散 SOV 分类。然后,这些离散化的观测结果被用作所实现框架中的“嘈杂观测值”,以估计时变模型参数,然后从样本外记录中预测未来的状态和状态转换。