Ming Hsieh Department of Electrical and Computer Engineering, Viterbi School of Engineering, University of Southern California, Los Angeles, CA, United States of America.
Department of Neurosurgery, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, United States of America.
J Neural Eng. 2024 Mar 1;21(2):026001. doi: 10.1088/1741-2552/ad1053.
Learning dynamical latent state models for multimodal spiking and field potential activity can reveal their collective low-dimensional dynamics and enable better decoding of behavior through multimodal fusion. Toward this goal, developing unsupervised learning methods that are computationally efficient is important, especially for real-time learning applications such as brain-machine interfaces (BMIs). However, efficient learning remains elusive for multimodal spike-field data due to their heterogeneous discrete-continuous distributions and different timescales.Here, we develop a multiscale subspace identification (multiscale SID) algorithm that enables computationally efficient learning for modeling and dimensionality reduction for multimodal discrete-continuous spike-field data. We describe the spike-field activity as combined Poisson and Gaussian observations, for which we derive a new analytical SID method. Importantly, we also introduce a novel constrained optimization approach to learn valid noise statistics, which is critical for multimodal statistical inference of the latent state, neural activity, and behavior. We validate the method using numerical simulations and with spiking and local field potential population activity recorded during a naturalistic reach and grasp behavior.We find that multiscale SID accurately learned dynamical models of spike-field signals and extracted low-dimensional dynamics from these multimodal signals. Further, it fused multimodal information, thus better identifying the dynamical modes and predicting behavior compared to using a single modality. Finally, compared to existing multiscale expectation-maximization learning for Poisson-Gaussian observations, multiscale SID had a much lower training time while being better in identifying the dynamical modes and having a better or similar accuracy in predicting neural activity and behavior.Overall, multiscale SID is an accurate learning method that is particularly beneficial when efficient learning is of interest, such as for online adaptive BMIs to track non-stationary dynamics or for reducing offline training time in neuroscience investigations.
学习多模态尖峰和场电位活动的动态潜在状态模型可以揭示它们的集体低维动力学,并通过多模态融合更好地解码行为。为此,开发计算效率高的无监督学习方法非常重要,特别是对于实时学习应用,如脑机接口(BMI)。然而,由于多模态尖峰-场数据具有异构离散连续分布和不同时间尺度,高效学习仍然难以实现。在这里,我们开发了一种多尺度子空间识别(多尺度 SID)算法,该算法能够实现多模态离散连续尖峰-场数据的建模和降维的计算高效学习。我们将尖峰-场活动描述为泊松和高斯观测的组合,为此我们推导出了一种新的分析 SID 方法。重要的是,我们还引入了一种新的约束优化方法来学习有效的噪声统计数据,这对于潜在状态、神经活动和行为的多模态统计推断至关重要。我们使用数值模拟和自然抓握行为期间记录的尖峰和局部场电位群体活动来验证该方法。我们发现,多尺度 SID 准确地学习了尖峰-场信号的动态模型,并从这些多模态信号中提取了低维动力学。此外,它融合了多模态信息,因此与使用单一模态相比,能够更好地识别动态模式并预测行为。最后,与现有的泊松-高斯观测的多尺度期望最大化学习相比,多尺度 SID 的训练时间要短得多,同时在识别动态模式方面表现更好,在预测神经活动和行为方面的准确性更高或相似。总体而言,多尺度 SID 是一种准确的学习方法,在需要高效学习的情况下特别有益,例如在线自适应 BMI 以跟踪非平稳动力学,或在神经科学研究中减少离线训练时间。