Intelligent Systems Research Centre, School of Computing, Engineering and Intelligent Systems, Ulster University, Magee campus, Derry∼Londonderry, United Kingdom.
Department of Radiology and Hotchkiss Brain Institute, University of Calgary, Calgary, AB, Canada.
Neuroimage. 2024 Jan;285:120458. doi: 10.1016/j.neuroimage.2023.120458. Epub 2023 Nov 20.
State-space models are widely employed across various research disciplines to study unobserved dynamics. Conventional estimation techniques, such as Kalman filtering and expectation maximisation, offer valuable insights but incur high computational costs in large-scale analyses. Sparse inverse covariance estimators can mitigate these costs, but at the expense of a trade-off between enforced sparsity and increased estimation bias, necessitating careful assessment in low signal-to-noise ratio (SNR) situations. To address these challenges, we propose a three-fold solution: (1) Introducing multiple penalised state-space (MPSS) models that leverage data-driven regularisation; (2) Developing novel algorithms derived from backpropagation, gradient descent, and alternating least squares to solve MPSS models; (3) Presenting a K-fold cross-validation extension for evaluating regularisation parameters. We validate this MPSS regularisation framework through lower and more complex simulations under varying SNR conditions, including a large-scale synthetic magneto- and electro-encephalography (MEG/EEG) data analysis. In addition, we apply MPSS models to concurrently solve brain source localisation and functional connectivity problems for real event-related MEG/EEG data, encompassing thousands of sources on the cortical surface. The proposed methodology overcomes the limitations of existing approaches, such as constraints to small-scale and region-of-interest analyses. Thus, it may enable a more accurate and detailed exploration of cognitive brain functions.
状态空间模型被广泛应用于各个研究领域,以研究不可观测的动态。传统的估计技术,如卡尔曼滤波和期望最大化,提供了有价值的见解,但在大规模分析中计算成本很高。稀疏逆协方差估计可以降低这些成本,但代价是在强制稀疏性和增加估计偏差之间进行权衡,因此在低信噪比(SNR)情况下需要进行仔细评估。为了解决这些挑战,我们提出了三管齐下的解决方案:(1)引入基于数据驱动的正则化的多个惩罚状态空间(MPSS)模型;(2)开发源自反向传播、梯度下降和交替最小二乘法的新算法来解决 MPSS 模型;(3)提出 K 折交叉验证扩展来评估正则化参数。我们通过在不同 SNR 条件下进行更低和更复杂的模拟来验证这个 MPSS 正则化框架,包括对大规模的合成磁和脑电(MEG/EEG)数据分析。此外,我们还将 MPSS 模型应用于真实事件相关的 MEG/EEG 数据的脑源定位和功能连接问题的同时求解,涵盖了皮质表面上数千个源。所提出的方法克服了现有方法的局限性,例如对小尺度和感兴趣区域分析的限制。因此,它可以更准确和详细地探索认知大脑功能。