论文标题
信号重建和大脑源定位的效率磁力计传感器阵列阵列选择
Effcient magnetometer sensor array selection for signal reconstruction and brain source localization
论文作者
论文摘要
磁脑摄影(MEG)是一种无创方法,用于测量使用位于头皮上或上方的传感器阵列引起的磁通信号。监测大脑活动的常见策略是将传感器放在头部几乎均匀的网格或传感器阵列上。通过增加传感器总数,可以根据Nyquist采样理论决定较高的脑活动的空间频率成分。当前,除了Nyquist的考虑之外,几乎没有用于传感器放置的数学体系结构。然而,全球大脑活动通常表现出低维的时空动力学模式。可以从单数值分解中计算出低维的全局模式,并可以利用以选择用于重建大脑信号和本地化大脑源的少数传感器。此外,在考虑噪声测量时,系统选择的少量传感器可以胜过整个传感器阵列。我们根据QR分解提出了一种贪婪的选择算法,该QR分解在计算上有效地为MEG实施。我们演示了传感器选择算法的性能,以实现信号重建和本地化的任务。性能取决于来源的定位,浅层来源很容易识别和重建,并且更难定位的深度来源。我们的发现表明,用于选择传感器的原则方法可以提高MEG功能,并可能增加成本节省,以监视整个大脑活动。
Magnetoencephalography (MEG) is a noninvasive method for measuring magnetic flux signals caused by brain activity using sensor arrays located on or above the scalp. A common strategy for monitoring brain activity is to place sensors on a nearly uniform grid, or sensor array, around the head. By increasing the total number of sensors, higher spatial-frequency components of brain activity can be resolved as dictated by Nyquist sampling theory. Currently, there are few principled mathematical architectures for sensor placement aside from Nyquist considerations. However, global brain activity often exhibits low-dimensional patterns of spatio-temporal dynamics. The low-dimensional global patterns can be computed from the singular value decomposition and can be leveraged to select a small number of sensors optimized for reconstructing brain signals and localizing brain sources. Moreover, a smaller number of sensors which are systematically chosen can outperform the entire sensor array when considering noisy measurements. We propose a greedy selection algorithm based upon the QR decomposition that is computationally efficient to implement for MEG. We demonstrate the performance of the sensor selection algorithm for the tasks of signal reconstruction and localization. The performance is dependent upon source localization, with shallow sources easily identified and reconstructed, and deep sources more difficult to locate. Our findings suggest that principled methods for sensor selection can improve MEG capabilities and potentially add cost savings for monitoring brain-wide activity.