Division of Functional Diagnostic Science, Osaka University Graduate School of Medicine, 1-7 Yamadaoka, Suita, Osaka 565-0871, Japan.
Brain Res. 2012 Aug 15;1468:29-37. doi: 10.1016/j.brainres.2012.05.053. Epub 2012 Jun 8.
A brain machine interface (BMI) provides the possibility of controlling such external devices as prosthetic arms for patients with severe motor dysfunction using their own brain signals. However, there have been few studies investigating the decoding accuracy for multiclasses of useful unilateral upper limb movements using non-invasive measurements. We investigated the decoding accuracy for classifying three types of unilateral upper limb movements using single-trial magnetoencephalography (MEG) signals. Neuromagnetic activities were recorded in 9 healthy subjects performing 3 types of right upper limb movements: hand grasping, pinching, and elbow flexion. A support vector machine was used to classify the single-trial MEG signals. The movement types were predicted with an average accuracy of 66 ± 10% (chance level: 33.3%) using neuromagnetic activity during a 400-ms interval (-200 ms to 200 ms from movement onsets). To explore the time-dependency of the decoding accuracy, we also examined the time course of decoding accuracy in 50-ms sliding windows from -500 ms to 500 ms. Decoding accuracies significantly increased and peaked once before (50.1 ± 4.9%) and twice after (58.5 ± 7.5% and 64.4 ± 7.6%) movement onsets in all subjects. Significant variability in the decoding features in the first peak was evident in the channels over the parietal area and in the second and third peaks in the channels over the sensorimotor area. Our results indicate that the three types of unilateral upper limb movement can be inferred with high accuracy by detecting differences in movement-related brain activity in the parietal and sensorimotor areas.
脑机接口(BMI)利用患者自身的脑信号,为严重运动功能障碍的患者提供了控制假肢手臂等外部设备的可能性。然而,使用非侵入性测量方法研究用于有用的单侧上肢运动的多类解码精度的研究很少。我们使用单试次脑磁图(MEG)信号研究了用于分类三种单侧上肢运动的解码精度。在 9 名健康受试者执行 3 种右侧上肢运动:抓握、捏合和肘部弯曲时,记录了神经磁活动。使用支持向量机对单试次 MEG 信号进行分类。使用运动起始前 400ms 间隔(-200ms 至 200ms)内的神经磁活动,以 66±10%(机会水平:33.3%)的平均准确率预测运动类型。为了探索解码精度的时间依赖性,我们还在-500ms 至 500ms 的 50ms 滑动窗口中检查了解码精度的时间进程。在所有受试者中,解码精度在运动起始前(50.1±4.9%)和两次后(58.5±7.5%和 64.4±7.6%)显著增加并达到峰值。在顶区的通道中,在第一次峰值的通道中,在第二个和第三个峰值的通道中,解码特征的显著变化明显可见。我们的结果表明,可以通过检测顶区和运动感觉区的运动相关脑活动的差异,以高精度推断三种单侧上肢运动。