Chiou Nicole, Günal Mehmet, Koyejo Sanmi, Perpetuini David, Chiarelli Antonio Maria, Low Kathy A, Fabiani Monica, Gratton Gabriele
Department of Computer Science, Stanford University, Stanford, CA 94305, USA.
Beckman Institute for Advanced Science and Technology, University of Illinois Urbana, Champaign, Urbana, IL 61801, USA.
Bioengineering (Basel). 2024 Aug 1;11(8):781. doi: 10.3390/bioengineering11080781.
Event-related optical signals (EROS) measure fast modulations in the brain's optical properties related to neuronal activity. EROS offer a high spatial and temporal resolution and can be used for brain-computer interface (BCI) applications. However, the ability to classify single-trial EROS remains unexplored. This study evaluates the performance of neural network methods for single-trial classification of motor response-related EROS. EROS activity was obtained from a high-density recording montage covering the motor cortex during a two-choice reaction time task involving responses with the left or right hand. This study utilized a convolutional neural network (CNN) approach to extract spatiotemporal features from EROS data and perform classification of left and right motor responses. Subject-specific classifiers trained on EROS phase data outperformed those trained on intensity data, reaching an average single-trial classification accuracy of around 63%. Removing low-frequency noise from intensity data is critical for achieving discriminative classification results with this measure. Our results indicate that deep learning with high-spatial-resolution signals, such as EROS, can be successfully applied to single-trial classifications.
事件相关光信号(EROS)测量与神经元活动相关的大脑光学特性的快速调制。EROS具有高空间和时间分辨率,可用于脑机接口(BCI)应用。然而,单次试验EROS的分类能力仍未得到探索。本研究评估了神经网络方法对与运动反应相关的EROS进行单次试验分类的性能。在涉及左手或右手反应的二选一反应时间任务中,从覆盖运动皮层的高密度记录蒙太奇中获取EROS活动。本研究采用卷积神经网络(CNN)方法从EROS数据中提取时空特征,并对左右运动反应进行分类。基于EROS相位数据训练的特定受试者分类器优于基于强度数据训练的分类器,平均单次试验分类准确率达到约63%。从强度数据中去除低频噪声对于用该测量方法获得有区分力的分类结果至关重要。我们的结果表明,利用高空间分辨率信号(如EROS)进行深度学习可以成功应用于单次试验分类。