{"title":"利用融合光神经网络,大脑皮层 ROI 的重要性提高了从脑电图解码 MI 的能力。","authors":"Linlin Wang;Mingai Li;Dongqin Xu;Yufei Yang","doi":"10.1109/TNSRE.2024.3461339","DOIUrl":null,"url":null,"abstract":"Decoding motor imagery (MI) using deep learning in cortical level has potential in brain computer interface based intelligent rehabilitation. However, a mass of dipoles is inconvenient to extract the personalized features and requires a more complex neural network. In consideration of the structural and functional similarity of the neurons in a neuroanatomical region, i.e., a region of interest (ROI), we propose that the comprehensive performance of each ROI may be reflected by a specific representative dipole (RD), and the time-frequency spectrums of all RDs are applied simultaneously to Random Forest algorithm to give a quantitative metric of each ROI importance (RI). Then, the more divided sub-band spectral powers are reinforced by RI, and they are interpolated to a 2-dimensional (2D) plane transformed from 3D space of all RDs, yielding an ensemble representation of RD feature image sequences (ERDFIS). Furthermore, a lightweight network, including 2D separable convolution and gated recurrent unit (2DSCG), is developed to extract and classify the frequency-spatial and temporal features from ERDFIS, forming a novel MI decoding method in cortical level (called ERDFIS-2DSCG). Based on two public datasets, the decoding accuracies of ten-fold cross-validation are 89.89% and 94.35%, respectively. The results suggest that RD can embody the overall property of ROI in time-frequency-space domains, and ROI importance is helpful to highlight the subject-based characteristics of MI-EEG. Meanwhile, 2DSCG is matched well with ERDFIS, jointly improving the decoding performance.","PeriodicalId":13419,"journal":{"name":"IEEE Transactions on Neural Systems and Rehabilitation Engineering","volume":"32 ","pages":"3636-3646"},"PeriodicalIF":4.8000,"publicationDate":"2024-09-16","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=10680573","citationCount":"0","resultStr":"{\"title\":\"Cortical ROI Importance Improves MI Decoding From EEG Using Fused Light Neural Network\",\"authors\":\"Linlin Wang;Mingai Li;Dongqin Xu;Yufei Yang\",\"doi\":\"10.1109/TNSRE.2024.3461339\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Decoding motor imagery (MI) using deep learning in cortical level has potential in brain computer interface based intelligent rehabilitation. However, a mass of dipoles is inconvenient to extract the personalized features and requires a more complex neural network. In consideration of the structural and functional similarity of the neurons in a neuroanatomical region, i.e., a region of interest (ROI), we propose that the comprehensive performance of each ROI may be reflected by a specific representative dipole (RD), and the time-frequency spectrums of all RDs are applied simultaneously to Random Forest algorithm to give a quantitative metric of each ROI importance (RI). Then, the more divided sub-band spectral powers are reinforced by RI, and they are interpolated to a 2-dimensional (2D) plane transformed from 3D space of all RDs, yielding an ensemble representation of RD feature image sequences (ERDFIS). Furthermore, a lightweight network, including 2D separable convolution and gated recurrent unit (2DSCG), is developed to extract and classify the frequency-spatial and temporal features from ERDFIS, forming a novel MI decoding method in cortical level (called ERDFIS-2DSCG). Based on two public datasets, the decoding accuracies of ten-fold cross-validation are 89.89% and 94.35%, respectively. The results suggest that RD can embody the overall property of ROI in time-frequency-space domains, and ROI importance is helpful to highlight the subject-based characteristics of MI-EEG. 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引用次数: 0
摘要
利用皮层深度学习对运动图像(MI)进行解码,在基于脑计算机接口的智能康复领域大有可为。然而,大量偶极子不便提取个性化特征,需要更复杂的神经网络。考虑到神经解剖区域(即感兴趣区(ROI))内神经元在结构和功能上的相似性,我们提出每个感兴趣区的综合表现可以通过一个特定的代表性偶极子(RD)来反映,并将所有 RD 的时频谱同时应用于随机森林算法,以给出每个感兴趣区重要性(RI)的量化指标。然后,通过 RI 强化较分散的子带频谱功率,并将其插值到从所有 RD 的三维空间转换而来的二维(2D)平面,从而得到 RD 特征图像序列的集合表示(ERDFIS)。此外,还开发了一种轻量级网络,包括二维可分离卷积和门控递归单元(2DSCG),用于从 ERDFIS 中提取频率-空间和时间特征并对其进行分类,从而形成一种新颖的皮层 MI 解码方法(称为 ERDFIS-2DSCG)。基于两个公开数据集,十倍交叉验证的解码准确率分别为 89.89% 和 94.35%。结果表明,RD能体现ROI在时频域的整体特性,ROI的重要性有助于突出MI-EEG的主体特征。同时,2DSCG与ERDFIS匹配良好,共同提高了解码性能。
Cortical ROI Importance Improves MI Decoding From EEG Using Fused Light Neural Network
Decoding motor imagery (MI) using deep learning in cortical level has potential in brain computer interface based intelligent rehabilitation. However, a mass of dipoles is inconvenient to extract the personalized features and requires a more complex neural network. In consideration of the structural and functional similarity of the neurons in a neuroanatomical region, i.e., a region of interest (ROI), we propose that the comprehensive performance of each ROI may be reflected by a specific representative dipole (RD), and the time-frequency spectrums of all RDs are applied simultaneously to Random Forest algorithm to give a quantitative metric of each ROI importance (RI). Then, the more divided sub-band spectral powers are reinforced by RI, and they are interpolated to a 2-dimensional (2D) plane transformed from 3D space of all RDs, yielding an ensemble representation of RD feature image sequences (ERDFIS). Furthermore, a lightweight network, including 2D separable convolution and gated recurrent unit (2DSCG), is developed to extract and classify the frequency-spatial and temporal features from ERDFIS, forming a novel MI decoding method in cortical level (called ERDFIS-2DSCG). Based on two public datasets, the decoding accuracies of ten-fold cross-validation are 89.89% and 94.35%, respectively. The results suggest that RD can embody the overall property of ROI in time-frequency-space domains, and ROI importance is helpful to highlight the subject-based characteristics of MI-EEG. Meanwhile, 2DSCG is matched well with ERDFIS, jointly improving the decoding performance.
期刊介绍:
Rehabilitative and neural aspects of biomedical engineering, including functional electrical stimulation, acoustic dynamics, human performance measurement and analysis, nerve stimulation, electromyography, motor control and stimulation; and hardware and software applications for rehabilitation engineering and assistive devices.