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基于功能磁共振成像(fMRI)数据的动态窗级格兰杰因果分析的运动想象实时分类

Real-Time Classification of Motor Imagery Using Dynamic Window-Level Granger Causality Analysis of fMRI Data.

作者信息

Liu Tianyuan, Li Bao, Zhang Chi, Chen Panpan, Zhao Weichen, Yan Bin

机构信息

Henan Key Laboratory of Imaging and Intelligent Processing, PLA Strategic Support Force Information Engineering University, Zhengzhou 450001, China.

出版信息

Brain Sci. 2023 Oct 1;13(10):1406. doi: 10.3390/brainsci13101406.

Abstract

This article presents a method for extracting neural signal features to identify the imagination of left- and right-hand grasping movements. A functional magnetic resonance imaging (fMRI) experiment is employed to identify four brain regions with significant activations during motor imagery (MI) and the effective connections between these regions of interest (ROIs) were calculated using Dynamic Window-level Granger Causality (DWGC). Then, a real-time fMRI (rt-fMRI) classification system for left- and right-hand MI is developed using the Open-NFT platform. We conducted data acquisition and processing on three subjects, and all of whom were recruited from a local college. As a result, the maximum accuracy of using Support Vector Machine (SVM) classifier on real-time three-class classification (rest, left hand, and right hand) with effective connections is 69.3%. And it is 3% higher than that of traditional multivoxel pattern classification analysis on average. Moreover, it significantly improves classification accuracy during the initial stage of MI tasks while reducing the latency effects in real-time decoding. The study suggests that the effective connections obtained through the DWGC method serve as valuable features for real-time decoding of MI using fMRI. Moreover, they exhibit higher sensitivity to changes in brain states. This research offers theoretical support and technical guidance for extracting neural signal features in the context of fMRI-based studies.

摘要

本文提出了一种提取神经信号特征以识别左右手抓握动作想象的方法。采用功能磁共振成像(fMRI)实验来识别在运动想象(MI)期间有显著激活的四个脑区,并使用动态窗口级格兰杰因果关系(DWGC)计算这些感兴趣区域(ROI)之间的有效连接。然后,使用Open-NFT平台开发了一种用于左右手MI的实时功能磁共振成像(rt-fMRI)分类系统。我们对三名受试者进行了数据采集和处理,所有受试者均从当地一所大学招募。结果,在具有有效连接的实时三类分类(静息、左手和右手)上使用支持向量机(SVM)分类器的最大准确率为69.3%。并且平均比传统的多体素模式分类分析高3%。此外,它在MI任务的初始阶段显著提高了分类准确率,同时减少了实时解码中的延迟效应。该研究表明,通过DWGC方法获得的有效连接作为使用fMRI对MI进行实时解码的有价值特征。此外,它们对脑状态的变化表现出更高的敏感性。本研究为基于fMRI的研究背景下提取神经信号特征提供了理论支持和技术指导。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1ed2/10604978/553a92180e03/brainsci-13-01406-g001.jpg

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