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Classification of Task-State fMRI Data Based on Circle-EMD and Machine Learning

机译:基于Circle-EMD和机器学习的任务状态fMRI数据分类

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摘要

In the research work of the brain-computer interface and the function of human brain work, the state classification of multitask state fMRI data is a problem. The fMRI signal of the human brain is a nonstationary signal with many noise effects and interference. Based on the commonly used nonstationary signal analysis method, Hilbert-Huang transform (HHT), we propose an improved circle-EMD algorithm to suppress the end effect. The algorithm can extract different intrinsic mode functions (IMFs), decompose the fMRI data to filter out low frequency and other redundant noise signals, and more accurately reflect the true characteristics of the original signal. For the filtered fMRI signal, we use three existing different machine learning methods: logistic regression (LR), support vector machine (SVM), and deep neural network (DNN) to achieve effective classification of different task states. The experiment compares the results of these machine learning methods and confirms that the deep neural network has the highest accuracy for task-state fMRI data classification and the effectiveness of the improved circle-EMD algorithm.
机译:在脑机接口和人脑工作功能的研究工作中,多任务状态fMRI数据的状态分类是一个难题。人脑的fMRI信号是一种非平稳信号,具有许多噪声效应和干扰。在常用的非平稳信号分析方法Hilbert-Huang变换(HHT)的基础上,提出了一种改进的圆EMD算法来抑制终端效应。该算法可以提取不同的本征模态函数(IMF),对fMRI数据进行分解,滤除低频等冗余噪声信号,更准确地反映原始信号的真实特征。对于滤波后的fMRI信号,我们使用现有的三种不同的机器学习方法:逻辑回归(LR)、支持向量机(SVM)和深度神经网络(DNN)来实现对不同任务状态的有效分类。实验比较了这些机器学习方法的结果,证实了深度神经网络对任务状态fMRI数据分类的准确率最高,并且改进的circle-EMD算法的有效性。

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