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A new automated multi-stage system of non-local means and multi-kernel adaptive filtering techniques for EEG noise and artifacts suppression

机译:用于EEG噪声和伪影抑制的非本地方法和多核自适应过滤技术的新自动化多级系统

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摘要

Context. Electroencephalography (EEG) signals are contaminated with diverse types of noises and artifacts, which greatly distort EEG recording and increase the difficulty in obtaining accurate diagnosis. Objective. This paper investigates, for the first time, multi-kernel normalized least mean square with coherence-based sparsification (MKNLMS-CS) algorithm for suppressing different artifact components, and the 1D patch-based non-local means (NLM) algorithm for eliminating white and colored noises. Approach. A novel multi-stage system based on combining the NLM algorithm with the MKNLMS-CS algorithm is proposed for eliminating different noise and artifact sources by targeting each noise or artifact component in a single stage. Main Results. The proposed approach is applied to clinical real EEG data, and the results reveal the superior performance of the proposed system in removing white and colored noises, suppressing different artifact components, preserving the important and tiny features of the original EEG signal, and keeping the morphology of EEG frequency components. Significance. The proposed multi-stage design succeeds not only to suppress different artifact components and noise sources under low and high noise conditions, but also to achieve accurate sleep spindle detection from the filtered high-quality EEG signals. This demonstrates the usefulness of the proposed approach for obtaining high-resolution EEG signal from noisy and contaminated EEG recordings.
机译:语境。脑电图(EEG)信号被不同类型的噪声和伪像污染,这极大地扭曲了EEG记录并增加了获得准确诊断的难度。客观的。本文首次调查多核,具有基于相干的稀疏(MKNLMS-CS)算法的多孔归一化最小均线,用于抑制不同的工件分量,以及用于消除白色的1D贴片的非本地方法(NLM)算法和彩色的噪音。方法。提出了一种基于与MKNLMS-CS算法组合的NLM算法的新型多级系统,用于通过在单个阶段中针对每个噪声或伪像组分来消除不同的噪声和伪影源。主要结果。所提出的方法适用于临床实际脑电图数据,结果揭示了所提出的系统在去除白色和彩色噪声时的卓越性能,抑制不同的工件组分,保持原始脑电图信号的重要和微小特征,并保持形态EEG频率分量。意义。所提出的多级设计不仅可以在低噪声和高噪声条件下抑制不同的工件分量和噪声源,而且还可以从滤波后的高质量EEG信号实现精确的睡眠主轴检测。这证明了所提出的方法从嘈杂和受污染的EEG记录获取高分辨率EEG信号的方法。

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