利用稀疏信号处理和特定数据字典从术中记录的局部场电位中去除脉动伪影。

Chandra Prakash Swamy, Behrang Fazli Besheli, Luciano R F Branco, Nicole R Provenza, Sameer A Sheth, Wayne K Goodman, Ashwin Viswanathan, Nuri Firat Ince
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引用次数: 0

摘要

神经记录经常会受到心电图或脉动伪影的污染。这些大振幅成分会掩盖感兴趣的神经模式,使视觉检查过程变得困难。本研究介绍了一种稀疏信号表示策略,该策略的目标是去噪术中记录的局部场电位(LFP)中的脉动伪影。为了估计伪影的形态,我们首先从同步记录的心电图轨迹中检测 QRS 峰作为锚点。在 LFP 数据相对于每个搏动进行外显后,就会生成一个具有特定长度的原始数据片段池。利用 K-SVD 算法,我们构建了一个特定于数据的字典,以稀疏的方式表示每个受污染的 LFP 时间序列。由于 LFP 与每个 QRS 波群对齐,而背景神经活动与锚点不相关,因此我们假定所构建的字典将主要用于表示搏动伪影。在此方案中,我们采用正交匹配追寻法,将每个 LFP 时间点表示为字典原子的线性组合。这样,通过计算原始 LFP 与其近似值之间的残差,就得到了去噪 LFP 数据。我们讨论并演示了去噪数据的改进,并将结果与主成分分析(PCA)进行了比较。我们注意到,目测信号发生了相当大的变化,可以观察到阿尔法和贝塔波段的各种振荡模式。我们还看到低频段(α 和β)的信号强度有了明显的压缩。
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Pulsation artifact removal from intra-operatively recorded local field potentials using sparse signal processing and data-specific dictionary.

Neural recordings frequently get contaminated by ECG or pulsation artifacts. These large amplitude components can mask the neural patterns of interest and make the visual inspection process difficult. The current study describes a sparse signal representation strategy that targets to denoise pulsation artifacts in local field potentials (LFPs) recorded intraoperatively. To estimate the morphology of the artifact, we first detect the QRS-peaks from the simultaneously recorded ECG trace as an anchor point. After the LFP data has been epoched with respect to each beat, a pool of raw data segments of a specific length is generated. Using the K-singular value decomposition (K-SVD) algorithm, we constructed a data-specific dictionary to represent each contaminated LFP epoch in a sparse fashion. Since LFP is aligned to each QRS complex and the background neural activity is uncorrelated to the anchor points, we assumed that constructed dictionary will be formed to mainly represent the pulsation artifact. In this scheme, we performed an orthogonal matching pursuit to represent each LFP epoch as a linear combination of the dictionary atoms. The denoised LFP data is thus obtained by calculating the residual between the raw LFP and its approximation. We discuss and demonstrate the improvements in denoised data and compare the results with respect to principal component analysis (PCA). We noted that there is a comparable change in the signal for visual inspection to observe various oscillating patterns in the alpha and beta bands. We also see a noticeable compression of signal strength in the lower frequency band (<13 Hz), which was masked by the pulsation artifact, and a strong increase in the signal-to-noise ratio (SNR) in the denoised data.Clinical Relevance- Pulsation artifact can mask relevant neural activity patterns and make their visual inspection difficult. Using sparse signal representation, we established a new approach to reconstruct the quasiperiodic pulsation template and computed the residue signal to achieve noise-free neural activity.

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