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Robust, Automated Methods for Filtering and Processing Neural Signals.

机译:强大的自动化方法来过滤和处理神经信号。

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摘要

This dissertation presents novel tools for robust filtering and processing of neural signals. These tools improve upon existing methods and were shown to be effective under a variety of conditions. They are also simple to use, allowing researchers and clinicians to focus more time on the analysis of neural data and making many tasks accessible to non-expert personnel. The main contributions of this research were the creation of a generalized software framework for neural signal processing, the development of novel algorithms to filter common sources of noise, and an implementation of a brain-computer interface (BCI) decoder as an example application.;The framework has a modular structure and provides simple methods to incorporate neural signal processing tasks and applications. The software was found to maintain precise timing and reliable communication between components. A simple user interface allowed real-time control of all system parameters, and data was efficiently streamed to disk to allow for offline analysis.;One common source of contamination in neural signals is line noise. A method was developed for filtering this noise with a variable bandwidth filter capable of tracking a sinusoid's frequency. The method is based on the adaptive noise canceling (ANC) technique and is referred to here as the adaptive sinusoid canceler (ASC). This filter effectively eliminates sinusoidal contamination by tracking its frequency and achieving a narrow bandwidth. The ASC was found to outperform comparative methods including standard notch filters and an adaptive line enhancer (ALE).;Ocular artifacts (OAs) caused by eye movement can also present a large problem in neural recordings. Here, a wavelet-based technique was developed for efficiently removing these artifacts. The technique uses a discrete wavelet transform with an automatically selected decomposition level to localize artifacts in both time and frequency before removing them with thresholding. This method was shown to produce superior reduction of OAs when compared to regression, principal component analysis (PCA), and independent component analysis (ICA).;Finally, the removal of spatially correlated broadband noise such as electromyographic (EMG) artifacts was addressed. A method termed the adaptive common average reference (ACAR) was developed as an effective method for removing this noise. The ACAR is based on a combination of the common average reference (CAR) and an ANC filter. In a convergent process, a weighted CAR provides a reference to an ANC filter, which in turn provides feedback to enhance the reference. This method outperformed the standard CAR and ICA under most circumstances.;As an example application for the methods developed in this dissertation, a BCI decoder was implemented using linear regression with an elastic net penalty. This decoder provides automatic feature selection and a robust feature set. The software framework was found to provide reliable data for the decoder, and the filtering algorithms increased the availability of neural features that were usable for decoding.
机译:本文提出了用于神经信号的鲁棒滤波和处理的新型工具。这些工具对现有方法进行了改进,并且在各种条件下均显示出了有效性。它们还易于使用,使研究人员和临床医生可以将更多的时间集中在神经数据的分析上,并使非专业人员可以执行许多任务。这项研究的主要贡献是创建了用于神经信号处理的通用软件框架,开发了用于过滤常见噪声源的新颖算法,并实现了作为示例应用程序的脑机接口(BCI)解码器。该框架具有模块化结构,并提供了合并神经信号处理任务和应用程序的简单方法。发现该软件可保持精确的时间安排和组件之间的可靠通信。一个简单的用户界面可以实时控制所有系统参数,并且有效地将数据流式传输到磁盘以进行离线分析。;神经信号中一种常见的污染源是线路噪声。开发了一种使用可变带宽滤波器来过滤该噪声的方法,该滤波器能够跟踪正弦波的频率。该方法基于自适应噪声消除(ANC)技术,在此称为自适应正弦消除器(ASC)。该滤波器通过跟踪其频率并实现窄带宽来有效消除正弦波污染。人们发现,ASC的性能优于包括标准陷波滤波器和自适应线路增强器(ALE)的比较方法。眼球运动引起的眼部伪影(OAs)在神经记录中也可能带来很大的问题。在这里,开发了一种基于小波的技术来有效去除这些伪影。该技术使用具有自动选择的分解级别的离散小波变换来在时间和频率上定位伪像,然后通过阈值去除它们。与回归分析,主成分分析(PCA)和独立成分分析(ICA)相比,该方法可显着降低OA。最后,解决了空间相关的宽带噪声(如肌电图(EMG)伪影)的消除。开发了一种称为自适应公共平均参考(ACAR)的方法,作为消除这种噪声的有效方法。 ACAR基于公共平均参考(CAR)和ANC滤波器的组合。在收敛过程中,加权CAR为ANC滤波器提供参考,ANC滤波器又提供反馈以增强参考。在大多数情况下,该方法都优于标准的CAR和ICA。作为本文开发方法的一个示例应用,使用具有弹性净罚分的线性回归实现了BCI解码器。该解码器提供自动功能选择和强大的功能集。发现该软件框架可以为解码器提供可靠的数据,并且过滤算法提高了可用于解码的神经功能的可用性。

著录项

  • 作者

    Kelly, John W.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Engineering Electronics and Electrical.;Engineering Biomedical.;Engineering Computer.;Biology Neuroscience.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 141 p.
  • 总页数 141
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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