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A computational framework to support the automated analysis of routine electroencephalographic data.

机译:支持常规脑电图数据自动分析的计算框架。

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摘要

Epilepsy is a condition in which a patient has multiple unprovoked seizures which are not precipitated by another medical condition. It is a common neurological disorder that afflicts 1% of the population of the US, and is sometimes hard to diagnose if seizures are infrequent. Routine Electroencephalography (rEEG), where the electrical potentials of the brain are recorded on the scalp of a patient, is one of the main tools for diagnosing because rEEG can reveal indicators of epilepsy when patients are in a non-seizure state. Interpretation of rEEG is difficult and studies have shown that 20-30% of patients at specialized epilepsy centers are misdiagnosed [18, 73]. An improved ability to interpret rEEG could decrease the misdiagnosis rate of epilepsy.The difficulty in diagnosing epilepsy from rEEG stems from the large quantity, low signal to noise ratio (SNR), and variability of the data. A usual point of error for a clinician interpreting rEEG data is the misinterpretation of PEEs (paroxysmal EEG events)---short bursts of electrical activity of high amplitude relative to the surrounding signals that have a duration of approximately .1 to 2 seconds [4]. Clinical interpretation of PEEs could be improved with the development of an automated system to detect and classify PEE activity in an rEEG dataset. Systems that have attempted to automatically classify PEEs in the past have had varying degrees of success [47]. These efforts have been hampered to a large extent by the absence of a "gold standard" data set that EEG researchers could use.In this work we present a distributed, web-based collaborative system for collecting and creating a "gold standard" dataset for the purpose of evaluating spike detection software. We hope to advance spike detection research by creating a performance standard that facilitates comparisons between approaches of disparate research groups. Further, this work endeavors to create a new, high performance parallel implementation of ICA (independent component analysis), a potential preprocessing step for PEE classification. We also demonstrate tools for visualization and analysis to support the initial phases of spike detection research.These tools will first help to develop a standardized rEEG dataset of expert EEG interpreter opinion with which automated analysis can be trained and tested. Secondly, it will attempt to create a new framework for interdisciplinary research that will help improve our understanding of PEEs in rEEG. These improvements could ultimately advance the nuanced art of rEEG interpretation and decrease the misdiagnosis rate that leads to patients suffering inappropriate treatment.
机译:癫痫病是指患者有多种无因的癫痫发作,这种发作没有被其他医学疾病引起。这是一种常见的神经系统疾病,折磨着美国1%的人口,有时如果抽搐很少见则很难诊断。常规脑电图(rEEG)是诊断患者的主要工具之一,因为脑电势被记录在患者的头皮上,因为当患者处于非癫痫状态时,rEEG可以显示癫痫的指标。 rEEG的解释很困​​难,研究表明,在专门的癫痫中心,有20-30%的患者被误诊了[18,73]。增强的rEEG解释能力可以降低癫痫的误诊率。从rEEG诊断癫痫的困难源于大量,低信噪比(SNR)和数据可变性。临床医生解释rEEG数据的一个常见错误点是对PEE(误发性EEG事件)的误解-相对于周围信号持续时间约为.1到2秒[4]的短振幅高电活动。 ]。 PEE的临床解释可以通过开发自动系统来检测和分类rEEG数据集中的PEE活动而得到改善。过去尝试自动对PEE进行分类的系统取得了不同程度的成功[47]。由于缺乏EEG研究人员可以使用的“黄金标准”数据集,这些工作在很大程度上受到了阻碍。在这项工作中,我们提出了一个基于Web的分布式协作系统,用于收集和创建用于该数据的“黄金标准”数据集。评估峰值检测软件的目的。我们希望通过创建一种性能标准来促进峰值检测研究,该性能标准可促进不同研究组方法之间的比较。此外,这项工作还努力创建ICA(独立成分分析)的新的高性能并行实现,这是PEE分类的潜在预处理步骤。我们还将演示用于可视化和分析的工具,以支持峰值检测研究的初始阶段。这些工具将首先帮助开发专家脑电图专家意见的标准化rEEG数据集,通过该数据集可以训练和测试自动化分析。其次,它将尝试创建跨学科研究的新框架,这将有助于增进我们对rEEG中PEE的理解。这些改进最终将促进rEEG解释的细微差别,并减少导致患者遭受不适当治疗的误诊率。

著录项

  • 作者单位

    Clemson University.;

  • 授予单位 Clemson University.;
  • 学科 Biology Neurobiology.Computer Science.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 87 p.
  • 总页数 87
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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