...
首页> 外文期刊>IEEE Transactions on Instrumentation and Measurement >Entropy Index in Quantitative EEG Measurement for Diagnosis Accuracy
【24h】

Entropy Index in Quantitative EEG Measurement for Diagnosis Accuracy

机译:脑电定量测量中的熵指数对诊断的准确性

获取原文
获取原文并翻译 | 示例

摘要

Electroencephalogram (EEG) remains the most immediate, simple, and rich source of information for understanding phenomena related to brain electrical activities. It is certainly a source of basic and interesting information to be extracted using specific and appropriate techniques. The most important aspect in processing EEG signals is to use less co-lateral assets and instrumentation in order to carried out a possible diagnosis; this is the approach of early diagnosis. Advanced estimate spectral analysis can reveal new information encompassed in EEG signals by means of specific parameters or indices. The research proposes a multidimensional approach with a combined use of decimated signal diagonalization (DSD) as basis from which it is possible to work by finding appropriate signal windows for revealing expected information and overcoming signal processing limitations encountered in quantitative EEG. Important information, about the state of the patient under observation, must be extracted from calculated DSD bispectrum. For this aim, it is useful to define an assessment index about the dynamic process associated with the analyzed signal. This information is measured by means of entropy, since the degree of order/disorder of the recorded EEG signal will be reflected in the obtained DSD bispectrum. The general advantage of multidimensional approach is to reveal eventual stealth frequencies “in space and in time” giving a topological vision to be correlated to physical areas which these frequencies emerge from. Long term and sleeping EEG recorded are analyzed, and the results obtained are of interest for an accurate diagnosis of the patient's clinical condition.
机译:脑电图(EEG)仍然是了解与脑电活动有关的现象的最直接,最简单和最丰富的信息源。当然,这是使用特定且适当的技术提取的基本和有趣信息的来源。处理脑电信号的最重要方面是使用较少的抵押资产和工具,以便进行可能的诊断;这是早期诊断的方法。先进的估计频谱分析可以通过特定的参数或索引来揭示EEG信号中包含的新信息。该研究提出了一种多维方法,该方法结合使用抽取信号对角化(DSD)作为基础,可以通过找到合适的信号窗口来揭示期望的信息并克服定量EEG中遇到的信号处理限制来进行工作。必须从计算出的DSD双谱中提取有关被观察患者状态的重要信息。为此,定义有关与分析信号相关的动态过程的评估指标非常有用。由于记录的EEG信号的有序/无序程度将反映在获得的DSD双谱中,因此该信息通过熵来测量。多维方法的一般优势是揭示“空间和时间”中最终的隐身频率,从而给出与这些频率出现的物理区域相关的拓扑视觉。分析记录的长期和睡眠EEG,获得的结果对于准确诊断患者的临床状况很有意义。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号