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Investigation of Alzheimer's Disease EEG Frequency Components with Lempel-Ziv Complexity

机译:具有LEMPEL-ZIV复杂性的阿尔茨海默病EEG频率分量研究

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This pilot study applied Lempel-Ziv Complexity (LZC) to 22 resting EEG signals, collected using the 10-20 international system, from 11 patients with Alzheimer's disease (AD) and 11 age-matched controls. This allowed for frequency band analysis as the EEG signals were first pre-filtered with a third order Hamming window in the ranges F to F+WHz with both F and W equal to l-30Hz respectively. Control subjects were found to have a greater signal complexity than AD patients with statistically significant bands seen at various ranges in all 16 electrodes. The maximum statistical significance (Student's t test, p<0.01) was increased over the findings with traditional signal filtering techniques allowing the whole range, with a maximum significance of p=3.50e" at electrode T4 between 7-18Hz. Electrode F4 also showed significantly high statistically significant differences. The maximum accuracy, both controls and AD patients correctly identified, found with Receiver Operating Characteristic Curves was 95.45% (21 of 22 subjects correctly classified) at T4 (7-18Hz and 7-20Hz), Fp2 (8-32Hz) and F4 (6-21Hz), which is significantly more accurate than the most accurate methods previously applied to this dataset. The beta band (13-30Hz) was found to be most influential in separating the two test groups in this study with the best range suggested to be 5-26Hz, combining traditional theta, alpha and beta bands. These findings suggest pre-filtering has a significant effect on method outcomes and can be successfully tailored to improve the statistical effectiveness of LZC at distinguishing between these two EEG groups. However, more testing is required to investigate the effectiveness at distinguishing other signal dynamics.
机译:该试点研究将LEMPEL-ZIV复杂度(LZC)应用于22休息的EEG信号,使用10-20国际体系收集,从11例阿尔茨海默病(AD)和11名年龄匹配对照。允许使用频带分析作为EEG信号首先用与F至F + WHZ中的第三阶汉明窗口进行预过滤,分别与F和W等于L-30Hz。发现对照受试者具有比在所有16个电极中各种范围内看到的统计学上显着的带的AD患者具有更大的信号复杂性。在具有传统信号滤波技术的调查结果中增加了最大统计学意义(学生的T测试,P <0.01),允许整个范围,在7-18Hz的电极T4之间具有最大意义的P = 3.50e“。电极F4也显示出电极F4显着高的统计学意义差异。最大精度,对照和AD患者正确鉴定,接收器操作特征曲线发现为95.45%(21个受试者的21个受试者的21个受试者),FP2(7-18Hz和7-20Hz),FP2(8 -32Hz)和F4(6-21Hz),比以前适用于该数据集的最准确的方法是更准确的。β带(13-30Hz)被发现在分离这项研究中的两个测试组时最有影响力最好的范围建议为5-26Hz,结合传统的Theta,alpha和β乐队。这些发现表明预滤波对方法结果有显着影响,可以成功定制以改善统计数据l LZC在区分这两个EEG群体之间的有效性。但是,需要更多的测试来调查区分其他信号动态的有效性。

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