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TOWARDS AN EEG-BASED BIOMARKER FOR ALZHEIMER'S DISEASE: IMPROVING AMPLITUDE MODULATION ANALYSIS FEATURES

机译:朝向阿尔茨海默病的脑脑血镜生物标志物:改善幅度调制分析特征

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In this paper, an EEG-based biomarker for automated Alzheimer's disease (AD) diagnosis is described, based on extending a recently-proposed "percentage modulation energy" (PME) metric. More specifically, to improve the signal-to-noise ratio of the EEG signal, PME features were averaged over different durations prior to classification. Additionally, two variants of the PME features were developed: the "percentage raw energy" (PRE) and the "percentage envelope energy" (PEE). Experimental results on a dataset of 88 participants (35 controls, 31 with mild-AD and 22 with moderate AD) show that over 98% accuracy can be achieved with a support vector classifier when discriminating between healthy and mild AD patients, thus significantly outperforming the original PME biomarker. Moreover, the proposed system can achieve over 94% accuracy when discriminating between mild and moderate AD, thus opening doors for very early diagnosis.
机译:本文基于延伸最近提出的“百分比调制能量”(PME)度量,描述了用于自动阿尔茨海默病(AD)诊断的基于脑电图的生物标志物(AD)诊断。更具体地,为了提高EEG信号的信噪比,在分类之前在不同的持续时间内平均PME特征。此外,开发了两个PME特征的两个变体:“百分比原始能量”(Preage)和“百分比包络能量”(PEE)。在88名参与者的数据集上的实验结果(35个对照,31种带有温和的AD和22的31个)表明,在鉴别健康和轻度AD患者之间的鉴别时,可以通过支持载体分类器实现超过98%的精度,从而显着优于表现原始PME生物标志物。此外,当鉴别温和和中度广告之间,所提出的系统可以达到超过94%的精度,从而打开门进行非常早期诊断。

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