P. Rodrigues, D. Freitas, João Paulo Teixeira, Dílio Alves, C. Garrett
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引用次数: 5
摘要
世界卫生系统现在正面临着一个被称为阿尔茨海默病(AD)的全球性问题,它主要影响老年人。本研究的目标是运用人工神经网络(ANN)进行分类,以提高不同阶段AD患者的识别准确率。为此,提取表征脑电图(EEG)信号“慢下来”的几个研究特征,并将其呈现给人工神经网络条目,以便对数据集进行分类。本工作所取得的分类结果在AD的早期诊断方面是有希望的,它们表明脑电图是一种很好的AD检测工具(对照(C) vs AD:准确率95%;C与轻度认知障碍(MCI):准确率77%;MCI vs AD:准确率83%;All vs All:准确率90%)。
Electroencephalogram Signal Analysis in Alzheimer's Disease Early Detection
The World's health systems are now facing a global problem known as Alzheimer's disease (AD) that mainly affects the elderly. The goal of this work is to perform a classification methodology skilled with Artificial Neural Networks (ANN) to improve the discrimination accuracy amongst patients at AD different stages comparatively to the state-of-art. For that, several study features that characterized the Electroencephalogram (EEG) signals “slow-down” were extracted and presented to the ANN entries in order to classify the dataset. The classification results achieved in the present work are promising concerning AD early diagnosis and they show that EEG can be a good tool for AD detection (Controls (C) vs AD: accuracy 95%; C vs Mild-cognitive Impairment (MCI): accuracy 77%; MCI vs AD: accuracy 83%; All vs All: accuracy 90%).