LCADNet: a novel light CNN architecture for EEG-based Alzheimer disease detection.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-09-01 Epub Date: 2024-06-11 DOI:10.1007/s13246-024-01425-w
Pramod Kachare, Digambar Puri, Sandeep B Sangle, Ibrahim Al-Shourbaji, Abdoh Jabbari, Raimund Kirner, Abdalla Alameen, Hazem Migdady, Laith Abualigah
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Abstract

Alzheimer's disease (AD) is a progressive and incurable neurologi-cal disorder with a rising mortality rate, worsened by error-prone, time-intensive, and expensive clinical diagnosis methods. Automatic AD detection methods using hand-crafted Electroencephalogram (EEG) signal features lack accuracy and reliability. A lightweight convolution neural network for AD detection (LCADNet) is investigated to extract disease-specific features while reducing the detection time. The LCADNet uses two convolutional layers for extracting complex EEG features, two fully connected layers for selecting disease-specific features, and a softmax layer for predicting AD detection probability. A max-pooling layer interlaced between convolutional layers decreases the time-domain redundancy in the EEG signal. The efficiency of the LCADNet and four pre-trained models using transfer learning is compared using a publicly available AD detection dataset. The LCADNet shows the lowest computation complexity in terms of both the number of floating point operations and inference time and the highest classification performance across six measures. The generalization of the LCADNet is assessed by cross-testing it with two other publicly available AD detection datasets. It outperforms existing EEG-based AD detection methods with an accuracy of 98.50%. The LCADNet may be a valuable aid for neurologists and its Python implemen- tation can be found at github.com/SandeepSangle12/LCADNet.git.

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LCADNet:用于基于脑电图的阿尔茨海默病检测的新型轻型 CNN 架构。
阿尔茨海默病(AD)是一种渐进性、无法治愈的神经系统疾病,死亡率不断攀升,而容易出错、耗时耗力且昂贵的临床诊断方法则使病情恶化。使用手工绘制脑电图(EEG)信号特征的自动痴呆症检测方法缺乏准确性和可靠性。本文研究了一种用于检测注意力缺失症的轻量级卷积神经网络(LCADNet),以提取疾病特异性特征,同时缩短检测时间。LCADNet 使用两个卷积层提取复杂的脑电图特征,两个全连接层选择疾病特异性特征,一个 softmax 层预测 AD 检测概率。卷积层之间的最大池化层减少了脑电信号的时域冗余。利用一个公开的注意力缺失检测数据集,比较了 LCADNet 和使用迁移学习的四个预训练模型的效率。就浮点运算次数和推理时间而言,LCADNet 的计算复杂度最低,而在六项衡量指标中,LCADNet 的分类性能最高。通过与其他两个公开的注意力缺失检测数据集进行交叉测试,评估了 LCADNet 的通用性。其准确率高达 98.50%,优于现有的基于脑电图的注意力缺失检测方法。LCADNet 可能是神经科医生的重要助手,其 Python 实现可在 github.com/SandeepSangle12/LCADNet.git 上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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