Review and analysis of deep neural network models for Alzheimer's disease classification using brain medical resonance imaging

IF 1.2 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Shruti Pallawi, Dushyant Kumar Singh
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Abstract

Alzheimer's disease is a type of progressive neurological disorder which is irreversible and the patient suffers from severe memory loss. This disease is the seventh largest cause of death across the globe. As yet there is no cure for this disease, the only way to control it is its early diagnosis. Deep Learning techniques are mostly preferred in classification tasks because of their high accuracy over a large dataset. The main focus of this paper is on fine-tuning and evaluating the Deep Convolutional Networks for Alzheimer's disease classification. An empirical analysis of various deep learning-based neural network models has been done. The architectures evaluation includes InceptionV3, ResNet with 50 layers and 101 layers and DenseNet with 169 layers. The dataset has been taken from Kaggle which is publicly available and comprises of four classes which represents the various stages of Alzheimer's disease. In our experiment, the accuracy of DenseNet consistently improved with the increase in the number of epochs resulting in a 99.94% testing accuracy score better than the rest of the architectures. Although the results obtained are satisfactory, but for future research, we can apply transfer learning on other deep models like Inception V4, AlexNet etc., to increase accuracy and decrease computational time. Also, in future we can work on other datasets like ADNI or OASIS and use Positron emitted tomography, diffusion tensor imaging neuroimages and their combinations for better result.

Abstract Image

脑医学共振成像用于阿尔茨海默病分类的深度神经网络模型综述与分析
阿尔茨海默病是一种进行性神经系统疾病,是不可逆的,患者患有严重的记忆力丧失。这种疾病是全球第七大死亡原因。目前还没有治愈这种疾病的方法,控制它的唯一方法是早期诊断。深度学习技术在分类任务中大多是首选技术,因为它们在大型数据集上具有较高的准确性。本文的主要重点是对用于阿尔茨海默病分类的深度卷积网络进行微调和评估。对各种基于深度学习的神经网络模型进行了实证分析。架构评估包括InceptionV3、具有50层和101层的ResNet以及具有169层的DenseNet。该数据集取自Kaggle,该数据集由四个类别组成,代表阿尔茨海默病的各个阶段。在我们的实验中,DenseNet的准确性随着历元数量的增加而不断提高,导致99.94%的测试准确性得分优于其他架构。虽然获得的结果令人满意,但对于未来的研究,我们可以将迁移学习应用于其他深度模型,如Inception V4、AlexNet等,以提高精度并减少计算时间。此外,在未来,我们可以在其他数据集上工作,如ADNI或OASIS,并使用正电子发射断层扫描、扩散张量成像神经图像及其组合来获得更好的结果。
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来源期刊
Cognitive Computation and Systems
Cognitive Computation and Systems Computer Science-Computer Science Applications
CiteScore
2.50
自引率
0.00%
发文量
39
审稿时长
10 weeks
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