Transfer learning based novel intelligent classification for Alzheimer’s Dementia using duplex convolutional neural network

Bali Devi, Sumit Srivastava, Vivek Kumar Verma, Gaurav Aggarwal
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Abstract

Goal: This work focuses on neuroimaging studies, including MRI analysis via machine learning and deep learning, which has led to an increase in computer vision research and the early detection of neural disorders. Methods: An adaptive implementation of transfer learning (TL) with a top-level VGG16 architecture is set up with pretrained weights for large MRI images dataset. Convolutional neural networks (CNN) are a bespoke version of a multi-layer view. Through experimentation on the ADNI dataset, the algorithm was trained and tested in binary and multiclass classification using the MRI scanning of individuals. Results: The machine was trained on the CNN model of binary classification and the CNN model for multiclass classification and was trained using TL (using the VGG16 model) with CNN; 25 epochs of batch size of 32 were considered. To validate the contributions of this study, we demonstrated that the proposed model used for binary classification gave an accuracy of 96.89% and an F1 score of 96.90%, and for multiclass classification, we obtained an accuracy of 99.89% and an F1 score of 94.82%. Conclusion: The suggested approach is highly generic, as it is simple and parameter invariant, and therefore applicable to any MRI dataset.
基于迁移学习的双卷积神经网络阿尔茨海默病智能分类
目标:这项工作的重点是神经成像研究,包括通过机器学习和深度学习进行的MRI分析,这导致了计算机视觉研究和神经疾病的早期检测的增加。方法:针对大型MRI图像数据集,采用预训练的权值,建立了基于顶级VGG16架构的迁移学习自适应实现。卷积神经网络(CNN)是多层视图的定制版本。通过在ADNI数据集上的实验,利用个体的MRI扫描对算法进行了二分类和多分类的训练和测试。结果:机器分别在二元分类的CNN模型和多类分类的CNN模型上进行训练,并使用CNN的TL(使用VGG16模型)进行训练;考虑了批次大小为32个的25个epoch。为了验证本研究的贡献,我们证明了所提出的模型用于二元分类的准确率为96.89%,F1得分为96.90%,用于多类分类的准确率为99.89%,F1得分为94.82%。结论:建议的方法具有高度通用性,因为它简单且参数不变,因此适用于任何MRI数据集。
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