Wasserstein GAN-gradient penalty with deep transfer learning based alzheimer disease classification on 3D MRI scans

Rao Thota Narasimha, D. Vasumathi
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Abstract

There has been growing interest in using neuroimaging data, such as MRI scans, for the detection of Alzheimer's Disease (AD). Computer vision and deep learning models have shown promise in developing effective Computer-Aided Diagnosis (CAD) models for AD detection and classification. However, many existing models struggle due to their reliance on large training datasets and effective hyper parameter tuning strategies. To address these issues, transfer learning is often used to adjust the final fully connected layers of pre-trained DL models for use with smaller datasets. This paper proposes a new AD classification model based on a combination of Wasserstein GAN-Gradient Penalty (WGANGP) and Deep Transfer Learning (DTL) techniques, aimed at achieving accurate identification and classification of AD on 3D MRI scans. The WGANGP technique is used to increase the size of the dataset, and the model utilizes image enhancement and 3D Spatial Fuzzy C-means (3DS-FCM) techniques for image segmentation. Additionally, feature extraction is performed using the Ant Lion Optimizer (ALO) with the Inception v3 model, while the Deep Belief Network (DBN) model is employed for AD classification. The experimental validation of the WGANGP-DTL model is conducted using a benchmark 3D MRI dataset, and the results show that the proposed model outperforms recent approaches in several aspects.
基于深度迁移学习的Wasserstein gan梯度惩罚在三维MRI扫描上的阿尔茨海默病分类
人们对使用神经成像数据,如核磁共振扫描,来检测阿尔茨海默病(AD)越来越感兴趣。计算机视觉和深度学习模型在开发用于AD检测和分类的有效计算机辅助诊断(CAD)模型方面显示出了希望。然而,许多现有的模型由于依赖于大型训练数据集和有效的超参数调整策略而陷入困境。为了解决这些问题,迁移学习通常用于调整预训练DL模型的最终完全连接层,以用于较小的数据集。本文提出了一种基于Wasserstein GAN-Gradient Penalty (WGANGP)和Deep Transfer Learning (DTL)技术相结合的AD分类模型,旨在实现3D MRI扫描AD的准确识别和分类。WGANGP技术用于增加数据集的大小,该模型利用图像增强和3D空间模糊c -均值(3DS-FCM)技术进行图像分割。此外,使用Ant Lion Optimizer (ALO)与Inception v3模型进行特征提取,同时使用Deep Belief Network (DBN)模型进行AD分类。使用基准3D MRI数据集对wgang - dtl模型进行了实验验证,结果表明该模型在几个方面优于现有方法。
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