RESIGN: Alzheimer's Disease Detection Using Hybrid Deep Learning based Res-Inception Seg Network.

K Amsavalli, S Kanaga Suba Raja, S Sudha
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Abstract

Introduction: Alzheimer's disease (AD) is a leading cause of death, making early detection critical to improve survival rates. Conventional manual techniques struggle with early diagnosis due to the brain's complex structure, necessitating the use of dependable deep learning (DL) methods. This research proposes a novel RESIGN model is a combination of Res-InceptionSeg for detecting AD utilizing MRI images.

Methods: The input MRI images were pre-processed using a Non-Local Means (NLM) filter to reduce noise artifacts. A ResNet-LSTM model was used for feature extraction, targeting White Matter (WM), Grey Matter (GM), and Cerebrospinal Fluid (CSF). The extracted features were concatenated and classified into Normal, MCI, and AD categories using an Inception V3-based classifier. Additionally, SegNet was employed for abnormal brain region segmentation.

Results: The RESIGN model achieved an accuracy of 99.46%, specificity of 98.68%, precision of 95.63%, recall of 97.10%, and an F1 score of 95.42%. It outperformed ResNet, AlexNet, Dense- Net, and LSTM by 7.87%, 5.65%, 3.92%, and 1.53%, respectively, and further improved accuracy by 25.69%, 5.29%, 2.03%, and 1.71% over ResNet18, CLSTM, VGG19, and CNN, respectively.

Discussion: The integration of spatial-temporal feature extraction, hybrid classification, and deep segmentation makes RESIGN highly reliable in detecting AD. A 5-fold cross-validation proved its robustness, and its performance exceeded that of existing models on the ADNI dataset. However, there are potential limitations related to dataset bias and limited generalizability due to uniform imaging conditions.

Conclusion: The proposed RESIGN model demonstrates significant improvement in early AD detection through robust feature extraction and classification by offering a reliable tool for clinical diagnosis.

基于re - inception Seg网络的混合深度学习阿尔茨海默病检测。
简介:阿尔茨海默病(AD)是导致死亡的主要原因,早期发现对提高生存率至关重要。由于大脑结构复杂,传统的人工技术难以进行早期诊断,因此需要使用可靠的深度学习(DL)方法。本研究提出了一种结合Res-InceptionSeg的新辞职模型,用于利用MRI图像检测AD。方法:对输入的MRI图像进行非局部均值(Non-Local Means, NLM)滤波预处理,去除噪声伪影。使用ResNet-LSTM模型进行特征提取,以白质(WM)、灰质(GM)和脑脊液(CSF)为目标。使用基于Inception v3的分类器将提取的特征连接并分类为Normal、MCI和AD类别。此外,SegNet还用于异常脑区分割。结果:该模型准确率为99.46%,特异性为98.68%,精密度为95.63%,召回率为97.10%,F1评分为95.42%。它比ResNet、AlexNet、Dense- Net和LSTM分别提高了7.87%、5.65%、3.92%和1.53%,比ResNet18、CLSTM、VGG19和CNN分别提高了25.69%、5.29%、2.03%和1.71%。讨论:将时空特征提取、混合分类和深度分割相结合,使得RESIGN在AD检测中具有很高的可靠性。5次交叉验证证明了该模型的鲁棒性,其性能优于现有的ADNI数据集模型。然而,由于统一的成像条件,存在与数据集偏差和有限的泛化性相关的潜在局限性。结论:提出的RESIGN模型通过鲁棒的特征提取和分类,为临床诊断提供了可靠的工具,在早期AD检测方面有显著提高。
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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