基于深度学习的磁共振图像分割与分类用于阿尔茨海默病诊断

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING International Journal of Image and Graphics Pub Date : 2023-08-29 DOI:10.1142/s0219467825500263
Manochandar Thenralmanoharan, P. Kumaraguru Diderot
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引用次数: 0

摘要

使用磁共振成像(MRI)准确快速地检测阿尔茨海默病(AD)在研究工作者中引起了相当大的关注,因为目前越来越多的研究是由深度学习(DL)方法驱动的,这些方法在涉及医学图像分析的各个领域都取得了突出的成果。特别是卷积神经网络(CNN)由于能够处理大量非结构化数据集并自动提取重要特征,主要应用于图像数据集的分析。早期检测是成功和发展干扰的主导因素,神经成像表征了AD早期诊断的潜在区域。本研究提出并开发了一种新的基于深度学习的磁共振图像分割和分类AD诊断(DLMRISC-ADD)模型。所提出的DLMRISC-ADD模型主要关注MRI图像的分割来检测AD。为了实现这一点,所提出的DL MRISC-ADD模型遵循两个阶段的过程,即颅骨剥离和图像分割。在初步阶段,所提出的DLMRISC-ADD模型采用基于U-Net的颅骨剥离方法从输入MRI中去除颅骨区域。接下来,在第二阶段,DLMRISC-ADD模型将QuickNAT模型应用于MRI图像分割,该模型识别不同的部分,如白质、灰质、海马体、杏仁核和心室。此外,将具有稀疏自动编码器(SAE)分类器的密集连接网络(DenseNet201)特征提取器用于AD检测过程。在ADNI数据集上进行了一组简短的模拟,以证明DLMRISC-ADD方法的改进性能,并对结果进行了广泛的检验。实验结果显示了DLMRISC-ADD技术的有效分割效果。
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Deep Learning-Based Magnetic Resonance Image Segmentation and Classification for Alzheimer’s Disease Diagnosis
Accurate and rapid detection of Alzheimer’s disease (AD) using magnetic resonance imaging (MRI) gained considerable attention among research workers because of an increased number of current researches being driven by deep learning (DL) methods that have accomplished outstanding outcomes in variety of domains involving medical image analysis. Especially, convolution neural network (CNN) is primarily applied for the analyses of image datasets according to the capability of handling massive unstructured datasets and automatically extracting significant features. Earlier detection is dominant to the success and development interferences, and neuroimaging characterizes the potential regions for earlier diagnosis of AD. The study presents and develops a novel Deep Learning-based Magnetic Resonance Image Segmentation and Classification for AD Diagnosis (DLMRISC-ADD) model. The presented DLMRISC-ADD model mainly focuses on the segmentation of MRI images to detect AD. To accomplish this, the presented DLMRISC-ADD model follows a two-stage process, namely, skull stripping and image segmentation. At the preliminary stage, the presented DLMRISC-ADD model employs U-Net-based skull stripping approach to remove skull regions from the input MRIs. Next, in the second stage, the DLMRISC-ADD model applies QuickNAT model for MRI image segmentation, which identifies distinct parts such as white matter, gray matter, hippocampus, amygdala, and ventricles. Moreover, densely connected network (DenseNet201) feature extractor with sparse autoencoder (SAE) classifier is used for AD detection process. A brief set of simulations is implemented on ADNI dataset to demonstrate the improved performance of the DLMRISC-ADD method, and the outcomes are examined extensively. The experimental results exhibit the effectual segmentation results of the DLMRISC-ADD technique.
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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