Early diagnosis of Alzheimer's disease (AD) is essential in preventing the disease's progression. Therefore, detecting AD from neuroimaging data such as structural magnetic resonance imaging (sMRI) has been a topic of intense investigation in recent years. Deep learning has gained considerable attention in Alzheimer's detection. However, training a convolutional neural network from scratch is challenging since it demands more computational time and a significant amount of annotated data. By transferring knowledge learned from other image recognition tasks to medical image classification, transfer learning can provide a promising and effective solution. Irregularities in the dataset distribution present another difficulty. Class decomposition can tackle this issue by simplifying learning a dataset's class boundaries. Motivated by these approaches, this paper proposes a transfer learning method using class decomposition to detect Alzheimer's disease from sMRI images. We use two ImageNet-trained architectures: VGG19 and ResNet50, and an entropy-based technique to determine the most informative images. The proposed model achieved state-of-the-art performance in the Alzheimer's disease (AD) vs mild cognitive impairment (MCI) vs cognitively normal (CN) classification task with a 3\% increase in accuracy from what is reported in the literature.
翻译:早期诊断阿尔茨海默氏病(AD)对于预防该疾病的发展至关重要。因此,从结构磁共振成像(sMRI)等神经成像(SMRI)等神经成像数据中检测ADD(AD)是近年来一项深入调查的主题。深层学习在阿尔茨海默的检测中引起了相当的注意。然而,从零开始培训一个革命性神经网络具有挑战性,因为它需要更多计算时间和大量附加数据。通过将从其他图像识别任务中获取的知识转移到医学图像分类,转移学习可以提供一种有希望和有效的解决办法。数据集分布中的不规则又是一个难题。类分解可以通过简化数据集的等级界限来解决这个问题。受这些方法的启发,本文提出一种转移学习方法,利用阶级分解来从SMRI图像中检测阿尔茨海默氏病。我们使用两个经过图像网络培训的结构:VGGG19和ResNet50,以及一种基于昆虫的技术来确定信息最丰富的图像。拟议的模型在阿尔茨海默氏病(ADCN)中实现了最新的性表现,而不是温度认知性认知性损伤(MC)在正常的分类中报告,在正常的准确性文学中增加了什么。