Alzheimer’s disease detection and stage identification from magnetic resonance brain images using vision transformer

M. Alshayeji
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Abstract

Machine learning techniques applied in neuroimaging have prompted researchers to build models for early diagnosis of brain illnesses such as Alzheimer’s disease (AD). Although this task is difficult, advanced deep-learning (DL) approaches can be used. These DL models are effective, but difficult to interpret, time-consuming, and resource-intensive. Therefore, neuroscientists are interested in employing novel, less complex structures such as transformers that have superior pattern-extraction capabilities. In this study, an automated framework for accurate AD diagnosis and precise stage identification was developed by employing vision transformers (ViTs) with fewer computational resources. ViT, which captures the global context as opposed to convolutional neural networks (CNNs) with local receptive fields, is more efficient for brain image processing than CNN because the brain is a highly complex network with connected parts. The self-attention mechanism in the ViT helps to achieve this goal. Magnetic resonance brain images belonging to four stages were utilized to develop the proposed model, which achieved 99.83% detection accuracy, 99.69% sensitivity, 99.88% specificity, and 0.17% misclassification rate. Moreover, to prove the ability of the model to generalize, the mean distances of the transformer blocks and attention heat maps were visualized to understand what the model learned from the MRI input image.
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利用视觉变换器从脑磁共振图像中检测和识别阿尔茨海默病分期
应用于神经成像的机器学习技术促使研究人员建立模型,用于早期诊断阿尔茨海默病(AD)等脑部疾病。虽然这项任务难度很大,但可以使用先进的深度学习(DL)方法。这些深度学习模型很有效,但难以解释、耗时且资源密集。因此,神经科学家们对采用新型、不太复杂的结构(如具有卓越模式提取能力的变压器)很感兴趣。在这项研究中,我们利用视觉变换器(ViT)开发了一种自动框架,可在较少计算资源的情况下准确诊断出注意力缺失症并进行精确的阶段识别。与具有局部感受野的卷积神经网络(CNNs)相比,ViT 能够捕捉全局上下文,在大脑图像处理方面比 CNN 更有效率,因为大脑是一个由相互连接的部分组成的高度复杂的网络。ViT 的自我关注机制有助于实现这一目标。该模型的检测准确率达到 99.83%,灵敏度达到 99.69%,特异度达到 99.88%,误分类率为 0.17%。此外,为了证明该模型的泛化能力,还对变压器块的平均距离和注意力热图进行了可视化处理,以了解该模型从核磁共振输入图像中学到了什么。
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