A systematic review of vision transformers and convolutional neural networks for Alzheimer’s disease classification using 3D MRI images

Mario Alejandro Bravo-Ortiz, Sergio Alejandro Holguin-Garcia, Sebastián Quiñones-Arredondo, Alejandro Mora-Rubio, Ernesto Guevara-Navarro, Harold Brayan Arteaga-Arteaga, Gonzalo A. Ruz, Reinel Tabares-Soto
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Abstract

Alzheimer’s disease (AD) is a progressive neurodegenerative disorder that mainly affects memory and other cognitive functions, such as thinking, reasoning, and the ability to carry out daily activities. It is considered the most common form of dementia in older adults, but it can appear as early as the age of 25. Although the disease has no cure, treatment can be more effective if diagnosed early. In diagnosing AD, changes in the brain’s morphology are identified macroscopically, which is why deep learning models, such as convolutional neural networks (CNN) or vision transformers (ViT), excel in this task. We followed the Systematic Literature Review process, applying stages of the review protocol from it, which aims to detect the need for a review. Then, search equations were formulated and executed in several literature databases. Relevant publications were scanned and used to extract evidence to answer research questions. Several CNN and ViT approaches have already been tested on problems related to brain image analysis for disease detection. A total of 722 articles were found in the selected databases. Still, a series of filters were performed to decrease the number to 44 articles, focusing specifically on brain image analysis with CNN and ViT methods. Deep learning methods are effective for disease diagnosis, and the surge in research activity underscores its importance. However, the lack of access to repositories may introduce bias into the information. Full access demonstrates transparency and facilitates collaborative work in research.

Abstract Image

利用三维核磁共振成像图像对用于阿尔茨海默病分类的视觉转换器和卷积神经网络进行系统回顾
阿尔茨海默病(AD)是一种进行性神经退行性疾病,主要影响记忆力和其他认知功能,如思维、推理和进行日常活动的能力。它被认为是老年人最常见的痴呆症,但早在 25 岁就可能出现。虽然这种疾病无法治愈,但如果能及早诊断,治疗效果会更好。在诊断注意力缺失症时,需要从宏观上识别大脑形态的变化,这也是卷积神经网络(CNN)或视觉转换器(ViT)等深度学习模型在这项任务中表现出色的原因。我们遵循系统文献综述流程,应用其中的综述协议阶段,旨在发现综述需求。然后,在多个文献数据库中制定并执行了搜索公式。对相关出版物进行扫描并提取证据,以回答研究问题。已有几种 CNN 和 ViT 方法在与疾病检测的大脑图像分析相关的问题上进行了测试。在所选数据库中共找到 722 篇文章。尽管如此,我们还是进行了一系列筛选,将文章数量减少到 44 篇,并特别关注使用 CNN 和 ViT 方法进行脑图像分析。深度学习方法对疾病诊断非常有效,研究活动的激增凸显了其重要性。然而,无法访问资料库可能会给信息带来偏见。充分的访问权体现了透明度,有利于研究中的合作工作。
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