Early detection of Alzheimer disease is crucial for deploying interventions and slowing the disease progression. A lot of machine learning and deep learning algorithms have been explored in the past decade with the aim of building an automated detection for Alzheimer. Advancements in data augmentation techniques and advanced deep learning architectures have opened up new frontiers in this field, and research is moving at a rapid speed. Hence, the purpose of this survey is to provide an overview of recent research on deep learning models for Alzheimer disease diagnosis. In addition to categorizing the numerous data sources, neural network architectures, and commonly used assessment measures, we also classify implementation and reproducibility. Our objective is to assist interested researchers in keeping up with the newest developments and in reproducing earlier investigations as benchmarks. In addition, we also indicate future research directions for this topic.
翻译:过去十年来,为了建立阿尔茨海默症自动检测系统,已经探索了许多机器学习和深层学习算法,目的是为阿尔茨海默症建立自动检测系统;数据增强技术和先进的深层学习结构的发展在这一领域开辟了新的前沿,研究正在迅速发展;因此,这次调查的目的是概述最近关于阿尔茨海默氏病诊断的深层学习模式的研究;除了对众多数据来源、神经网络架构和常用的评估措施进行分类外,我们还对实施和再生进行分类;我们的目标是协助感兴趣的研究人员跟上最新发展,并重新生成早期调查作为基准;此外,我们还指出这一专题的未来研究方向。