Shanmugavadivel Kogilavani, Sathishkumar V E, Cho Jaehyuk, Subramanian Malliga
Department of AI, Kongu Engineering College, Perundurai, Tamilnadu, India.
Department of Software Engineering, Jeonbuk National University, Jeonju-si, Jeollabuk-do 54896, Republic of Korea.
Ageing Res Rev. 2023 Nov;91:102072. doi: 10.1016/j.arr.2023.102072. Epub 2023 Sep 13.
Alzheimer's Disease (AD) is a brain disorder that causes the brain to shrink and eventually causes brain cells to die. This neurological condition progressively hampers cognitive and memory functions, along with the ability to carry out fundamental tasks over time. From the symptoms it is very difficult to detect during its early stage. It has become necessary to develop a computer assisted diagnostic models for the early AD detection. This survey work, discussed about a review of 110 published AD detection methods and techniques from the year 2011 to till-date. This study lies in its comprehensive exploration of AD detection methods using a range of artificial intelligence (AI) techniques and neuroimaging modalities. By collecting and analysing 50 papers related to AD diagnosis datasets, the study provides a comprehensive understanding of the diversity of input types, subjects, and classes used in AD research. Summarizing 60 papers on methodologies gives researchers a succinct overview of various approaches that contribute to enhancing detection accuracy. From the review, data are acquired and pre-processed form multiple modalities of neuroimaging. This paper mainly focused on review of different datasets used, various feature extraction methods, parameters used in neuro images. To diagnosis the Alzheimer's disease, the existing methods utilized three most common artificial intelligence techniques such as machine learning, deep learning, and transfer learning. We conclude this survey work by providing future perspectives for AD diagnosis at early stage.
阿尔茨海默病(AD)是一种脑部疾病,会导致大脑萎缩并最终致使脑细胞死亡。这种神经疾病会随着时间的推移逐渐妨碍认知和记忆功能,以及执行基本任务的能力。其症状在早期很难被察觉。因此,有必要开发计算机辅助诊断模型用于早期AD检测。这项调研工作讨论了对2011年至今已发表的110种AD检测方法和技术的综述。该研究在于使用一系列人工智能(AI)技术和神经成像模态对AD检测方法进行全面探索。通过收集和分析50篇与AD诊断数据集相关的论文,该研究全面了解了AD研究中使用的输入类型、研究对象和类别等方面的多样性。对60篇关于方法学的论文进行总结,为研究人员提供了有助于提高检测准确性的各种方法的简要概述。通过综述,从神经成像的多种模态中获取并预处理数据。本文主要关注对所使用的不同数据集、各种特征提取方法以及神经图像中使用的参数的综述。为了诊断阿尔茨海默病,现有方法利用了机器学习、深度学习和迁移学习这三种最常见的人工智能技术。我们通过为早期AD诊断提供未来展望来结束这项调研工作。