Saleem Tausifa Jan, Zahra Syed Rameem, Wu Fan, Alwakeel Ahmed, Alwakeel Mohammed, Jeribi Fathe, Hijji Mohammad
Department of Computer Science and Engineering, National Institute of Technology Srinagar, Srinagar 190006, J&K, India.
Department of Computer Science, Tuskegee University, Tuskegee, AL 36088, USA.
J Pers Med. 2022 May 18;12(5):815. doi: 10.3390/jpm12050815.
Alzheimer's disease (AD), the most familiar type of dementia, is a severe concern in modern healthcare. Around 5.5 million people aged 65 and above have AD, and it is the sixth leading cause of mortality in the US. AD is an irreversible, degenerative brain disorder characterized by a loss of cognitive function and has no proven cure. Deep learning techniques have gained popularity in recent years, particularly in the domains of natural language processing and computer vision. Since 2014, these techniques have begun to achieve substantial consideration in AD diagnosis research, and the number of papers published in this arena is rising drastically. Deep learning techniques have been reported to be more accurate for AD diagnosis in comparison to conventional machine learning models. Motivated to explore the potential of deep learning in AD diagnosis, this study reviews the current state-of-the-art in AD diagnosis using deep learning. We summarize the most recent trends and findings using a thorough literature review. The study also explores the different biomarkers and datasets for AD diagnosis. Even though deep learning has shown promise in AD diagnosis, there are still several challenges that need to be addressed.
阿尔茨海默病(AD)是最常见的痴呆类型,是现代医疗保健中严重关注的问题。约550万65岁及以上的人患有AD,它是美国第六大死因。AD是一种不可逆的退行性脑部疾病,其特征是认知功能丧失,且尚无经证实的治愈方法。深度学习技术近年来颇受关注,尤其是在自然语言处理和计算机视觉领域。自2014年以来,这些技术在AD诊断研究中开始受到大量关注,该领域发表的论文数量急剧增加。据报道,与传统机器学习模型相比,深度学习技术在AD诊断方面更准确。出于探索深度学习在AD诊断中的潜力的目的,本研究回顾了使用深度学习进行AD诊断的当前最新技术水平。我们通过全面的文献综述总结了最新趋势和研究结果。该研究还探讨了用于AD诊断的不同生物标志物和数据集。尽管深度学习在AD诊断中已显示出前景,但仍有几个挑战需要解决。