Huang Guan, Li Renjie, Bai Quan, Alty Jane
School of ICT, University of Tasmania, Sandy Bay, TAS 7005 Australia.
Wicking Dementia Research and Education Centre, University of Tasmania, Hobart, TAS 7000 Australia.
Health Inf Sci Syst. 2023 Jul 22;11(1):32. doi: 10.1007/s13755-023-00231-0. eCollection 2023 Dec.
With ageing populations around the world, there is a rapid rise in the number of people with Alzheimer's disease (AD) and Parkinson's disease (PD), the two most common types of neurodegenerative disorders. There is an urgent need to find new ways of aiding early diagnosis of these conditions. Multimodal learning of clinically accessible data is a relatively new approach that holds great potential to support early precise diagnosis. This scoping review follows the PRSIMA guidelines and we analysed 46 papers, comprising 11,750 participants, 3569 with AD, 978 with PD, and 2482 healthy controls; the recency of this topic was highlighted by nearly all papers being published in the last 5 years. It highlights the effectiveness of combining different types of data, such as brain scans, cognitive scores, speech and language, gait, hand and eye movements, and genetic assessments for the early detection of AD and PD. The review also outlines the AI methods and the model used in each study, which includes feature extraction, feature selection, feature fusion, and using multi-source discriminative features for classification. The review identifies knowledge gaps around the need to validate findings and address limitations such as small sample sizes. Applying multimodal learning of clinically accessible tests holds strong potential to aid the development of low-cost, reliable, and non-invasive methods for early detection of AD and PD.
随着全球人口老龄化,阿尔茨海默病(AD)和帕金森病(PD)这两种最常见的神经退行性疾病患者数量迅速增加。迫切需要找到辅助这些疾病早期诊断的新方法。对临床可获取数据进行多模态学习是一种相对较新的方法,在支持早期精确诊断方面具有巨大潜力。本综述遵循PRISMA指南,我们分析了46篇论文,涉及11750名参与者,其中3569名患有AD,978名患有PD,2482名是健康对照;几乎所有论文都是在过去5年发表的,这突出了该主题的时效性。它强调了结合不同类型数据(如脑部扫描、认知评分、言语和语言、步态、手眼运动以及基因评估)对AD和PD进行早期检测的有效性。该综述还概述了每项研究中使用的人工智能方法和模型,包括特征提取、特征选择、特征融合以及使用多源判别特征进行分类。该综述指出了在验证研究结果以及解决诸如样本量小等局限性方面存在的知识空白。应用对临床可获取测试进行多模态学习,在辅助开发低成本、可靠且非侵入性的AD和PD早期检测方法方面具有强大潜力。