School of Computing and Augmented Intelligence, Arizona State University, Tempe, AZ, USA.
ASU-Mayo Center for Innovative Imaging, Tempe, AZ, USA.
J Alzheimers Dis. 2023;92(4):1131-1146. doi: 10.3233/JAD-221261.
There is a growing interest in the application of machine learning (ML) in Alzheimer's disease (AD) research. However, neuropsychiatric symptoms (NPS), frequent in subjects with AD, mild cognitive impairment (MCI), and other related dementias have not been analyzed sufficiently using ML methods. To portray the landscape and potential of ML research in AD and NPS studies, we present a comprehensive literature review of existing ML approaches and commonly studied AD biomarkers. We conducted PubMed searches with keywords related to NPS, AD biomarkers, machine learning, and cognition. We included a total of 38 articles in this review after excluding some irrelevant studies from the search results and including 6 articles based on a snowball search from the bibliography of the relevant studies. We found a limited number of studies focused on NPS with or without AD biomarkers. In contrast, multiple statistical machine learning and deep learning methods have been used to build predictive diagnostic models using commonly known AD biomarkers. These mainly included multiple imaging biomarkers, cognitive scores, and various omics biomarkers. Deep learning approaches that combine these biomarkers or multi-modality datasets typically outperform single-modality datasets. We conclude ML may be leveraged to untangle the complex relationships of NPS and AD biomarkers with cognition. This may potentially help to predict the progression of MCI or dementia and develop more targeted early intervention approaches based on NPS.
人们越来越关注机器学习 (ML) 在阿尔茨海默病 (AD) 研究中的应用。然而,神经精神症状 (NPS) 在 AD 患者、轻度认知障碍 (MCI) 及其他相关痴呆症患者中较为常见,尚未充分利用 ML 方法进行分析。为了描绘 ML 在 AD 和 NPS 研究中的应用现状和潜力,我们对现有的 ML 方法和常见的 AD 生物标志物进行了全面的文献回顾。我们使用与 NPS、AD 生物标志物、机器学习和认知相关的关键词进行了 PubMed 检索。在排除了搜索结果中一些不相关的研究,并根据相关研究的参考文献进行了雪球搜索,共纳入了 38 篇文章。我们发现,仅有少数研究关注 NPS 及其与 AD 生物标志物的关系。相比之下,许多统计机器学习和深度学习方法已被用于构建使用常见 AD 生物标志物的预测诊断模型。这些模型主要包括多种影像学生物标志物、认知评分和各种组学生物标志物。深度学习方法可以整合这些生物标志物或多模态数据集,通常优于单模态数据集。我们得出结论,ML 可能有助于理清 NPS 和 AD 生物标志物与认知之间的复杂关系。这可能有助于预测 MCI 或痴呆的进展,并基于 NPS 开发更有针对性的早期干预方法。