Ribino Patrizia, Di Napoli Claudia, Paragliola Giovanni, Chicco Davide, Gasparini Francesca
Consiglio Nazionale delle Ricerche (CNR), Istituto di Calcolo e Reti ad Alte Prestazioni, Palermo, Italy.
Consiglio Nazionale delle Ricerche (CNR), Istituto di Calcolo e Reti ad Alte Prestazioni, Naples, Italy.
BioData Min. 2025 Mar 28;18(1):26. doi: 10.1186/s13040-025-00441-0.
Dementia due to Alzheimer's disease (AD) is a multifaceted neurodegenerative disorder characterized by various cognitive and behavioral decline factors. In this work, we propose an extension of the traditional k-means clustering for multivariate time series data to cluster joint trajectories of different features describing progression over time. The algorithm we propose here enables the joint analysis of various longitudinal features to explore co-occurring trajectory factors among markers indicative of cognitive decline in individuals participating in an AD progression study. By examining how multiple variables co-vary and evolve together, we identify distinct subgroups within the cohort based on their longitudinal trajectories. Our clustering method enhances the understanding of individual development across multiple dimensions and provides deeper medical insights into the trajectories of cognitive decline. In addition, the proposed algorithm is also able to make a selection of the most significant features in separating clusters by considering trajectories over time. This process, together with a preliminary pre-processing on the OASIS-3 dataset, reveals an important role of some neuropsychological factors. In particular, the proposed method has identified a significant profile compatible with a syndrome known as Mild Behavioral Impairment (MBI), displaying behavioral manifestations of individuals that may precede the cognitive symptoms typically observed in AD patients. The findings underscore the importance of considering multiple longitudinal features in clinical modeling, ultimately supporting more effective and individualized patient management strategies.
阿尔茨海默病(AD)所致痴呆是一种多方面的神经退行性疾病,其特征为各种认知和行为衰退因素。在这项工作中,我们针对多变量时间序列数据提出了传统k均值聚类的扩展方法,用于对描述随时间进展的不同特征的联合轨迹进行聚类。我们在此提出的算法能够对各种纵向特征进行联合分析,以探索参与AD进展研究的个体中指示认知衰退的标志物之间同时出现的轨迹因素。通过研究多个变量如何共同变化和演变,我们根据队列中的纵向轨迹识别出不同的亚组。我们的聚类方法增强了对个体在多个维度上发展的理解,并为认知衰退轨迹提供了更深入的医学见解。此外,所提出的算法还能够通过考虑随时间的轨迹来选择在分离聚类时最重要的特征。这一过程,连同对OASIS - 3数据集的初步预处理,揭示了一些神经心理因素的重要作用。特别是,所提出的方法确定了一种与称为轻度行为障碍(MBI)的综合征相符的显著特征,显示出个体的行为表现可能先于AD患者通常观察到的认知症状。这些发现强调了在临床建模中考虑多个纵向特征的重要性,最终支持更有效和个性化的患者管理策略。