Lina Takemaru, Shu Yang, Ruiming Wu, Bing He, Christos Davtzikos, Jingwen Yan, Li Shen
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引用次数: 0
摘要
阿尔茨海默病(AD)是一种神经退行性疾病,以进行性认知退化和运动障碍为特征,影响着全球数百万人。绘制阿尔茨海默病的进展图对于早期发现大脑功能丧失、及时干预和开发有效的治疗方法至关重要。然而,目前对疾病进展的精确测量仍具有挑战性。本研究提出了一种新方法,通过医学影像和其他模式的纵向生物标记物数据来了解注意力缺失症的异质性途径。我们提出了一种分析管道,采用单细胞转录组学领域两种流行的机器学习方法 PHATE 和 Slingshot,将多模态生物标记物轨迹投射到低维空间。这些嵌入作为我们的伪时间估计。我们将这一管道应用于阿尔茨海默病神经影像倡议(ADNI)数据集,对处于不同疾病阶段的个体的纵向数据进行对齐。我们的方法与根据发育时间表将单细胞数据聚类为细胞类型的技术如出一辙。我们的伪时间估算揭示了疾病演变和生物标志物随时间变化的独特模式,为深入了解 AD 的时间动态提供了依据。研究结果表明,这种方法在神经退行性疾病的临床领域具有潜力,可以实现更精确的疾病建模和早期诊断。
MAPPING ALZHEIMER'S DISEASE PSEUDO-PROGRESSION WITH MULTIMODAL BIOMARKER TRAJECTORY EMBEDDINGS.
Alzheimer's Disease (AD) is a neurodegenerative disorder characterized by progressive cognitive degeneration and motor impairment, affecting millions worldwide. Mapping the progression of AD is crucial for early detection of loss of brain function, timely intervention, and development of effective treatments. However, accurate measurements of disease progression are still challenging at present. This study presents a novel approach to understanding the heterogeneous pathways of AD through longitudinal biomarker data from medical imaging and other modalities. We propose an analytical pipeline adopting two popular machine learning methods from the single-cell transcriptomics domain, PHATE and Slingshot, to project multimodal biomarker trajectories to a low-dimensional space. These embeddings serve as our pseudotime estimates. We applied this pipeline to the Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset to align longitudinal data across individuals at various disease stages. Our approach mirrors the technique used to cluster single-cell data into cell types based on developmental timelines. Our pseudotime estimates revealed distinct patterns of disease evolution and biomarker changes over time, providing a deeper understanding of the temporal dynamics of AD. The results show the potential of the approach in the clinical domain of neurodegenerative diseases, enabling more precise disease modeling and early diagnosis.