Multi-modal Imaging-based Pseudotime Analysis of Alzheimer progression.

Q2 Computer Science
Bing He, Shu Zhang, Shannon L Risacher, Andrew J Saykin, Jingwen Yan
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引用次数: 0

Abstract

Alzheimer's disease (AD) is a neurodegenerative disorder that results in progressive cognitive decline but without any clinically validated cures so far. Understanding the progression of AD is critical for early detection and risk assessment for AD in aging individuals, thereby enabling initiation of timely intervention and improved chance of success in AD trials. Recent pseudotime approach turns cross-sectional data into "faux" longitudinal data to understand how a complex process evolves over time. This is critical for Alzheimer, which unfolds over the course of decades, but the collected data offers only a snapshot. In this study, we tested several state-of-the-art pseudotime approaches to model the full spectrum of AD progression. Subsequently, we evaluated and compared the pseudotime progression score derived from individual imaging modalities and multi-modalities in the ADNI cohort. Our results showed that most existing pseudotime analysis tools do not generalize well to the imaging data, with either flipped progression score or poor separation of diagnosis groups. This is likely due to the underlying assumptions that only stand for single cell data. From the only tool with promising results, it was observed that all pseudotime, derived from either single imaging modalities or multi-modalities, captures the progressiveness of diagnosis groups. Pseudotime from multi-modality, but not the single modalities, confirmed the hypothetical temporal order of imaging phenotypes. In addition, we found that multi-modal pseudotime is mostly driven by amyloid and tau imaging, suggesting their continuous changes along the full spectrum of AD progression.

基于多模态成像的阿尔茨海默病进展伪时间分析
阿尔茨海默病(AD)是一种神经退行性疾病,会导致认知能力逐渐下降,但迄今为止还没有任何经临床验证的治疗方法。了解阿兹海默病的进展对于早期发现和评估老年阿兹海默病的风险至关重要,这样才能及时采取干预措施,提高阿兹海默病试验的成功几率。最近的伪时间方法将横截面数据转化为 "假 "纵向数据,以了解复杂过程如何随时间演变。这对阿尔茨海默病至关重要,因为阿尔茨海默病的病程长达数十年,但收集到的数据只能提供一个快照。在这项研究中,我们测试了几种最先进的伪时间方法,以模拟阿兹海默症的整个发展过程。随后,我们评估并比较了 ADNI 队列中由单个成像模式和多模式得出的伪时间进展评分。我们的结果表明,大多数现有的假时分析工具都不能很好地概括成像数据,要么是进展评分翻转,要么是诊断组分离不佳。这可能是由于其基本假设只适用于单细胞数据。从唯一有希望的工具中可以观察到,无论是从单一成像模式还是从多模式得出的所有伪时间,都能捕捉到诊断组的进展情况。来自多模态而非单一模态的伪时间证实了成像表型的假定时间顺序。此外,我们还发现,多模态伪时间主要由淀粉样蛋白和 tau 成像驱动,这表明它们在 AD 进展的整个过程中会发生持续变化。
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CiteScore
4.50
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0.00%
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