论文标题

对阿尔茨海默氏病中神经退行性的定量评估

Towards a quantitative assessment of neurodegeneration in Alzheimer's disease

论文作者

Michailovich, Oleg, Mukhometzianov, Rinat

论文摘要

阿尔茨海默氏病(AD)是一种不可逆的神经退行性疾病,可逐渐破坏大脑的记忆和其他认知领域。尽管AD的有效治疗管理仍在开发中,但希望他们的预期结果取决于基线病理的严重程度,这似乎是合理的。因此,已经投入了大量研究工作,以开发有效的AD诊断为最早阶段的无创诊断。为了追求相同的目标,本文通过扩散磁共振成像(DMRI)解决了AD定量诊断的问题。特别是,本文介绍了病理学特定成像对比(PSIC)的概念,除了提供有价值的诊断评分外,该概念还可以作为神经变性空间范围的视觉表示的手段。 PSIC的值由专用的深神经网络(DNN)计算出来,该网络已专门适用于DMRI信号的处理。一旦可用,这些值可用于几个重要目的,包括研究对象的分层。特别是,实验证实基于DNN的分类可以胜过应用于认知正常(CN)和AD受试者分层的基本问题的广泛替代方法。尽管有初步性质,但该结果表明,进一步扩展和改善本文所述的探索方法是有很强的理由。

Alzheimer's disease (AD) is an irreversible neurodegenerative disorder that progressively destroys memory and other cognitive domains of the brain. While effective therapeutic management of AD is still in development, it seems reasonable to expect their prospective outcomes to depend on the severity of baseline pathology. For this reason, substantial research efforts have been invested in the development of effective means of non-invasive diagnosis of AD at its earliest possible stages. In pursuit of the same objective, the present paper addresses the problem of the quantitative diagnosis of AD by means of Diffusion Magnetic Resonance Imaging (dMRI). In particular, the paper introduces the notion of a pathology specific imaging contrast (PSIC), which, in addition to supplying a valuable diagnostic score, can serve as a means of visual representation of the spatial extent of neurodegeneration. The values of PSIC are computed by a dedicated deep neural network (DNN), which has been specially adapted to the processing of dMRI signals. Once available, such values can be used for several important purposes, including stratification of study subjects. In particular, experiments confirm the DNN-based classification can outperform a wide range of alternative approaches in application to the basic problem of stratification of cognitively normal (CN) and AD subjects. Notwithstanding its preliminary nature, this result suggests a strong rationale for further extension and improvement of the explorative methodology described in this paper.

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