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MR 技术在神经退行性疾病中的应用。

MR approaches in neurodegenerative disorders.

机构信息

Institute of Cellular Medicine and Centre for In Vivo Imaging, Newcastle University, UK.

出版信息

Prog Nucl Magn Reson Spectrosc. 2018 Oct;108:1-16. doi: 10.1016/j.pnmrs.2018.11.001. Epub 2018 Nov 3.

Abstract

Neurodegenerative disease is the umbrella term which refers to a range of clinical conditions causing degeneration of neurons within the central nervous system leading to loss of brain function and eventual death. The most prevalent of these is Alzheimer's disease (AD), which affects approximately 50 million people worldwide and is predicted to reach 75 million by 2030. Neurodegenerative diseases can only be fully diagnosed at post mortem by neuropathological assessment of the type and distribution of protein deposits which characterise each different condition, but there is a clear role for imaging technologies in aiding patient diagnoses in life. Magnetic resonance imaging (MRI) and spectroscopy (MRS) techniques have been applied to study these conditions for many years. In this review, we consider the range of MR-based measurements and describe the findings in AD, but also contrast these with the second most common dementia, dementia with Lewy bodies (DLB). The most definitive observation is the major structural brain changes seen in AD using conventional T1-weighted (T1w) MRI, where medial temporal lobe structures are notably atrophied in most symptomatic patients with AD, but often preserved in DLB. Indeed these findings are sufficiently robust to have been incorporated into clinical diagnostic criteria. Diffusion tensor imaging (DTI) reveals widespread changes in tissue microstructure, with increased mean diffusivity and decreased fractional anisotropy reflecting the degeneration of the white matter structures. There are suggestions that there are subtle differences between AD and DLB populations. At the metabolic level, atrophy-corrected MRS demonstrates reduced density of healthy neurons in brain areas with altered perfusion and in regions known to show higher deposits of pathogenic proteins. As studies have moved from patients with advanced disease and clear dysfunction to patients with earlier presentation such as with mild cognitive impairment (MCI), which in some represents the first signs of their ensuing dementia, the ability of MRI to detect differences has been weaker and further work is still required, ideally in much larger cohorts than previously studied. The vast majority of imaging research in dementia populations has been univariate with respect to the MR-derived parameters considered. To date, none of these measurements has uniquely replicated the patterns of tissue involvement seen by neuropathology, and the ability of MR techniques to deliver a non-invasive diagnosis eludes us. Future opportunities may lie in combining MR and nuclear medicine approaches (position emission tomography, PET) to provide a more complete view of structural and metabolic changes. Such developments will require multi-variate analyses, possibly combined with artificial intelligence or deep learning algorithms, to enhance our ability to combine the array of image-derived information, genetic, gender and lifestyle factors.

摘要

神经退行性疾病是一个总称,它指的是一系列导致中枢神经系统神经元退化的临床病症,导致大脑功能丧失,最终导致死亡。其中最常见的是阿尔茨海默病(AD),全世界约有 5000 万人受其影响,预计到 2030 年将达到 7500 万人。神经退行性疾病只能通过对每种不同疾病的特征性蛋白质沉积的类型和分布进行神经病理学评估,在死后才能得到全面诊断,但影像学技术在协助患者生前诊断方面确实具有重要作用。磁共振成像(MRI)和光谱(MRS)技术多年来一直被应用于这些疾病的研究。在这篇综述中,我们考虑了一系列基于 MRI 的测量方法,并描述了 AD 中的发现,但也与第二种最常见的痴呆症——路易体痴呆症(DLB)进行了对比。最明确的观察结果是 AD 中使用常规 T1 加权(T1w)MRI 看到的主要结构性脑变化,其中大多数有症状的 AD 患者的内侧颞叶结构明显萎缩,但在 DLB 中通常保持完好。事实上,这些发现已经足够强大,被纳入了临床诊断标准。弥散张量成像(DTI)显示组织微观结构的广泛变化,平均扩散系数增加,各向异性分数降低,反映了白质结构的退化。有迹象表明 AD 和 DLB 人群之间存在细微差异。在代谢水平上,经萎缩校正的 MRS 显示在灌注改变的脑区和已知存在致病性蛋白更高沉积的区域,健康神经元的密度降低。随着研究从晚期疾病和明显功能障碍的患者转移到早期表现的患者,如轻度认知障碍(MCI),在某些情况下,MCI 代表了他们随后痴呆的第一个迹象,MRI 检测差异的能力变得更弱,还需要进一步的工作,理想情况下是在比以前研究更大的队列中进行。痴呆人群的绝大多数影像学研究都是针对 MRI 衍生参数的单变量分析。迄今为止,这些测量方法都没有独特地复制神经病理学所见的组织受累模式,磁共振技术提供非侵入性诊断的能力仍未实现。未来的机会可能在于结合磁共振和核医学方法(正电子发射断层扫描,PET),以提供更完整的结构和代谢变化视图。这种发展将需要多变量分析,可能结合人工智能或深度学习算法,以提高我们结合一系列图像衍生信息、遗传、性别和生活方式因素的能力。

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