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A review on neuroimaging-based classification studies and associated feature extraction methods for Alzheimer's disease and its prodromal stages

机译:基于神经影像学的分类研究和Alzheimer疾病的相关特征提取方法综述及其前级

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摘要

Neuroimaging has made it possible to measure pathological brain changes associated with Alzheimer's disease (AD) in vivo. Over the past decade, these measures have been increasingly integrated into imaging signatures of AD by means of classification frameworks, offering promising tools for individualized diagnosis and prognosis. We reviewed neuroimaging-based studies for AD and mild cognitive impairment classification, selected after online database searches in Google Scholar and PubMed (January, 1985-June, 2016). We categorized these studies based on the following neuroimaging modalities (and sub-categorized based on features extracted as a post-processing step from these modalities): i) structural magnetic resonance imaging [MRI] (tissue density, cortical surface, and hippocampal measurements), ii) functional MRI (functional coherence of different brain regions, and the strength of the functional connectivity), iii) diffusion tensor imaging (patterns along the white matter fibers), iv) fluorodeoxyglucose positron emission tomography (FDG-PET) (metabolic rate of cerebral glucose), and v) amyloid-PET (amyloid burden). The studies reviewed indicate that the classification frameworks formulated on the basis of these features show promise for individualized diagnosis and prediction of clinical progression. Finally, we provided a detailed account of AD classification challenges and addressed some future research directions.
机译:神经影像动物使得可以测量与阿尔茨海默病(AD)的病理脑变化在体内。在过去十年中,通过分类框架,这些措施越来越纳入广告的成像签名,为个性化诊断和预后提供了有希望的工具。在谷歌学者和Pubmed(2016年1月1985年6月)在线数据库搜索后,我们审查了基于广告和轻度认知障碍分类的神经影像和轻度认知障碍分类。我们根据以下神经影像模型(基于从这些方式的后处理步骤中提取的特征分类)分类这些研究):i)结构磁共振成像[MRI](组织密度,皮质表面和海马测量) ,II)功能MRI(不同脑区的功能相干,以及功能连通性的强度),III)扩散张量成像(沿白质纤维的图案),IV)氟脱氧葡萄糖正电子发射断层扫描(FDG-PET)(代谢率脑葡萄糖)和v)淀粉样蛋白 - PET(淀粉样脂)。审查的研究表明,基于这些特征的分类框架表明了个性化诊断和预测临床进展的承诺。最后,我们提供了广告分类挑战的详细说明,并解决了一些未来的研究方向。

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