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Metabolic spatial connectivity in amyotrophic lateral sclerosis as revealed by independent component analysis

机译:独立成分分析显示肌萎缩性侧索硬化的代谢空间连通性

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ObjectivesPositron emission tomography (PET) and volume of interest (VOI) analysis have recently shown in amyotrophic lateral sclerosis (ALS) an accuracy of 93% in differentiating patients from controls. The aim of this study was to disclose by spatial independent component analysis (ICA) the brain networks involved in ALS pathological processes and evaluate their discriminative value in separating patients from controls. Experimental design: Two hundred fifty-nine ALS patients and 40 age- and sex-matched control subjects underwent brain F-18-2-fluoro-2-deoxy-D-glucose PET (FDG-PET). Spatial ICA of the preprocessed FDG-PET images was performed. Intensity values were converted to z-scores and binary masks were used as data-driven VOIs. The accuracy of this classifier was tested versus a validated system processing intensity signals in 27 brain meta-VOIs. A support vector machine was independently applied to both datasets and the leave-one-out' technique verified the general validity of results. Principal observations: The 8 components selected as pathophysiologically meaningful discriminated patients from controls with 99.0% accuracy, the discriminating value of bilateral cerebellum/midbrain alone representing 96.3%. Among the meta-VOIs, right temporal lobe alone reached an accuracy of 93.7%. Conclusions: Spatial ICA identified in a very large cohort of ALS patients distinct spatial networks showing a high discriminatory value, improving substantially on the previously obtained accuracy. The cerebellar/midbrain component accounted for the highest accuracy in separating ALS patients from controls. Spatial ICA and multivariate analysis perform better than univariate semi-quantification methods in identifying the neurodegenerative features of ALS and pave the way for inclusion of PET in clinical trials and early diagnosis. Hum Brain Mapp 37:942-953, 2016. (c) 2015 Wiley Periodicals, Inc.
机译:目的正电子发射断层扫描(PET)和目标体积(VOI)分析最近显示出,在肌萎缩性侧索硬化症(ALS)中,区分患者和对照组的准确性为93%。这项研究的目的是通过空间独立成分分析(ICA)揭示参与ALS病理过程的大脑网络,并评估它们在区分患者和对照组中的鉴别价值。实验设计:259名ALS患者和40名年龄和性别匹配的对照受试者接受了脑F-18-2-氟-2-脱氧-D-葡萄糖PET(FDG-PET)。进行了预处理的FDG-PET图像的空间ICA。将强度值转换为z分数,并将二进制掩码用作数据驱动的VOI。该分类器的准确性与在27个脑meta-VOI中处理强度信号的经过验证的系统进行了测试。支持向量机被独立地应用于两个数据集,“留一法”技术验证了结果的总体有效性。主要观察结果:被选为病理生理学上有意义的8个成分将患者与对照组区别开来,准确度为99.0%,仅双侧小脑/中脑的辨别价值为96.3%。在meta-VOI中,仅右颞叶的准确率达到93.7%。结论:在非常多的ALS患者队列中确定的空间ICA具有独特的空间网络,这些网络显示出很高的鉴别价值,大大提高了先前获得的准确性。小脑/中脑成分是将ALS患者与对照组分开的最高精度。在确定ALS的神经退行性特征方面,空间ICA和多变量分析的性能优于单变量半定量方法,并为将PET纳入临床试验和早期诊断铺平了道路。嗡嗡声大脑Mapp 37:942-953,2016.(c)2015 Wiley Periodicals,Inc.

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