Vo An, Sako Wataru, Fujita Koji, Peng Shichun, Mattis Paul J, Skidmore Frank M, Ma Yilong, Uluğ Aziz M, Eidelberg David
Center for Neurosciences, The Feinstein Institute for Medical Research, Manhasset, New York.
Department of Neurology, Northwell Health, Manhasset, New York.
Hum Brain Mapp. 2017 Feb;38(2):617-630. doi: 10.1002/hbm.23260. Epub 2016 May 21.
Spatial covariance mapping can be used to identify and measure the activity of disease-related functional brain networks. While this approach has been widely used in the analysis of cerebral blood flow and metabolic PET scans, it is not clear whether it can be reliably applied to resting state functional MRI (rs-fMRI) data. In this study, we present a novel method based on independent component analysis (ICA) to characterize specific network topographies associated with Parkinson's disease (PD). Using rs-fMRI data from PD and healthy subjects, we used ICA with bootstrap resampling to identify a PD-related pattern that reliably discriminated the two groups. This topography, termed rs-MRI PD-related pattern (fPDRP), was similar to previously characterized disease-related patterns identified using metabolic PET imaging. Following pattern identification, we validated the fPDRP by computing its expression in rs-fMRI testing data on a prospective case basis. Indeed, significant increases in fPDRP expression were found in separate sets of PD and control subjects. In addition to providing a similar degree of group separation as PET, fPDRP values correlated with motor disability and declined toward normal with levodopa administration. Finally, we used this approach in conjunction with neuropsychological performance measures to identify a separate PD cognition-related pattern in the patients. This pattern, termed rs-fMRI PD cognition-related pattern (fPDCP), was topographically similar to its PET-derived counterpart. Subject scores for the fPDCP correlated with executive function in both training and testing data. These findings suggest that ICA can be used in conjunction with bootstrap resampling to identify and validate stable disease-related network topographies in rs-fMRI. Hum Brain Mapp 38:617-630, 2017. © 2016 Wiley Periodicals, Inc.
空间协方差映射可用于识别和测量与疾病相关的功能性脑网络的活动。虽然这种方法已广泛应用于脑血流和代谢PET扫描分析,但尚不清楚它是否能可靠地应用于静息态功能磁共振成像(rs-fMRI)数据。在本研究中,我们提出了一种基于独立成分分析(ICA)的新方法,以表征与帕金森病(PD)相关的特定网络拓扑结构。利用来自PD患者和健康受试者的rs-fMRI数据,我们使用带有自助重采样的ICA来识别一种能可靠区分两组的与PD相关的模式。这种拓扑结构,称为rs-MRI PD相关模式(fPDRP),类似于先前使用代谢PET成像确定的与疾病相关的模式。在模式识别之后,我们通过在一个前瞻性病例基础上计算其在rs-fMRI测试数据中的表达来验证fPDRP。事实上,在单独的PD患者组和对照组中都发现了fPDRP表达的显著增加。除了提供与PET相似程度的组间区分外,fPDRP值与运动功能障碍相关,并且随着左旋多巴给药而向正常水平下降。最后,我们将这种方法与神经心理学表现测量相结合,在患者中识别出一种单独的与PD认知相关的模式。这种模式,称为rs-fMRI PD认知相关模式(fPDCP),在拓扑结构上与其PET衍生的对应模式相似。fPDCP的受试者分数在训练和测试数据中均与执行功能相关。这些发现表明,ICA可与自助重采样结合使用,以识别和验证rs-fMRI中稳定的与疾病相关的网络拓扑结构。《人类大脑图谱》38:617 - 630,2017年。© 2016威利期刊公司