Center for Neurosciences, The Feinstein Institute for Medical Research, Manhasset, NY 11030, USA.
Neuroimage. 2011 Feb 14;54(4):2899-914. doi: 10.1016/j.neuroimage.2010.10.025. Epub 2010 Oct 20.
Consistent functional brain abnormalities in Parkinson's disease (PD) are difficult to pinpoint because differences from the normal state are often subtle. In this regard, the application of multivariate methods of analysis has been successful but not devoid of misinterpretation and controversy. The Scaled Subprofile Model (SSM), a principal components analysis (PCA)-based spatial covariance method, has yielded critical information regarding the characteristic abnormalities of functional brain organization that underlie PD and other neurodegenerative disorders. However, the relevance of disease-related spatial covariance patterns (metabolic brain networks) and the most effective methods for their derivation has been a subject of debate. We address these issues here and discuss the inherent advantages of proper application as well as the effects of the misapplication of this methodology. We show that ratio pre-normalization using the mean global metabolic rate (GMR) or regional values from a "reference" brain region (e.g. cerebellum) that may be required in univariate analytical approaches is obviated in SSM. We discuss deviations of the methodology that may yield erroneous or confounding factors.
帕金森病 (PD) 患者的大脑功能异常始终难以明确,因为与正常状态相比,这些差异通常很细微。在这方面,多元分析方法的应用取得了成功,但也存在一些误解和争议。基于主成分分析 (PCA) 的空间协方差方法——比例子空间模型 (SSM),为 PD 和其他神经退行性疾病的功能性大脑组织的特征性异常提供了关键信息。然而,疾病相关的空间协变模式(代谢性脑网络)及其推导的最有效方法一直存在争议。我们在这里讨论这些问题,并讨论正确应用该方法的固有优势,以及错误应用该方法的影响。我们表明,使用全局代谢率 (GMR) 的均值或来自“参考”脑区(例如小脑)的区域值进行比率预归一化在 SSM 中是多余的。我们还讨论了可能导致错误或混淆因素的方法偏差。