Tri-institutional Center for Translational Research in Neuroimaging and Data Science (TReNDS), Georgia State University, Georgia Institute of Technology, Emory University, Atlanta, Georgia, US.
Neural Engineering Lab, Department of Biosciences and Bioengineering (BSBE), Indian Institute of Technology Guwahati, Guwahati, India.
Brain Struct Funct. 2019 Dec;224(9):3031-3044. doi: 10.1007/s00429-019-01969-8. Epub 2019 Nov 7.
In this paper, we review and discuss brain imaging studies which have used the source-based morphometry (SBM) approach over the past decade. SBM is a data-driven linear multivariate approach for decomposing structural brain imaging data into commonly covarying imaging components and subject-specific loading parameters. It is a well-established technique which has predominantly been used to study neuroanatomic differences between healthy controls and patients with neuropsychiatric diseases. We start by discussing the advantages of this technique over univariate analysis for imaging studies, followed by a discussion of results from recent studies which have successfully applied this methodology. We also present recent extensions of this framework including nonlinear SBM, biclustered independent component analysis (B-ICA) and conclude with the possible directions of work for future.
在本文中,我们回顾和讨论了过去十年中使用基于源的形态测量学(SBM)方法的脑成像研究。SBM 是一种数据驱动的线性多元方法,用于将结构脑成像数据分解为共同协变的成像成分和受试者特定的加载参数。这是一种成熟的技术,主要用于研究健康对照者和神经精神疾病患者之间的神经解剖差异。我们首先讨论了该技术相对于成像研究中一元分析的优势,然后讨论了最近成功应用该方法的研究结果。我们还介绍了该框架的最新扩展,包括非线性 SBM、双聚类独立成分分析(B-ICA),并以未来可能的工作方向作为结论。