Department of Medical Biophysics, University of Toronto. Toronto, Ontario, Canada.
Neuroimage. 2012 Jan 16;59(2):1299-314. doi: 10.1016/j.neuroimage.2011.08.021. Epub 2011 Aug 16.
The effects of physiological noise may significantly limit the reproducibility and accuracy of BOLD fMRI. However, physiological noise evidences a complex, undersampled temporal structure and is often non-orthogonal relative to the neuronally-linked BOLD response, which presents a significant challenge for identifying and removing such artifact. This paper presents a multivariate, data-driven method for the characterization and removal of physiological noise in fMRI data, termed PHYCAA (PHYsiological correction using Canonical Autocorrelation Analysis). The method identifies high frequency, autocorrelated physiological noise sources with reproducible spatial structure, using an adaptation of Canonical Correlation Analysis performed in a split-half resampling framework. The technique is able to identify physiological effects with vascular-linked spatial structure, and an intrinsic dimensionality that is task- and subject-dependent. We also demonstrate that increasing dimensionality of such physiological noise is correlated with increasing variability in externally-measured respiratory and cardiac processes. Using PHYCAA as a denoising technique significantly improves simulated signal detection with physiological noise, and real data-driven model prediction and reproducibility, for both block and event-related task designs. This is demonstrated compared to no physiological noise correction, and to the widely used RETROICOR (Glover et al., 2000) physiological denoising algorithm, which uses externally measured cardiac and respiration signals.
生理噪声的影响可能会显著限制 BOLD fMRI 的可重复性和准确性。然而,生理噪声具有复杂的欠采样时间结构,并且通常与神经元相关的 BOLD 响应非正交,这给识别和去除这种伪影带来了重大挑战。本文提出了一种用于 fMRI 数据中生理噪声特征描述和去除的多变量、数据驱动的方法,称为 PHYCAA(使用正则自相关分析进行生理校正)。该方法使用在分半重采样框架中执行的正则相关分析的改编版,识别具有可重复空间结构的高频、自相关生理噪声源。该技术能够识别具有血管相关空间结构的生理效应,以及与任务和个体相关的内在维度。我们还证明,这种生理噪声的维度增加与外部测量的呼吸和心脏过程的可变性增加相关。使用 PHYCAA 作为去噪技术,与没有生理噪声校正相比,以及与广泛使用的 RETROICOR(Glover 等人,2000)生理去噪算法相比,显著提高了模拟信号检测的性能,以及基于真实数据的模型预测和可重复性,无论是块设计还是事件相关任务设计。