Gautama Temujin, Mandic Danilo P, Van Hulle Marc M
Laboratorium voor Neuro- en Psychofysiologie, K.U. Leuven, Campus Gasthuisberg, Herestraat 49, B-3000 Leuven, Belgium.
IEEE Trans Med Imaging. 2003 May;22(5):636-44. doi: 10.1109/TMI.2003.812248.
In this paper, we introduce a methodology for comparing the nonlinearities present in sets of time series using four different nonlinearity measures, one of which, the "delay vector variance" method, is a novel approach to the characterization of a time series. It is then applied to examine the difference in nonlinearity between functional magnetic resonance imaging (fMRI) signals that have been recorded using different contrast agents. Recently, an exogenous contrast agent, monocrystalline iron oxide particle (MION), has been introduced for fMRI, which has been shown to increase the functional sensitivity compared with the traditional blood oxygen level dependent (BOLD) technique. The resulting fMRI signals are influenced by cerebral blood volume, whereas the more traditionally recorded BOLD signals are influenced not only by cerebral blood volume, but also by the cerebral blood flow and the metabolic rate of oxygen. The proposed methodology is applied to address the question whether this difference in the number of physiological variables is reflected in a difference in the degree of nonlinearity. We therefore analyze two sets of fMRI signals, one from a BOLD and the other from a MION monkey study with similar experimental designs. In the neuroimaging context, the proposed nonlinearity analyses are different from those described in the literature, since no a priori model is assumed: rather than pinpointing the source(s) of nonlinearity, nonparametric analyses are performed on BOLD and MION fMRI signals. Furthermore, we introduce a strategy for analyzing a population of fMRI signals, rather than focusing the analysis on one signal, as is traditionally done in the domain of nonlinear signal processing. Our results show that, overall, the BOLD signals are more nonlinear in nature than the MION ones, which is in agreement with current hypotheses.
在本文中,我们介绍了一种使用四种不同非线性度量来比较时间序列集中存在的非线性的方法,其中一种“延迟向量方差”方法是表征时间序列的新方法。然后将其应用于检查使用不同造影剂记录的功能磁共振成像(fMRI)信号之间的非线性差异。最近,一种外源性造影剂,单晶氧化铁颗粒(MION),已被引入用于fMRI,与传统的血氧水平依赖(BOLD)技术相比,它已被证明能提高功能敏感性。由此产生的fMRI信号受脑血容量影响,而传统记录的BOLD信号不仅受脑血容量影响,还受脑血流量和氧代谢率影响。所提出的方法用于解决生理变量数量的这种差异是否反映在非线性程度差异这一问题。因此,我们分析了两组fMRI信号,一组来自BOLD研究,另一组来自具有相似实验设计的MION猴子研究。在神经成像背景下,所提出的非线性分析与文献中描述的不同,因为不假设先验模型:不是确定非线性的来源,而是对BOLD和MION fMRI信号进行非参数分析。此外,我们引入了一种分析大量fMRI信号的策略,而不是像非线性信号处理领域传统那样将分析集中在一个信号上。我们的结果表明,总体而言,BOLD信号在本质上比MION信号更具非线性,这与当前假设一致。