Zang Zhenxiang, Qiao Yang, Yan Shaozhen, Lu Jie
Department of Radiology and Nuclear Medicine, Xuanwu Hospital, Capital Medical University, Beijing, China.
Beijing Key Laboratory of Magnetic Resonance Imaging and Brain Informatics, Beijing, China.
Front Neurosci. 2022 May 6;16:871609. doi: 10.3389/fnins.2022.871609. eCollection 2022.
Methods that capture the features of single voxels of resting-state fMRI (RS-fMRI) could precisely localize the abnormal spontaneous activity and hence guide precise brain stimulation. As one of these metrics, the amplitude of low-frequency fluctuation (ALFF) has been used in numerous studies, however, it is frequency-dependent and the division of frequency bands is still controversial. Based on the well-accepted power law of time series, this study proposed an approach, namely, power spectrum slope (PSS), to characterize the RS-fMRI time series of single voxels. Two metrics, i.e., linear coefficient b and power-law slope b' were used and compared with ALFF. The reliability and validity of the PSS approach were evaluated on public RS-fMRI datasets ( = 145 in total) of eyes closed (EC) and eyes open (EO) conditions after image preprocessing, with 21 subjects scanned two times for test-retest reliability analyses. Specifically, we used the paired -test between EC and EO conditions to assess the validity and intra-class correlation (ICC) to assess the reliability. The results included the following: (1) PSS detected similar spatial patterns of validity (i.e., EC-EO differences) and less test-retest reliability with those of ALFF; (2) PSS linear coefficient b showed better validity and reliability than power-law slope b'; (3) While the PPS showed less validity in most regions, PSS linear coefficient b showed exclusive EC-EO difference in the medial temporal lobe which did not show in ALFF. The power spectrum plot in the parahippocampus showed a "cross-over" of power magnitudes between EC and EO conditions in the higher frequency bands (>0.1 Hz). These results demonstrated that PSS (linear coefficient b) is complementary to ALFF for detecting the local spontaneous activity.
能够捕捉静息态功能磁共振成像(RS-fMRI)单像素特征的方法可以精确地定位异常的自发活动,从而指导精确的脑刺激。作为这些指标之一,低频波动幅度(ALFF)已在众多研究中得到应用,然而,它依赖于频率,且频段划分仍存在争议。基于广泛认可的时间序列幂律,本研究提出了一种方法,即功率谱斜率(PSS),以表征单像素的RS-fMRI时间序列。使用了两个指标,即线性系数b和幂律斜率b',并与ALFF进行比较。在对闭眼(EC)和睁眼(EO)条件下的公开RS-fMRI数据集(共145个)进行图像预处理后,评估了PSS方法的可靠性和有效性,其中21名受试者进行了两次扫描以进行重测信度分析。具体而言,我们使用EC和EO条件之间的配对t检验来评估有效性,并使用组内相关系数(ICC)来评估可靠性。结果如下:(1)PSS检测到的有效性空间模式(即EC - EO差异)与ALFF相似,但重测信度较低;(2)PSS线性系数b比幂律斜率b'表现出更好的有效性和可靠性;(3)虽然PSS在大多数区域的有效性较低,但PSS线性系数b在内侧颞叶显示出独特的EC - EO差异,而ALFF未显示出这种差异。海马旁回的功率谱图显示,在高频段(>0.1 Hz),EC和EO条件之间的功率大小出现“交叉”。这些结果表明,PSS(线性系数b)在检测局部自发活动方面与ALFF具有互补性。