Centre for Intelligent Signal and Imaging Research, Institute of Health and Analytics, Universiti Teknologi PETRONAS, 32610, Bandar Seri Iskandar, Malaysia.
Medicine Based Department, Royal College of Medicine Perak, Universiti Kuala Lumpur, 30450, Ipoh, Malaysia.
Sci Rep. 2020 Dec 16;10(1):22041. doi: 10.1038/s41598-020-79053-z.
This study aims to investigate the generalizability of the semi-metric analysis of the functional connectivity (FC) for functional near-infrared spectroscopy (fNIRS) by applying it to detect the dichotomy in differential FC under affective and neutral emotional states in nursing students and registered nurses during decision making. The proposed method employs wavelet transform coherence to construct FC networks and explores semi-metric analysis to extract network redundancy features, which has not been considered in conventional fNIRS-based FC analyses. The trials of the proposed method were performed on 19 nursing students and 19 registered nurses via a decision-making task under different emotional states induced by affective and neutral emotional stimuli. The cognitive activities were recorded using fNIRS, and the emotional stimuli were adopted from the International Affective Digitized Sound System (IADS). The induction of emotional effects was validated by heart rate variability (HRV) analysis. The experimental results by the proposed method showed significant difference (FDR-adjusted p = 0.004) in the nursing students' cognitive FC network under the two different emotional conditions, and the semi-metric percentage (SMP) of the right prefrontal cortex (PFC) was found to be significantly higher than the left PFC (FDR-adjusted p = 0.036). The benchmark method (a typical weighted graph theory analysis) gave no significant results. In essence, the results support that the semi-metric analysis can be generalized and extended to fNIRS-based functional connectivity estimation.
本研究旨在通过将半度量分析应用于检测护理学生和注册护士在决策过程中情感和中性情绪状态下差异功能连接的二分法,来研究功能近红外光谱 (fNIRS) 功能连接的半度量分析的通用性。该方法采用小波变换相干性构建功能连接网络,并探索半度量分析提取网络冗余特征,这在传统基于 fNIRS 的功能连接分析中尚未考虑。该方法的试验在 19 名护理学生和 19 名注册护士中进行,他们在情感和中性情绪刺激引起的不同情绪状态下进行决策任务。使用 fNIRS 记录认知活动,情绪刺激采用国际情感数字化声音系统 (IADS)。心率变异性 (HRV) 分析验证了情绪效应的诱导。该方法的实验结果表明,在两种不同的情绪条件下,护理学生的认知功能连接网络存在显著差异(经 FDR 调整的 p = 0.004),并且右前额叶皮层 (PFC) 的半度量百分比 (SMP) 明显高于左 PFC(经 FDR 调整的 p = 0.036)。基准方法(典型的加权图论分析)没有给出显著结果。本质上,这些结果支持半度量分析可以推广和扩展到基于 fNIRS 的功能连接估计。