使用独立成分分析研究年轻人振动触觉刺激的皮层网络:一项fMRI研究

Q4 Neuroscience Neuroscience Research Notes Pub Date : 2023-07-04 DOI:10.31117/neuroscirn.v6i3.194
Faten Anis Syairah Seri, A. A. Abd Hamid, J. M. Abdullah, Z. Idris, H. Omar, M. R. Abdul Rahman
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引用次数: 0

摘要

本研究调查了将振动触觉刺激应用于年轻人指尖时神经网络的功能连接。20名健康的右手受试者在用3.0T磁共振成像扫描仪扫描的同时,接受振动触觉刺激。受试者使用连接在受试者双侧食指上的压电振动器以30 Hz–240 Hz的频率进行刺激。扫描数据采用独立成分分析(ICA)进行处理,同时研究成分的时间配置和空间定位。将激活位置制成表格,并与大脑中的体感区域进行比较。使用ICA,体感区域及其邻近区域确定了一个或多个映射到额内侧回(MFG)、中央旁小叶(PaCL)、中央前回(PrG)、中心后回(PoG)、顶叶下小叶(IPL)和扣带回(CgG)的共同重要区域的这些成分。以Neuromark为参考,确定了六个相关值最高的显著网络:视觉网络(VIN)、感觉运动网络(SMN)、认知控制网络(CCN)、皮层下网络(SCN)、默认模式网络(DMN)和听觉网络(AUN)。结果表明,VIN和SMN在振动触觉刺激过程中最为活跃。对条件期间的网络体积和峰值激活的比较表明了振动触觉刺激期间体积和相应峰值激活的变化。这项研究有助于更好地理解体感区域的潜在机制。除此之外,这项研究不仅强调了振动触觉刺激对网络层面大脑功能连接的潜在影响,还强调了体感研究中频率的影响。在未来,我们建议,探索频率范围的变化并检查其差异将使我们能够理解体感网络及其连接的各个方面。
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Investigating cortical networks from vibrotactile stimulation in young adults using independent component analysis: an fMRI study
This study investigated the functional connectivity of the neural networks when vibrotactile stimulation is applied to the fingertips of young adults. Twenty healthy, right-handed subjects were stimulated with vibrotactile stimulation whilst being scanned with a 3.0 T magnetic resonance imaging scanner. The subjects were stimulated at 30 Hz – 240 Hz using a piezoelectric vibrator attached to the subjects' bilateral index fingers. The scanned data were processed with independent component analysis (ICA), while the temporal configuration and spatial localisation of the component were investigated. The activation locations were tabulated and compared with regions of somatosensory in the brain. Using ICA, somatosensory regions and their neighbouring areas identified one or more of these components mapped to the common significant regions in the medial frontal gyrus (MFG), paracentral lobule (PaCL), precentral gyrus (PrG), postcentral gyrus (PoG), inferior parietal lobule (IPL), and cingulate gyrus (CgG). Using Neuromark as a reference, six significant networks with the highest correlation values, r>0.5, were identified: the visual network (VIN), sensorimotor network (SMN), cognitive-control network (CCN), subcortical network (SCN), default-mode network (DMN), and auditory network (AUN). It showed that VIN and SMN were the most activated during the vibrotactile stimulation. A comparison of the network volumes and peak activations during the conditions demonstrated changes in volume and corresponding peak activation during vibrotactile stimulation. This study contributes to a better understanding of the underlying mechanisms of the somatosensory areas. Other than that, not only this study highlighted the underlying effect of vibrotactile stimulation towards the functional brain connectivity at network levels, but it also highlighted the impact of frequencies in somatosensory studies. In the future, we suggest that exploring the change in the range of frequencies and examining its differences will allow us to comprehend aspects of somatosensory networks and their connectivity.
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Neuroscience Research Notes
Neuroscience Research Notes Neuroscience-Neurology
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21
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