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首页> 外文期刊>Biomedical Optics Express >Inferring deep-brain activity from cortical activity using functional near-infrared spectroscopy
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Inferring deep-brain activity from cortical activity using functional near-infrared spectroscopy

机译:使用功能性近红外光谱从皮层活动推断深脑活动

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Functional near-infrared spectroscopy (fNIRS) is an increasingly popular technology for studying brain function because it is non-invasive, non-irradiating and relatively inexpensive. Further, fNIRS potentially allows measurement of hemodynamic activity with high temporal resolution (milliseconds) and in naturalistic settings. However, in comparison with other imaging modalities, namely fMRI, fNIRS has a significant drawback: limited sensitivity to hemodynamic changes in deep-brain regions. To overcome this limitation, we developed a computational method to infer deep-brain activity using fNIRS measurements of cortical activity. Using simultaneous fNIRS and fMRI, we measured brain activity in 17 participants as they completed three cognitive tasks. A support vector regression (SVR) learning algorithm was used to predict activity in twelve deep-brain regions using information from surface fNIRS measurements. We compared these predictions against actual fMRI-measured activity using Pearson’s correlation to quantify prediction performance. To provide a benchmark for comparison, we also used fMRI measurements of cortical activity to infer deep-brain activity. When using fMRI-measured activity from the entire cortex, we were able to predict deep-brain activity in the fusiform cortex with an average correlation coefficient of 0.80 and in all deep-brain regions with an average correlation coefficient of 0.67. The top 15% of predictions using fNIRS signal achieved an accuracy of 0.7. To our knowledge, this study is the first to investigate the feasibility of using cortical activity to infer deep-brain activity. This new method has the potential to extend fNIRS applications in cognitive and clinical neuroscience research.
机译:功能近红外光谱法(fNIRS)是一种研究脑功能的日益流行的技术,因为它是非侵入性的,非辐射性的并且相对便宜。此外,fNIRS可能允许在高时间分辨率(毫秒)和自然环境下测量血液动力学活动。但是,与其他成像方式(即fMRI)相比,fNIRS有一个明显的缺点:对深脑区域血液动力学变化的敏感性有限。为克服此限制,我们开发了一种计算方法,可使用fNIRS皮层活动测量来推断深脑活动。使用同时进行的fNIRS和fMRI,我们测量了17位参与者完成三项认知任务时的大脑活动。支持向量回归(SVR)学习算法用于使用来自表面fNIRS测量的信息来预测十二个深脑区域的活动。我们使用Pearson的相关性将这些预测与实际的fMRI测量的活动进行了比较,以量化预测性能。为了提供比较的基准,我们还使用了大脑皮质活动的功能磁共振成像测量来推断深脑活动。当使用功能磁共振成像测量的整个皮层活动时,我们能够预测梭形皮层中的深脑活动,其平均相关系数为0.80,而在所有深脑区域中,其平均相关系数为0.67。使用fNIRS信号进行的前15%预测的准确性为0.7。据我们所知,这项研究是第一个研究使用皮层活动来推断深脑活动的可行性的研究。这种新方法有可能扩展fNIRS在认知和临床神经科学研究中的应用。

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