论文标题

使用神经数据扩展和机器学习模型将FNIRS映射到fMRI

Mapping fNIRS to fMRI with Neural Data Augmentation and Machine Learning Models

论文作者

Hur, Jihyun, Yang, Jaeyeong, Doh, Hoyoung, Ahn, Woo-Young

论文摘要

神经影像技术的进步为我们提供了了解人类思维方式的新颖见解。功能磁共振成像(fMRI)是最流行和广泛使用的神经影像学技术,并且对基于fMRI的个体差异标记越来越感兴趣。但是,由于其高成本和从包括儿童和婴儿在内的特定人群中获得的难度,其效用通常受到限制。 fMRI标记的替代标记或神经相关性将具有重要的实际含义,但是我们对fMRI标记的独立预测因子很少。在这里,使用机器学习(ML)模型和数据增强,我们从功能上近红外光谱学(FNIRS)的多元模式(一种便携式且相对便宜的光学神经图像技术)预测了人类认知的良好fMRI标记。我们招募了50名人类参与者,他们执行了两项认知任务(停止信号任务和概率逆转学习任务),而在总共两次访问中的每一个中,用FNIRS或fMRI测量了神经激活。使用ML模型和数据增强,我们可以预测来自前额叶皮层中48通道FNIRS激活的响应抑制或预测误差信号的良好fMRI标记。这些结果表明,FNIRS可能会提供fMRI激活的替代标记,这将扩大我们对包括婴儿在内的各种人群的理解。

Advances in neuroimaging techniques have provided us novel insights into understanding how the human mind works. Functional magnetic resonance imaging (fMRI) is the most popular and widely used neuroimaging technique, and there is growing interest in fMRI-based markers of individual differences. However, its utility is often limited due to its high cost and difficulty acquiring from specific populations, including children and infants. Surrogate markers, or neural correlates of fMRI markers, would have important practical implications, but we have few stand-alone predictors for the fMRI markers. Here, using machine learning (ML) models and data augmentation, we predicted well-validated fMRI markers of human cognition from multivariate patterns of functional near-infrared spectroscopy (fNIRS), a portable and relatively inexpensive optical neuroimaging technique. We recruited 50 human participants who performed two cognitive tasks (stop signal task and probabilistic reversal learning task), while neural activation was measured with either fNIRS or fMRI at each of the total two visits. Using ML models and data augmentation, we could predict the well-established fMRI markers of response inhibition or prediction error signals from 48-channel fNIRS activation in the prefrontal cortex. These results suggest that fNIRS might offer a surrogate marker of fMRI activation, which would broaden our understanding of various populations, including infants.

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