论文标题
以伪模型驱动方式检测自然主义刺激引起的大脑激活
Detection of brain activations induced by naturalistic stimuli in a pseudo model-driven way
论文作者
论文摘要
自然主义的fMRI被认为是研究人脑功能的有力替代方法。刺激引起的激活一直在基于fMRI的大脑功能分析中起着至关重要的作用。然而,由于刺激的复杂性,自然主义刺激(AINSS)引起的激活的检测是一个棘手的问题,因为不能简单地以模型驱动的方式检测AIN。在这项研究中,我们提出了一种以伪模型驱动方式检测AIN的方法。受到暴露于相同刺激的大脑之间的共同点进行主体间相关分析的策略的启发,我们通过在其他几个受试者中平均fMRI信号建立了一个受试者的响应模型,然后使用一般线性模型检测到该受试者的AINS。我们根据人类Connectome Project数据集中包含的四个电影fMRI运行,对性别和智力商(IQ)的个体差异(IQ)进行了统计和预测分析,评估了AIN的有效性。结果表明,AIN不仅对与性别和IQ相关的差异敏感,而且还足以解释个人的性别和智商。具体而言,观察到与视觉空间处理相关的大脑区域的激活在男性中始终更强,并且具有较高智商的个体在视觉和默认模式网络中表现出始终如一的区域激活。个人性别和智商的预测明显优于基于随机标签的性别(p <0.005)。综上所述,这项研究中的AIN可以有效地评估人脑功能。概念上的简单性和轻松应用其检测可能使AIN成为基于自然主义fMRI的未来大脑功能分析和个性化医学的有利选择。
Naturalistic fMRI has been suggested to be a powerful alternative for investigations of human brain function. Stimulus-induced activation has been playing an essential role in fMRI-based brain function analyses. Due to the complexity of the stimuli, however, detection of activations induced by naturalistic stimuli (AINSs) has been a tricky problem, as AINS cannot be detected simply in a model-driven way. In this study, we proposed a method to detect AINS in a pseudo model-driven way. Inspired by the strategy of utilizing the commonalities among the brains exposed to the same stimuli for inter-subject correlation analysis, we established response models for one subject by averaging the fMRI signals across several other subjects, and then detected AINSs of the subject using general linear model. We evaluated the effectiveness of AINS with both statistical and predictive analyses on individual differences in sex and intelligence quotient (IQ), based on the four movie fMRI runs included in the Human Connectome Project dataset. The results indicate that AINS is not only sensitive to sex- and IQ-related differences, but also specific enough to decode individuals' sex and IQ. Specifically, activations in brain regions associated with visual-spatial processing were observed to be consistently stronger in the males, and individuals with higher IQ exhibited consistently stronger activations in regions within the visual and the default mode networks. Predictions of individuals' sex and IQ were significantly better than those based on random labels (P < 0.005). Taken together, AINS advanced in this study can be an effective evaluation of human brain function. The conceptual simplicity and easy application of its detection may make AINS a favorable choice for future brain function analyses and personalized medicine based on naturalistic fMRI.